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Machine learning and big data: Implications for disease modeling and therapeutic discovery in psychiatry

机译:机器学习和大数据:对精神病学疾病建模和治疗发现的意义

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Introduction: Machine learning capability holds promise to inform disease models, the discovery and development of novel disease modifying therapeutics and prevention strategies in psychiatry. Herein, we provide an introduction on how machine learning/Artificial Intelligence (AI) may instantiate such capabilities, as well as provide rationale for its application to psychiatry in both research and clinical ecosystems.Methods: Databases PubMed and PsycINFO were searched from 1966 to June 2016 for keywords:Big Data, Machine Learning Precision Medicine, Artificial Intelligence, Mental Health, Mental Disease, Psychiatry, Data Mining RDoC, and Research Domain Criteria. Articles selected for review were those that were determined to be aligned with the objective of this particular paper.Results: Results indicate that AI is a viable option to build useful predictors of outcome while offering objective and comparable accuracy metrics, a unique opportunity, particularly in mental health research. The approach has also consistently brought notable insight into disease models through processing the vast amount of already available multi-domain, semi-structured medical data. The opportunity for AI in psychiatry, in addition to disease-model refinement, is in characterizing those at risk, and it is likely also relevant to personalizing and discovering therapeutics.Conclusions: Machine learning currently provides an opportunity to parse disease models in complex, multifactorial disease states (e.g. mental disorders) and could possibly inform treatment selection with existing therapies and provide bases for domain-based therapeutic discovery.
机译:简介:机器学习能力有望为疾病模型,精神病学中新颖的疾病修饰疗法的发现和开发以及预防策略提供信息。本文对机器学习/人工智能(AI)如何实例化此类功能进行了介绍,并提供了将其应用于研究和临床生态系统中的精神病学的理由。方法:从1966年6月检索了PubMed和PsycINFO数据库。 2016年针对关键字:大数据,机器学习精密医学,人工智能,心理健康,精神疾病,精神病学,数据挖掘RDoC和研究领域标准。结果:结果表明,人工智能是建立有用的结果预测器的可行选择,同时提供客观和可比较的准确性指标,这是一个独特的机会,尤其是在心理健康研究。通过处理大量已经可用的多域,半结构医学数据,该方法还始终为疾病模型带来了引人注目的洞察力。精神病学中AI的机会,除了疾病模型的完善之外,还在于表征有风险的人,并且还可能与个性化和发现治疗方法有关。结论:机器学习当前为解析复杂的多因素疾病模型提供了机会。疾病状态(例如精神障碍),并可能为现有疗法提供治疗选择依据,并为基于领域的治疗发现提供基础。

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