Literature DB >> 26958267

A Graph Based Methodology for Temporal Signature Identification from HER.

Fei Wang1, Chuanren Liu2, Yajuan Wang3, Jianying Hu3, Guoqiang Yu4.   

Abstract

Data driven technology is believed to be a promising technique for transforming the current status of healthcare. Electronic Health Records (EHR) is one of the main carriers for conducting the data driven healthcare research, where the goal is to derive insights from healthcare data and utilize such insights to improve the quality of care delivery. Due to the progression nature of human disease, one important aspect for analyzing healthcare data is temporality, which suggests the temporal relationships among different healthcare events and how their values evolve over time. Sequential pattern mining is a popular tool to extract time-invariant patterns from discrete sequences and has been applied in analyzing EHR before. However, due to the complexity of EHR, those approaches usually suffers from the pattern explosion problem, which means that a huge number of patterns will be detected with improper setting of the support threshold. To address this challenge, in this paper, we develop a novel representation, namely the temporal graph, for event sequences like EHR, wherein the nodes are medical events and the edges indicate the temporal relationships among those events in patient EHRs. Based on the temporal graph representation, we further develop an approach for temporal signature identification to identify the most significant and interpretable graph bases as temporal signatures, and the expressing coefficients can be treated as the embeddings of the patients in such temporal signature space. Our temporal signature identification framework is also flexible to incorporate semi-supervised/supervised information. We validate our framework on two real-world tasks. One is predicting the onset risk of heart failure. The other is predicting the risk of heart failure related hospitalization for patients with COPD pre-condition. Our results show that the prediction performance in both tasks can be improved by the proposed approaches.

Entities:  

Year:  2015        PMID: 26958267      PMCID: PMC4765704     

Source DB:  PubMed          Journal:  AMIA Annu Symp Proc        ISSN: 1559-4076


  12 in total

Review 1.  Temporal abstraction in intelligent clinical data analysis: a survey.

Authors:  Michael Stacey; Carolyn McGregor
Journal:  Artif Intell Med       Date:  2006-09-29       Impact factor: 5.326

2.  A framework for mining signatures from event sequences and its applications in healthcare data.

Authors:  Fei Wang; Noah Lee; Jianying Hu; Jimeng Sun; Shahram Ebadollahi; Andrew F Laine
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2013-02       Impact factor: 6.226

3.  Medical temporal-knowledge discovery via temporal abstraction.

Authors:  Robert Moskovitch; Yuval Shahar
Journal:  AMIA Annu Symp Proc       Date:  2009-11-14

4.  The progression from hypertension to congestive heart failure.

Authors:  D Levy; M G Larson; R S Vasan; W B Kannel; K K Ho
Journal:  JAMA       Date:  1996 May 22-29       Impact factor: 56.272

Review 5.  Nutrition, metabolism, and the complex pathophysiology of cachexia in chronic heart failure.

Authors:  Stephan von Haehling; Wolfram Doehner; Stefan D Anker
Journal:  Cardiovasc Res       Date:  2006-09-01       Impact factor: 10.787

Review 6.  Mining electronic health records: towards better research applications and clinical care.

Authors:  Peter B Jensen; Lars J Jensen; Søren Brunak
Journal:  Nat Rev Genet       Date:  2012-05-02       Impact factor: 53.242

Review 7.  Arrhythmia in heart failure: role of mechanically induced changes in electrophysiology.

Authors:  J W Dean; M J Lab
Journal:  Lancet       Date:  1989-06-10       Impact factor: 79.321

8.  Knowledge-based temporal abstraction in clinical domains.

Authors:  Y Shahar; M A Musen
Journal:  Artif Intell Med       Date:  1996-07       Impact factor: 5.326

9.  Computational phenotype discovery using unsupervised feature learning over noisy, sparse, and irregular clinical data.

Authors:  Thomas A Lasko; Joshua C Denny; Mia A Levy
Journal:  PLoS One       Date:  2013-06-24       Impact factor: 3.240

10.  Next-generation phenotyping of electronic health records.

Authors:  George Hripcsak; David J Albers
Journal:  J Am Med Inform Assoc       Date:  2012-09-06       Impact factor: 4.497

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  1 in total

1.  Integrated Machine Learning Approaches for Predicting Ischemic Stroke and Thromboembolism in Atrial Fibrillation.

Authors:  Xiang Li; Haifeng Liu; Xin Du; Ping Zhang; Gang Hu; Guotong Xie; Shijing Guo; Meilin Xu; Xiaoping Xie
Journal:  AMIA Annu Symp Proc       Date:  2017-02-10
  1 in total

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