Enhancing Reliability of Medical Image Diagnosis through Top-rank Learning with Rejection Module
Enhancing Reliability of Medical Image Diagnosis through Top-rank Learning with Rejection Module
In medical image processing, accurate diagnosis is of paramount importance. Leveraging machine learning techniques, particularly top-rank learning, shows significant promise by focusing on the most crucial instances. However, challenges arise from noisy labels and class-ambiguous instances, which can severely hinder the top-rank objective, as they may be erroneously placed among the top-ranked instances. To address these, we propose a novel approach that enhances toprank learning by integrating a rejection module. Cooptimized with the top-rank loss, this module identifies and mitigates the impact of outliers that hinder training effectiveness. The rejection module functions as an additional branch, assessing instances based on a rejection function that measures their deviation from the norm. Through experimental validation on a medical dataset, our methodology demonstrates its efficacy in detecting and mitigating outliers, improving the reliability and accuracy of medical image diagnoses.
Xiaotong Ji、Ryoma Bise、Seiichi Uchida
医学研究方法临床医学
Xiaotong Ji,Ryoma Bise,Seiichi Uchida.Enhancing Reliability of Medical Image Diagnosis through Top-rank Learning with Rejection Module[EB/OL].(2025-08-11)[2025-08-24].https://arxiv.org/abs/2508.07528.点此复制
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