Exploring the Intersection of Schizophrenia, Machine Learning, and Genomics: Scoping Review.

Alexandre Hudon, Mélissa Beaudoin, Kingsada Phraxayavong, Stéphane Potvin, Alexandre Dumais
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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.

探索精神分裂症、机器学习和基因组学的交叉点:范围审查。
背景:越来越多的文献强调将机器学习与精神病学中的基因组数据相结合,尤其是针对精神分裂症等复杂的精神疾病。这些先进的技术为揭示这些疾病的各个方面提供了巨大的潜力。在此背景下,对机器学习与基因组数据结合的当前应用进行全面回顾,可大大提高我们对研究现状及其未来方向的理解:本研究旨在对机器学习算法与基因组数据在精神分裂症领域的应用进行一次系统性的范围界定综述:为了进行系统性的范围界定综述,我们在2013年至2024年期间对MEDLINE、Web of Science、PsycNet (PsycINFO)和Google Scholar等电子数据库进行了检索。对精神分裂症、基因组数据和机器学习的交叉研究进行了评估:文献检索在剔除重复内容后发现了 2437 篇符合条件的文章。摘要筛选后,评估了 143 篇全文文章,随后排除了 121 篇。因此,对 21 项研究进行了全面评估。所发现的研究使用了各种机器学习算法,其中支持向量机最为常见。这些研究主要利用基因组数据来预测精神分裂症、识别精神分裂症特征、发现药物、将精神分裂症与其他精神疾病进行分类以及预测患者的生活质量:结论:我们发现了几项高质量的研究。然而,机器学习与基因组数据在精神分裂症方面的应用仍然有限。未来的研究对于进一步评估这些模型的可移植性和探索其潜在的临床应用至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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