Forecasting adverse surgical events using self-supervised transfer learning for physiological signals

被引:31
作者
Chen, Hugh [1 ]
Lundberg, Scott M. [2 ]
Erion, Gabriel [1 ,3 ]
Kim, Jerry H. [4 ]
Lee, Su-In [1 ]
机构
[1] Univ Washington, Paul G Allen Sch Comp Sci & Engn, 185 E Stevens Way NE, Seattle, WA 98195 USA
[2] Microsoft Res, 14820 NE 36th St, Redmond, WA 98052 USA
[3] Univ Washington, Med Scientist Training Program, 1959 NE Pacific St, Seattle, WA 98195 USA
[4] Univ Washington, Global Innovat Exchange, 12280 NE Dist Wy, Bellevue, WA 98005 USA
基金
美国国家科学基金会; 美国国家卫生研究院;
关键词
CONVOLUTIONAL NEURAL-NETWORKS; PERIOPERATIVE HYPERTENSION; TIDAL VOLUME; HEART-RATE; ANESTHESIA; HYPOXIA; RISK; HYPOTENSION; HYPOCAPNIA; HYPOXEMIA;
D O I
10.1038/s41746-021-00536-y
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Hundreds of millions of surgical procedures take place annually across the world, which generate a prevalent type of electronic health record (EHR) data comprising time series physiological signals. Here, we present a transferable embedding method (i.e., a method to transform time series signals into input features for predictive machine learning models) named PHASE (PHysiologicAl Signal Embeddings) that enables us to more accurately forecast adverse surgical outcomes based on physiological signals. We evaluate PHASE on minute-by-minute EHR data of more than 50,000 surgeries from two operating room (OR) datasets and patient stays in an intensive care unit (ICU) dataset. PHASE outperforms other state-of-the-art approaches, such as long-short term memory networks trained on raw data and gradient boosted trees trained on handcrafted features, in predicting six distinct outcomes: hypoxemia, hypocapnia, hypotension, hypertension, phenylephrine, and epinephrine. In a transfer learning setting where we train embedding models in one dataset then embed signals and predict adverse events in unseen data, PHASE achieves significantly higher prediction accuracy at lower computational cost compared to conventional approaches. Finally, given the importance of understanding models in clinical applications we demonstrate that PHASE is explainable and validate our predictive models using local feature attribution methods.
引用
收藏
页数:13
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