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首页> 外文期刊>JMIR mHealth and uHealth >Combining Continuous Smartphone Native Sensors Data Capture and Unsupervised Data Mining Techniques for Behavioral Changes Detection: A Case Series of the Evidence-Based Behavior (eB2) Study
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Combining Continuous Smartphone Native Sensors Data Capture and Unsupervised Data Mining Techniques for Behavioral Changes Detection: A Case Series of the Evidence-Based Behavior (eB2) Study

机译:结合连续智能手机本机传感器数据捕获和无监督数据挖掘技术进行行为变化检测:基于证据的行为(eB2)研究的案例系列

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Background The emergence of smartphones, wearable sensor technologies, and smart homes allows the nonintrusive collection of activity data. Thus, health-related events, such as activities of daily living (ADLs; eg, mobility patterns, feeding, sleeping, ...) can be captured without patients’ active participation. We designed a system to detect changes in the mobility patterns based on the smartphone’s native sensors and advanced machine learning and signal processing techniques. Objective The principal objective of this work is to assess the feasibility of detecting mobility pattern changes in a sample of outpatients with depression using the smartphone’s sensors. The proposed method processed the data acquired by the smartphone using an unsupervised detection technique. Methods In this study, 38 outpatients from the Hospital Fundación Jiménez Díaz Psychiatry Department (Madrid, Spain) participated. The Evidence-Based Behavior (eB2) app was downloaded by patients on the day of recruitment and configured with the assistance of a physician. The app captured the following data: inertial sensors, physical activity, phone calls and message logs, app usage, nearby Bluetooth and Wi-Fi connections, and location. We applied a change-point detection technique to location data on a sample of 9 outpatients recruited between April 6, 2017 and December 14, 2017. The change-point detection was based only on location information, but the eB2 platform allowed for an easy integration of additional data. The app remained running in the background on patients’ smartphone during the study participation. Results The principal outcome measure was the identification of mobility pattern changes based on an unsupervised detection technique applied to the smartphone’s native sensors data. Here, results from 5 patients’ records are presented as a case series. The eB2 system detected specific mobility pattern changes according to the patients’ activity, which may be used as indicators of behavioral and clinical state changes. Conclusions The proposed technique could automatically detect changes in the mobility patterns of outpatients who took part in this study. Assuming these mobility pattern changes correlated with behavioral changes, we have developed a technique that may identify possible relapses or clinical changes. Nevertheless, it is important to point out that the detected changes are not always related to relapses and that some clinical changes cannot be detected by the proposed method.
机译:背景技术智能手机,可穿戴传感器技术和智能家居的出现允许以非侵入方式收集活动数据。因此,无需患者的积极参与就可以捕获与健康有关的事件,例如日常生活(ADL;例如,活动方式,进食,睡觉等)。我们设计了一种基于智能手机的本地传感器以及先进的机器学习和信号处理技术来检测出行方式变化的系统。目的这项工作的主要目的是评估使用智能手机的传感器检测抑郁症门诊患者样本中移动模式变化的可行性。所提出的方法使用无监督检测技术处理了智能手机获取的数据。方法在本研究中,来自西班牙马德里基米斯·迪亚兹基金会精神病学部门的38名门诊患者参加了研究。招募当天,患者下载了基于证据的行为(eB2)应用程序,并在医生的协助下进行了配置。该应用程序捕获了以下数据:惯性传感器,身体活动,电话和消息日志,应用程序使用情况,附近的蓝牙和Wi-Fi连接以及位置。我们将变更点检测技术应用于2017年4月6日至2017年12月14日招募的9名门诊患者样本的位置数据。变更点检测仅基于位置信息,但是eB2平台允许轻松集成其他数据。在参加研究期间,该应用程序仍在患者智能手机的后台运行。结果主要结果指标是基于应用于智能手机的本机传感器数据的无监督检测技术,识别出移动模式的变化。在这里,来自5位患者的记录的结果以病例系列的形式呈现。 eB2系统根据患者的活动检测到特定的流动性模式变化,可用作行为和临床状态变化的指标。结论所提出的技术可以自动检测参与这项研究的门诊病人的出行方式的变化。假设这些活动模式的改变与行为改变相关,我们开发了一种可以识别可能的复发或临床改变的技术。然而,必须指出的是,检测到的变化并不总是与复发有关,并且某些临床变化无法通过建议的方法检测到。

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