Download PDF

Development of predictive models for critically ill patients with acute kidney injury

Publication date: 2023-01-10

Author:

Nateghi Haredasht, Fateme

Keywords:

C24/18/088#54689713

Abstract:

Predictive models are widely used in intensive care units (ICU), due to the widespread implementation of electronic systems to collect patient data: demographic information, continuous monitoring of vital functions, information on medication administered, results from laboratory analyses, etc. In this project, we will develop predictive modeling techniques to tackle a number of machine learning challenges related to data analysis within an ICU context. One of these challenges is dealing with time to event data (also called survival data). Survival data analysis has a sound statistical basis, however has been underexplored in the machine learning community. While these approaches have been mostly used to detect associations between covariates and survival time, nowadays there is a great interest in prognostic models and their application to personalized medicine. Physicians are interested in accurate prognostic tools that will inform them about the future prospect of a patient in order to adjust medical care. We will focus on data provided by the AZ Groeninge hospital, in the area of acute kidney injury.