More Generalizable Models For Sepsis Detection Under Covariate Shift

05/19/2021
by   Jifan Gao, et al.
0

Sepsis is a major cause of mortality in the intensive care units (ICUs). Early intervention of sepsis can improve clinical outcomes for sepsis patients. Machine learning models have been developed for clinical recognition of sepsis. A common assumption of supervised machine learning models is that the covariates in the testing data follow the same distributions as those in the training data. When this assumption is violated (e.g., there is covariate shift), models that performed well for training data could perform badly for testing data. Covariate shift happens when the relationships between covariates and the outcome stay the same, but the marginal distributions of the covariates differ among training and testing data. Covariate shift could make clinical risk prediction model nongeneralizable. In this study, we applied covariate shift corrections onto common machine learning models and have observed that these corrections can help the models be more generalizable under the occurrence of covariate shift when detecting the onset of sepsis.

READ FULL TEXT
research
06/06/2022

Class Prior Estimation under Covariate Shift – no Problem?

We show that in the context of classification the property of source and...
research
12/28/2020

Testing for concept shift online

This note continues study of exchangeability martingales, i.e., processe...
research
08/18/2021

Contrastive Identification of Covariate Shift in Image Data

Identifying covariate shift is crucial for making machine learning syste...
research
05/08/2023

Large-Scale Study of Temporal Shift in Health Insurance Claims

Most machine learning models for predicting clinical outcomes are develo...
research
08/06/2019

Semiparametric Wavelet-based JPEG IV Estimator for endogenously truncated data

A new and an enriched JPEG algorithm is provided for identifying redunda...
research
10/11/2020

Robust Fairness under Covariate Shift

Making predictions that are fair with regard to protected group membersh...
research
06/21/2021

Stratified Learning: a general-purpose statistical method for improved learning under Covariate Shift

Covariate shift arises when the labelled training (source) data is not r...

Please sign up or login with your details

Forgot password? Click here to reset