Using Digital Phenotyping to Discriminate Unipolar Depression and Bipolar Disorder: Systematic Review.

IF 5.8 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Rongrong Zhong, XiaoHui Wu, Jun Chen, Yiru Fang
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引用次数: 0

Abstract

Background: Differentiating bipolar disorder (BD) from unipolar depression (UD) is essential, as these conditions differ greatly in their progression and treatment approaches. Digital phenotyping, which involves using data from smartphones or other digital devices to assess mental health, has emerged as a promising tool for distinguishing between these two disorders.

Objective: This systematic review aimed to achieve two goals: (1) to summarize the existing literature on the use of digital phenotyping to directly distinguish between UD and BD and (2) to review studies that use digital phenotyping to classify UD, BD, and healthy control (HC) individuals. Furthermore, the review sought to identify gaps in the current research and propose directions for future studies.

Methods: We systematically searched the Scopus, IEEE Xplore, PubMed, Embase, Web of Science, and PsycINFO databases up to March 20, 2025. Studies were included if they used portable or wearable digital tools to directly distinguish between UD and BD, or to classify UD, BD, and HC. Original studies published in English, including both journal and conference papers, were included, while reviews, narrative reviews, systematic reviews, and meta-analyses were excluded. Articles were excluded if the diagnosis was not made through a professional medical evaluation or if they relied on electronic health records or clinical data. For each included study, the following information was extracted: demographic characteristics, diagnostic criteria or psychiatric assessments, details of the technological tools and data types, duration of data collection, data preprocessing methods, selected variables or features, machine learning algorithms or statistical tests, validation, and main findings.

Results: We included 21 studies, of which 11 (52%) focused on directly distinguishing between UD and BD, while 10 (48%) classified UD, BD, and HC. The studies were categorized into 4 groups based on the type of digital tool used: 6 (29%) used smartphone apps, 3 (14%) used wearable devices, 11 (52%) analyzed audiovisual recordings, and 1 (5%) used multimodal technologies. Features such as activity levels from smartphone apps or wearable devices emerged as potential markers for directly distinguishing UD and BD. Patients with BD generally exhibited lower activity levels than those with UD. They also tended to show higher activity in the morning and lower in the evening, while patients with UD showed the opposite pattern. Moreover, speech modalities or the integration of multiple modalities achieved better classification performance across UD, BD, and HC groups, although the specific contributing features remained unclear.

Conclusions: Digital phenotyping shows potential in distinguishing BD from UD, but challenges like data privacy, security concerns, and equitable access must be addressed. Further research should focus on overcoming these challenges and refining digital phenotyping methodologies to ensure broader applicability in clinical settings.

Trial registration: PROSPERO CRD42024624202; https://www.crd.york.ac.uk/PROSPERO/view/CRD42024624202.

使用数字表型区分单相抑郁症和双相情感障碍:系统综述。
背景:区分双相情感障碍(BD)和单极抑郁症(UD)是必要的,因为这两种疾病的进展和治疗方法有很大的不同。数字表现型是一种利用智能手机或其他数字设备的数据来评估心理健康的方法,它已经成为区分这两种疾病的一种很有前途的工具。目的:本系统综述旨在实现两个目标:(1)总结利用数字表型直接区分UD和BD的现有文献;(2)回顾利用数字表型对UD、BD和健康对照(HC)个体进行分类的研究。此外,本综述试图找出目前研究中的差距,并提出未来研究的方向。方法:系统检索截止到2025年3月20日的Scopus、IEEE explore、PubMed、Embase、Web of Science和PsycINFO数据库。如果使用便携式或可穿戴数字工具直接区分UD和BD,或对UD、BD和HC进行分类,则纳入研究。纳入以英文发表的原始研究,包括期刊和会议论文,而综述、叙述性综述、系统综述和元分析被排除在外。如果诊断不是通过专业医疗评估做出的,或者依赖于电子健康记录或临床数据,则排除文章。对于每一项纳入的研究,提取以下信息:人口统计学特征、诊断标准或精神病学评估、技术工具和数据类型的详细信息、数据收集的持续时间、数据预处理方法、选定的变量或特征、机器学习算法或统计测试、验证和主要发现。结果:我们纳入了21项研究,其中11项(52%)侧重于直接区分UD和BD, 10项(48%)将UD、BD和HC分类。根据使用的数字工具类型,这些研究被分为4组:6组(29%)使用智能手机应用程序,3组(14%)使用可穿戴设备,11组(52%)分析视听记录,1组(5%)使用多模式技术。智能手机应用程序或可穿戴设备的活动水平等特征成为直接区分UD和BD的潜在标志。BD患者的活动水平通常低于UD患者。他们也倾向于在早上表现出更高的活动,而在晚上表现出更低的活动,而患有UD的患者则表现出相反的模式。此外,语音模式或多种模式的整合在UD, BD和HC组中获得了更好的分类性能,尽管具体的贡献特征尚不清楚。结论:数字表型显示了区分BD和UD的潜力,但必须解决数据隐私、安全问题和公平获取等挑战。进一步的研究应侧重于克服这些挑战和完善数字表型方法,以确保在临床环境中更广泛的适用性。试验注册:PROSPERO CRD42024624202;https://www.crd.york.ac.uk/PROSPERO/view/CRD42024624202。
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
14.40
自引率
5.40%
发文量
654
审稿时长
1 months
期刊介绍: The Journal of Medical Internet Research (JMIR) is a highly respected publication in the field of health informatics and health services. With a founding date in 1999, JMIR has been a pioneer in the field for over two decades. As a leader in the industry, the journal focuses on digital health, data science, health informatics, and emerging technologies for health, medicine, and biomedical research. It is recognized as a top publication in these disciplines, ranking in the first quartile (Q1) by Impact Factor. Notably, JMIR holds the prestigious position of being ranked #1 on Google Scholar within the "Medical Informatics" discipline.
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