KIT-LSTM:用于临床风险持续预测的知识导向时间感知LSTM。

Lucas Jing Liu, Victor Ortiz-Soriano, Javier A Neyra, Jin Chen
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引用次数: 0

摘要

时间电子健康记录(EHR)数据的快速积累和深度学习的最新进展表明,利用人工智能精确、及时地预测患者的风险具有很大的潜力。然而,现有的风险预测方法大多忽略了现实电子病历数据中复杂的异步和不规则问题。本文提出了一种新的方法,称为知识引导的时间感知LSTM (KIT-LSTM),用于使用电子病历进行连续死亡率预测。KIT-LSTM对LSTM进行了扩展,增加了两个时间感知门和一个知识感知门,以更好地建模EHR并解释结果。对急性肾损伤透析患者(AKI-D)的真实数据进行的实验表明,KIT-LSTM在预测患者风险轨迹和模型解释方面比最先进的方法表现更好。KIT-LSTM可以更好地支持临床医生的及时决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
KIT-LSTM: Knowledge-guided Time-aware LSTM for Continuous Clinical Risk Prediction.

Rapid accumulation of temporal Electronic Health Record (EHR) data and recent advances in deep learning have shown high potential in precisely and timely predicting patients' risks using AI. However, most existing risk prediction approaches ignore the complex asynchronous and irregular problems in real-world EHR data. This paper proposes a novel approach called Knowledge-guIded Time-aware LSTM (KIT-LSTM) for continuous mortality predictions using EHR. KIT-LSTM extends LSTM with two time-aware gates and a knowledge-aware gate to better model EHR and interprets results. Experiments on real-world data for patients with acute kidney injury with dialysis (AKI-D) demonstrate that KIT-LSTM performs better than the state-of-the-art methods for predicting patients' risk trajectories and model interpretation. KIT-LSTM can better support timely decision-making for clinicians.

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