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Automated pancreas segmentation from computed tomography and magnetic resonance images: A systematic review

机译:计算机断层扫描和磁共振的自动胰腺分段图像:系统审查

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摘要

The pancreas is a highly variable organ, the size, shape, and position of which are affected by age, sex, adiposity, the presence of diseases affecting the pancreas (e.g., diabetes, pancreatic cancer, pancreatitis) and other factors. Accurate automated segmentation of the pancreas has the potential to facilitate timely diagnosing and managing of diseases of the endocrine and exocrine pancreas. The aim was to systematically review studies reporting on automated pancreas segmentation algorithms derived from computed tomography (CT) or magnetic resonance (MR) images. The MEDLINE database and three patent databases were searched. Data on the performance of algorithms were meta-analysed, when possible. The algorithms were classified into one of four groups: multiorgan atlas-based, landmark-based, shape model-based, and neural network-based. A total of 13 cohorts suitable for meta-analysis were pooled to determine the performance of pancreas segmentation algorithms altogether using the Dice coefficient. These cohorts, comprising 1110 individuals, yielded a weighted mean Dice coefficient of 74.4%. Eight cohorts suitable for meta-analysis were pooled to determine the performance of pancreas segmentation algorithms altogether using the Jaccard index. These cohorts, comprising 636 individuals, yielded a weighted mean Jaccard index of 63.7%. Multiorgan atlas-based algorithms had a weighted mean Dice coefficient of 70.1% and a weighted mean Jaccard index of 59.8%. Neural network-based algorithms had a weighted mean Dice coefficient of 82.3% and a weighted mean Jaccard index of 70.1%. Studies using the other two types of algorithms were not meta-analysable. The above findings indicate that the automation of pancreas segmentation represents a considerable challenge as the performance of current automated pancreas segmentation algorithms is suboptimal. Adopting standardised reporting on performance of pancreas segmentation algorithms and encouraging the use of benchmark pancreas segmentation datasets will allow future algorithms to be tested and compared more easily and fairly. (C) 2019 Elsevier B.V. All rights reserved.
机译:胰腺是一种高度可变的器官,尺寸,形状和位置,受年龄,性别,肥胖,影响胰腺的疾病(例如糖尿病,胰腺癌,胰腺炎)和其他因素的影响。胰腺的准确自动分割有可能促进及时诊断和管理内分泌和外分泌胰腺的疾病。目的是系统地审查关于从计算机断层扫描(CT)或磁共振(MR)图像衍生的自动胰腺分段算法的研究。搜索MEDLINE数据库和三个专利数据库。有关算法性能的数据在可能的情况下进行了Meta分析。将算法分为四组中的一个:基于多器基于地标,基于地标,形状模型的和基于神经网络的群体。合并合适的13个适用于元分析的群组,以确定使用骰子系数完全实现胰腺分段算法的性能。包含1110个个体的这些群体产生了74.4%的加权平均骰子系数。合并适用于元分析的八个群组,以确定使用Jaccard索引完全确定胰腺分段算法的性能。这些群组包含636个个体,产生了63.7%的加权平均jaccard指数。基于多功能地图集的算法的加权平均骰子系数为70.1%,加权平均jaccard指数为59.8%。基于神经网络的算法的加权平均骰子系数为82.3%,加权平均jaccard指数为70.1%。使用其他两种类型的算法的研究不是荟萃分析。上述调查结果表明,随着当前自动胰腺分段算法的性能,胰腺分段的自动化表示相当大的挑战是次优。采用标准化报告胰腺分段算法的性能和鼓励使用基准胰腺分段数据集将允许未来算法进行测试,并更容易和相比。 (c)2019年Elsevier B.V.保留所有权利。

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