从异构患者数据中学习深度表征用于预测诊断

Chongyu Zhou, Yao Jia, M. Motani, J. Chew
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引用次数: 17

摘要

预测性诊断对患者和医院都有好处。限制基于机器学习的预测诊断有效性的主要挑战包括缺乏有效的特征选择方法和测量的患者数据(例如生命体征)的异质性。本文提出了一种基于深度学习的、适用于异构数据的高效特征选择方案DLFS。DLFS本质上是无监督的,可以从患者数据中自动学习紧凑的表示,以进行有效的预测。本文在利用DLFS进行特征选择的预测诊断框架中,研究了预测患者住院时间的具体问题。从新加坡国立大学卫生系统(NUHS)的肺炎数据库中收集真实患者数据,以验证DLFS的有效性。通过在真实患者数据上运行实验,并与其他几种常用的特征选择方法进行比较,我们证明了所提出的DLFS方案的优势。
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Learning Deep Representations from Heterogeneous Patient Data for Predictive Diagnosis
Predictive diagnosis benefits both patients and hospitals. Major challenges limiting the effectiveness of machine learning based predictive diagnosis include the lack of efficient feature selection methods and the heterogeneity of measured patient data (e.g., vital signs). In this paper, we propose DLFS, an efficient feature selection scheme based on deep learning that is applicable for heterogeneous data. DLFS is unsupervised in nature and can learn compact representations from patient data automatically for efficient prediction. In this paper, the specific problem of predicting the patients' length of stay in the hospital is investigated in a predictive diagnosis framework which uses DLFS for feature selection. Real patient data from the pneumonia database of the National University Health System (NUHS) in Singapore are collected to verify the effectiveness of DLFS. By running experiments on real-world patient data and comparing with several other commonly used feature selection methods, we demonstrate the advantage of the proposed DLFS scheme.
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