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Finding Important Terms for Patients in Their Electronic Health Records: A Learning-to-Rank Approach Using Expert Annotations.

作者信息

Chen Jinying, Zheng Jiaping, Yu Hong

机构信息

Department of Quantitative Health Sciences, University of Massachusetts Medical School, Worcester, MA, United States.

School of Computer Science, University of Massachusetts, Amherst, MA, United States.

出版信息

JMIR Med Inform. 2016 Nov 30;4(4):e40. doi: 10.2196/medinform.6373.


DOI:10.2196/medinform.6373
PMID:27903489
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5156821/
Abstract

BACKGROUND: Many health organizations allow patients to access their own electronic health record (EHR) notes through online patient portals as a way to enhance patient-centered care. However, EHR notes are typically long and contain abundant medical jargon that can be difficult for patients to understand. In addition, many medical terms in patients' notes are not directly related to their health care needs. One way to help patients better comprehend their own notes is to reduce information overload and help them focus on medical terms that matter most to them. Interventions can then be developed by giving them targeted education to improve their EHR comprehension and the quality of care. OBJECTIVE: We aimed to develop a supervised natural language processing (NLP) system called Finding impOrtant medical Concepts most Useful to patientS (FOCUS) that automatically identifies and ranks medical terms in EHR notes based on their importance to the patients. METHODS: First, we built an expert-annotated corpus. For each EHR note, 2 physicians independently identified medical terms important to the patient. Using the physicians' agreement as the gold standard, we developed and evaluated FOCUS. FOCUS first identifies candidate terms from each EHR note using MetaMap and then ranks the terms using a support vector machine-based learn-to-rank algorithm. We explored rich learning features, including distributed word representation, Unified Medical Language System semantic type, topic features, and features derived from consumer health vocabulary. We compared FOCUS with 2 strong baseline NLP systems. RESULTS: Physicians annotated 90 EHR notes and identified a mean of 9 (SD 5) important terms per note. The Cohen's kappa annotation agreement was .51. The 10-fold cross-validation results show that FOCUS achieved an area under the receiver operating characteristic curve (AUC-ROC) of 0.940 for ranking candidate terms from EHR notes to identify important terms. When including term identification, the performance of FOCUS for identifying important terms from EHR notes was 0.866 AUC-ROC. Both performance scores significantly exceeded the corresponding baseline system scores (P<.001). Rich learning features contributed to FOCUS's performance substantially. CONCLUSIONS: FOCUS can automatically rank terms from EHR notes based on their importance to patients. It may help develop future interventions that improve quality of care.

摘要
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f1fe/5156821/01b7188226fa/medinform_v4i4e40_fig5.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f1fe/5156821/dfbbc66d284a/medinform_v4i4e40_fig1.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f1fe/5156821/a03e51065b4d/medinform_v4i4e40_fig2.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f1fe/5156821/8ec281e0e7c2/medinform_v4i4e40_fig3.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f1fe/5156821/ca2bfca3e221/medinform_v4i4e40_fig4.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f1fe/5156821/01b7188226fa/medinform_v4i4e40_fig5.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f1fe/5156821/dfbbc66d284a/medinform_v4i4e40_fig1.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f1fe/5156821/a03e51065b4d/medinform_v4i4e40_fig2.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f1fe/5156821/8ec281e0e7c2/medinform_v4i4e40_fig3.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f1fe/5156821/ca2bfca3e221/medinform_v4i4e40_fig4.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f1fe/5156821/01b7188226fa/medinform_v4i4e40_fig5.jpg

相似文献

[1]
Finding Important Terms for Patients in Their Electronic Health Records: A Learning-to-Rank Approach Using Expert Annotations.

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引用本文的文献

[1]
Natural language processing algorithms for mapping clinical text fragments onto ontology concepts: a systematic review and recommendations for future studies.

J Biomed Semantics. 2020-11-16

[2]
Detecting Hypoglycemia Incidents Reported in Patients' Secure Messages: Using Cost-Sensitive Learning and Oversampling to Reduce Data Imbalance.

J Med Internet Res. 2019-3-11

[3]
Ranking Medical Terms to Support Expansion of Lay Language Resources for Patient Comprehension of Electronic Health Record Notes: Adapted Distant Supervision Approach.

JMIR Med Inform. 2017-10-31

[4]
Unsupervised ensemble ranking of terms in electronic health record notes based on their importance to patients.

J Biomed Inform. 2017-4

本文引用的文献

[1]
Bidirectional RNN for Medical Event Detection in Electronic Health Records.

Proc Conf. 2016-6

[2]
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BMJ Qual Saf. 2017-5

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Barriers and Facilitators to Online Portal Use Among Patients and Caregivers in a Safety Net Health Care System: A Qualitative Study.

J Med Internet Res. 2015-12-3

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Methods for Linking EHR Notes to Education Materials.

AMIA Jt Summits Transl Sci Proc. 2015-3-25

[5]
Identifying adverse drug event information in clinical notes with distributional semantic representations of context.

J Biomed Inform. 2015-10

[6]
Patient Portals and Patient Engagement: A State of the Science Review.

J Med Internet Res. 2015-6-23

[7]
Embedding assisted prediction architecture for event trigger identification.

J Bioinform Comput Biol. 2015-6

[8]
Readability of Written Materials for CKD Patients: A Systematic Review.

Am J Kidney Dis. 2015-2-4

[9]
Readability of patient education materials on the American Orthopaedic Society for Sports Medicine website.

Phys Sportsmed. 2014-11

[10]
Evaluating word representation features in biomedical named entity recognition tasks.

Biomed Res Int. 2014-3-6

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