Federated Learning Framework for Mobile Sensing Apps in Mental Health

Banuchitra Suruliraj, Rita Orji
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Abstract

Mental health issues are negatively impacting people, the economy and life expectancy. Several mobile applications are developed to aid mental health treatment and mobile sensing applications help remotely monitor patients with mental illness, understand key factors like sleep and exercise, and deliver effective treatment methods. Though new smartphones are increasingly efficient, the majority of mental health applications transfer data to centralized servers for processing. In this paper, we propose a Federated Learning framework for Mental Health Monitoring Systems (MHMS) to preserve user data privacy, reduce network usage and improve performance. To detect depression using the Federated Learning framework we defined a mobile application architecture, and developed two versions of applications that collect three types of sensing information such as location, accelerometer and calls. We defined epochs and developed an anomaly detection algorithm that helps to label local data to train models. We conducted a preliminary study for 6 weeks using two app versions. The results from the study indicate the app implementing the Federated Learning framework is capable of continuously tracking data utilizing less power, storage space and internet data. It also preserved users' privacy. In future, we are planning to implement Federated Learning to run large-scale studies with improved server-side federated averaging methods.
心理健康移动传感应用的联邦学习框架
心理健康问题对人们、经济和预期寿命产生了负面影响。开发了一些移动应用程序来帮助心理健康治疗,移动传感应用程序有助于远程监控精神疾病患者,了解睡眠和锻炼等关键因素,并提供有效的治疗方法。虽然新的智能手机越来越高效,但大多数心理健康应用程序将数据传输到集中服务器进行处理。在本文中,我们提出了一个用于心理健康监测系统(MHMS)的联邦学习框架,以保护用户数据隐私,减少网络使用并提高性能。为了使用联邦学习框架检测抑郁症,我们定义了一个移动应用程序架构,并开发了两个版本的应用程序,收集三种类型的传感信息,如位置、加速度计和电话。我们定义了时代,并开发了一种异常检测算法,该算法有助于标记局部数据以训练模型。我们使用两个应用版本进行了为期6周的初步研究。研究结果表明,实施联邦学习框架的应用程序能够利用更少的电力、存储空间和互联网数据持续跟踪数据。它还保护了用户的隐私。未来,我们计划使用改进的服务器端联邦平均方法实现联邦学习来运行大规模研究。
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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