Calibrate the inter-observer segmentation uncertainty via diagnosis-first principle
Junde Wu, Huihui Fang, Hoayi Xiong, Lixin Duan, Mingkui Tan, Weihua, Yang, Huiying Liu, Yanwu Xu

TL;DR
This paper introduces a diagnosis-first framework for calibrating inter-observer segmentation uncertainty in medical images, improving disease diagnosis performance by fusing multi-rater labels into a diagnosis-oriented ground truth.
Contribution
It proposes the DiFF framework that leverages disease diagnosis to calibrate segmentation uncertainty, outperforming existing multi-rater learning methods.
Findings
DiFF improves diagnosis accuracy across three medical tasks.
Fused diagnosis-first ground-truth enhances segmentation quality.
Method outperforms state-of-the-art multi-rater learning approaches.
Abstract
On the medical images, many of the tissues/lesions may be ambiguous. That is why the medical segmentation is typically annotated by a group of clinical experts to mitigate the personal bias. However, this clinical routine also brings new challenges to the application of machine learning algorithms. Without a definite ground-truth, it will be difficult to train and evaluate the deep learning models. When the annotations are collected from different graders, a common choice is majority vote. However such a strategy ignores the difference between the grader expertness. In this paper, we consider the task of predicting the segmentation with the calibrated inter-observer uncertainty. We note that in clinical practice, the medical image segmentation is usually used to assist the disease diagnosis. Inspired by this observation, we propose diagnosis-first principle, which is to take disease…
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Taxonomy
TopicsCutaneous Melanoma Detection and Management · AI in cancer detection · Radiomics and Machine Learning in Medical Imaging
