AI Article Synopsis

  • Predictive disease modeling using electronic health records is advancing, but there's little research on how different data representations affect model performance in machine learning.
  • * The study evaluated six terminologies (including UMLS and PheWAS) for predicting heart failure in diabetes patients and pancreatic cancer using logistic regression and recurrent neural networks.
  • * Results showed that UMLS often provided the best prediction accuracy, suggesting that more comprehensive and detailed terminology can enhance model performance; further research is needed to confirm these findings.*

Article Abstract

Objective: Predictive disease modeling using electronic health record data is a growing field. Although clinical data in their raw form can be used directly for predictive modeling, it is a common practice to map data to standard terminologies to facilitate data aggregation and reuse. There is, however, a lack of systematic investigation of how different representations could affect the performance of predictive models, especially in the context of machine learning and deep learning.

Materials And Methods: We projected the input diagnoses data in the Cerner HealthFacts database to Unified Medical Language System (UMLS) and 5 other terminologies, including CCS, CCSR, ICD-9, ICD-10, and PheWAS, and evaluated the prediction performances of these terminologies on 2 different tasks: the risk prediction of heart failure in diabetes patients and the risk prediction of pancreatic cancer. Two popular models were evaluated: logistic regression and a recurrent neural network.

Results: For logistic regression, using UMLS delivered the optimal area under the receiver operating characteristics (AUROC) results in both dengue hemorrhagic fever (81.15%) and pancreatic cancer (80.53%) tasks. For recurrent neural network, UMLS worked best for pancreatic cancer prediction (AUROC 82.24%), second only (AUROC 85.55%) to PheWAS (AUROC 85.87%) for dengue hemorrhagic fever prediction.

Discussion/conclusion: In our experiments, terminologies with larger vocabularies and finer-grained representations were associated with better prediction performances. In particular, UMLS is consistently 1 of the best-performing ones. We believe that our work may help to inform better designs of predictive models, although further investigation is warranted.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7647355PMC
http://dx.doi.org/10.1093/jamia/ocaa180DOI Listing

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