Looking for Out-of-Distribution Environments in Critical Care: A case study with the eICU Database

05/26/2022
by   Dimitris Spathis, et al.
0

Generalizing to new populations and domains in machine learning is still an open problem which has seen increased interest recently. In particular, clinical models show a significant performance drop when tested in settings not seen during training, e.g., new hospitals or population demographics. Recently proposed models for domain generalisation promise to alleviate this problem by learning invariant characteristics across environments, however, there is still scepticism about whether they improve over traditional training. In this work, we take a principled approach to identifying Out of Distribution (OoD) environments, motivated by the problem of cross-hospital generalization in critical care. We propose model-based and heuristic approaches to identify OoD environments and systematically compare models with different levels of held-out information. In particular, based on the assumption that models with access to OoD data should outperform other models, we train models across a range of experimental setups that include leave-one-hospital-out training and cross-sectional feature splits. We find that access to OoD data does not translate to increased performance, pointing to inherent limitations in defining potential OoD environments in the eICU Database potentially due to data harmonisation and sampling. Echoing similar results with other popular clinical benchmarks in the literature, new approaches are required to evaluate robust models in critical care.

READ FULL TEXT

page 5

page 7

research
08/02/2019

Feature Robustness in Non-stationary Health Records: Caveats to Deployable Model Performance in Common Clinical Machine Learning Tasks

When training clinical prediction models from electronic health records ...
research
03/12/2018

Predicting Clinical Deterioration of Outpatients Using Multimodal Data Collected by Wearables

Hospital readmission rate is high for heart failure patients. Early dete...
research
03/20/2021

An Empirical Framework for Domain Generalization in Clinical Settings

Clinical machine learning models experience significantly degraded perfo...
research
10/02/2019

Benchmarking machine learning models on eICU critical care dataset

Progress of machine learning in critical care has been difficult to trac...
research
06/29/2023

Length of Stay prediction for Hospital Management using Domain Adaptation

Inpatient length of stay (LoS) is an important managerial metric which i...
research
11/01/2019

Validation of a deep learning mammography model in a population with low screening rates

A key promise of AI applications in healthcare is in increasing access t...

Please sign up or login with your details

Forgot password? Click here to reset