Literature DB >> 31037221

Interpretable Representation Learning for Healthcare via Capturing Disease Progression through Time.

Tian Bai1, Brian L Egleston2, Shanshan Zhang3, Slobodan Vucetic4.   

Abstract

Various deep learning models have recently been applied to predictive modeling of Electronic Health Records (EHR). In medical claims data, which is a particular type of EHR data, each patient is represented as a sequence of temporally ordered irregularly sampled visits to health providers, where each visit is recorded as an unordered set of medical codes specifying patient's diagnosis and treatment provided during the visit. Based on the observation that different patient conditions have different temporal progression patterns, in this paper we propose a novel interpretable deep learning model, called Timeline. The main novelty of Timeline is that it has a mechanism that learns time decay factors for every medical code. This allows the Timeline to learn that chronic conditions have a longer lasting impact on future visits than acute conditions. Timeline also has an attention mechanism that improves vector embeddings of visits. By analyzing the attention weights and disease progression functions of Timeline, it is possible to interpret the predictions and understand how risks of future visits change over time. We evaluated Timeline on two large-scale real world data sets. The specific task was to predict what is the primary diagnosis category for the next hospital visit given previous visits. Our results show that Timeline has higher accuracy than the state of the art deep learning models based on RNN. In addition, we demonstrate that time decay factors and attentions learned by Timeline are in accord with the medical knowledge and that Timeline can provide a useful insight into its predictions.

Entities:  

Keywords:  Electronic Health Records; attention model; deep learning; healthcare

Year:  2018        PMID: 31037221      PMCID: PMC6484836          DOI: 10.1145/3219819.3219904

Source DB:  PubMed          Journal:  KDD        ISSN: 2154-817X


  9 in total

1.  Privacy-preserving Sequential Pattern Mining in distributed EHRs for Predicting Cardiovascular Disease.

Authors:  Eric W Lee; Li Xiong; Vicki Stover Hertzberg; Roy L Simpson; Joyce C Ho
Journal:  AMIA Jt Summits Transl Sci Proc       Date:  2021-05-17

2.  Medical Concept Representation Learning from Multi-source Data.

Authors:  Tian Bai; Brian L Egleston; Richard Bleicher; Slobodan Vucetic
Journal:  IJCAI (U S)       Date:  2019-07

3.  Bidirectional Representation Learning From Transformers Using Multimodal Electronic Health Record Data to Predict Depression.

Authors:  Yiwen Meng; William Speier; Michael K Ong; Corey W Arnold
Journal:  IEEE J Biomed Health Inform       Date:  2021-08-05       Impact factor: 7.021

4.  Ontology-based venous thromboembolism risk assessment model developing from medical records.

Authors:  Yuqing Yang; Xin Wang; Yu Huang; Ning Chen; Juhong Shi; Ting Chen
Journal:  BMC Med Inform Decis Mak       Date:  2019-08-08       Impact factor: 2.796

5.  Multi-layer Representation Learning and Its Application to Electronic Health Records.

Authors:  Shan Yang; Xiangwei Zheng; Cun Ji; Xuanchi Chen
Journal:  Neural Process Lett       Date:  2021-02-18       Impact factor: 2.908

Review 6.  Research and Application of Artificial Intelligence Based on Electronic Health Records of Patients With Cancer: Systematic Review.

Authors:  Xinyu Yang; Dongmei Mu; Hao Peng; Hua Li; Ying Wang; Ping Wang; Yue Wang; Siqi Han
Journal:  JMIR Med Inform       Date:  2022-04-20

7.  HCET: Hierarchical Clinical Embedding With Topic Modeling on Electronic Health Records for Predicting Future Depression.

Authors:  Yiwen Meng; William Speier; Michael Ong; Corey W Arnold
Journal:  IEEE J Biomed Health Inform       Date:  2021-04-06       Impact factor: 5.772

8.  Interpretable disease prediction using heterogeneous patient records with self-attentive fusion encoder.

Authors:  Heeyoung Kwak; Jooyoung Chang; Byeongjin Choe; Sangmin Park; Kyomin Jung
Journal:  J Am Med Inform Assoc       Date:  2021-09-18       Impact factor: 7.942

9.  Health Care Analytics With Time-Invariant and Time-Variant Feature Importance to Predict Hospital-Acquired Acute Kidney Injury: Observational Longitudinal Study.

Authors:  Horng-Ruey Chua; Kaiping Zheng; Anantharaman Vathsala; Kee-Yuan Ngiam; Hui-Kim Yap; Liangjian Lu; Ho-Yee Tiong; Amartya Mukhopadhyay; Graeme MacLaren; Shir-Lynn Lim; K Akalya; Beng-Chin Ooi
Journal:  J Med Internet Res       Date:  2021-12-24       Impact factor: 5.428

  9 in total

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