Effects of Different Missing Data Imputation Techniques on the Performance of Undiagnosed Diabetes Risk Prediction Models in a Mixed-Ancestry Population of South Africa
Posted on 2015-09-25 - 05:17
*BMI, Body Mass Index; WC, Waist Circumference; SBP, Systolic Blood Pressure; DBP, Diastolic Blood Pressure; FH, Family History; Cort, Corticosteroids; med, medication; Hpt, Hypertensive.
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L. Masconi, Katya; Matsha-Erasmus, Tandi Edith; T. Erasmus, Rajiv; P. Kengne, Andre (2015). Effects of Different Missing Data Imputation Techniques on the Performance of Undiagnosed Diabetes Risk Prediction Models in a Mixed-Ancestry Population of South Africa. PLOS ONE. Collection. https://doi.org/10.1371/journal.pone.0139210
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