Digital phenotyping of social functioning and employment in people with schizophrenia: Pilot data from an international sample.

IF 5 3区 医学 Q1 CLINICAL NEUROLOGY
Erlend Lane, Lucy Gray, David Kimhy, Dilip Jeste, John Torous
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引用次数: 0

Abstract

Aim: Individuals living with schizophrenia experience significant impairments in social functioning. As a major clinical outcome, social functioning requires appropriate measurement tools that can capture its dynamic nature. Digital phenotyping, using smartphone technology to collect high volume ecologically valid data, can potentially capture these facets. We investigated the viability of digital data, such as GPS, Accelerometer, and screen activation as a proxy for common social functioning measurements.

Methods: We used an ordinary least squares linear regression approach to compare the performance of digital signals with the performance of past social functioning scale (SFS) scores for predicting current SFS scores and subdomain values in 62 individuals with schizophrenia using smartphone and clinical assessments over the course of a year. The outcome of interest was the current SFS, for which we compared the capacity of the digital data (active and passive), and prior SFS scores to predict SFS scores.

Results: Overall, the sub-scale models in order of performance (measured by RMSE score) were: (i) employment, (ii) social engagement, (iii) interpersonal behavior, (iv) recreation, (v) prosocial activities, (vii) performance, and (vii) competence. Digital data were particularly capable of predicting subdomain scores for employment (R2 = 0.746, Mean Squared Error (MSE) = 1.663) and social engagement (R2 = 0.710, MSE = 2.318).

Conclusions: Digital phenotyping may have the capacity to operate as a proxy for certain social functioning measures. Future research should expand on this pilot data by focusing on establishing the reliability and validity of digital phenotyping to measure social functioning, and exploring which subdomains of social functioning are best measured digitally.

精神分裂症患者社会功能和就业的数字表型:来自国际样本的试点数据。
目的:精神分裂症患者在社会功能方面有明显的障碍。作为一个主要的临床结果,社会功能需要适当的测量工具来捕捉其动态特性。数字表型,使用智能手机技术收集大量生态有效数据,可以潜在地捕捉到这些方面。我们调查了数字数据的可行性,如GPS、加速度计和屏幕激活作为普通社会功能测量的代理。方法:我们使用普通最小二乘线性回归方法比较数字信号的表现与过去社会功能量表(SFS)分数的表现,以预测62名精神分裂症患者在一年中使用智能手机和临床评估的当前SFS分数和子域值。我们感兴趣的结果是当前的SFS,我们比较了数字数据(主动和被动)的容量和先前的SFS分数来预测SFS分数。结果:总体而言,以RMSE分数衡量的绩效子量表模型依次为:(i)就业,(ii)社会参与,(iii)人际行为,(iv)娱乐,(v)亲社会活动,(vii)绩效和(vii)能力。数字数据特别能够预测就业(R2 = 0.746,均方误差(MSE) = 1.663)和社会参与(R2 = 0.710, MSE = 2.318)的子域分数。结论:数字表现型可能有能力作为某些社会功能措施的代理。未来的研究应在这一试点数据的基础上进一步扩展,重点建立数字表型测量社会功能的可靠性和有效性,并探索哪些社会功能的子领域最适合数字化测量。
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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来源期刊
CiteScore
7.40
自引率
4.20%
发文量
181
审稿时长
6-12 weeks
期刊介绍: PCN (Psychiatry and Clinical Neurosciences) Publication Frequency: Published 12 online issues a year by JSPN Content Categories: Review Articles Regular Articles Letters to the Editor Peer Review Process: All manuscripts undergo peer review by anonymous reviewers, an Editorial Board Member, and the Editor Publication Criteria: Manuscripts are accepted based on quality, originality, and significance to the readership Authors must confirm that the manuscript has not been published or submitted elsewhere and has been approved by each author
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