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Chen H, Li S, Gu Y, Liang K, Li Y, Cheng B, Jiang Z, Hu X, Wang J, Wang T, Wang Q, Wan C, Sun Q, Zhou J, Guo H, Wang X. Blunted niacin skin flushing response in violent offenders with schizophrenia: A potential auxiliary diagnostic biomarker. J Psychiatr Res 2025; 184:249-255. [PMID: 40058163 DOI: 10.1016/j.jpsychires.2025.02.059] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [Key Words] [MESH Headings] [Track Full Text] [Journal Information] [Submit a Manuscript] [Subscribe] [Scholar Register] [Received: 10/27/2024] [Revised: 02/17/2025] [Accepted: 02/27/2025] [Indexed: 04/09/2025]
Abstract
Schizophrenia (SZ) is associated with an increased risk of violence, with clinical diagnosis primarily relies on symptomatology. The niacin skin flushing response (NSFR) is proposed as a potential biomarker for SZ, but its effectiveness in violent offenders with schizophrenia (VOSZ) remains unevaluated. This study investigates whether the diagnostic model differentiating general SZ patients (GSZ) from healthy controls (HCs) using NSFR can also distinguish VOSZ from HCs. SZ patients were continuously sampled based on the International Classification of Diseases, 10th Edition, and categorized into VOSZ (with a history of violent crimes), and GSZ (without such history). HCs had no psychiatric illnesses or violent crime history. A total of 315 VOSZ, 296 GSZ, and 281 HCs were recruited. Least absolute shrinkage and selection operator regression was used to select variables and construct diagnostic models based on NSFR. No significant differences in age, sex or BMI were observed among groups. Both VOSZ and GSZ exhibited similar blunted NSFR compared to HCs. The diagnostic model constructed by 14 NSFR variables distinguishing GSZ from HCs was successfully transferred to distinguish VOSZ from HCs, with areas under the curve of 0.796 (specificity = 81.6%, sensitivity = 64.2%) and 0.798 (specificity = 80.0%, sensitivity = 70.2%), respectively. Moreover, NSFR was unrelated to illness severity, violence, or antipsychotic dosage in VOSZ, suggesting it is a trait indicator of SZ. This study supports the NSFR as an objective diagnostic biomarker for distinguishing VOSZ from HCs, expanding its applicability, although it may not specifically identify violent offenders among SZ patients.
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Affiliation(s)
- Hui Chen
- Department of Psychiatry, National Clinical Research Center for Mental Disorders, and National Center for Mental Disorders, The Second Xiangya Hospital of Central South University, Changsha, 410011, China
| | - Shuhui Li
- Bio-X Institutes, Key Laboratory for the Genetics of Developmental and Neuropsychiatric Disorders, Ministry of Education, School of Life Sciences and Biotechnology, Shanghai Jiao Tong University, Shanghai, 200030, China
| | - Yu Gu
- Department of Psychiatry, National Clinical Research Center for Mental Disorders, and National Center for Mental Disorders, The Second Xiangya Hospital of Central South University, Changsha, 410011, China
| | - Kai Liang
- The Forensic Psychiatric Hospital of Hunan, China
| | - Yingxu Li
- The Forensic Psychiatric Hospital of Hunan, China
| | - Bohao Cheng
- Department of Psychiatry, National Clinical Research Center for Mental Disorders, and National Center for Mental Disorders, The Second Xiangya Hospital of Central South University, Changsha, 410011, China
| | - Zhengqian Jiang
- Department of Psychiatry, National Clinical Research Center for Mental Disorders, and National Center for Mental Disorders, The Second Xiangya Hospital of Central South University, Changsha, 410011, China
| | - Xiaowen Hu
- Bio-X Institutes, Key Laboratory for the Genetics of Developmental and Neuropsychiatric Disorders, Ministry of Education, School of Life Sciences and Biotechnology, Shanghai Jiao Tong University, Shanghai, 200030, China
| | - Jinfeng Wang
- Bio-X Institutes, Key Laboratory for the Genetics of Developmental and Neuropsychiatric Disorders, Ministry of Education, School of Life Sciences and Biotechnology, Shanghai Jiao Tong University, Shanghai, 200030, China
| | - Tianqi Wang
- Bio-X Institutes, Key Laboratory for the Genetics of Developmental and Neuropsychiatric Disorders, Ministry of Education, School of Life Sciences and Biotechnology, Shanghai Jiao Tong University, Shanghai, 200030, China
| | - Qian Wang
- Bio-X Institutes, Key Laboratory for the Genetics of Developmental and Neuropsychiatric Disorders, Ministry of Education, School of Life Sciences and Biotechnology, Shanghai Jiao Tong University, Shanghai, 200030, China
| | - Chunling Wan
- Bio-X Institutes, Key Laboratory for the Genetics of Developmental and Neuropsychiatric Disorders, Ministry of Education, School of Life Sciences and Biotechnology, Shanghai Jiao Tong University, Shanghai, 200030, China
| | - Qiaoling Sun
- Department of Psychiatry, National Clinical Research Center for Mental Disorders, and National Center for Mental Disorders, The Second Xiangya Hospital of Central South University, Changsha, 410011, China
| | - Jiansong Zhou
- Department of Psychiatry, National Clinical Research Center for Mental Disorders, and National Center for Mental Disorders, The Second Xiangya Hospital of Central South University, Changsha, 410011, China
| | - Huijuan Guo
- Department of Psychiatry, National Clinical Research Center for Mental Disorders, and National Center for Mental Disorders, The Second Xiangya Hospital of Central South University, Changsha, 410011, China.
| | - Xiaoping Wang
- Department of Psychiatry, National Clinical Research Center for Mental Disorders, and National Center for Mental Disorders, The Second Xiangya Hospital of Central South University, Changsha, 410011, China.
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2
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Heda V, Dogra S, Kouznetsova VL, Kumar A, Kesari S, Tsigelny IF. miRNA-Based Diagnosis of Schizophrenia Using Machine Learning. Int J Mol Sci 2025; 26:2280. [PMID: 40076899 PMCID: PMC11900116 DOI: 10.3390/ijms26052280] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [Key Words] [MESH Headings] [Track Full Text] [Download PDF] [Figures] [Journal Information] [Subscribe] [Scholar Register] [Received: 01/22/2025] [Revised: 02/19/2025] [Accepted: 02/24/2025] [Indexed: 03/14/2025] Open
Abstract
Diagnostic practices for schizophrenia are unreliable due to the lack of a stable biomarker. However, machine learning holds promise in aiding in the diagnosis of schizophrenia and other neurological disorders. Dysregulated miRNAs were extracted from public sources. Datasets of miRNAs selected from the literature and random miRNAs with designated gene targets along with related pathways were assigned as descriptors of machine-learning models. These data were preprocessed and classified using WEKA and TensorFlow, and several classifiers were tested to train the model. The Sequential neural network developed by authors performed the best of the classifiers tested, achieving an accuracy of 94.32%. Naïve Bayes was the next best model, with an accuracy of 72.23%. MLP achieved an accuracy of 65.91%, followed by Hoeffding tree with an accuracy of 64.77%, Random tree with an accuracy of 63.64%, Random forest, which achieved an accuracy of 61.36%, and lastly ADABoostM1, which achieved an accuracy of 53.41%. The Sequential neural network and Naïve Bayes classifier were tested to validate the model as they achieved the highest accuracy. Naïve Bayes achieved a validation accuracy of 72.22%, whereas the sequential neural network achieved an accuracy of 88.88%. Our results demonstrate the practicality of machine learning in psychiatric diagnosis. Dysregulated miRNA combined with machine learning can serve as a diagnostic aid to physicians for schizophrenia and potentially other neurological disorders as well.
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Affiliation(s)
- Vishrut Heda
- Scholars Program, CureScience Institute, San Diego, CA 92121, USA;
| | - Saanvi Dogra
- MAP Program, University of California San Diego, La Jolla, CA 92093, USA;
| | - Valentina L. Kouznetsova
- San Diego Supercomputer Center, University of California San Diego, La Jolla, CA 92093, USA;
- Department of Sciences, CureScience Institute, San Diego, CA 92121, USA
| | - Alex Kumar
- Computing and Mathematical Sciences Department, California Institute of Technology, Pasadena, CA 91125, USA;
| | - Santosh Kesari
- Department of Neuro-Oncology, Pacific Neuroscience Institute, Santa Monica, CA 90404, USA;
| | - Igor F. Tsigelny
- San Diego Supercomputer Center, University of California San Diego, La Jolla, CA 92093, USA;
- Department of Sciences, CureScience Institute, San Diego, CA 92121, USA
- Department of Neurosciences, University of California San Diego, La Jolla, CA 92093, USA
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3
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Yee JY, Phua SX, See YM, Andiappan AK, Goh WWB, Lee J. Predicting antipsychotic responsiveness using a machine learning classifier trained on plasma levels of inflammatory markers in schizophrenia. Transl Psychiatry 2025; 15:51. [PMID: 39952924 PMCID: PMC11828904 DOI: 10.1038/s41398-025-03264-z] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [Key Words] [MESH Headings] [Grants] [Track Full Text] [Journal Information] [Submit a Manuscript] [Subscribe] [Scholar Register] [Received: 06/19/2024] [Revised: 12/05/2024] [Accepted: 01/27/2025] [Indexed: 02/17/2025] Open
Abstract
We apply machine learning techniques to navigate the multifaceted landscape of schizophrenia. Our method entails the development of predictive models, emphasizing peripheral inflammatory biomarkers, which are classified into treatment response subgroups: antipsychotic-responsive, clozapine-responsive, and clozapine-resistant. The cohort comprises 146 schizophrenia patients (49 antipsychotics-responsive, 68 clozapine-responsive, 29 clozapine-resistant) and 49 healthy controls. Protein levels of immune biomarkers were quantified using the Olink Target 96 Inflammation Panel (Olink®, Uppsala, Sweden). To predict labels, a support vector machine (SVM) classifier is trained on the Olink®data matrix and evaluated via leave-one-out cross-validation. Associated protein biomarkers are identified via recursive feature elimination. We constructed three separate predictive models for binary classification: one to discern healthy controls from individuals with schizophrenia (AUC = 0.74), another to differentiate individuals who were responsive to antipsychotics (AUC = 0.88), and a third to distinguish treatment-resistant individuals (AUC = 0.78). Employing machine learning techniques, we identified features capable of distinguishing between treatment response subgroups. In this study, SVM demonstrates the power of machine learning to uncover subtle signals often overlooked by traditional statistics. Unlike t-tests, it handles multiple features simultaneously, capturing complex data relationships. Chosen for simplicity, robustness, and reliance on strong feature sets, its integration with explainable AI techniques like SHapely Additive exPlanations enhances model interpretability, especially for biomarker screening. This study highlights the potential of integrating machine learning techniques in clinical practice. Not only does it deepen our understanding of schizophrenia's heterogeneity, but it also holds promise for enhancing predictive accuracy, thereby facilitating more targeted and effective interventions in the treatment of this complex mental health disorder.
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Affiliation(s)
- Jie Yin Yee
- North Region, Institute of Mental Health, Singapore, Singapore
| | - Ser-Xian Phua
- Lee Kong Chian School of Medicine, Nanyang Technological University, Singapore, Singapore
| | - Yuen Mei See
- North Region, Institute of Mental Health, Singapore, Singapore
| | - Anand Kumar Andiappan
- Singapore Immunology Network (SIgN), Agency for Science, Technology and Research (A*STAR), Singapore, Singapore
| | - Wilson Wen Bin Goh
- Lee Kong Chian School of Medicine, Nanyang Technological University, Singapore, Singapore.
- Center for Biomedical Informatics, Nanyang Technological University, Singapore, Singapore.
- School of Biological Sciences, Nanyang Technological University, Singapore, Singapore.
- Center of AI in Medicine, Nanyang Technological University, Singapore, Singapore.
- Division of Neurology, Department of Brain Sciences, Faculty of Medicine, Imperial College London, London, UK.
| | - Jimmy Lee
- North Region, Institute of Mental Health, Singapore, Singapore.
- Lee Kong Chian School of Medicine, Nanyang Technological University, Singapore, Singapore.
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Espino-Salinas CH, Luna-García H, Cepeda-Argüelles A, Trejo-Vázquez K, Flores-Chaires LA, Mercado Reyna J, Galván-Tejada CE, Acra-Despradel C, Villalba-Condori KO. Convolutional Neural Network for Depression and Schizophrenia Detection. Diagnostics (Basel) 2025; 15:319. [PMID: 39941249 PMCID: PMC11817135 DOI: 10.3390/diagnostics15030319] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [Key Words] [Track Full Text] [Figures] [Journal Information] [Subscribe] [Scholar Register] [Received: 12/18/2024] [Revised: 01/18/2025] [Accepted: 01/24/2025] [Indexed: 02/16/2025] Open
Abstract
Background/Objectives: This study presents a Convolutional Neural Network (CNN) approach for detecting depression and schizophrenia using motor activity patterns represented as images. Participants' motor activity data were captured and transformed into visual representations, enabling advanced computer vision techniques for the classification of these mental disorders. The model's performance was evaluated using a three-fold cross-validation, achieving an average accuracy of 95%, demonstrating the effectiveness of the proposed approach in accurately identifying mental health conditions. The objective of the study is to develop a model capable of identifying different mental disorders by processing motor data using CNN in order to provide a support tool to areas specialized in the diagnosis and efficient treatment of these psychological conditions. Methods: The methodology involved segmenting and transforming motor activity data into images, followed by a CNN training and testing phase on these visual representations. This innovative approach enables the identification of subtle motor behavior patterns, potentially indicative of specific mental states, without invasive interventions or self-reporting. Results: The results suggest that CNNs can capture discriminative features in motor activity to differentiate between individuals with depression, schizophrenia, and those without mental health diagnoses. Conclusions: These findings underscore the potential of computer vision and deep neural network techniques to contribute to early, non-invasive mental health disorder diagnosis, with significant implications for developing mental health support tools.
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Affiliation(s)
- Carlos H. Espino-Salinas
- Laboratorio de Tecnologías Interactivas y Experiencia de Usuario, Unidad Académica de Ingeniería Eléctrica, Universidad Autónoma de Zacatecas, Zacatecas 98000, Mexico; (C.H.E.-S.); (L.A.F.-C.); (J.M.R.)
| | - Huizilopoztli Luna-García
- Laboratorio de Tecnologías Interactivas y Experiencia de Usuario, Unidad Académica de Ingeniería Eléctrica, Universidad Autónoma de Zacatecas, Zacatecas 98000, Mexico; (C.H.E.-S.); (L.A.F.-C.); (J.M.R.)
| | - Alejandra Cepeda-Argüelles
- Centro de Investigación e Inovación Biomedica e Informática, Unidad Academica de Ingeniería Electrica, Zacatecas 98000, Mexico; (A.C.-A.); (K.T.-V.); (C.E.G.-T.)
| | - Karina Trejo-Vázquez
- Centro de Investigación e Inovación Biomedica e Informática, Unidad Academica de Ingeniería Electrica, Zacatecas 98000, Mexico; (A.C.-A.); (K.T.-V.); (C.E.G.-T.)
| | - Luis Alberto Flores-Chaires
- Laboratorio de Tecnologías Interactivas y Experiencia de Usuario, Unidad Académica de Ingeniería Eléctrica, Universidad Autónoma de Zacatecas, Zacatecas 98000, Mexico; (C.H.E.-S.); (L.A.F.-C.); (J.M.R.)
| | - Jaime Mercado Reyna
- Laboratorio de Tecnologías Interactivas y Experiencia de Usuario, Unidad Académica de Ingeniería Eléctrica, Universidad Autónoma de Zacatecas, Zacatecas 98000, Mexico; (C.H.E.-S.); (L.A.F.-C.); (J.M.R.)
| | - Carlos E. Galván-Tejada
- Centro de Investigación e Inovación Biomedica e Informática, Unidad Academica de Ingeniería Electrica, Zacatecas 98000, Mexico; (A.C.-A.); (K.T.-V.); (C.E.G.-T.)
| | - Claudia Acra-Despradel
- Vicerrectorado de Investigación, Universidad Nacional Pedro Henríquez Ureña, Santo Domingo 10203, Dominican Republic;
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Checa-Robles FJ, Salvetat N, Cayzac C, Menhem M, Favier M, Vetter D, Ouna I, Nani JV, Hayashi MAF, Brietzke E, Weissmann D. RNA Editing Signatures Powered by Artificial Intelligence: A New Frontier in Differentiating Schizophrenia, Bipolar, and Schizoaffective Disorders. Int J Mol Sci 2024; 25:12981. [PMID: 39684694 DOI: 10.3390/ijms252312981] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [Key Words] [MESH Headings] [Grants] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Received: 10/22/2024] [Revised: 11/22/2024] [Accepted: 11/29/2024] [Indexed: 12/18/2024] Open
Abstract
Mental health disorders are devastating illnesses, often misdiagnosed due to overlapping clinical symptoms. Among these conditions, bipolar disorder, schizophrenia, and schizoaffective disorder are particularly difficult to distinguish, as they share alternating positive and negative mood symptoms. Accurate and timely diagnosis of these diseases is crucial to ensure effective treatment and to tailor therapeutic management to each individual patient. In this context, it is essential to move beyond standard clinical assessment and employ innovative approaches to identify new biomarkers that can be reliably quantified. We previously identified a panel of RNA editing biomarkers capable of differentiating healthy controls from depressed patients and, among depressed patients, those with major depressive disorder and those with bipolar disorder. In this study, we integrated Adenosine-to-Inosine RNA editing blood biomarkers with clinical data through machine learning algorithms to establish specific signatures for bipolar disorder and schizophrenia spectrum disorders. This groundbreaking study paves the way for the application of RNA editing in other psychiatric disorders, such as schizophrenia and schizoaffective disorder. It represents a first proof-of-concept and provides compelling evidence for the establishment of an RNA editing signature for the diagnosis of these psychiatric conditions.
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Affiliation(s)
- Francisco J Checa-Robles
- ALCEDIAG, Parc Euromédecine, 34184 Montpellier Cedex 4, France
- Sys2Diag, UMR 9005 CNRS/ALCEN, Parc Euromédecine, 34184 Montpellier Cedex 4, France
| | - Nicolas Salvetat
- ALCEDIAG, Parc Euromédecine, 34184 Montpellier Cedex 4, France
- Sys2Diag, UMR 9005 CNRS/ALCEN, Parc Euromédecine, 34184 Montpellier Cedex 4, France
| | - Christopher Cayzac
- ALCEDIAG, Parc Euromédecine, 34184 Montpellier Cedex 4, France
- Sys2Diag, UMR 9005 CNRS/ALCEN, Parc Euromédecine, 34184 Montpellier Cedex 4, France
| | - Mary Menhem
- ALCEDIAG, Parc Euromédecine, 34184 Montpellier Cedex 4, France
- Sys2Diag, UMR 9005 CNRS/ALCEN, Parc Euromédecine, 34184 Montpellier Cedex 4, France
| | - Mathieu Favier
- ALCEDIAG, Parc Euromédecine, 34184 Montpellier Cedex 4, France
- Sys2Diag, UMR 9005 CNRS/ALCEN, Parc Euromédecine, 34184 Montpellier Cedex 4, France
| | - Diana Vetter
- ALCEDIAG, Parc Euromédecine, 34184 Montpellier Cedex 4, France
- Sys2Diag, UMR 9005 CNRS/ALCEN, Parc Euromédecine, 34184 Montpellier Cedex 4, France
| | - Ilhème Ouna
- Sys2Diag, UMR 9005 CNRS/ALCEN, Parc Euromédecine, 34184 Montpellier Cedex 4, France
| | - João V Nani
- Department of Pharmacology, Escola Paulista de Medicina (EPM), Universidade Federal de São Paulo (UNIFESP), São Paulo CEP 04044-20, Brazil
- National Institute for Translational Medicine (INCT-TM, CNPq/FAPESP/CAPES), Ribeirão Preto CEP 14040-900, Brazil
| | - Mirian A F Hayashi
- Department of Pharmacology, Escola Paulista de Medicina (EPM), Universidade Federal de São Paulo (UNIFESP), São Paulo CEP 04044-20, Brazil
- National Institute for Translational Medicine (INCT-TM, CNPq/FAPESP/CAPES), Ribeirão Preto CEP 14040-900, Brazil
| | - Elisa Brietzke
- Department of Psychiatry, School of Medicine, Queen's University, Kingston, ON K7L 7X3, Canada
| | - Dinah Weissmann
- ALCEDIAG, Parc Euromédecine, 34184 Montpellier Cedex 4, France
- Sys2Diag, UMR 9005 CNRS/ALCEN, Parc Euromédecine, 34184 Montpellier Cedex 4, France
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Hudon A, Beaudoin M, Phraxayavong K, Potvin S, Dumais A. Exploring the Intersection of Schizophrenia, Machine Learning, and Genomics: Scoping Review. JMIR BIOINFORMATICS AND BIOTECHNOLOGY 2024; 5:e62752. [PMID: 39546776 PMCID: PMC11607571 DOI: 10.2196/62752] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [Key Words] [Track Full Text] [Subscribe] [Scholar Register] [Received: 05/30/2024] [Revised: 10/06/2024] [Accepted: 10/16/2024] [Indexed: 11/17/2024]
Abstract
BACKGROUND An increasing body of literature highlights the integration of machine learning with genomic data in psychiatry, particularly for complex mental health disorders such as schizophrenia. These advanced techniques offer promising potential for uncovering various facets of these disorders. A comprehensive review of the current applications of machine learning in conjunction with genomic data within this context can significantly enhance our understanding of the current state of research and its future directions. OBJECTIVE This study aims to conduct a systematic scoping review of the use of machine learning algorithms with genomic data in the field of schizophrenia. METHODS To conduct a systematic scoping review, a search was performed in the electronic databases MEDLINE, Web of Science, PsycNet (PsycINFO), and Google Scholar from 2013 to 2024. Studies at the intersection of schizophrenia, genomic data, and machine learning were evaluated. RESULTS The literature search identified 2437 eligible articles after removing duplicates. Following abstract screening, 143 full-text articles were assessed, and 121 were subsequently excluded. Therefore, 21 studies were thoroughly assessed. Various machine learning algorithms were used in the identified studies, with support vector machines being the most common. The studies notably used genomic data to predict schizophrenia, identify schizophrenia features, discover drugs, classify schizophrenia amongst other mental health disorders, and predict the quality of life of patients. CONCLUSIONS Several high-quality studies were identified. Yet, the application of machine learning with genomic data in the context of schizophrenia remains limited. Future research is essential to further evaluate the portability of these models and to explore their potential clinical applications.
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Affiliation(s)
- Alexandre Hudon
- Department of psychiatry and addictology, Faculty of Medicine, Université de Montréal, Montréal, QC, Canada
- Centre de recherche de l'Institut universitaire en santé mentale de Montréal, Montréal, QC, Canada
- Institut universitaire en santé mentale de Montréal, Montréal, QC, Canada
| | - Mélissa Beaudoin
- Department of psychiatry and addictology, Université de Montréal, Montréal, QC, Canada
- Faculty of Medicine, McGill University, Montréal, QC, Canada
| | | | - Stéphane Potvin
- Centre de recherche de l'Institut universitaire en santé mentale de Montréal, Montréal, QC, Canada
- Department of psychiatry and addictology, Université de Montréal, Montréal, QC, Canada
| | - Alexandre Dumais
- Centre de recherche de l'Institut universitaire en santé mentale de Montréal, Montréal, QC, Canada
- Department of psychiatry and addictology, Université de Montréal, Montréal, QC, Canada
- Services et Recherches Psychiatriques AD, Montréal, QC, Canada
- Institut nationale de psychiatrie légale Philippe-Pinel, Montréal, QC, Canada
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7
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Karaglani M, Agorastos A, Panagopoulou M, Parlapani E, Athanasis P, Bitsios P, Tzitzikou K, Theodosiou T, Iliopoulos I, Bozikas VP, Chatzaki E. A novel blood-based epigenetic biosignature in first-episode schizophrenia patients through automated machine learning. Transl Psychiatry 2024; 14:257. [PMID: 38886359 PMCID: PMC11183091 DOI: 10.1038/s41398-024-02946-4] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [Key Words] [MESH Headings] [Grants] [Track Full Text] [Journal Information] [Submit a Manuscript] [Subscribe] [Scholar Register] [Received: 08/06/2023] [Revised: 05/15/2024] [Accepted: 05/17/2024] [Indexed: 06/20/2024] Open
Abstract
Schizophrenia (SCZ) is a chronic, severe, and complex psychiatric disorder that affects all aspects of personal functioning. While SCZ has a very strong biological component, there are still no objective diagnostic tests. Lately, special attention has been given to epigenetic biomarkers in SCZ. In this study, we introduce a three-step, automated machine learning (AutoML)-based, data-driven, biomarker discovery pipeline approach, using genome-wide DNA methylation datasets and laboratory validation, to deliver a highly performing, blood-based epigenetic biosignature of diagnostic clinical value in SCZ. Publicly available blood methylomes from SCZ patients and healthy individuals were analyzed via AutoML, to identify SCZ-specific biomarkers. The methylation of the identified genes was then analyzed by targeted qMSP assays in blood gDNA of 30 first-episode drug-naïve SCZ patients and 30 healthy controls (CTRL). Finally, AutoML was used to produce an optimized disease-specific biosignature based on patient methylation data combined with demographics. AutoML identified a SCZ-specific set of novel gene methylation biomarkers including IGF2BP1, CENPI, and PSME4. Functional analysis investigated correlations with SCZ pathology. Methylation levels of IGF2BP1 and PSME4, but not CENPI were found to differ, IGF2BP1 being higher and PSME4 lower in the SCZ group as compared to the CTRL group. Additional AutoML classification analysis of our experimental patient data led to a five-feature biosignature including all three genes, as well as age and sex, that discriminated SCZ patients from healthy individuals [AUC 0.755 (0.636, 0.862) and average precision 0.758 (0.690, 0.825)]. In conclusion, this three-step pipeline enabled the discovery of three novel genes and an epigenetic biosignature bearing potential value as promising SCZ blood-based diagnostics.
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Affiliation(s)
- Makrina Karaglani
- Laboratory of Pharmacology, Department of Medicine, Democritus University of Thrace, GR-68132, Alexandroupolis, Greece
- Institute of Agri-food and Life Sciences, University Research & Innovation Center, H.M.U.R.I.C., Hellenic Mediterranean University, GR-71003, Crete, Greece
| | - Agorastos Agorastos
- Institute of Agri-food and Life Sciences, University Research & Innovation Center, H.M.U.R.I.C., Hellenic Mediterranean University, GR-71003, Crete, Greece
- II. Department of Psychiatry, Faculty of Health Sciences, School of Medicine, Aristotle University of Thessaloniki, GR-56430, Thessaloniki, Greece
| | - Maria Panagopoulou
- Laboratory of Pharmacology, Department of Medicine, Democritus University of Thrace, GR-68132, Alexandroupolis, Greece
- Institute of Agri-food and Life Sciences, University Research & Innovation Center, H.M.U.R.I.C., Hellenic Mediterranean University, GR-71003, Crete, Greece
| | - Eleni Parlapani
- Ι. Department of Psychiatry, Faculty of Health Sciences, School of Medicine, Aristotle University of Thessaloniki, GR-56429, Thessaloniki, Greece
| | - Panagiotis Athanasis
- II. Department of Psychiatry, Faculty of Health Sciences, School of Medicine, Aristotle University of Thessaloniki, GR-56430, Thessaloniki, Greece
| | - Panagiotis Bitsios
- Department of Psychiatry and Behavioral Sciences, Faculty of Medicine, University of Crete, GR-71500, Heraklion, Greece
| | - Konstantina Tzitzikou
- Laboratory of Pharmacology, Department of Medicine, Democritus University of Thrace, GR-68132, Alexandroupolis, Greece
| | - Theodosis Theodosiou
- Laboratory of Pharmacology, Department of Medicine, Democritus University of Thrace, GR-68132, Alexandroupolis, Greece
- ABCureD P.C, GR-68131, Alexandroupolis, Greece
| | - Ioannis Iliopoulos
- Division of Basic Sciences, School of Medicine, University of Crete, GR-71003, Heraklion, Greece
| | - Vasilios-Panteleimon Bozikas
- II. Department of Psychiatry, Faculty of Health Sciences, School of Medicine, Aristotle University of Thessaloniki, GR-56430, Thessaloniki, Greece
| | - Ekaterini Chatzaki
- Laboratory of Pharmacology, Department of Medicine, Democritus University of Thrace, GR-68132, Alexandroupolis, Greece.
- Institute of Agri-food and Life Sciences, University Research & Innovation Center, H.M.U.R.I.C., Hellenic Mediterranean University, GR-71003, Crete, Greece.
- ABCureD P.C, GR-68131, Alexandroupolis, Greece.
- Institute of Molecular Biology and Biotechnology, Foundation for Research and Technology, 70013, Heraklion, Greece.
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8
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Wagh VV, Kottat T, Agrawal S, Purohit S, Pachpor TA, Narlikar L, Paralikar V, Khare SP. Ensemble Learning for Higher Diagnostic Precision in Schizophrenia Using Peripheral Blood Gene Expression Profile. Neuropsychiatr Dis Treat 2024; 20:923-936. [PMID: 38716091 PMCID: PMC11075682 DOI: 10.2147/ndt.s449135] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [Key Words] [Grants] [Track Full Text] [Download PDF] [Figures] [Journal Information] [Submit a Manuscript] [Subscribe] [Scholar Register] [Received: 11/09/2023] [Accepted: 03/12/2024] [Indexed: 05/15/2025] Open
Abstract
Introduction Stigma contributes to a significant part of the burden of schizophrenia (SCZ), therefore reducing false positives from the diagnosis would be liberating for the individuals with SCZ and desirable for the clinicians. The stigmatization associated with schizophrenia advocates the need for high-precision diagnosis. In this study, we present an ensemble learning-based approach for high-precision diagnosis of SCZ using peripheral blood gene expression profiles. Methodology The machine learning (ML) models, support vector machines (SVM), and prediction analysis for microarrays (PAM) were developed using differentially expressed genes (DEGs) as features. The SCZ samples were classified based on a voting ensemble classifier of SVM and PAM. Further, microarray-based learning was used to classify RNA sequencing (RNA-Seq) samples from our case-control study (Pune-SCZ) to assess cross-platform compatibility. Results Ensemble learning using ML models resulted in a significantly higher precision of 80.41% (SD: 0.04) when compared to the individual models (SVM-radial: 71.69%, SD: 0.04 and PAM 77.20%, SD: 0.02). The RNA sequencing samples from our case-control study (Pune-SCZ) resulted in a moderate precision (59.92%, SD: 0.05). The feature genes used for model building were enriched for biological processes such as response to stress, regulation of the immune system, and metabolism of organic nitrogen compounds. The network analysis identified RBX1, CUL4B, DDB1, PRPF19, and COPS4 as hub genes. Conclusion In summary, this study developed robust models for higher diagnostic precision in psychiatric disorders. Future efforts will be directed towards multi-omic integration and developing "explainable" diagnostic models.
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Affiliation(s)
- Vipul Vilas Wagh
- Symbiosis School of Biological Sciences, Symbiosis International (Deemed University), Pune, MH, India
| | - Tanvi Kottat
- Symbiosis School of Biological Sciences, Symbiosis International (Deemed University), Pune, MH, India
| | - Suchita Agrawal
- Psychiatry Unit, KEM Hospital Research Centre, Pune, MH, India
| | - Shruti Purohit
- Psychiatry Unit, KEM Hospital Research Centre, Pune, MH, India
| | - Tejaswini Arun Pachpor
- Department of Biosciences and Technology, School of Science and Environment Studies, Dr. Vishwanath Karad MIT World Peace University, Pune, MH, India
- Department of Biotechnology, MES Abasaheb Garware College, Pune, MH, India
| | - Leelavati Narlikar
- Department of Data Science, Indian Institute of Science Education and Research, Pune, MH, India
| | | | - Satyajeet Pramod Khare
- Symbiosis School of Biological Sciences, Symbiosis International (Deemed University), Pune, MH, India
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9
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Gashkarimov VR, Sultanova RI, Efremov IS, Asadullin AR. Machine learning techniques in diagnostics and prediction of the clinical features of schizophrenia: a narrative review. CONSORTIUM PSYCHIATRICUM 2023; 4:43-53. [PMID: 38249535 PMCID: PMC10795943 DOI: 10.17816/cp11030] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [Key Words] [Track Full Text] [Download PDF] [Journal Information] [Subscribe] [Scholar Register] [Received: 06/07/2023] [Accepted: 08/07/2023] [Indexed: 01/23/2024] Open
Abstract
BACKGROUND Schizophrenia is a severe psychiatric disorder associated with a significant negative impact. Early diagnosis and treatment of schizophrenia has a favorable effect on the clinical outcome and patients quality of life. In this context, machine learning techniques open up new opportunities for a more accurate diagnosis and prediction of the clinical features of this illness. AIM This literature review is aimed to search for information on the use of machine learning techniques in the prediction and diagnosis of schizophrenia and the determination of its clinical features. METHODS The Google Scholar, PubMed, and eLIBRARY.ru databases were used to search for relevant data. The review included articles that had been published not earlier than January 1, 2010, and not later than March 31, 2023. Combinations of the following keywords were applied for search queries: machine learning, deep learning, schizophrenia, neural network, predictors, artificial intelligence, diagnostics, suicide, depressive, insomnia, and cognitive. Original articles regardless of their design were included in the review. Descriptive analysis was used to summarize the retrieved data. RESULTS Machine learning techniques are widely used in the functional assessment of patients with schizophrenia. They are used for interpretation of MRI, EEG, and actigraphy findings. Also, models created using machine learning algorithms can analyze speech, behavior, and the creativity of people and these data can be used for the diagnosis of psychiatric disorders. It has been found that different machine learning-based models can help specialists predict and diagnose schizophrenia based on medical history and genetic data, as well as epigenetic information. Machine learning techniques can also be used to build effective models that can help specialists diagnose and predict clinical manifestations and complications of schizophrenia, such as insomnia, depressive symptoms, suicide risk, aggressive behavior, and changes in cognitive functions over time. CONCLUSION Machine learning techniques play an important role in psychiatry, as they have been used in models that help specialists in the diagnosis of schizophrenia and determination of its clinical features. The use of machine learning algorithms is one of the most promising direction in psychiatry, and it can significantly improve the effectiveness of the diagnosis and treatment of schizophrenia.
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Affiliation(s)
| | - Renata I Sultanova
- Moscow Research and Clinical Center for Neuropsychiatry of Moscow Healthcare Department
| | - Ilya S Efremov
- Bashkir State Medical University
- V.M. Bekhterev National Medical Research Centre for Psychiatry and Neurology
| | - Azat R Asadullin
- Bashkir State Medical University
- V.M. Bekhterev National Medical Research Centre for Psychiatry and Neurology
- Republican Clinical Psychotherapeutic Center
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10
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Kozyrev EA, Ermakov EA, Boiko AS, Mednova IA, Kornetova EG, Bokhan NA, Ivanova SA. Building Predictive Models for Schizophrenia Diagnosis with Peripheral Inflammatory Biomarkers. Biomedicines 2023; 11:1990. [PMID: 37509629 PMCID: PMC10377576 DOI: 10.3390/biomedicines11071990] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [Key Words] [Grants] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Received: 06/19/2023] [Revised: 07/10/2023] [Accepted: 07/12/2023] [Indexed: 07/30/2023] Open
Abstract
Machine learning and artificial intelligence technologies are known to be a convenient tool for analyzing multi-domain data in precision psychiatry. In the case of schizophrenia, the most commonly used data sources for such purposes are neuroimaging, voice and language patterns, and mobile phone data. Data on peripheral markers can also be useful for building predictive models. Here, we have developed five predictive models for the binary classification of schizophrenia patients and healthy individuals. Data on serum concentrations of cytokines, chemokines, growth factors, and age were among 38 parameters used to build these models. The sample consisted of 217 schizophrenia patients and 90 healthy individuals. The models architecture was involved logistic regression, deep neural networks, decision trees, support vector machine, and k-nearest neighbors algorithms. It was shown that the algorithm based on a deep neural network (consisting of five layers) showed a slightly higher sensitivity (0.87 ± 0.04) and specificity (0.52 ± 0.06) than other algorithms. Combining all variables into a single classifier showed a cumulative effect that exceeded the effectiveness of individual variables, indicating the need to use multiple biomarkers to diagnose schizophrenia. Thus, the data obtained showed the promise of using data on peripheral biomarkers and machine learning methods for diagnosing schizophrenia.
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Affiliation(s)
- Evgeny A Kozyrev
- Budker Institute of Nuclear Physics, Siberian Branch of the Russian Academy of Sciences, 630090 Novosibirsk, Russia
| | - Evgeny A Ermakov
- Institute of Chemical Biology and Fundamental Medicine, Siberian Branch of the Russian Academy of Sciences, 630090 Novosibirsk, Russia
| | - Anastasiia S Boiko
- Mental Health Research Institute, Tomsk National Research Medical Center of the Russian Academy of Sciences, 634014 Tomsk, Russia
| | - Irina A Mednova
- Mental Health Research Institute, Tomsk National Research Medical Center of the Russian Academy of Sciences, 634014 Tomsk, Russia
| | - Elena G Kornetova
- Mental Health Research Institute, Tomsk National Research Medical Center of the Russian Academy of Sciences, 634014 Tomsk, Russia
- University Hospital, Siberian State Medical University, 634050 Tomsk, Russia
| | - Nikolay A Bokhan
- Mental Health Research Institute, Tomsk National Research Medical Center of the Russian Academy of Sciences, 634014 Tomsk, Russia
- Psychiatry, Addiction Psychiatry and Psychotherapy Department, Siberian State Medical University, 634050 Tomsk, Russia
| | - Svetlana A Ivanova
- Mental Health Research Institute, Tomsk National Research Medical Center of the Russian Academy of Sciences, 634014 Tomsk, Russia
- Psychiatry, Addiction Psychiatry and Psychotherapy Department, Siberian State Medical University, 634050 Tomsk, Russia
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11
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Kister K, Laskowski J, Makarewicz A, Tarkowski J. Application of artificial intelligence tools in diagnosis and treatmentof mental disorders. CURRENT PROBLEMS OF PSYCHIATRY 2023. [DOI: 10.12923/2353-8627/2023-0001] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Indexed: 01/31/2023] Open
Abstract
Introduction: Artificial intelligence research is increasing its application in mental health services. Machine learning, deep learning, semantic analysis in the form of transcriptions of patients' statements enable early diagnosis of psychotic disorders, ADHD, anorexia nervosa. Of great importance are the so-called digital therapists. This paper aims to show the use of AI tools in diagnosing, treating, the benefits and limitations associated with mental disorders.
Material and methodS: This literature review was conducted by searching scientific articles from 2015 to 2022. The basis were PubMED, OpenKnowledge, Web of Science, using the following keywords: artificial intelligence, digital therapy, psychiatry, machine learning.
Results: A review indicates the widespread use of AI tools in screening for mental disorders. These tools advance the clinical diagnosis medical specialists make up for several years. They impact solving medical staff shortages, lack of access to medical facilities and leveling patient resistance to treatment. The benefits are ultra-fast analysis of large sets of information, effective screening of people in need of specialized psychiatric care, reduction of doctors' duties and maximization of their work efficiency. During the current COVID 19 pandemic, robots in the form of digital psychotherapists are playing a special role.
Conclusions: The need for further research, testing and clarification of regulations related to the use of AI tools is indicated. Ethical and social problems need to be resolved. The tools should not form the basis of autonomous therapy without the supervision of highly trained professionals. Human beings should be at the center of analysis just as their health and well-being.
Keywords: artificial intelligence, digital therapy, psychiatry, machine learning
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Affiliation(s)
- Klaudia Kister
- I Departmentof Psychiatry, Psychoterapy and Early Intervention of Medical University in Lublin, Poland - Students Research Group
| | - Jakub Laskowski
- Department of Paediatrician Oncology, Transplantology and Haematology of Medical University in Lublin, Medical University in Lublin, Poland - Students Research Group
| | - Agata Makarewicz
- I Department of Psychiatry, Psychoterapy and Early Intervention of Medical University in Lublin, Poland
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12
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Comparison of Machine Learning Algorithms in the Prediction of Hospitalized Patients with Schizophrenia. SENSORS 2022; 22:s22072517. [PMID: 35408133 PMCID: PMC9003328 DOI: 10.3390/s22072517] [Citation(s) in RCA: 6] [Impact Index Per Article: 2.0] [Reference Citation Analysis] [Abstract] [Key Words] [Track Full Text] [Download PDF] [Figures] [Subscribe] [Scholar Register] [Received: 03/02/2022] [Revised: 03/23/2022] [Accepted: 03/23/2022] [Indexed: 12/26/2022]
Abstract
New computational methods have emerged through science and technology to support the diagnosis of mental health disorders. Predictive models developed from machine learning algorithms can identify disorders such as schizophrenia and support clinical decision making. This research aims to compare the performance of machine learning algorithms: Decision Tree, AdaBoost, Random Forest, Naïve Bayes, Support Vector Machine, and k-Nearest Neighbor in the prediction of hospitalized patients with schizophrenia. The data set used in the study contains a total of 11,884 electronic admission records corresponding to 6933 patients with various mental health disorders; these records belong to the acute units of 11 public hospitals in a region of Spain. Of the total, 5968 records correspond to patients diagnosed with schizophrenia (3002 patients) and 5916 records correspond to patients with other mental health disorders (3931 patients). The results recommend Random Forest with the best accuracy of 72.7%. Furthermore, this algorithm presents 79.6%, 72.8%, 72.7%, and 72.7% for AUC, precision, F1-Score, and recall, respectively. The results obtained suggest that the use of machine learning algorithms can classify hospitalized patients with schizophrenia in this population and help in the hospital management of this type of disorder, to reduce the costs associated with hospitalization.
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13
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Bioinformatics and Network-based Approaches for Determining Pathways, Signature Molecules, and Drug Substances connected to Genetic Basis of Schizophrenia etiology. Brain Res 2022; 1785:147889. [PMID: 35339428 DOI: 10.1016/j.brainres.2022.147889] [Citation(s) in RCA: 1] [Impact Index Per Article: 0.3] [Reference Citation Analysis] [Abstract] [Key Words] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Received: 12/23/2021] [Revised: 02/28/2022] [Accepted: 03/21/2022] [Indexed: 12/12/2022]
Abstract
Knowledge of heterogeneous etiology and pathophysiology of schizophrenia (SZP) is reasonably inadequate and non-deterministic due to its inherent complexity and underlying vast dynamics related to genetic mechanisms. The evolution of large-scale transcriptome-wide datasets and subsequent development of relevant, robust technologies for their analyses show promises toward elucidating the genetic basis of disease pathogenesis, its early risk prediction, and predicting drug molecule targets for therapeutic intervention. In this research, we have scrutinized the genetic basis of SZP through functional annotation and network-based system biology approaches. We have determined 96 overlapping differentially expressed genes (DEGs) from 2 microarray datasets and subsequently identified their interconnecting networks to reveal transcriptome signatures like hub proteins (FYN, RAD51, SOCS3, XIAP, AKAP13, PIK3C2A, CBX5, GATA3, EIF3K, and CDKN2B), transcription factors and miRNAs. In addition, we have employed gene set enrichment to highlight significant gene ontology (e.g., positive regulation of microglial cell activation) and relevant pathways (such as axon guidance and focal adhesion) interconnected to the genes associated with SZP. Finally, we have suggested candidate drug substances like Luteolin HL60 UP as a possible therapeutic target based on these key molecular signatures.
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14
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Li R, Li L, Xu Y, Yang J. Machine learning meets omics: applications and perspectives. Brief Bioinform 2021; 23:6425809. [PMID: 34791021 DOI: 10.1093/bib/bbab460] [Citation(s) in RCA: 60] [Impact Index Per Article: 15.0] [Reference Citation Analysis] [Abstract] [Key Words] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Received: 08/23/2021] [Revised: 09/29/2021] [Accepted: 10/07/2021] [Indexed: 02/07/2023] Open
Abstract
The innovation of biotechnologies has allowed the accumulation of omics data at an alarming rate, thus introducing the era of 'big data'. Extracting inherent valuable knowledge from various omics data remains a daunting problem in bioinformatics. Better solutions often need some kind of more innovative methods for efficient handlings and effective results. Recent advancements in integrated analysis and computational modeling of multi-omics data helped address such needs in an increasingly harmonious manner. The development and application of machine learning have largely advanced our insights into biology and biomedicine and greatly promoted the development of therapeutic strategies, especially for precision medicine. Here, we propose a comprehensive survey and discussion on what happened, is happening and will happen when machine learning meets omics. Specifically, we describe how artificial intelligence can be applied to omics studies and review recent advancements at the interface between machine learning and the ever-widest range of omics including genomics, transcriptomics, proteomics, metabolomics, radiomics, as well as those at the single-cell resolution. We also discuss and provide a synthesis of ideas, new insights, current challenges and perspectives of machine learning in omics.
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Affiliation(s)
- Rufeng Li
- Department of Cell Biology and Genetics, School of Basic Medical Sciences, Xi'an Jiaotong University Health Science Center, Xi'an 710061, P. R. China
| | - Lixin Li
- Department of Cell Biology and Genetics, School of Basic Medical Sciences, Xi'an Jiaotong University Health Science Center, Xi'an 710061, P. R. China
| | - Yungang Xu
- School of Electronics and Information, Northwestern Polytechnical University, Xi'an, 710129, China
| | - Juan Yang
- Department of Cell Biology and Genetics, School of Basic Medical Sciences, Xi'an Jiaotong University Health Science Center, Xi'an 710061, P. R. China.,Key Laboratory of Environment and Genes Related to Diseases (Xi'an Jiaotong University), Ministry of Education of China, Xi'an 710061, P. R. China
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15
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Wagh VV, Vyas P, Agrawal S, Pachpor TA, Paralikar V, Khare SP. Peripheral Blood-Based Gene Expression Studies in Schizophrenia: A Systematic Review. Front Genet 2021; 12:736483. [PMID: 34721526 PMCID: PMC8548640 DOI: 10.3389/fgene.2021.736483] [Citation(s) in RCA: 4] [Impact Index Per Article: 1.0] [Reference Citation Analysis] [Abstract] [Key Words] [Track Full Text] [Download PDF] [Figures] [Journal Information] [Subscribe] [Scholar Register] [Received: 07/05/2021] [Accepted: 08/31/2021] [Indexed: 12/19/2022] Open
Abstract
Schizophrenia is a disorder that is characterized by delusions, hallucinations, disorganized speech or behavior, and socio-occupational impairment. The duration of observation and variability in symptoms can make the accurate diagnosis difficult. Identification of biomarkers for schizophrenia (SCZ) can help in early diagnosis, ascertaining the diagnosis, and development of effective treatment strategies. Here we review peripheral blood-based gene expression studies for identification of gene expression biomarkers for SCZ. A literature search was carried out in PubMed and Web of Science databases for blood-based gene expression studies in SCZ. A list of differentially expressed genes (DEGs) was compiled and analyzed for overlap with genetic markers, differences based on drug status of the participants, functional enrichment, and for effect of antipsychotics. This literature survey identified 61 gene expression studies. Seventeen out of these studies were based on expression microarrays. A comparative analysis of the DEGs (n = 227) from microarray studies revealed differences between drug-naive and drug-treated SCZ participants. We found that of the 227 DEGs, 11 genes (ACOT7, AGO2, DISC1, LDB1, RUNX3, SIGIRR, SLC18A1, NRG1, CHRNB2, PRKAB2, and ZNF74) also showed genetic and epigenetic changes associated with SCZ. Functional enrichment analysis of the DEGs revealed dysregulation of proline and 4-hydroxyproline metabolism. Also, arginine and proline metabolism was the most functionally enriched pathway for SCZ in our analysis. Follow-up studies identified effect of antipsychotic treatment on peripheral blood gene expression. Of the 27 genes compiled from the follow-up studies AKT1, DISC1, HP, and EIF2D had no effect on their expression status as a result of antipsychotic treatment. Despite the differences in the nature of the study, ethnicity of the population, and the gene expression analysis method used, we identified several coherent observations. An overlap, though limited, of genetic, epigenetic and gene expression changes supports interplay of genetic and environmental factors in SCZ. The studies validate the use of blood as a surrogate tissue for biomarker analysis. We conclude that well-designed cohort studies across diverse populations, use of high-throughput sequencing technology, and use of artificial intelligence (AI) based computational analysis will significantly improve our understanding and diagnostic capabilities for this complex disorder.
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Affiliation(s)
- Vipul Vilas Wagh
- Symbiosis School of Biological Sciences, Symbiosis International (Deemed University), Pune, India
| | - Parin Vyas
- Symbiosis School of Biological Sciences, Symbiosis International (Deemed University), Pune, India
| | - Suchita Agrawal
- The Psychiatry Unit, KEM Hospital and KEM Hospital Research Centre, Pune, India
| | | | - Vasudeo Paralikar
- The Psychiatry Unit, KEM Hospital and KEM Hospital Research Centre, Pune, India
| | - Satyajeet P Khare
- Symbiosis School of Biological Sciences, Symbiosis International (Deemed University), Pune, India
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Rema J, Novais F, Telles-Correia D. Precision Psychiatry: Machine learning as a tool to find new pharmacological targets. Curr Top Med Chem 2021; 22:1261-1269. [PMID: 34607546 DOI: 10.2174/1568026621666211004095917] [Citation(s) in RCA: 1] [Impact Index Per Article: 0.3] [Reference Citation Analysis] [Abstract] [Key Words] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Received: 06/20/2021] [Revised: 07/20/2021] [Accepted: 08/19/2021] [Indexed: 12/18/2022]
Abstract
There is an increasing amount of data arising from neurobehavioral sciences and medical records that cannot be adequately analyzed by traditional research methods. New drugs develop at a slow rate and seem unsatisfactory for the majority of neurobehavioral disorders. Machine learning (ML) techniques, instead, can incorporate psychopathological, computational, cognitive, and neurobiological underpinning knowledge leading to a refinement of detection, diagnosis, prognosis, treatment, research, and support. Machine and deep learning methods are currently used to accelerate the process of discovering new pharmacological targets and drugs. OBJECTIVE The present work reviews current evidence regarding the contribution of machine learning to the discovery of new drug targets. METHODS Scientific articles from PubMed, SCOPUS, EMBASE, and Web of Science Core Collection published until May 2021 were included in this review. RESULTS The most significant areas of research are schizophrenia, depression and anxiety, Alzheimer´s disease, and substance use disorders. ML techniques have pinpointed target gene candidates and pathways, new molecular substances, and several biomarkers regarding psychiatric disorders. Drug repositioning studies using ML have identified multiple drug candidates as promising therapeutic agents. CONCLUSION Next-generation ML techniques and subsequent deep learning may power new findings regarding the discovery of new pharmacological agents by bridging the gap between biological data and chemical drug information.
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Affiliation(s)
- João Rema
- Faculdade de Medicina da Universidade de Lisboa. Portugal
| | - Filipa Novais
- Faculdade de Medicina da Universidade de Lisboa. Portugal
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