Explainable Disease Classification via weakly-supervised segmentation
- URL: http://arxiv.org/abs/2008.10268v1
- Date: Mon, 24 Aug 2020 09:00:30 GMT
- Title: Explainable Disease Classification via weakly-supervised segmentation
- Authors: Aniket Joshi, Gaurav Mishra, Jayanthi Sivaswamy
- Abstract summary: Deep learning approaches to Computer Aided Diagnosis (CAD) typically pose the problem as an image classification (Normal or Abnormal) problem.
This paper examines this problem and proposes an approach which mimics the clinical practice of looking for evidence prior to diagnosis.
The proposed solution is then adapted to Breast Cancer detection from mammographic images.
- Score: 4.154485485415009
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Deep learning based approaches to Computer Aided Diagnosis (CAD) typically
pose the problem as an image classification (Normal or Abnormal) problem. These
systems achieve high to very high accuracy in specific disease detection for
which they are trained but lack in terms of an explanation for the provided
decision/classification result. The activation maps which correspond to
decisions do not correlate well with regions of interest for specific diseases.
This paper examines this problem and proposes an approach which mimics the
clinical practice of looking for an evidence prior to diagnosis. A CAD model is
learnt using a mixed set of information: class labels for the entire training
set of images plus a rough localisation of suspect regions as an extra input
for a smaller subset of training images for guiding the learning. The proposed
approach is illustrated with detection of diabetic macular edema (DME) from OCT
slices. Results of testing on on a large public dataset show that with just a
third of images with roughly segmented fluid filled regions, the classification
accuracy is on par with state of the art methods while providing a good
explanation in the form of anatomically accurate heatmap /region of interest.
The proposed solution is then adapted to Breast Cancer detection from
mammographic images. Good evaluation results on public datasets underscores the
generalisability of the proposed solution.
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