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一种使用基于聚类的加速度计数据分析以及与数字药物摄入数据相关性的睡眠质量指标:算法开发

A Rest Quality Metric Using a Cluster-Based Analysis of Accelerometer Data and Correlation With Digital Medicine Ingestion Data: Algorithm Development.

作者信息

Heidary Zahra, Cochran Jeffrey M, Peters-Strickland Timothy, Knights Jonathan

机构信息

Otsuka Pharmaceutical Development & Commercialization, Inc, Princeton, NJ, United States.

出版信息

JMIR Form Res. 2021 Mar 2;5(3):e17993. doi: 10.2196/17993.

Abstract

BACKGROUND

Adherence to medication regimens and patient rest are two important factors in the well-being of patients with serious mental illness. Both of these behaviors are traditionally difficult to record objectively in unsupervised populations.

OBJECTIVE

A digital medicine system that provides objective time-stamped medication ingestion records was used by patients with serious mental illness. Accelerometer data from the digital medicine system was used to assess rest quality and thus allow for investigation into correlations between rest and medication ingestion.

METHODS

Longest daily rest periods were identified and then evaluated using a k-means clustering algorithm and distance metric to quantify the relative quality of patient rest during these periods. This accelerometer-derived quality-of-rest metric, along with other accepted metrics of rest quality, such as duration and start time of the longest rest periods, was compared to the objective medication ingestion records. Overall medication adherence classification based on rest features was not performed due to a lack of patients with poor adherence in the sample population.

RESULTS

Explorations of the relationship between these rest metrics and ingestion did seem to indicate that patients with poor adherence experienced relatively low quality of rest; however, patients with better adherence did not necessarily exhibit consistent rest quality. This sample did not contain sufficient patients with poor adherence to draw more robust correlations between rest quality and ingestion behavior. The correlation of temporal outliers in these rest metrics with daily outliers in ingestion time was also explored.

CONCLUSIONS

This result demonstrates the ability of digital medicine systems to quantify patient rest quality, providing a framework for further work to expand the participant population, compare these rest metrics to gold-standard sleep measurements, and correlate these digital medicine biomarkers with objective medication ingestion data.

摘要

背景

坚持药物治疗方案和患者休息是严重精神疾病患者健康的两个重要因素。传统上,在无监督人群中很难客观记录这两种行为。

目的

严重精神疾病患者使用了一种提供客观时间戳药物摄入记录的数字医学系统。利用该数字医学系统的加速度计数据评估休息质量,从而研究休息与药物摄入之间的相关性。

方法

确定每日最长休息时间,然后使用k均值聚类算法和距离度量进行评估,以量化患者在这些时间段内休息的相对质量。将这种由加速度计得出的休息质量指标,与其他公认的休息质量指标,如最长休息时间的持续时间和开始时间,与客观药物摄入记录进行比较。由于样本人群中缺乏依从性差的患者,因此未基于休息特征进行总体药物依从性分类。

结果

对这些休息指标与药物摄入之间关系的探索似乎表明,依从性差的患者休息质量相对较低;然而,依从性较好的患者并不一定表现出一致的休息质量。该样本中没有足够的依从性差的患者来得出休息质量与药物摄入行为之间更有力的相关性。还探讨了这些休息指标中的时间异常值与药物摄入时间的每日异常值之间的相关性。

结论

这一结果证明了数字医学系统量化患者休息质量的能力,为进一步开展工作提供了一个框架,以扩大参与人群,将这些休息指标与金标准睡眠测量进行比较,并将这些数字医学生物标志物与客观药物摄入数据相关联。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/38d6/7967235/a8ef17cd2ac9/formative_v5i3e17993_fig1.jpg

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