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使用诊断性腹部计算机断层扫描图像验证结直肠癌患者身体成分分析的自动分割方法。

Validation of an automated segmentation method for body composition analysis in colorectal cancer patients using diagnostic abdominal computed tomography images.

机构信息

Department of Epidemiology, GROW Research Institute for Oncology and Reproduction, Maastricht University, Maastricht, the Netherlands.

Department of Epidemiology, GROW Research Institute for Oncology and Reproduction, Maastricht University, Maastricht, the Netherlands.

出版信息

Clin Nutr ESPEN. 2024 Oct;63:659-667. doi: 10.1016/j.clnesp.2024.07.1054. Epub 2024 Aug 2.

DOI:10.1016/j.clnesp.2024.07.1054
PMID:39098602
Abstract

BACKGROUND & AIMS: Several automated programs have been developed to facilitate body composition analysis of images from abdominal computed tomography (CT) scans. External validation in patients with colorectal cancer is necessary for use in research and clinical practice. Our aim was to validate an automatic method (AutoMATiCA) of segmenting CT images at the third lumbar level (L3) from patients with colorectal cancer, by comparing with manual segmentation.

METHODS

Diagnostic abdominal CT scans of consecutive patients with stage I-III colorectal cancer were analysed to measure cross-sectional areas and tissue densities of skeletal muscle and intra-muscular, visceral, and subcutaneous adipose tissue. Trained analysts performed manual segmentation of L3 CT images using SliceOmatic. Automatic segmentation was performed using AutoMATiCA, an open-source software. The Dice similarity coefficient (DSC) was calculated to assess segmentation accuracy. Agreement of automatic with manual segmentation was evaluated using intra-class correlation coefficients (ICCs) and Bland-Altman plots with limits of agreement.

RESULTS

A total of 292 scans were included, of which 62% were from male patients. The agreement of AutoMATiCA with the manual segmentation was excellent, with median DSC values ranging from 0.900 to 0.991 and ICCs above 0.95 for all segmented areas. No systematic deviations were observed in Bland-Altman plots for all segmented areas, with overall narrow limits of agreement.

CONCLUSIONS

AutoMATiCA provides an accurate segmentation of abdominal CT images from patients with colorectal cancer. Our findings support its use as a highly efficient automated tool for body composition analysis in research and potentially also in clinical practice.

摘要

背景与目的

已经开发了几种自动化程序来促进腹部 CT 扫描图像的身体成分分析。在结直肠癌患者中进行外部验证对于研究和临床实践中的使用是必要的。我们的目的是通过与手动分割进行比较,验证一种用于结直肠癌患者的自动分割 CT 图像的方法(AutoMATiCA),即第三腰椎水平(L3)。

方法

对连续患有 I-III 期结直肠癌的患者进行诊断性腹部 CT 扫描,以测量骨骼肌和肌内、内脏和皮下脂肪组织的横截面积和组织密度。使用 SliceOmatic 对 L3 CT 图像进行手动分割,由经过培训的分析员完成。使用 AutoMATiCA 进行自动分割,这是一种开源软件。计算 Dice 相似系数(DSC)以评估分割准确性。使用组内相关系数(ICC)和具有一致性界限的 Bland-Altman 图评估自动与手动分割的一致性。

结果

共纳入 292 例扫描,其中 62%的患者为男性。AutoMATiCA 与手动分割的一致性非常好,所有分割区域的 DSC 值中位数范围为 0.900 至 0.991,ICC 值均高于 0.95。所有分割区域的 Bland-Altman 图均未观察到系统偏差,总体一致性界限较窄。

结论

AutoMATiCA 可准确分割结直肠癌患者的腹部 CT 图像。我们的研究结果支持将其作为研究中身体成分分析的高效自动化工具,并且可能在临床实践中也具有应用价值。

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