TL;DR
This study develops weakly-supervised deep learning models to classify multiple diseases across three organ systems in body CT scans, achieving high accuracy with automatically extracted labels from radiology reports.
Contribution
It introduces a novel multi-organ, multi-disease classification framework using weak supervision and automatically derived labels from radiology text reports.
Findings
Manual validation showed 91-99% label accuracy.
High AUCs for key diseases, e.g., emphysema 0.89, effusion 0.97.
Models effectively classify diverse diseases across organs.
Abstract
Purpose: To design multi-disease classifiers for body CT scans for three different organ systems using automatically extracted labels from radiology text reports.Materials & Methods: This retrospective study included a total of 12,092 patients (mean age 57 +- 18; 6,172 women) for model development and testing (from 2012-2017). Rule-based algorithms were used to extract 19,225 disease labels from 13,667 body CT scans from 12,092 patients. Using a three-dimensional DenseVNet, three organ systems were segmented: lungs and pleura; liver and gallbladder; and kidneys and ureters. For each organ, a three-dimensional convolutional neural network classified no apparent disease versus four common diseases for a total of 15 different labels across all three models. Testing was performed on a subset of 2,158 CT volumes relative to 2,875 manually derived reference labels from 2133 patients (mean age…
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