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Age prediction using a large chest X-ray dataset

Age prediction based on appearances of different anatomies in medical images has been clinically explored for many decades. In this paper, we used deep learning to predict a persons age on Chest X-Rays. Specifically, we trained a CNN in regression fashion on a large publicly available dataset. Moreo...

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Published in:arXiv.org 2019-03
Main Authors: Karargyris, Alexandros, Kashyap, Satyananda, Wu, Joy T, Sharma, Arjun, Moradi, Mehdi, Syeda-Mahmood, Tanveer
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Kashyap, Satyananda
Wu, Joy T
Sharma, Arjun
Moradi, Mehdi
Syeda-Mahmood, Tanveer
description Age prediction based on appearances of different anatomies in medical images has been clinically explored for many decades. In this paper, we used deep learning to predict a persons age on Chest X-Rays. Specifically, we trained a CNN in regression fashion on a large publicly available dataset. Moreover, for interpretability, we explored activation maps to identify which areas of a CXR image are important for the machine (i.e. CNN) to predict a patients age, offering insight. Overall, amongst correctly predicted CXRs, we see areas near the clavicles, shoulders, spine, and mediastinum being most activated for age prediction, as one would expect biologically. Amongst incorrectly predicted CXRs, we have qualitatively identified disease patterns that could possibly make the anatomies appear older or younger than expected. A further technical and clinical evaluation would improve this work. As CXR is the most commonly requested imaging exam, a potential use case for estimating age may be found in the preventative counseling of patient health status compared to their age-expected average, particularly when there is a large discrepancy between predicted age and the real patient age.
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subjects Age
Chest
Machine learning
Mediastinum
Medical imaging
Predictions
title Age prediction using a large chest X-ray dataset
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