Mittal Vijay A, Ellman Lauren M, Strauss Gregory P, Walker Elaine F, Corlett Philip R, Schiffman Jason, Woods Scott W, Powers Albert R, Silverstein Steven M, Waltz James A, Zinbarg Richard, Chen Shuo, Williams Trevor, Kenney Joshua, Gold James M
Institutes for Policy Research (IPR) and Innovations in Developmental Sciences (DevSci), Departments of Psychology, Psychiatry, Medical Social Sciences, Northwestern University, Evanston, IL 60208, USA.
Department of Psychology, Temple University, Philadelphia, PA 19122, USA.
J Psychiatr Brain Sci. 2021;6(3). doi: 10.20900/jpbs.20210011. Epub 2021 Jun 29.
Early detection and intervention with young people at clinical high risk (CHR) for psychosis is critical for prevention efforts focused on altering the trajectory of psychosis. Early CHR research largely focused on validating clinical interviews for detecting at-risk individuals; however, this approach has limitations related to: (1) specificity (i.e., only 20% of CHR individuals convert to psychosis) and (2) the expertise and training needed to administer these interviews is limited. The purpose of our study is to develop the computerized assessment of psychosis risk (CAPR) battery, consisting of behavioral tasks that require minimal training to administer, can be administered online, and are tied to the neurobiological systems and computational mechanisms implicated in psychosis. The aims of our study are as follows: (1A) to develop a psychosis-risk calculator through the application of machine learning (ML) methods to the measures from the CAPR battery, (1B) evaluate group differences on the risk calculator score and test the hypothesis that the risk calculator score of the CHR group will differ from help-seeking and healthy controls, (1C) evaluate how baseline CAPR battery performance relates to symptomatic outcome two years later (i.e., conversion and symptomatic worsening). These aims will be explored in 500 CHR participants, 500 help-seeking individuals, and 500 healthy controls across the study sites. This project will provide a next-generation CHR battery, tied to illness mechanisms and powered by cutting-edge computational methods that can be used to facilitate the earliest possible detection of psychosis risk.
对处于精神病临床高危(CHR)状态的年轻人进行早期检测和干预,对于旨在改变精神病发展轨迹的预防工作至关重要。早期的CHR研究主要集中在验证用于检测高危个体的临床访谈;然而,这种方法存在以下局限性:(1)特异性(即只有20%的CHR个体发展为精神病);(2)进行这些访谈所需的专业知识和培训有限。我们研究的目的是开发精神病风险计算机化评估(CAPR)套件,该套件由行为任务组成,这些任务所需的管理培训极少,可以在线进行,并且与精神病相关的神经生物学系统和计算机制相关联。我们研究的目标如下:(1A)通过将机器学习(ML)方法应用于CAPR套件的测量结果来开发一个精神病风险计算器;(1B)评估风险计算器得分的组间差异,并检验CHR组的风险计算器得分将与寻求帮助的个体和健康对照不同的假设;(1C)评估CAPR套件的基线表现与两年后的症状结果(即转变和症状恶化)之间的关系。这些目标将在研究地点的500名CHR参与者、500名寻求帮助的个体和500名健康对照中进行探索。该项目将提供一个与疾病机制相关联、由前沿计算方法驱动的下一代CHR套件,可用于促进尽早检测精神病风险。