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Autori principali: Krebs, Martin, Obdržálek, Jan, Musil, Vít, Brázdil, Tomáš
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2512.17416
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author Krebs, Martin
Obdržálek, Jan
Musil, Vít
Brázdil, Tomáš
author_facet Krebs, Martin
Obdržálek, Jan
Musil, Vít
Brázdil, Tomáš
contents Deep neural networks are starting to show their worth in critical applications such as assisted cancer diagnosis. However, for their outputs to get accepted in practice, the results they provide should be explainable in a way easily understood by pathologists. A well-known and widely used explanation technique is occlusion, which, however, can take a long time to compute, thus slowing the development and interaction with pathologists. In this work, we set out to find a faster replacement for occlusion in a successful system for detecting prostate cancer. Since there is no established framework for comparing the performance of various explanation methods, we first identified suitable comparison criteria and selected corresponding metrics. Based on the results, we were able to choose a different explanation method, which cut the previously required explanation time at least by a factor of 10, without any negative impact on the quality of outputs. This speedup enables rapid iteration in model development and debugging and brings us closer to adopting AI-assisted prostate cancer detection in clinical settings. We propose that our approach to finding the replacement for occlusion can be used to evaluate candidate methods in other related applications.
format Preprint
id arxiv_https___arxiv_org_abs_2512_17416
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Beyond Occlusion: In Search for Near Real-Time Explainability of CNN-Based Prostate Cancer Classification
Krebs, Martin
Obdržálek, Jan
Musil, Vít
Brázdil, Tomáš
Computer Vision and Pattern Recognition
Deep neural networks are starting to show their worth in critical applications such as assisted cancer diagnosis. However, for their outputs to get accepted in practice, the results they provide should be explainable in a way easily understood by pathologists. A well-known and widely used explanation technique is occlusion, which, however, can take a long time to compute, thus slowing the development and interaction with pathologists. In this work, we set out to find a faster replacement for occlusion in a successful system for detecting prostate cancer. Since there is no established framework for comparing the performance of various explanation methods, we first identified suitable comparison criteria and selected corresponding metrics. Based on the results, we were able to choose a different explanation method, which cut the previously required explanation time at least by a factor of 10, without any negative impact on the quality of outputs. This speedup enables rapid iteration in model development and debugging and brings us closer to adopting AI-assisted prostate cancer detection in clinical settings. We propose that our approach to finding the replacement for occlusion can be used to evaluate candidate methods in other related applications.
title Beyond Occlusion: In Search for Near Real-Time Explainability of CNN-Based Prostate Cancer Classification
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.17416