Laboratory of Molecular Psychiatry and Bipolar Disorder Program, Programa de Pós-Graduação em Psiquiatria e Ciências do Comportamento, Hospital de Clínicas de Porto Alegre, Universidade Federal do Rio Grande do Sul, Porto Alegre, Brazil.
School of Technology, Pontifícia Universidade Católica do Rio Grande do Sul, Rio Grande do Sul, Brazil.
Bipolar Disord. 2019 Nov;21(7):582-594. doi: 10.1111/bdi.12828. Epub 2019 Sep 18.
The International Society for Bipolar Disorders Big Data Task Force assembled leading researchers in the field of bipolar disorder (BD), machine learning, and big data with extensive experience to evaluate the rationale of machine learning and big data analytics strategies for BD.
A task force was convened to examine and integrate findings from the scientific literature related to machine learning and big data based studies to clarify terminology and to describe challenges and potential applications in the field of BD. We also systematically searched PubMed, Embase, and Web of Science for articles published up to January 2019 that used machine learning in BD.
The results suggested that big data analytics has the potential to provide risk calculators to aid in treatment decisions and predict clinical prognosis, including suicidality, for individual patients. This approach can advance diagnosis by enabling discovery of more relevant data-driven phenotypes, as well as by predicting transition to the disorder in high-risk unaffected subjects. We also discuss the most frequent challenges that big data analytics applications can face, such as heterogeneity, lack of external validation and replication of some studies, cost and non-stationary distribution of the data, and lack of appropriate funding.
Machine learning-based studies, including atheoretical data-driven big data approaches, provide an opportunity to more accurately detect those who are at risk, parse-relevant phenotypes as well as inform treatment selection and prognosis. However, several methodological challenges need to be addressed in order to translate research findings to clinical settings.
国际双相情感障碍大数据工作组召集了双相情感障碍(BD)、机器学习和大数据领域的领先研究人员,他们具有丰富的经验,旨在评估机器学习和大数据分析策略在 BD 中的合理性。
工作组召集会议,对基于机器学习和大数据的相关研究的科学文献中的发现进行检查和整合,以澄清术语,并描述 BD 领域的挑战和潜在应用。我们还系统地检索了 PubMed、Embase 和 Web of Science 中截至 2019 年 1 月使用机器学习的 BD 相关文章。
结果表明,大数据分析有可能为个别患者提供风险计算器,以帮助治疗决策和预测临床预后,包括自杀倾向。这种方法可以通过发现更相关的数据驱动表型来促进诊断,也可以通过预测高危未受影响的受试者向该疾病的转变来预测。我们还讨论了大数据分析应用可能面临的最常见挑战,例如异质性、缺乏外部验证和一些研究的复制、数据的成本和非平稳分布以及缺乏适当的资金。
基于机器学习的研究,包括无理论数据驱动的大数据方法,为更准确地检测那些处于风险中的人、解析相关表型以及告知治疗选择和预后提供了机会。然而,为了将研究结果转化为临床环境,需要解决几个方法学挑战。