Electronic Health Record-Enabled Big-Data Approaches to Nephrotoxin-Associated Acute Kidney Injury Risk Prediction

Pharmacotherapy. 2018 Aug;38(8):804-812. doi: 10.1002/phar.2150. Epub 2018 Jul 13.

Abstract

Nephrotoxin-associated acute kidney injury (NTx-AKI) has become one of the most common causes of AKI among hospitalized adults and children; across acute and intensive care populations, exposure to nephrotoxins accounts for 15-25% of AKI cases. Although some interventions have shown promise in observational studies, no treatments currently exist for NTx-AKI once it occurs. Thus, nearly all effective strategies are aimed at prevention. The primary obstacle to prevention is risk prediction and the determination of which patients are more likely to develop NTx-AKI when exposed to medications with nephrotoxic potential. Historically, traditional statistical modeling has been applied to previously recognized clinical risk factors to identify predictors of NTx-AKI. However, increased electronic health record adoption and the evolution of "big-data" approaches to predictive analytics may offer a unique opportunity to prevent NTx-AKI events. This article describes prior and current approaches to NTx-AKI prediction and offers three novel use cases for electronic health record-enabled NTx-AKI forecasting and risk profiling.

Keywords: acute kidney injury; big data; electronic health record; nephrotoxin; predictive analytics.

Publication types

  • Review

MeSH terms

  • Acute Kidney Injury / chemically induced
  • Acute Kidney Injury / prevention & control*
  • Big Data*
  • Drug-Related Side Effects and Adverse Reactions / prevention & control*
  • Electronic Health Records / statistics & numerical data*
  • Humans
  • Models, Statistical*
  • Risk Assessment / statistics & numerical data*