Abstract

As sarcopenia research has been gaining emphasis, the need for quantification of abdominal muscle on computed tomography (CT) is increasing. Thus, a fully automated system to select L3 slice and segment muscle in an end-to-end manner is demanded. We aimed to develop a deep learning model (DLM) to select the L3 slice with consideration of anatomic variations and to segment cross-sectional areas (CSAs) of abdominal muscle and fat. Our DLM, named L3SEG-net, was composed of a YOLOv3-based algorithm for selecting the L3 slice and a fully convolutional network (FCN)-based algorithm for segmentation. The YOLOv3-based algorithm was developed via supervised learning using a training dataset (n = 922), and the FCN-based algorithm was transferred from prior work. Our L3SEG-net was validated with internal (n = 496) and external validation (n = 586) datasets. Ground truth L3 level CT slice and anatomic variation were identified by a board-certified radiologist. L3 slice selection accuracy was evaluated by the distance difference between ground truths and DLM-derived results. Technical success for L3 slice selection was defined when the distance difference was < 10 mm. Overall segmentation accuracy was evaluated by CSA error and DSC value. The influence of anatomic variations on DLM performance was evaluated. In the internal and external validation datasets, the accuracy of automatic L3 slice selection was high, with mean distance differences of 3.7 ± 8.4 mm and 4.1 ± 8.3 mm, respectively, and with technical success rates of 93.1% and 92.3%, respectively. However, in the subgroup analysis of anatomic variations, the L3 slice selection accuracy decreased, with distance differences of 12.4 ± 15.4 mm and 12.1 ± 14.6 mm, respectively, and with technical success rates of 67.2% and 67.9%, respectively. The overall segmentation accuracy of abdominal muscle areas was excellent regardless of anatomic variation, with CSA errors of 1.38–3.10 cm2. A fully automatic system was developed for the selection of an exact axial CT slice at the L3 vertebral level and the segmentation of abdominal muscle areas.

Highlights

  • As sarcopenia research has been gaining emphasis, the need for quantification of abdominal muscle on computed tomography (CT) is increasing

  • Visceral fat was suggested as the main factor for metabolic syndrome, as it was influent to insulin ­regulation[6, 7]

  • This study was approved by the institutional review boards of Asan Medical Center (AMC), Kyung Hee University Hospital (KHUH), Ajou University Hospital (AUH), and Ulsan University Hospital (UUH)

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Summary

Introduction

As sarcopenia research has been gaining emphasis, the need for quantification of abdominal muscle on computed tomography (CT) is increasing. We aimed to develop a deep learning model (DLM) to select the L3 slice with consideration of anatomic variations and to segment crosssectional areas (CSAs) of abdominal muscle and fat. There have been several previous studies that developed automatic segmentation for body composition analysis using ­DLM14–20, and some of them are commercially a­ vailable[21] These new automatic segmentation methods can reduce the time to measure abdominal muscle and fat areas to some degree. Still, these techniques have required manual selection of L3 slice CT images, which might be the greatest hurdle to achieve fully automatic body composition measurements. The time spent was defined to include opening the software, importing the prepared CT images, finding the L3 inferior endplate level, and segmenting the abdominal muscle according to a prior s­ tudy[22]

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