Deep Learning Discovery of Demographic Biomarkers in Echocardiography
Grant Duffy, Shoa L. Clarke, Matthew Christensen, Bryan He, Neal Yuan,, Susan Cheng, and David Ouyang

TL;DR
This study demonstrates that deep learning models can predict age and sex from echocardiography images, but are less reliable for race, highlighting potential biases and confounding factors in medical AI applications.
Contribution
The paper shows that demographic features like age and sex can be predicted from echocardiography images using deep learning, while race prediction is heavily influenced by confounders, emphasizing the need for bias assessment.
Findings
Deep learning predicts age and sex with high accuracy.
Race prediction is affected by confounding variables.
Model performance varies with confounder tuning.
Abstract
Deep learning has been shown to accurately assess 'hidden' phenotypes and predict biomarkers from medical imaging beyond traditional clinician interpretation of medical imaging. Given the black box nature of artificial intelligence (AI) models, caution should be exercised in applying models to healthcare as prediction tasks might be short-cut by differences in demographics across disease and patient populations. Using large echocardiography datasets from two healthcare systems, we test whether it is possible to predict age, race, and sex from cardiac ultrasound images using deep learning algorithms and assess the impact of varying confounding variables. We trained video-based convolutional neural networks to predict age, sex, and race. We found that deep learning models were able to identify age and sex, while unable to reliably predict race. Without considering confounding differences…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Ultrasound in Clinical Applications · Radiomics and Machine Learning in Medical Imaging
MethodsTest
