Exploring the Potential of Apple SensorKit and Digital Phenotyping Data as New Digital Biomarkers for Mental Health Research.

Q1 Computer Science
Digital Biomarkers Pub Date : 2023-08-25 eCollection Date: 2023-01-01 DOI:10.1159/000530698
Carsten Langholm, Tobias Kowatsch, Sandra Bucci, Andrea Cipriani, John Torous
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引用次数: 0

Abstract

The use of digital phenotyping continues to expand across all fields of health. By collecting quantitative data in real-time using devices such as smartphones or smartwatches, researchers and clinicians can develop a profile of a wide range of conditions. Smartphones contain sensors that collect data, such as GPS or accelerometer data, which can inform secondary metrics such as time spent at home, location entropy, or even sleep duration. These metrics, when used as digital biomarkers, are not only used to investigate the relationship between behavior and health symptoms but can also be used to support personalized and preventative care. Successful phenotyping requires consistent long-term collection of relevant and high-quality data. In this paper, we present the potential of newly available, for approved research, opt-in SensorKit sensors on iOS devices in improving the accuracy of digital phenotyping. We collected opt-in sensor data over 1 week from a single person with depression using the open-source mindLAMP app developed by the Division of Digital Psychiatry at Beth Israel Deaconess Medical Center. Five sensors from SensorKit were included. The names of the sensors, as listed in official documentation, include the following: phone usage, messages usage, visits, device usage, and ambient light. We compared data from these five new sensors from SensorKit to our current digital phenotyping data collection sensors to assess similarity and differences in both raw and processed data. We present sample data from all five of these new sensors. We also present sample data from current digital phenotyping sources and compare these data to SensorKit sensors when applicable. SensorKit offers great potential for health research. Many SensorKit sensors improve upon previously accessible features and produce data that appears clinically relevant. SensorKit sensors will likely play a substantial role in digital phenotyping. However, using these data requires advanced health app infrastructure and the ability to securely store high-frequency data.

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探索Apple SensorKit和数字表型数据作为心理健康研究新数字生物标志物的潜力。
数字表型的使用继续扩展到卫生的所有领域。通过使用智能手机或智能手表等设备实时收集定量数据,研究人员和临床医生可以了解各种情况。智能手机包含收集数据的传感器,如GPS或加速度计数据,这些数据可以告知次要指标,如在家的时间、位置熵,甚至睡眠时间。这些指标用作数字生物标志物时,不仅用于研究行为和健康症状之间的关系,还可用于支持个性化和预防性护理。成功的表型分析需要长期收集相关的高质量数据。在这篇论文中,我们展示了新获得的、用于批准研究的、在iOS设备上选择SensorKit传感器在提高数字表型准确性方面的潜力。我们使用贝斯以色列女执事医疗中心数字精神病学部门开发的开源mindLAMP应用程序,从一名抑郁症患者身上收集了一周多的选择加入传感器数据。包括SensorKit的五个传感器。官方文档中列出的传感器名称包括以下内容:电话使用、信息使用、访问、设备使用和环境光照。我们将SensorKit的这五个新传感器的数据与我们目前的数字表型数据收集传感器进行了比较,以评估原始数据和处理数据的相似性和差异性。我们展示了所有五个新传感器的样本数据。我们还提供了来自当前数字表型来源的样本数据,并在适用时将这些数据与SensorKit传感器进行比较。SensorKit为健康研究提供了巨大的潜力。许多SensorKit传感器改进了以前可访问的功能,并产生了与临床相关的数据。SensorKit传感器可能在数字表型中发挥重要作用。然而,使用这些数据需要先进的健康应用程序基础设施和安全存储高频数据的能力。
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
Digital Biomarkers
Digital Biomarkers Medicine-Medicine (miscellaneous)
CiteScore
10.60
自引率
0.00%
发文量
12
审稿时长
23 weeks
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