Abstract

In the automatic diagnosis of ocular toxoplasmosis (OT), Deep Learning (DL) has arisen as a powerful and promising approach for diagnosis. However, despite the good performance of the models, decision rules should be interpretable to elicit trust from the medical community. Therefore, the development of an evaluation methodology to assess DL models based on interpretability methods is a challenging task that is necessary to extend the use of AI among clinicians. In this work, we propose a novel methodology to quantify the similarity between the decision rules used by a DL model and an ophthalmologist, based on the assumption that doctors are more likely to trust a prediction that was based on decision rules they can understand. Given an eye fundus image with OT, the proposed methodology compares the segmentation mask of OT lesions labeled by an ophthalmologist with the attribution matrix produced by interpretability methods. Furthermore, an open dataset that includes the eye fundus images and the segmentation masks is shared with the community. The proposal was tested on three different DL architectures. The results suggest that complex models tend to perform worse in terms of likelihood to be trusted while achieving better results in sensitivity and specificity.

Highlights

  • Introductionocular toxoplasmosis (OT) can lead to loss of vision [2]

  • The general purpose trust score proposed by Wong et al [24] and extended by Hryniowski et al [25] defines trust based on the answer to two questions: (1) How much trust do we have in a model that gives wrong answers with great confidence? and (2) How much trust do we have in a model that gives right answers hesitantly? valuable, interpretability and trust are known to be domain-specific notions [26]

  • The trust score proposed in this work incorporates domain-specific knowledge and compares it with the attribution matrix to answer the question: Did the model consider the features that an ophthalmologist would have taken into account for this prediction?

Read more

Summary

Introduction

OT can lead to loss of vision [2]

Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call