在低剂量CT图像上使用深度学习评估骨骼肌。

IF 1.9 Q3 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Global health & medicine Pub Date : 2023-10-31 DOI:10.35772/ghm.2023.01050
Yumi Matsushita, Tetsuji Yokoyama, Tomoyuki Noguchi, Toru Nakagawa
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引用次数: 0

摘要

在日本,通过计算机断层扫描(CT)在肚脐水平获得的内脏脂肪面积在临床上被用作内脏脂肪肥胖的指标。使用肚脐水平的CT图像分析骨骼肌质量可能有助于同时评估少肌症和少肌性肥胖。本研究的目的是评估使用低剂量腹部CT测量骨骼肌质量的深度学习模型(DLM)的性能。本研究中使用的主要数据集包括在7370名受试者中采集的11494张肚脐水平的低剂量腹部CT图像,用于代谢综合征筛查。公开提供的癌症成像档案(TCIA)数据集,包括5801张腹部CT图像,用作补充数据集。对于腹部CT图像分割,我们使用了具有不同滤波器大小和层次深度的SegU-net DLM。通过测量骰子相似系数(DSC)、截面积(CSA)误差和Bland-Altman图来评估分割精度。所提出的DLM实现了0.992±0.012的DSC、0.41±1.89%的CSA误差和-0.1±3.8%的Bland-Altman百分比差异。所提出的DL M能够高精度地自动分割低剂量腹部CT的骨骼肌质量测量。
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Assessment of skeletal muscle using deep learning on low-dose CT images.

The visceral fat area obtained by computed tomography (CT) at the navel level is clinically used as an indicator of visceral fat obesity in Japan. Analysis of skeletal muscle mass using CT images at the navel level may potentially support concurrent assessment of sarcopenia and sarcopenic obesity. The purpose of this study was to assess the performance of deep learning models (DLMs) for skeletal muscle mass measurement using low-dose abdominal CT. The primary dataset used in this study included 11,494 low-dose abdominal CT images at navel level acquired in 7,370 subjects for metabolic syndrome screening. The publicly available Cancer Imaging Archive (TCIA) dataset, including 5,801 abdominal CT images, was used as a complementary dataset. For abdominal CT image segmentation, we used the SegU-net DLM with different filter size and hierarchical depth. The segmentation accuracy was assessed by measuring the dice similarity coefficient (DSC), cross-sectional area (CSA) error, and Bland-Altman plots. The proposed DLM achieved a DSC of 0.992 ± 0.012, a CSA error of 0.41 ± 1.89%, and a Bland-Altman percent difference of -0.1 ± 3.8%. The proposed DLM was able to automatically segment skeletal muscle mass measurements from low-dose abdominal CT with high accuracy.

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