Grant Report on SCH: Personalized Depression Treatment Supported by Mobile Sensor Analytics.

Journal of psychiatry and brain science Pub Date : 2020-01-01 Epub Date: 2020-04-29 DOI:10.20900/jpbs.20200010
Jayesh Kamath, Jinbo Bi, Alexander Russell, Bing Wang
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Abstract

We report on the newly started project "SCH: Personalized Depression Treatment Supported by Mobile Sensor Analytics". The current best practice guidelines for treating depression call for close monitoring of patients, and periodically adjusting treatment as needed. This project will advance personalized depression treatment by developing a system, DepWatch, that leverages mobile health technologies and machine learning tools. The objective of DepWatch is to assist clinicians with their decision making process in the management of depression. The project comprises two studies. Phase I collects sensory data and other data, e.g., clinical data, ecological momentary assessments (EMA), tolerability and safety data from 250 adult participants with unstable depression symptomatology initiating depression treatment. The data thus collected will be used to develop and validate assessment and prediction models, which will be incorporated into DepWatch system. In Phase II, three clinicians will use DepWatch to support their clinical decision making process. A total of 128 participants under treatment by the three participating clinicians will be recruited for the study. A number of new machine learning techniques will be developed.

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SCH资助报告:移动传感器分析支持的个性化抑郁症治疗。
我们报道了新启动的项目“SCH:由移动传感器分析支持的个性化抑郁症治疗”。目前治疗抑郁症的最佳实践指南要求密切监测患者,并根据需要定期调整治疗。该项目将通过开发一个名为DepWatch的系统,利用移动健康技术和机器学习工具,推进个性化抑郁症治疗。DepWatch的目的是帮助临床医生在抑郁症的管理中做出决策。该项目包括两项研究。第一阶段收集250名患有不稳定抑郁症症状并开始抑郁症治疗的成年参与者的感觉数据和其他数据,如临床数据、生态瞬时评估(EMA)、耐受性和安全性数据。由此收集的数据将用于开发和验证评估和预测模型,这些模型将被纳入DepWatch系统。在第二阶段,三名临床医生将使用DepWatch来支持他们的临床决策过程。这项研究将招募三名参与临床医生治疗的128名参与者。将开发许多新的机器学习技术。
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