Bidargaddi Niranjan, Leibbrandt Richard, Paget Tamara L, Verjans Johan, Looi Jeffrey Cl, Lipschitz Jessica
Digital Health Research Lab, College of Medicine and Public Health, Flinders Health and Medical Research Institute, Flinders University, Adelaide, South Australia, Australia.
College of Science and Engineering, Flinders University, Adelaide, South Australia, Australia.
Digit Health. 2024 Jul 25;10:20552076241260414. doi: 10.1177/20552076241260414. eCollection 2024 Jan-Dec.
Mental illness remains a major global health challenge largely due to the absence of definitive biomarkers applicable to diagnostics and care processes. Although remote sensing technologies, embedded in devices such as smartphones and wearables, offer a promising avenue for improved mental health assessments, their clinical integration has been slow.
This scoping review, following preferred reporting items for systematic reviews and meta-analyses guidelines, explores validation studies of remote sensing in clinical mental health populations, aiming to identify critical factors for clinical translation.
Comprehensive searches were conducted in six databases. The analysis, using narrative synthesis, examined clinical and socio-demographic characteristics of the populations studied, sensing purposes, temporal considerations and reference mental health assessments used for validation.
The narrative synthesis of 50 included studies indicates that ten different sensor types have been studied for tracking and diagnosing mental illnesses, primarily focusing on physical activity and sleep patterns. There were many variations in the sensor methodologies used that may affect data quality and participant burden. Observation durations, and thus data resolution, varied by patient diagnosis. Currently, reference assessments predominantly rely on deficit focussed self-reports, and socio-demographic information is underreported, therefore representativeness of the general population is uncertain.
To fully harness the potential of remote sensing in mental health, issues such as reliance on self-reported assessments, and lack of socio-demographic context pertaining to generalizability need to be addressed. Striking a balance between resolution, data quality, and participant burden whilst clearly reporting limitations, will ensure effective technology use. The scant reporting on participants' socio-demographic data suggests a knowledge gap in understanding the effectiveness of passive sensing techniques in disadvantaged populations.
精神疾病仍然是一项重大的全球健康挑战,这主要是由于缺乏适用于诊断和护理过程的确定性生物标志物。尽管诸如智能手机和可穿戴设备中嵌入的遥感技术为改善心理健康评估提供了一条有前景的途径,但其临床整合进展缓慢。
本范围综述遵循系统评价和荟萃分析的首选报告项目指南,探讨临床心理健康人群中遥感技术的验证研究,旨在确定临床转化的关键因素。
在六个数据库中进行了全面检索。采用叙述性综合分析,研究了所研究人群的临床和社会人口学特征、传感目的、时间因素以及用于验证的参考心理健康评估。
对50项纳入研究的叙述性综合分析表明,已对十种不同的传感器类型进行了研究,以追踪和诊断精神疾病,主要侧重于身体活动和睡眠模式。所使用的传感器方法存在许多差异,这可能会影响数据质量和参与者负担。观察持续时间以及数据分辨率因患者诊断而异。目前,参考评估主要依赖于以缺陷为重点的自我报告,社会人口学信息报告不足,因此普通人群的代表性尚不确定。
为了充分发挥遥感技术在心理健康方面的潜力,需要解决诸如依赖自我报告评估以及缺乏与普遍性相关的社会人口学背景等问题。在分辨率、数据质量和参与者负担之间取得平衡,同时明确报告局限性,将确保技术的有效使用。关于参与者社会人口学数据的报告稀少,这表明在理解被动传感技术在弱势群体中的有效性方面存在知识差距。