QU-BraTS: MICCAI BraTS 2020 Challenge on Quantifying Uncertainty in Brain Tumor Segmentation - Analysis of Ranking Scores and Benchmarking Results.

Raghav Mehta, Angelos Filos, Ujjwal Baid, Chiharu Sako, Richard McKinley, Michael Rebsamen, Katrin Dätwyler, Raphael Meier, Piotr Radojewski, Gowtham Krishnan Murugesan, Sahil Nalawade, Chandan Ganesh, Ben Wagner, Fang F Yu, Baowei Fei, Ananth J Madhuranthakam, Joseph A Maldjian, Laura Daza, Catalina Gómez, Pablo Arbeláez, Chengliang Dai, Shuo Wang, Hadrien Reynaud, Yuanhan Mo, Elsa Angelini, Yike Guo, Wenjia Bai, Subhashis Banerjee, Linmin Pei, Murat Ak, Sarahi Rosas-González, Ilyess Zemmoura, Clovis Tauber, Minh H Vu, Tufve Nyholm, Tommy Löfstedt, Laura Mora Ballestar, Veronica Vilaplana, Hugh McHugh, Gonzalo Maso Talou, Alan Wang, Jay Patel, Ken Chang, Katharina Hoebel, Mishka Gidwani, Nishanth Arun, Sharut Gupta, Mehak Aggarwal, Praveer Singh, Elizabeth R Gerstner, Jayashree Kalpathy-Cramer, Nicolas Boutry, Alexis Huard, Lasitha Vidyaratne, Md Monibor Rahman, Khan M Iftekharuddin, Joseph Chazalon, Elodie Puybareau, Guillaume Tochon, Jun Ma, Mariano Cabezas, Xavier Llado, Arnau Oliver, Liliana Valencia, Sergi Valverde, Mehdi Amian, Mohammadreza Soltaninejad, Andriy Myronenko, Ali Hatamizadeh, Xue Feng, Quan Dou, Nicholas Tustison, Craig Meyer, Nisarg A Shah, Sanjay Talbar, Marc-André Weber, Abhishek Mahajan, Andras Jakab, Roland Wiest, Hassan M Fathallah-Shaykh, Arash Nazeri, Mikhail Milchenko, Daniel Marcus, Aikaterini Kotrotsou, Rivka Colen, John Freymann, Justin Kirby, Christos Davatzikos, Bjoern Menze, Spyridon Bakas, Yarin Gal, Tal Arbel
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引用次数: 0

Abstract

Deep learning (DL) models have provided state-of-the-art performance in various medical imaging benchmarking challenges, including the Brain Tumor Segmentation (BraTS) challenges. However, the task of focal pathology multi-compartment segmentation (e.g., tumor and lesion sub-regions) is particularly challenging, and potential errors hinder translating DL models into clinical workflows. Quantifying the reliability of DL model predictions in the form of uncertainties could enable clinical review of the most uncertain regions, thereby building trust and paving the way toward clinical translation. Several uncertainty estimation methods have recently been introduced for DL medical image segmentation tasks. Developing scores to evaluate and compare the performance of uncertainty measures will assist the end-user in making more informed decisions. In this study, we explore and evaluate a score developed during the BraTS 2019 and BraTS 2020 task on uncertainty quantification (QU-BraTS) and designed to assess and rank uncertainty estimates for brain tumor multi-compartment segmentation. This score (1) rewards uncertainty estimates that produce high confidence in correct assertions and those that assign low confidence levels at incorrect assertions, and (2) penalizes uncertainty measures that lead to a higher percentage of under-confident correct assertions. We further benchmark the segmentation uncertainties generated by 14 independent participating teams of QU-BraTS 2020, all of which also participated in the main BraTS segmentation task. Overall, our findings confirm the importance and complementary value that uncertainty estimates provide to segmentation algorithms, highlighting the need for uncertainty quantification in medical image analyses. Finally, in favor of transparency and reproducibility, our evaluation code is made publicly available at https://github.com/RagMeh11/QU-BraTS.

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QU-BraTS:MICCAI BraTS 2020 脑肿瘤分割不确定性量化挑战赛--排名得分和基准结果分析。
深度学习(DL)模型在包括脑肿瘤分割(BraTS)挑战赛在内的各种医学影像基准挑战赛中都取得了一流的成绩。然而,病灶病理多区分割(如肿瘤和病灶亚区)任务尤其具有挑战性,潜在的错误阻碍了将深度学习模型转化为临床工作流程。以不确定性的形式量化 DL 模型预测的可靠性,可以对最不确定的区域进行临床审查,从而建立信任并为临床转化铺平道路。最近,针对 DL 医学影像分割任务推出了几种不确定性估计方法。开发评估和比较不确定性测量性能的分数将有助于最终用户做出更明智的决策。在本研究中,我们探索并评估了在 BraTS 2019 和 BraTS 2020 不确定性量化任务(QU-BraTS)中开发的评分方法,该评分方法旨在评估脑肿瘤多室分割的不确定性估计并对其进行排序。该评分(1)奖励那些对正确断言产生高置信度的不确定性估计,以及那些对错误断言赋予低置信度的不确定性估计,(2)惩罚那些导致较高比例置信度不足的正确断言的不确定性测量。我们进一步对 QU-BraTS 2020 的 14 个独立参与团队生成的分割不确定性进行了基准测试,所有这些团队也都参与了 BraTS 的主要分割任务。总之,我们的研究结果证实了不确定性估计对分割算法的重要性和补充价值,突出了医学影像分析中不确定性量化的必要性。最后,为了提高透明度和可重复性,我们在 https://github.com/RagMeh11/QU-BraTS 上公开了评估代码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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