用于远程医疗中多源混频数据融合的新型稀疏线性混合模型

IF 1.5 Q3 HEALTH CARE SCIENCES & SERVICES
Wesam Alramadeen, Yu Ding, Carlos Costa, Bing Si
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引用次数: 0

摘要

数字健康和远程监控为监测、管理和改善人类健康收集了大量信息。多源混合频率的健康数据由于具有许多具有挑战性的特性,使现有统计和机器学习模型的建模能力不堪重负。虽然大健康数据的预测分析在远程监控中发挥着重要作用,但目前还缺乏能从多源混合频率数据中自动预测患者健康状况(如疾病严重程度指标(DSI))的严谨预测模型。睡眠障碍是一种普遍存在的心脏综合征,其特点是睡眠时呼吸模式异常。虽然可穿戴设备可在家中进行睡眠研究,但手动评分生成 DSI 的过程仍是自动监测和诊断睡眠障碍的瓶颈。为了解决从睡眠障碍的高维多源混合频率数据中精确预测 DSI 所面临的多重挑战,我们提出了一种稀疏线性混合模型,该模型将修正的 Cholesky 分解与组套索惩罚相结合,以实现固定效应和随机效应的联合组选择。我们开发了一种新颖的期望最大化(EM)算法,该算法与高效的最大化算法(MM)相结合,用于对所提出的带有组变量选择的稀疏线性混合模型进行模型估计。将所提出的方法应用于用于远程监测和诊断睡眠障碍的上海人类健康调查数据,发现一些重要的特征组与之前的睡眠障碍医学研究相一致。所提出的方法还优于一些基准方法,预测准确率最高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Sparse Linear Mixed Model for Multi-Source Mixed-Frequency Data Fusion in Telemedicine.

Digital health and telemonitoring have resulted in a wealth of information to be collected to monitor, manage, and improve human health. The multi-source mixed-frequency health data overwhelm the modeling capacity of existing statistical and machine learning models, due to many challenging properties. Although predictive analytics for big health data plays an important role in telemonitoring, there is a lack of rigorous prediction model that can automatically predicts patients' health conditions, e.g., Disease Severity Indicators (DSIs), from multi-source mixed-frequency data. Sleep disorder is a prevalent cardiac syndrome that is characterized by abnormal respiratory patterns during sleep. Although wearable devices are available to administrate sleep studies at home, the manual scoring process to generate the DSI remains a bottleneck in automated monitoring and diagnosis of sleep disorder. To address the multi-fold challenges for precise prediction of the DSI from high-dimensional multi-source mixed-frequency data in sleep disorder, we propose a sparse linear mixed model that combines the modified Cholesky decomposition with group lasso penalties to enable joint group selection of fixed effects and random effects. A novel Expectation Maximization (EM) algorithm integrated with an efficient Majorization Maximization (MM) algorithm is developed for model estimation of the proposed sparse linear mixed model with group variable selection. The proposed method was applied to the SHHS data for telemonitoring and diagnosis of sleep disorder and found that a few significant feature groups that are consistent with prior medical studies on sleep disorder. The proposed method also outperformed a few benchmark methods with the highest prediction accuracy.

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来源期刊
IISE Transactions on Healthcare Systems Engineering
IISE Transactions on Healthcare Systems Engineering Social Sciences-Safety Research
CiteScore
3.10
自引率
0.00%
发文量
19
期刊介绍: IISE Transactions on Healthcare Systems Engineering aims to foster the healthcare systems community by publishing high quality papers that have a strong methodological focus and direct applicability to healthcare systems. Published quarterly, the journal supports research that explores: · Healthcare Operations Management · Medical Decision Making · Socio-Technical Systems Analysis related to healthcare · Quality Engineering · Healthcare Informatics · Healthcare Policy We are looking forward to accepting submissions that document the development and use of industrial and systems engineering tools and techniques including: · Healthcare operations research · Healthcare statistics · Healthcare information systems · Healthcare work measurement · Human factors/ergonomics applied to healthcare systems Research that explores the integration of these tools and techniques with those from other engineering and medical disciplines are also featured. We encourage the submission of clinical notes, or practice notes, to show the impact of contributions that will be published. We also encourage authors to collect an impact statement from their clinical partners to show the impact of research in the clinical practices.
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