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Using Adversarial Images to Assess the Robustness of Deep Learning Models Trained on Diagnostic Images in Oncology

Deep learning (DL) models have rapidly become a popular and cost-effective tool for image classification within oncology. A major limitation of DL models is their vulnerability to adversarial images, manipulated input images designed to cause misclassifications by DL models. The purpose of the study...

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Autores principales: Joel, Marina Z., Umrao, Sachin, Chang, Enoch, Choi, Rachel, Yang, Daniel X., Duncan, James S., Omuro, Antonio, Herbst, Roy, Krumholz, Harlan M., Aneja, Sanjay
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Wolters Kluwer Health 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8932490/
https://www.ncbi.nlm.nih.gov/pubmed/35271304
http://dx.doi.org/10.1200/CCI.21.00170
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author Joel, Marina Z.
Umrao, Sachin
Chang, Enoch
Choi, Rachel
Yang, Daniel X.
Duncan, James S.
Omuro, Antonio
Herbst, Roy
Krumholz, Harlan M.
Aneja, Sanjay
author_facet Joel, Marina Z.
Umrao, Sachin
Chang, Enoch
Choi, Rachel
Yang, Daniel X.
Duncan, James S.
Omuro, Antonio
Herbst, Roy
Krumholz, Harlan M.
Aneja, Sanjay
author_sort Joel, Marina Z.
collection PubMed
description Deep learning (DL) models have rapidly become a popular and cost-effective tool for image classification within oncology. A major limitation of DL models is their vulnerability to adversarial images, manipulated input images designed to cause misclassifications by DL models. The purpose of the study is to investigate the robustness of DL models trained on diagnostic images using adversarial images and explore the utility of an iterative adversarial training approach to improve the robustness of DL models against adversarial images. METHODS: We examined the impact of adversarial images on the classification accuracies of DL models trained to classify cancerous lesions across three common oncologic imaging modalities. The computed tomography (CT) model was trained to classify malignant lung nodules. The mammogram model was trained to classify malignant breast lesions. The magnetic resonance imaging (MRI) model was trained to classify brain metastases. RESULTS: Oncologic images showed instability to small pixel-level changes. A pixel-level perturbation of 0.004 (for pixels normalized to the range between 0 and 1) resulted in most oncologic images to be misclassified (CT 25.6%, mammogram 23.9%, and MRI 6.4% accuracy). Adversarial training improved the stability and robustness of DL models trained on oncologic images compared with naive models ([CT 67.7% v 26.9%], mammogram [63.4% vs 27.7%], and MRI [87.2% vs 24.3%]). CONCLUSION: DL models naively trained on oncologic images exhibited dramatic instability to small pixel-level changes resulting in substantial decreases in accuracy. Adversarial training techniques improved the stability and robustness of DL models to such pixel-level changes. Before clinical implementation, adversarial training should be considered to proposed DL models to improve overall performance and safety.
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spelling pubmed-89324902022-03-21 Using Adversarial Images to Assess the Robustness of Deep Learning Models Trained on Diagnostic Images in Oncology Joel, Marina Z. Umrao, Sachin Chang, Enoch Choi, Rachel Yang, Daniel X. Duncan, James S. Omuro, Antonio Herbst, Roy Krumholz, Harlan M. Aneja, Sanjay JCO Clin Cancer Inform ORIGINAL REPORTS Deep learning (DL) models have rapidly become a popular and cost-effective tool for image classification within oncology. A major limitation of DL models is their vulnerability to adversarial images, manipulated input images designed to cause misclassifications by DL models. The purpose of the study is to investigate the robustness of DL models trained on diagnostic images using adversarial images and explore the utility of an iterative adversarial training approach to improve the robustness of DL models against adversarial images. METHODS: We examined the impact of adversarial images on the classification accuracies of DL models trained to classify cancerous lesions across three common oncologic imaging modalities. The computed tomography (CT) model was trained to classify malignant lung nodules. The mammogram model was trained to classify malignant breast lesions. The magnetic resonance imaging (MRI) model was trained to classify brain metastases. RESULTS: Oncologic images showed instability to small pixel-level changes. A pixel-level perturbation of 0.004 (for pixels normalized to the range between 0 and 1) resulted in most oncologic images to be misclassified (CT 25.6%, mammogram 23.9%, and MRI 6.4% accuracy). Adversarial training improved the stability and robustness of DL models trained on oncologic images compared with naive models ([CT 67.7% v 26.9%], mammogram [63.4% vs 27.7%], and MRI [87.2% vs 24.3%]). CONCLUSION: DL models naively trained on oncologic images exhibited dramatic instability to small pixel-level changes resulting in substantial decreases in accuracy. Adversarial training techniques improved the stability and robustness of DL models to such pixel-level changes. Before clinical implementation, adversarial training should be considered to proposed DL models to improve overall performance and safety. Wolters Kluwer Health 2022-03-10 /pmc/articles/PMC8932490/ /pubmed/35271304 http://dx.doi.org/10.1200/CCI.21.00170 Text en © 2022 by American Society of Clinical Oncology https://creativecommons.org/licenses/by-nc-nd/4.0/Creative Commons Attribution Non-Commercial No Derivatives 4.0 License: http://creativecommons.org/licenses/by-nc-nd/4.0/ (https://creativecommons.org/licenses/by-nc-nd/4.0/)
spellingShingle ORIGINAL REPORTS
Joel, Marina Z.
Umrao, Sachin
Chang, Enoch
Choi, Rachel
Yang, Daniel X.
Duncan, James S.
Omuro, Antonio
Herbst, Roy
Krumholz, Harlan M.
Aneja, Sanjay
Using Adversarial Images to Assess the Robustness of Deep Learning Models Trained on Diagnostic Images in Oncology
title Using Adversarial Images to Assess the Robustness of Deep Learning Models Trained on Diagnostic Images in Oncology
title_full Using Adversarial Images to Assess the Robustness of Deep Learning Models Trained on Diagnostic Images in Oncology
title_fullStr Using Adversarial Images to Assess the Robustness of Deep Learning Models Trained on Diagnostic Images in Oncology
title_full_unstemmed Using Adversarial Images to Assess the Robustness of Deep Learning Models Trained on Diagnostic Images in Oncology
title_short Using Adversarial Images to Assess the Robustness of Deep Learning Models Trained on Diagnostic Images in Oncology
title_sort using adversarial images to assess the robustness of deep learning models trained on diagnostic images in oncology
topic ORIGINAL REPORTS
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8932490/
https://www.ncbi.nlm.nih.gov/pubmed/35271304
http://dx.doi.org/10.1200/CCI.21.00170
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