用于体积身体成分分析的3D计算机断层扫描自动分割的系统综述。

IF 8.9 1区 医学
Dinh Van Chi Mai, Ioanna Drami, Edward T. Pring, Laura E. Gould, Phillip Lung, Karteek Popuri, Vincent Chow, Mirza F. Beg, Thanos Athanasiou, John T. Jenkins, the BiCyCLE Research Group
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引用次数: 2

摘要

自动计算机断层扫描(CT)扫描分割(根据组织类型标记像素)现在是可能的。该技术适用于实现CT扫描的三维(3D)分割,而不是单独的L3切片。这篇系统综述评估了用于体积体成分(BC)分析的3D CT扫描自动分割的可行性和准确性,以及临床医生和研究人员应注意的当前局限性和陷阱。检索了截至2021年10月的OVID Medline、Embase和灰色文献数据库。包括研究CT自动骨骼肌、内脏和皮下AT分割的原始研究。92项研究中有7项符合纳入标准。执行用于训练算法的地面实况分割的专业知识和人数存在差异。在患者特征、病理学和CT分期方面存在异质性,分割算法是基于这些异质性开发的。解剖CT覆盖范围的报告各不相同,术语混乱。六项研究涉及体积区域板块,而不是整个板块。一项研究表明使用全身CT,但尚不清楚这是否真的意味着从头到指尖到脚趾。两项研究使用了传统的计算机算法。后五种方法使用了深度学习(DL),这是一种人工智能技术,算法的组织方式与大脑神经元通路类似。七个中有六个报告了出色的分割性能(每个组织的骰子相似系数>0.9)。在七种算法中,只有四种算法对看不见的扫描进行了内部测试,而只有三种算法进行了外部测试。经过训练的DL算法在12到75秒内实现了完整的CT分割,而非DL技术为25分钟。DL能够对临床适应症的CT进行机会性、快速和自动化的体积BC分析。然而,大多数CT扫描不包括从头到指尖到脚趾;进一步的研究必须验证使用普通CT区域来估计真实的全身BC,并与单个腰椎切片进行直接比较。由于DL的成功,除了本文讨论的七种算法之外,我们还希望实现渐进数量的算法。因此,BC领域的研究人员和临床医生必须意识到陷阱。高Dice相似性系数并不能告知BC组织可能被低估或高估的程度,也不能告知算法的精度。需要达成共识来确定基本真相标签的准确性和精密度标准。使用多位专家的BC基本事实标签创建一个大型国际多中心通用CT数据集可能是一个稳健的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A systematic review of automated segmentation of 3D computed-tomography scans for volumetric body composition analysis

A systematic review of automated segmentation of 3D computed-tomography scans for volumetric body composition analysis

Automated computed tomography (CT) scan segmentation (labelling of pixels according to tissue type) is now possible. This technique is being adapted to achieve three-dimensional (3D) segmentation of CT scans, opposed to single L3-slice alone. This systematic review evaluates feasibility and accuracy of automated segmentation of 3D CT scans for volumetric body composition (BC) analysis, as well as current limitations and pitfalls clinicians and researchers should be aware of. OVID Medline, Embase and grey literature databases up to October 2021 were searched. Original studies investigating automated skeletal muscle, visceral and subcutaneous AT segmentation from CT were included. Seven of the 92 studies met inclusion criteria. Variation existed in expertise and numbers of humans performing ground-truth segmentations used to train algorithms. There was heterogeneity in patient characteristics, pathology and CT phases that segmentation algorithms were developed upon. Reporting of anatomical CT coverage varied, with confusing terminology. Six studies covered volumetric regional slabs rather than the whole body. One study stated the use of whole-body CT, but it was not clear whether this truly meant head-to-fingertip-to-toe. Two studies used conventional computer algorithms. The latter five used deep learning (DL), an artificial intelligence technique where algorithms are similarly organized to brain neuronal pathways. Six of seven reported excellent segmentation performance (Dice similarity coefficients > 0.9 per tissue). Internal testing on unseen scans was performed for only four of seven algorithms, whilst only three were tested externally. Trained DL algorithms achieved full CT segmentation in 12 to 75 s versus 25 min for non-DL techniques. DL enables opportunistic, rapid and automated volumetric BC analysis of CT performed for clinical indications. However, most CT scans do not cover head-to-fingertip-to-toe; further research must validate using common CT regions to estimate true whole-body BC, with direct comparison to single lumbar slice. Due to successes of DL, we expect progressive numbers of algorithms to materialize in addition to the seven discussed in this paper. Researchers and clinicians in the field of BC must therefore be aware of pitfalls. High Dice similarity coefficients do not inform the degree to which BC tissues may be under- or overestimated and nor does it inform on algorithm precision. Consensus is needed to define accuracy and precision standards for ground-truth labelling. Creation of a large international, multicentre common CT dataset with BC ground-truth labels from multiple experts could be a robust solution.

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来源期刊
Journal of Cachexia, Sarcopenia and Muscle
Journal of Cachexia, Sarcopenia and Muscle Medicine-Orthopedics and Sports Medicine
自引率
12.40%
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期刊介绍: The Journal of Cachexia, Sarcopenia, and Muscle is a prestigious, peer-reviewed international publication committed to disseminating research and clinical insights pertaining to cachexia, sarcopenia, body composition, and the physiological and pathophysiological alterations occurring throughout the lifespan and in various illnesses across the spectrum of life sciences. This journal serves as a valuable resource for physicians, biochemists, biologists, dieticians, pharmacologists, and students alike.
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