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Auteur principal: Sydorskyi, Volodymyr
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2408.14521
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author Sydorskyi, Volodymyr
author_facet Sydorskyi, Volodymyr
contents This paper studies Clinical Intelligent Decision Support Systems (CIDSSs) for lung cancer segmentation, which are based on deep neural nets. A new interactive CIDSS is proposed and compared with previous approaches. Addition-ally, the purpose uncertainty problem in building interactive systems is discussed, and criteria for measuring both quality and amount of user feedback are proposed. In order to automate system evaluation, a new algorithm was used to simulate expert feedback. The proposed interactive CIDSS outperforms previous approaches (both interactive and noninteractive) on the task of lung lesion segmentation. This ap-proach looks promising both in terms of quality and expert user experience. At the same time, this paper discusses a bunch of possible modifications that can be done to improve both evaluation criteria and proposed CIDSS in future works.
format Preprint
id arxiv_https___arxiv_org_abs_2408_14521
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Interactive decision support system for lung cancer segmentation
Sydorskyi, Volodymyr
Image and Video Processing
This paper studies Clinical Intelligent Decision Support Systems (CIDSSs) for lung cancer segmentation, which are based on deep neural nets. A new interactive CIDSS is proposed and compared with previous approaches. Addition-ally, the purpose uncertainty problem in building interactive systems is discussed, and criteria for measuring both quality and amount of user feedback are proposed. In order to automate system evaluation, a new algorithm was used to simulate expert feedback. The proposed interactive CIDSS outperforms previous approaches (both interactive and noninteractive) on the task of lung lesion segmentation. This ap-proach looks promising both in terms of quality and expert user experience. At the same time, this paper discusses a bunch of possible modifications that can be done to improve both evaluation criteria and proposed CIDSS in future works.
title Interactive decision support system for lung cancer segmentation
topic Image and Video Processing
url https://arxiv.org/abs/2408.14521