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Benchmarking Wilms’ tumor in multisequence MRI data: why does current clinical practice fail? Which popular segmentation algorithms perform well?

机译:在MultiSisquence MRI数据中基准测试WILMS的肿瘤:为什么当前的临床实践失败?哪个流行的分段算法表现良好?

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摘要

Wilms’ tumor is one of the most frequent malignant solid tumors in childhood. Accurate segmentation of tumor tissue is a key step during therapy and treatment planning. Since it is difficult to obtain a comprehensive set of tumor data of children, there is no benchmark so far allowing evaluation of the quality of human or computer-based segmentations. The contributions in our paper are threefold: (i) we present the first heterogeneous Wilms’ tumor benchmark data set. It contains multisequence MRI data sets before and after chemotherapy, along with ground truth annotation, approximated based on the consensus of five human experts. (ii) We analyze human expert annotations and interrater variability, finding that the current clinical practice of determining tumor volume is inaccurate and that manual annotations after chemotherapy may differ substantially. (iii) We evaluate six computer-based segmentation methods, ranging from classical approaches to recent deep-learning techniques. We show that the best ones offer a quality comparable to human expert annotations.
机译:Wilms的肿瘤是儿童中最常见的恶性肿瘤之一。肿瘤组织的精确分割是治疗和治疗计划期间的关键步骤。由于难以获得一整套儿童的肿瘤数据,因此到目前为止没有基准,允许评估人类或基于计算机的细分的质量。本文中的贡献是三倍:(i)我们介绍了第一个异构Wilms的肿瘤基准数据集。它在化疗之前和之后包含多音节MRI数据集,以及地面真理注释,根据五个人专家的共识近似。 (ii)我们分析人类专家注释和Interrender可变性,发现当前确定肿瘤体积的临床实践是不准确的,化疗后的手动注释可能大大差异。 (iii)我们评估了六种基于计算机的分割方法,从经典方法到最近的深度学习技术。我们表明最好的产品提供了与人类专家注释相当的质量。

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