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Textual analysis and visualization of research trends in data mining for electronic health records

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Indexed by:期刊论文

Date of Publication:2017-12-01

Journal:HEALTH POLICY AND TECHNOLOGY

Included Journals:SSCI

Volume:6

Issue:4

Page Number:389-400

ISSN No.:2211-8837

Key Words:Medical data mining; Topic discovery; Topic evolution; Visualization; Research framework

Abstract:Objectives: Medical data mining is one of the most widely used techniques for discovering latent knowledge from databases, which in turn contributes to clinical decisions. In the past decade, medical data mining has advanced rapidly. The objective of this study is to analyse research trends and explore the general research framework in data mining for electronic health records (EHRs).
   Methods: We first conducted a literature retrieval in PubMed, the Web of Science (WOS) core collection, and the Association for Computing Machinery (ACM) digital library for peer-reviewed records (n = 2516) related to data mining for EHRs from 2000 to 2016. Then, we adopted the Latent Dirichlet Allocation (LDA) and Topics over Time (TOT) models to extract topics and analyse topic evolution trends in the retrieved records. The former mainly analysed topic generation, division, mergers and extinction, while the latter analysed the evolution of topic intensity over time.
   Results: We extracted the important topics and analysed topic evolution. We present the general research framework of data mining for EHRs by combining the topic co-occurrence relations and domain knowledge, including the data, methods, knowledge, and decision levels.
   Conclusions: Our work can provide high-level insight for scholars in this emerging field and guide their choices of medical data mining techniques in healthcare knowledge discovery, medical decision support, and public health management. (C) 2017 Fellowship of Postgraduate Medicine. Published by Elsevier Ltd. All rights reserved.

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