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聚焦肌肉减少症的身体成分评估人工智能

Artificial intelligence for body composition assessment focusing on sarcopenia.

作者信息

Onishi Sachiyo, Kuwahara Takamichi, Tajika Masahiro, Tanaka Tsutomu, Yamada Keisaku, Shimizu Masahito, Niwa Yasumasa, Yamaguchi Rui

机构信息

Department of Endoscopy, Aichi Cancer Center, Nagoya, Aichi, Japan.

Department of Gastroenterology, Aichi Cancer Center, 1-1 Kanokoden, Chikusa-ku, Nagoya, Aichi, 464-8681, Japan.

出版信息

Sci Rep. 2025 Jan 8;15(1):1324. doi: 10.1038/s41598-024-83401-8.

Abstract

This study aimed to address the limitations of conventional methods for measuring skeletal muscle mass for sarcopenia diagnosis by introducing an artificial intelligence (AI) system for direct computed tomography (CT) analysis. The primary focus was on enhancing simplicity, reproducibility, and convenience, and assessing the accuracy and speed of AI compared with conventional methods. A cohort of 3096 cases undergoing CT imaging up to the third lumbar (L3) level between 2011 and 2021 were included. Random division into preprocessing and sarcopenia cohorts was performed, with further random splits into training and validation cohorts for BMI_AI and Body_AI creation. Sarcopenia_AI utilizes the Skeletal Muscle Index (SMI), which is calculated as (total skeletal muscle area at L3)/(height). The SMI was conventionally measured twice, with the first as the AI label reference and the second for comparison. Agreement and diagnostic change rates were calculated. Three groups were randomly assigned and 10 images before and after L3 were collected for each case. AI models for body region detection (Deeplabv3) and sarcopenia diagnosis (EfficientNetV2-XL) were trained on a supercomputer, and their abilities and speed per image were evaluated. The conventional method showed a low agreement rate (κ coefficient) of 0.478 for the test cohort and 0.236 for the validation cohort, with diagnostic changes in 43% of cases. Conversely, the AI consistently produced identical results after two measurements. The AI demonstrated robust body region detection ability (intersection over Union (IoU) = 0.93), accurately detecting only the body region in all images. The AI for sarcopenia diagnosis exhibited high accuracy, with a sensitivity of 82.3%, specificity of 98.1%, and a positive predictive value of 89.5%. In conclusion, the reproducibility of the conventional method for sarcopenia diagnosis was low. The developed sarcopenia diagnostic AI, with its high positive predictive value and convenient diagnostic capabilities, is a promising alternative for addressing the shortcomings of conventional approaches.

摘要

本研究旨在通过引入用于直接计算机断层扫描(CT)分析的人工智能(AI)系统,解决传统方法在测量骨骼肌质量以诊断肌肉减少症方面的局限性。主要重点是提高简便性、可重复性和便利性,并评估与传统方法相比AI的准确性和速度。纳入了2011年至2021年间接受第三腰椎(L3)水平以下CT成像的3096例病例。进行了随机划分,分为预处理队列和肌肉减少症队列,并进一步随机分为训练队列和验证队列,以创建BMI_AI和Body_AI。肌肉减少症AI利用骨骼肌指数(SMI),其计算方法为(L3处的总骨骼肌面积)/(身高)。传统上对SMI进行两次测量,第一次作为AI标签参考,第二次用于比较。计算一致性和诊断变化率。随机分配三组,每组病例收集L3前后各10张图像。在超级计算机上训练用于身体区域检测(Deeplabv3)和肌肉减少症诊断(EfficientNetV2-XL)的AI模型,并评估其每张图像的能力和速度。传统方法在测试队列中的一致性率(κ系数)较低,为0.478,在验证队列中为0.236,43%的病例有诊断变化。相反,AI在两次测量后始终产生相同的结果。AI显示出强大的身体区域检测能力(交并比(IoU)=0.93),在所有图像中仅准确检测到身体区域。用于肌肉减少症诊断的AI表现出高准确性,灵敏度为82.3%,特异性为98.1%,阳性预测值为89.5%。总之,传统的肌肉减少症诊断方法的可重复性较低。所开发的肌肉减少症诊断AI具有高阳性预测值和便捷的诊断能力,是解决传统方法缺点的一种有前途的替代方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9bb5/11711400/2b94228cfa8e/41598_2024_83401_Fig1_HTML.jpg

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