Avoiding Biased Clinical Machine Learning Model Performance Estimates in the Presence of Label Selection

09/15/2022
by   Conor K. Corbin, et al.
0

When evaluating the performance of clinical machine learning models, one must consider the deployment population. When the population of patients with observed labels is only a subset of the deployment population (label selection), standard model performance estimates on the observed population may be misleading. In this study we describe three classes of label selection and simulate five causally distinct scenarios to assess how particular selection mechanisms bias a suite of commonly reported binary machine learning model performance metrics. Simulations reveal that when selection is affected by observed features, naive estimates of model discrimination may be misleading. When selection is affected by labels, naive estimates of calibration fail to reflect reality. We borrow traditional weighting estimators from causal inference literature and find that when selection probabilities are properly specified, they recover full population estimates. We then tackle the real-world task of monitoring the performance of deployed machine learning models whose interactions with clinicians feed-back and affect the selection mechanism of the labels. We train three machine learning models to flag low-yield laboratory diagnostics, and simulate their intended consequence of reducing wasteful laboratory utilization. We find that naive estimates of AUROC on the observed population undershoot actual performance by up to 20 disparity could be large enough to lead to the wrongful termination of a successful clinical decision support tool. We propose an altered deployment procedure, one that combines injected randomization with traditional weighted estimates, and find it recovers true model performance.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/01/2022

Disparate Censorship Undertesting: A Source of Label Bias in Clinical Machine Learning

As machine learning (ML) models gain traction in clinical applications, ...
research
07/09/2021

A Topological-Framework to Improve Analysis of Machine Learning Model Performance

As both machine learning models and the datasets on which they are evalu...
research
04/25/2021

Model-based metrics: Sample-efficient estimates of predictive model subpopulation performance

Machine learning models - now commonly developed to screen, diagnose, or...
research
11/18/2021

Assessing Social Determinants-Related Performance Bias of Machine Learning Models: A case of Hyperchloremia Prediction in ICU Population

Machine learning in medicine leverages the wealth of healthcare data to ...
research
02/01/2023

How to select predictive models for causal inference?

Predictive models – as with machine learning – can underpin causal infer...
research
06/03/2021

Sample Selection Bias in Evaluation of Prediction Performance of Causal Models

Causal models are notoriously difficult to validate because they make un...
research
02/01/2022

Generalizability of Machine Learning Models: Quantitative Evaluation of Three Methodological Pitfalls

Despite the great potential of machine learning, the lack of generalizab...

Please sign up or login with your details

Forgot password? Click here to reset