The Effect of Data Missingness on Machine Learning Predictions of Uncontrolled Diabetes Using All of Us Data
Zain Jabbar,
Peter Washington
Abstract:Electronic Health Records (EHR) provide a vast amount of patient data that are relevant to predicting clinical outcomes. The inherent presence of missing values poses challenges to building performant machine learning models. This paper aims to investigate the effect of various imputation methods on the National Institutes of Health’s All of Us dataset, a dataset containing a high degree of data missingness. We apply several imputation techniques such as mean substitution, constant filling, and multiple imputa… Show more
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