Using passive sensing data and mobile health to improve psychological treatment for depressed adolescent mothers in rural nepal

Q4 Medicine
Celia Islam, Anubhuti Poudyal, Ashley K. Hagaman, S. Maharjan, Prabin Byanjankar, Ada Thapa, A. Heerden, Br, on A Kohrt
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引用次数: 0

Abstract

In Nepal, postpartum depression affects 1 out of 10 women, and suicide is the leading cause of death among women of reproductive age. Passive sensing technology is a way to collect data on the behaviors and activities of depressed mothers in order to better tailor psychological treatment and improve outcomes for postpartum depression. This study investigated (a) the feasibility and acceptability of wearable digital sensors with adolescent mothers and their families in rural Nepal and (b) the feasibility and utility of implementing this data into a phone based application used by non-specialists to provide personalized psychological treatment. This study used a mobile phone and Bluetooth device to generate passive sensing data on aspects of a mother’s life, such as amount of time spent with and away from the baby, movements and activities both inside and outside of the house, social interactions experienced, and physical activity. We then interviewed both depressed and non-depressed adolescent mothers who used these wearable digital devices and analyzed the ethicality, safety, social acceptability, utility, and feasibility of these technologies. This data was then used to develop Stand Strong, a platform that collects passive sensing data to implement personalized depression treatment. Our results showed that both depressed and non-depressed mothers found it acceptable and feasible to collect passive sensing data. Depressed and non-depressed mothers expressed utility in having knowledge of their own movements and activities, as well as having information about their proximity to and interactions with their child. The non-specialized community counselors expressed utility in using the data collected from the wearable digital sensors to encourage behavioral changes during sessions and also to track the progress of patients between sessions. Barriers to using wearable digital devices included difficulty carrying the phone around throughout the day, privacy concerns, fear of loss or damage to the device, and concern about possible adverse health effects of the device. In summary, it is feasible and acceptable to use passive sensing data to tailor psychological treatment for depressed adolescent mothers in low-resource settings. This research demonstrates the effectiveness of mobile health technology in improving treatment and outcomes for postpartum depression in rural areas.
利用被动传感数据和移动保健改善尼泊尔农村抑郁少女母亲的心理治疗
在尼泊尔,十分之一的妇女患有产后抑郁症,自杀是育龄妇女死亡的主要原因。被动感知技术是一种收集抑郁母亲行为和活动数据的方法,以便更好地定制心理治疗,改善产后抑郁症的结果。本研究调查了(a)可穿戴数字传感器在尼泊尔农村青少年母亲及其家庭中的可行性和可接受性,以及(b)将这些数据应用于非专业人员使用的基于手机的应用程序以提供个性化心理治疗的可行性和实用性。这项研究使用手机和蓝牙设备来生成母亲生活各方面的被动传感数据,例如与婴儿在一起和离开婴儿的时间,室内和室外的运动和活动,经历的社交互动以及身体活动。然后,我们采访了使用这些可穿戴数字设备的抑郁和非抑郁的青春期母亲,并分析了这些技术的伦理性、安全性、社会可接受性、实用性和可行性。这些数据随后被用于开发Stand Strong,这是一个收集被动感知数据以实施个性化抑郁症治疗的平台。我们的研究结果表明,抑郁和非抑郁的母亲都认为收集被动感知数据是可以接受和可行的。抑郁和非抑郁的母亲都表示,了解自己的动作和活动,以及了解自己与孩子的亲密程度和互动,对她们很有帮助。非专业的社区咨询师表示,利用从可穿戴数字传感器收集的数据,鼓励患者在治疗期间改变行为,并在治疗间隙跟踪患者的进展,这些都很有用。使用可穿戴数字设备的障碍包括难以整天随身携带手机、担心隐私、担心设备丢失或损坏,以及担心设备可能对健康产生不利影响。综上所述,在资源匮乏的环境下,利用被动感知数据为抑郁的青春期母亲量身定制心理治疗是可行和可接受的。本研究证明了移动医疗技术在改善农村地区产后抑郁症的治疗和结果方面的有效性。
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来源期刊
Clinical Schizophrenia and Related Psychoses
Clinical Schizophrenia and Related Psychoses Medicine-Psychiatry and Mental Health
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期刊介绍: The vision of the exciting new peer-reviewed quarterly publication Clinical Schizophrenia & Related Psychoses (CS) is to provide psychiatrists and other healthcare professionals with the latest research and advances in the diagnosis and treatment of schizophrenia and related psychoses. CS is a practice-oriented publication focused exclusively on the newest research findings, guidelines, treatment protocols, and clinical trials relevant to patient care.
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