检测和利用精神疾病的生理维度

M. Matthews, Saeed Abdullah, Geri Gay, Tanzeem Choudhury
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引用次数: 2

摘要

包括双相情感障碍(BD)在内的严重精神疾病在全球医疗保健负担中占很大份额,仅在美国就估计高达627亿美元。双相情感障碍是一种常见的终身疾病,与功能不良和临床结果、高自杀率和巨大的社会成本相关。人际与社会节律疗法(IPSRT)是一种有效的双相障碍治疗方法,它使用一种名为社会节律度量(SRM)的5项纸笔自我监测仪器,帮助患者过上更稳定的日常节奏的生活。IPSRT已被证明可以改善患者的预后,但许多患者难以监控自己的日常生活,甚至无法接受治疗。在本文中,我们描述了在开发检测和稳定情绪发作的系统时如何考虑双相情感障碍的生物学特征。我们描述了与患者和治疗师共同设计的MoodRhythm,一个智能手机和网络应用程序。它旨在支持患者在很长一段时间内被动和主动地跟踪他们的健康状况。moodrhym使用手机上的传感器来自动跟踪睡眠和社交活动模式。我们报告了一个由经验丰富的IPSRT临床医生和双相情感障碍患者组成的小型临床试验的结果,最后描述了生理计算不仅可以根据现有的广泛诊断类别监测精神疾病,而且可以帮助从根本上为每个患者量身定制诊断,并开发利用每个人疾病的特殊特征的干预措施,以增加患者对和的参与坚持治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting and Capitalizing on Physiological Dimensions of Psychiatric Illness
Serious mental illnesses, including bipolar disorders (BD), account for a large share of the worldwide healthcare burden—estimated at $62.7B in the U.S. alone. Bipolar disorders represent a family of common, lifelong illnesses associated with poor functional and clinical outcomes, high suicide rates, and huge societal costs. Interpersonal and Social Rhythm Therapy (IPSRT), a validated treatment for BD, helps patients lead lives characterized by greater stability of daily rhythms, using a 5 item paper-and-pencil self-monitoring instrument called the Social Rhythm Metric (SRM). IPSRT has been shown to improve patient outcomes, yet many patients struggle to monitor their daily routine or even access the treatment. In this paper we describe how biological characteristics of bipolar disorder can be taken into consideration when developing systems to detect and stabilize mood episodes. We describe the co-design of MoodRhythm, a smartphone and web app, with patients and therapists. It is designed to support patients in tracking their health passively and actively over a long period of time. MoodRhythm uses the phone’s onboard sensors to automatically track sleep and social activity patterns. We report results of a small clinical pilot with experienced IPSRT clinicians and patients with bipolar disorder and finish by describing the role physiological computing could have not just in monitoring psychiatric illnesses according to existing broad categories of diagnosis but in helping radically tailor diagnoses to each individual patient and develop interventions that take advantage of idiosyncratic characteristics of each person’s illness in order to increase patient engagement in and adherence to treatment.
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