利用低秩矩阵补全技术在线恢复生命体征数据流中的缺失值

Shiming Yang, K. Kalpakis, C. Mackenzie, L. Stansbury, D. Stein, T. Scalea, P. Hu
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引用次数: 16

摘要

连续的、自动化的、电子的患者生命体征数据对于医生评估创伤性脑损伤(TBI)患者的生理状态和及时做出治疗干预决策非常重要。然而,医疗数据流中的缺失值阻碍了许多标准统计或机器学习算法的应用,并导致失去一些临床重要性的事件。在本文中,我们提出了一种新的方法来填补缺失值在生命体征数据流。我们从生命体征数据流中构造了Hankel矩阵序列,发现这些矩阵具有低秩,并利用可压缩感知中的低秩矩阵补全方法来填补缺失数据。我们证明,我们的方法总是大大优于其他流行的填充方法,如k-近邻和期望最大化。此外,我们表明我们的方法恢复了数千个模拟丢失的颅内压数据,这是指导临床干预和监测创伤性脑损伤的关键测量流。
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Online Recovery of Missing Values in Vital Signs Data Streams Using Low-Rank Matrix Completion
Continuous, automated, electronic patient vital signs data are important to physicians in evaluating traumatic brain injury (TBI) patients' physiological status and reaching timely decisions for therapeutic interventions. However, missing values in the medical data streams hinder applying many standard statistical or machine learning algorithms and result in losing some episodes of clinical importance. In this paper, we present a novel approach to filling missing values in streams of vital signs data. We construct sequences of Hankel matrices from vital signs data streams, find that these matrices exhibit low-rank, and utilize low-rank matrix completion methods from compressible sensing to fill in the missing data. We demonstrate that our approach always substantially outperforms other popular fill-in methods, like k-nearest-neighbors and expectation maximization. Further, we show that our approach recovers thousands of simulated missing data for intracranial pressure, a critical stream of measurements for guiding clinical interventions and monitoring traumatic brain injuries.
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