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Artificial intelligence approaches for phenotyping heart failure in U.S. Veterans Health Administration electronic health record.
Shao, Yijun; Zhang, Sijian; Raman, Venkatesh K; Patel, Samir S; Cheng, Yan; Parulkar, Anshul; Lam, Phillip H; Moore, Hans; Sheriff, Helen M; Fonarow, Gregg C; Heidenreich, Paul A; Wu, Wen-Chih; Ahmed, Ali; Zeng-Treitler, Qing.
Affiliation
  • Shao Y; Center for Data Science and Outcomes Research, Veterans Affairs Medical Center, Washington, DC, USA.
  • Zhang S; George Washington University, Washington, DC, USA.
  • Raman VK; Center for Data Science and Outcomes Research, Veterans Affairs Medical Center, Washington, DC, USA.
  • Patel SS; George Washington University, Washington, DC, USA.
  • Cheng Y; Center for Data Science and Outcomes Research, Veterans Affairs Medical Center, Washington, DC, USA.
  • Parulkar A; Georgetown University, Washington, DC, USA.
  • Lam PH; Center for Data Science and Outcomes Research, Veterans Affairs Medical Center, Washington, DC, USA.
  • Moore H; George Washington University, Washington, DC, USA.
  • Sheriff HM; Center for Data Science and Outcomes Research, Veterans Affairs Medical Center, Washington, DC, USA.
  • Fonarow GC; George Washington University, Washington, DC, USA.
  • Heidenreich PA; Veterans Affairs Medical Center, Providence, RI, USA.
  • Wu WC; Brown University, Providence, RI, USA.
  • Ahmed A; Center for Data Science and Outcomes Research, Veterans Affairs Medical Center, Washington, DC, USA.
  • Zeng-Treitler Q; Georgetown University, Washington, DC, USA.
ESC Heart Fail ; 11(5): 3155-3166, 2024 Oct.
Article in En | MEDLINE | ID: mdl-38873749
ABSTRACT

AIMS:

Heart failure (HF) is a clinical syndrome with no definitive diagnostic tests. HF registries are often based on manual reviews of medical records of hospitalized HF patients identified using International Classification of Diseases (ICD) codes. However, most HF patients are not hospitalized, and manual review of big electronic health record (EHR) data is not practical. The US Department of Veterans Affairs (VA) has the largest integrated healthcare system in the nation, and an estimated 1.5 million patients have ICD codes for HF (HF ICD-code universe) in their VA EHR. The objective of our study was to develop artificial intelligence (AI) models to phenotype HF in these patients. METHODS AND

RESULTS:

The model development cohort (n = 20 000 training, 16 000; validation 2000; testing, 2000) included 10 000 patients with HF and 10 000 without HF who were matched by age, sex, race, inpatient/outpatient status, hospital, and encounter date (within 60 days). HF status was ascertained by manual chart reviews in VA's External Peer Review Program for HF (EPRP-HF) and non-HF status was ascertained by the absence of ICD codes for HF in VA EHR. Two clinicians annotated 1000 random snippets with HF-related keywords and labelled 436 as HF, which was then used to train and test a natural language processing (NLP) model to classify HF (positive predictive value or PPV, 0.81; sensitivity, 0.77). A machine learning (ML) model using linear support vector machine architecture was trained and tested to classify HF using EPRP-HF as cases (PPV, 0.86; sensitivity, 0.86). From the 'HF ICD-code universe', we randomly selected 200 patients (gold standard cohort) and two clinicians manually adjudicated HF (gold standard HF) in 145 of those patients by chart reviews. We calculated NLP, ML, and NLP + ML scores and used weighted F scores to derive their optimal threshold values for HF classification, which resulted in PPVs of 0.83, 0.77, and 0.85 and sensitivities of 0.86, 0.88, and 0.83, respectively. HF patients classified by the NLP + ML model were characteristically and prognostically similar to those with gold standard HF. All three models performed better than ICD code approaches one principal hospital discharge diagnosis code for HF (PPV, 0.97; sensitivity, 0.21) or two primary outpatient encounter diagnosis codes for HF (PPV, 0.88; sensitivity, 0.54).

CONCLUSIONS:

These findings suggest that NLP and ML models are efficient AI tools to phenotype HF in big EHR data to create contemporary HF registries for clinical studies of effectiveness, quality improvement, and hypothesis generation.
Subject(s)
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Phenotype / Artificial Intelligence / United States Department of Veterans Affairs / Electronic Health Records / Heart Failure Limits: Aged / Female / Humans / Male / Middle aged Country/Region as subject: America do norte Language: En Journal: ESC Heart Fail / ESC heart failure Year: 2024 Document type: Article

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Phenotype / Artificial Intelligence / United States Department of Veterans Affairs / Electronic Health Records / Heart Failure Limits: Aged / Female / Humans / Male / Middle aged Country/Region as subject: America do norte Language: En Journal: ESC Heart Fail / ESC heart failure Year: 2024 Document type: Article