Using a new artificial intelligence‐aided method to assess body composition CT segmentation in colorectal cancer patients

Author:

Cao Ke1ORCID,Yeung Josephine1,Arafat Yasser12,Qiao Jing1,Gartrell Richard1,Master Mobin3,Yeung Justin M. C.12,Baird Paul N.4

Affiliation:

1. Department of Surgery, Western Precinct University of Melbourne Melbourne Victoria Australia

2. Department of Colorectal Surgery Western Health Melbourne Victoria Australia

3. Department of Radiology Western Health Melbourne Victoria Australia

4. Department of Surgery University of Melbourne Melbourne Victoria Australia

Abstract

AbstractIntroductionThis study aimed to evaluate the accuracy of our own artificial intelligence (AI)‐generated model to assess automated segmentation and quantification of body composition‐derived computed tomography (CT) slices from the lumber (L3) region in colorectal cancer (CRC) patients.MethodsA total of 541 axial CT slices at the L3 vertebra were retrospectively collected from 319 patients with CRC diagnosed during 2012–2019 at a single Australian tertiary institution, Western Health in Melbourne. A two‐dimensional U‐Net convolutional network was trained on 338 slices to segment muscle, visceral adipose tissue (VAT) and subcutaneous adipose tissue (SAT). Manual reading of these same slices of muscle, VAT and SAT was created to serve as ground truth data. The Dice similarity coefficient was used to assess the U‐Net‐based segmentation performance on both a validation dataset (68 slices) and a test dataset (203 slices). The measurement of cross‐sectional area and Hounsfield unit (HU) density of muscle, VAT and SAT were compared between two methods.ResultsThe segmentation for muscle, VAT and SAT demonstrated excellent performance for both the validation (Dice similarity coefficients >0.98, respectively) and test (Dice similarity coefficients >0.97, respectively) datasets. There was a strong positive correlation between manual and AI segmentation measurements of body composition for both datasets (Spearman's correlation coefficients: 0.944–0.999, P < 0.001).ConclusionsCompared to the gold standard, this fully automated segmentation system exhibited a high accuracy for assessing segmentation and quantification of abdominal muscle and adipose tissues of CT slices at the L3 in CRC patients.

Publisher

Wiley

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