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Additional file 1 of Predicting hyperkalemia in patients with advanced chronic kidney disease using the XGBoost model

Abstract

Supplementary Materials: Table S1. ICD-9 and ICD-10 diagnostic codes used to identify comorbidities. Table S2. Medications used in this study. Table S3. Logistic regression analyses yielding odds ratios for factors associated with hyperkalemia in patients with advanced chronic kidney diseas

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The Francis Crick Institute

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Last time updated on 14/06/2023

This paper was published in The Francis Crick Institute.

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Licence: CC BY + CC0