4.7 Article

Explainable multiple abnormality classification of chest CT volumes

Journal

ARTIFICIAL INTELLIGENCE IN MEDICINE
Volume 132, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.artmed.2022.102372

Keywords

Explainable; Machine learning; Convolutional neural network; Classification; Medical images; Computed tomography

Funding

  1. National Institutes of Health (NIH) Duke Medical Scientist Training Program Training Grant, United States of America [GM-007171]

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Understanding model predictions in healthcare is crucial, and this research introduces the challenging task of explainable multiple abnormality classification in volumetric medical images. A novel multiple instance learning convolutional neural network, AxialNet, and attention mechanism HiResCAM are proposed, along with a new approach to automatically obtain 3D allowed regions.
Understanding model predictions is critical in healthcare, to facilitate rapid verification of model correctness and to guard against use of models that exploit confounding variables. We introduce the challenging new task of explainable multiple abnormality classification in volumetric medical images, in which a model must indicate the regions used to predict each abnormality. To solve this task, we propose a multiple instance learning convolutional neural network, AxialNet, that allows identification of top slices for each abnormality. Next we incorporate HiResCAM, an attention mechanism, to identify sub-slice regions. We prove that for AxialNet, HiResCAM explanations are guaranteed to reflect the locations the model used, unlike Grad-CAM which sometimes highlights irrelevant locations. Armed with a model that produces faithful explanations, we then aim to improve the model's learning through a novel mask loss that leverages HiResCAM and 3D allowed regions to encourage the model to predict abnormalities based only on the organs in which those abnormalities appear. The 3D allowed regions are obtained automatically through a new approach, PARTITION, that combines location information extracted from radiology reports with organ segmentation maps obtained through morphological image processing. Overall, we propose the first model for explainable multi-abnormality prediction in volumetric medical images, and then use the mask loss to achieve a 33% improvement in organ localization of multiple abnormalities in the RAD-ChestCT dataset of 36,316 scans, representing the state of the art. This work advances the clinical applicability of multiple abnormality modeling in chest CT volumes.

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