Balancing Performance and Interpretability in Medical Image Analysis: Case study of Osteopenia.

J Imaging Inform Med

University of Rijeka, Faculty of Engineering, Department of Computer Engineering, Vukovarska 58, Rijeka, 51000, Croatia.

Published: July 2024

AI Article Synopsis

  • Multiple studies indicate convolutional neural networks (CNNs) can effectively predict medical conditions, sometimes outperforming human professionals, but they often operate as "black boxes."
  • This research investigates how occluding confounding variables in medical images affects model predictions, focusing on osteopenia using the GRAZPEDWRI-DX dataset.
  • While models trained on non-occluded images generally performed better in numerical evaluations, radiologists preferred models with occluded images, highlighting a trade-off between model performance and interpretability.

Article Abstract

Multiple studies within the medical field have highlighted the remarkable effectiveness of using convolutional neural networks for predicting medical conditions, sometimes even surpassing that of medical professionals. Despite their great performance, convolutional neural networks operate as black boxes, potentially arriving at correct conclusions for incorrect reasons or areas of focus. Our work explores the possibility of mitigating this phenomenon by identifying and occluding confounding variables within images. Specifically, we focused on the prediction of osteopenia, a serious medical condition, using the publicly available GRAZPEDWRI-DX dataset. After detection of the confounding variables in the dataset, we generated masks that occlude regions of images associated with those variables. By doing so, models were forced to focus on different parts of the images for classification. Model evaluation using F1-score, precision, and recall showed that models trained on non-occluded images typically outperformed models trained on occluded images. However, a test where radiologists had to choose a model based on the focused regions extracted by the GRAD-CAM method showcased different outcomes. The radiologists' preference shifted towards models trained on the occluded images. These results suggest that while occluding confounding variables may degrade model performance, it enhances interpretability, providing more reliable insights into the reasoning behind predictions. The code to repeat our experiment is available on the following link: https://github.com/mikulicmateo/osteopenia .

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http://dx.doi.org/10.1007/s10278-024-01194-8DOI Listing

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