Automatic extraction and assessment of lifestyle exposures for Alzheimer’s disease using natural language processing

•Automatic extraction and assessment of lifestyle exposures using free-text EHRs for Alzheimer’s disease.•Feasibility and accuracy of investigating lifestye risk factors using natural language processing techniques.•Patients with Alzheimer’s disease might be exposed to more life style risk factors t...

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Published inInternational journal of medical informatics (Shannon, Ireland) Vol. 130; p. 103943
Main Authors Zhou, Xin, Wang, Yanshan, Sohn, Sunghwan, Therneau, Terry M., Liu, Hongfang, Knopman, David S.
Format Journal Article
LanguageEnglish
Published Ireland Elsevier B.V 01.10.2019
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ISSN1386-5056
1872-8243
1872-8243
DOI10.1016/j.ijmedinf.2019.08.003

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Summary:•Automatic extraction and assessment of lifestyle exposures using free-text EHRs for Alzheimer’s disease.•Feasibility and accuracy of investigating lifestye risk factors using natural language processing techniques.•Patients with Alzheimer’s disease might be exposed to more life style risk factors than the controls. Previous biomedical studies identified many lifestyle exposures that could possibly represent risk factors for dementia in general or dementia due to Alzheimer’s disease (AD). These lifestyle exposures are mainly mentioned in free-text electronic health records (EHRs). However, automatic extraction and assessment of these exposures using EHRs remains understudied. A natural language processing (NLP) approach was adopted to extract lifestyle exposures and intervention strategies from the clinical notes of 260 patients with clinical diagnoses of AD dementia and 260 age-matched cognitively unimpaired persons. Statistics of lifestyle exposures were compared between these two groups. The mapping results of the NLP extraction were evaluated by comparing the results with data captured independently by clinicians. Thirty out of fifty-five potentially relevant lifestyle exposures were mentioned in our clinical note dataset. Twenty-two dietary factors and three substance abuses that were potentially relevant were not found in clinical notes. Patients with AD dementia were significantly exposed to more of the potential risk factors compared to the cognitively unimpaired subjects (χ2 = 120.31, p-value < 0.001). The average accuracy of the automated extraction was 74.0% in comparison with the manual review of randomly selected 50 sample documents. We illustrated the feasibility of NLP techniques for the automated evaluation of a large number lifestyle habits using free-text EHR data. We found that AD dementia patients were exposed to more of the potential risk factors than the comparison group. Our results also demonstrated the feasibility and accuracy of investigating putative risk factors using NLP techniques.
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Study conception and design: XZ, YW, HL, DK.
Author statement
Final Approval: XZ, YW, SS, TT, HL, DK.
All authors have seen and approved the final version of the manuscript being submitted. They warrant that the article is the authors' original work, hasn't received prior publication and isn't under consideration for publication elsewhere.
Critical revision: XZ, YW, SS, HL, DK.
Analysis and interpretation of data: XZ, YW, SS, DK.
Drafting of manuscript: XZ, YW.
Acquisition of data: XZ, YW, TT.
ISSN:1386-5056
1872-8243
1872-8243
DOI:10.1016/j.ijmedinf.2019.08.003