TY - JOUR
T1 - Machine-learning-based multiple abnormality prediction with large-scale chest computed tomography volumes
AU - Draelos, Rachel Lea
AU - Dov, David
AU - Mazurowski, Maciej A.
AU - Lo, Joseph Y.
AU - Henao, Ricardo
AU - Rubin, Geoffrey D.
AU - Carin, Lawrence
N1 - Funding Information:
We would like to thank Mark Martin, Justin Solomon, the Duke University Office of Information Technology (OIT), and the Duke Protected Analytics Computing Environment (PACE) team. We also thank the anonymous reviewers for providing insightful comments that improved the manuscript. This work was supported by NIH/NIBIB R01-EB025020, developmental funds of the Duke Cancer Institute from the NIH/NCI P30-CA014236 Cancer Center Support Grant, and GM-007171 the Duke Medical Scientist Training Program Training Grant.
Funding Information:
This work was supported by NIH/NIBIB R01-EB025020, developmental funds of the Duke Cancer Institute from the NIH/NCI P30-CA014236 Cancer Center Support Grant, and GM-007171 the Duke Medical Scientist Training Program Training Grant.
Publisher Copyright:
© 2020 Elsevier B.V.
PY - 2021/1
Y1 - 2021/1
N2 - Machine learning models for radiology benefit from large-scale data sets with high quality labels for abnormalities. We curated and analyzed a chest computed tomography (CT) data set of 36,316 volumes from 19,993 unique patients. This is the largest multiply-annotated volumetric medical imaging data set reported. To annotate this data set, we developed a rule-based method for automatically extracting abnormality labels from free-text radiology reports with an average F-score of 0.976 (min 0.941, max 1.0). We also developed a model for multi-organ, multi-disease classification of chest CT volumes that uses a deep convolutional neural network (CNN). This model reached a classification performance of AUROC >0.90 for 18 abnormalities, with an average AUROC of 0.773 for all 83 abnormalities, demonstrating the feasibility of learning from unfiltered whole volume CT data. We show that training on more labels improves performance significantly: for a subset of 9 labels – nodule, opacity, atelectasis, pleural effusion, consolidation, mass, pericardial effusion, cardiomegaly, and pneumothorax – the model's average AUROC increased by 10% when the number of training labels was increased from 9 to all 83. All code for volume preprocessing, automated label extraction, and the volume abnormality prediction model is publicly available. The 36,316 CT volumes and labels will also be made publicly available pending institutional approval.
AB - Machine learning models for radiology benefit from large-scale data sets with high quality labels for abnormalities. We curated and analyzed a chest computed tomography (CT) data set of 36,316 volumes from 19,993 unique patients. This is the largest multiply-annotated volumetric medical imaging data set reported. To annotate this data set, we developed a rule-based method for automatically extracting abnormality labels from free-text radiology reports with an average F-score of 0.976 (min 0.941, max 1.0). We also developed a model for multi-organ, multi-disease classification of chest CT volumes that uses a deep convolutional neural network (CNN). This model reached a classification performance of AUROC >0.90 for 18 abnormalities, with an average AUROC of 0.773 for all 83 abnormalities, demonstrating the feasibility of learning from unfiltered whole volume CT data. We show that training on more labels improves performance significantly: for a subset of 9 labels – nodule, opacity, atelectasis, pleural effusion, consolidation, mass, pericardial effusion, cardiomegaly, and pneumothorax – the model's average AUROC increased by 10% when the number of training labels was increased from 9 to all 83. All code for volume preprocessing, automated label extraction, and the volume abnormality prediction model is publicly available. The 36,316 CT volumes and labels will also be made publicly available pending institutional approval.
KW - chest computed tomography
KW - convolutional neural network
KW - deep learning
KW - machine learning
KW - multilabel classification
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U2 - 10.1016/j.media.2020.101857
DO - 10.1016/j.media.2020.101857
M3 - Article
C2 - 33129142
AN - SCOPUS:85094321571
SN - 1361-8415
VL - 67
JO - Medical Image Analysis
JF - Medical Image Analysis
M1 - 101857
ER -