Deep learning-based age estimation from chest CT scans

Purpose Medical imaging can be used to estimate a patient’s biological age, which may provide complementary information to clinicians compared to chronological age. In this study, we aimed to develop a method to estimate a patient’s age based on their chest CT scan. Additionally, we investigated whe...

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Veröffentlicht in:International journal for computer assisted radiology and surgery 2024-01, Vol.19 (1), p.119-127
Hauptverfasser: Azarfar, Ghazal, Ko, Seok-Bum, Adams, Scott J., Babyn, Paul S.
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container_title International journal for computer assisted radiology and surgery
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creator Azarfar, Ghazal
Ko, Seok-Bum
Adams, Scott J.
Babyn, Paul S.
description Purpose Medical imaging can be used to estimate a patient’s biological age, which may provide complementary information to clinicians compared to chronological age. In this study, we aimed to develop a method to estimate a patient’s age based on their chest CT scan. Additionally, we investigated whether chest CT estimated age is a more accurate predictor of lung cancer risk compared to chronological age. Methods To develop our age prediction model, we utilized composite CT images and Inception-ResNet-v2. The model was trained, validated, and tested on 13,824 chest CT scans from the National Lung Screening Trial, with 91% for training, 5% for validation, and 4% for testing. Additionally, we independently tested the model on 1849 CT scans collected locally. To assess chest CT estimated age as a risk factor for lung cancer, we computed the relative lung cancer risk between two groups. Group 1 consisted of individuals assigned a CT age older than their chronological age, while Group 2 comprised those assigned a CT age younger than their chronological age. Results Our analysis revealed a mean absolute error of 1.84 years and a Pearson’s correlation coefficient of 0.97 for our local data when comparing chronological age with the estimated CT age. The model showed the most activation in the area associated with the lungs during age estimation. The relative risk for lung cancer was 1.82 (95% confidence interval, 1.65–2.02) for individuals assigned a CT age older than their chronological age compared to those assigned a CT age younger than their chronological age. Conclusion Findings suggest that chest CT age captures some aspects of biological aging and may be a more accurate predictor of lung cancer risk than chronological age. Future studies with larger and more diverse patients are required for the generalization of the interpretations.
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In this study, we aimed to develop a method to estimate a patient’s age based on their chest CT scan. Additionally, we investigated whether chest CT estimated age is a more accurate predictor of lung cancer risk compared to chronological age. Methods To develop our age prediction model, we utilized composite CT images and Inception-ResNet-v2. The model was trained, validated, and tested on 13,824 chest CT scans from the National Lung Screening Trial, with 91% for training, 5% for validation, and 4% for testing. Additionally, we independently tested the model on 1849 CT scans collected locally. To assess chest CT estimated age as a risk factor for lung cancer, we computed the relative lung cancer risk between two groups. Group 1 consisted of individuals assigned a CT age older than their chronological age, while Group 2 comprised those assigned a CT age younger than their chronological age. Results Our analysis revealed a mean absolute error of 1.84 years and a Pearson’s correlation coefficient of 0.97 for our local data when comparing chronological age with the estimated CT age. The model showed the most activation in the area associated with the lungs during age estimation. The relative risk for lung cancer was 1.82 (95% confidence interval, 1.65–2.02) for individuals assigned a CT age older than their chronological age compared to those assigned a CT age younger than their chronological age. Conclusion Findings suggest that chest CT age captures some aspects of biological aging and may be a more accurate predictor of lung cancer risk than chronological age. Future studies with larger and more diverse patients are required for the generalization of the interpretations.</description><identifier>ISSN: 1861-6429</identifier><identifier>ISSN: 1861-6410</identifier><identifier>EISSN: 1861-6429</identifier><identifier>DOI: 10.1007/s11548-023-02989-w</identifier><identifier>PMID: 37418109</identifier><language>eng</language><publisher>Cham: Springer International Publishing</publisher><subject>Age ; Chest ; Chronology ; Computed tomography ; Computer Imaging ; Computer Science ; Correlation coefficients ; Deep Learning ; Error analysis ; Health Informatics ; Humans ; Imaging ; Lung - diagnostic imaging ; Lung cancer ; Lung Neoplasms - diagnostic imaging ; Medical imaging ; Medicine ; Medicine &amp; Public Health ; Model testing ; Original Article ; Pattern Recognition and Graphics ; Prediction models ; Radiography ; Radiology ; Surgery ; Tomography, X-Ray Computed - methods ; Vision</subject><ispartof>International journal for computer assisted radiology and surgery, 2024-01, Vol.19 (1), p.119-127</ispartof><rights>CARS 2023. 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subjects Age
Chest
Chronology
Computed tomography
Computer Imaging
Computer Science
Correlation coefficients
Deep Learning
Error analysis
Health Informatics
Humans
Imaging
Lung - diagnostic imaging
Lung cancer
Lung Neoplasms - diagnostic imaging
Medical imaging
Medicine
Medicine & Public Health
Model testing
Original Article
Pattern Recognition and Graphics
Prediction models
Radiography
Radiology
Surgery
Tomography, X-Ray Computed - methods
Vision
title Deep learning-based age estimation from chest CT scans
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