Literature DB >> 19390098

A text mining approach to the prediction of disease status from clinical discharge summaries.

Hui Yang1, Irena Spasic, John A Keane, Goran Nenadic.   

Abstract

OBJECTIVE The authors present a system developed for the Challenge in Natural Language Processing for Clinical Data-the i2b2 obesity challenge, whose aim was to automatically identify the status of obesity and 15 related co-morbidities in patients using their clinical discharge summaries. The challenge consisted of two tasks, textual and intuitive. The textual task was to identify explicit references to the diseases, whereas the intuitive task focused on the prediction of the disease status when the evidence was not explicitly asserted. DESIGN The authors assembled a set of resources to lexically and semantically profile the diseases and their associated symptoms, treatments, etc. These features were explored in a hybrid text mining approach, which combined dictionary look-up, rule-based, and machine-learning methods. MEASUREMENTS The methods were applied on a set of 507 previously unseen discharge summaries, and the predictions were evaluated against a manually prepared gold standard. The overall ranking of the participating teams was primarily based on the macro-averaged F-measure. RESULTS The implemented method achieved the macro-averaged F-measure of 81% for the textual task (which was the highest achieved in the challenge) and 63% for the intuitive task (ranked 7(th) out of 28 teams-the highest was 66%). The micro-averaged F-measure showed an average accuracy of 97% for textual and 96% for intuitive annotations. CONCLUSIONS The performance achieved was in line with the agreement between human annotators, indicating the potential of text mining for accurate and efficient prediction of disease statuses from clinical discharge summaries.

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Year:  2009        PMID: 19390098      PMCID: PMC2705266          DOI: 10.1197/jamia.M3096

Source DB:  PubMed          Journal:  J Am Med Inform Assoc        ISSN: 1067-5027            Impact factor:   4.497


  1 in total

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  1 in total
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2.  Recognizing obesity and comorbidities in sparse data.

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3.  Automatically annotating topics in transcripts of patient-provider interactions via machine learning.

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5.  Text mining for the Vaccine Adverse Event Reporting System: medical text classification using informative feature selection.

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6.  Extracting Information from Electronic Medical Records to Identify the Obesity Status of a Patient Based on Comorbidities and Bodyweight Measures.

Authors:  Rosa L Figueroa; Christopher A Flores
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7.  Medication information extraction with linguistic pattern matching and semantic rules.

Authors:  Irena Spasic; Farzaneh Sarafraz; John A Keane; Goran Nenadic
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8.  Natural Language Processing for Cohort Discovery in a Discharge Prediction Model for the Neonatal ICU.

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Review 9.  Clinical information extraction applications: A literature review.

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Journal:  J Biomed Inform       Date:  2017-11-21       Impact factor: 6.317

10.  An automatic system to identify heart disease risk factors in clinical texts over time.

Authors:  Qingcai Chen; Haodi Li; Buzhou Tang; Xiaolong Wang; Xin Liu; Zengjian Liu; Shu Liu; Weida Wang; Qiwen Deng; Suisong Zhu; Yangxin Chen; Jingfeng Wang
Journal:  J Biomed Inform       Date:  2015-09-08       Impact factor: 6.317

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