Development of a deep learning model for predicting skeletal muscle density from ultrasound data: a proof-of-concept study.

IF 4.8 1区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Radiologia Medica Pub Date : 2025-09-01 Epub Date: 2025-07-08 DOI:10.1007/s11547-025-02047-2
Federico Pistoia, Marta Macciò, Riccardo Picasso, Federico Zaottini, Giovanni Marcenaro, Simone Rinaldi, Deborah Bianco, Gabriele Rossi, Luca Tovt, Michelle Pansecchi, Sara Sanguinetti, Mehrnaz Hamedani, Angelo Schenone, Carlo Martinoli
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引用次数: 0

Abstract

Reduced muscle mass and function are associated with increased morbidity, and mortality. Ultrasound, despite being cost-effective and portable, is still underutilized in muscle trophism assessment due to its reliance on operator expertise and measurement variability. This proof-of-concept study aimed to overcome these limitations by developing a deep learning model that predicts muscle density, as assessed by CT, using Ultrasound data, exploring the feasibility of a novel Ultrasound-based parameter for muscle trophism.A sample of adult participants undergoing CT examination in our institution's emergency department between May 2022 and March 2023 was enrolled in this single-center study. Ultrasound examinations were performed with a L11-3 MHz probe. The rectus abdominis muscles, selected as target muscles, were scanned in the transverse plane, recording an Ultrasound image per side. For each participant, the same operator calculated the average target muscle density in Hounsfield Units from an axial CT slice closely matching the Ultrasound scanning plane.The final dataset included 1090 Ultrasound images from 551 participants (mean age 67 ± 17, 323 males). A deep learning model was developed to classify Ultrasound images into three muscle-density classes based on CT values. The model achieved promising performance, with a categorical accuracy of 70% and AUC values of 0.89, 0.79, and 0.90 across the three classes.This observational study introduces an innovative approach to automated muscle trophism assessment using Ultrasound imaging. Future efforts should focus on external validation in diverse populations and clinical settings, as well as expanding its application to other muscles.

从超声数据预测骨骼肌密度的深度学习模型的开发:概念验证研究。
肌肉质量和功能的减少与发病率和死亡率的增加有关。尽管超声具有成本效益和便携性,但由于其依赖于操作人员的专业知识和测量的可变性,在肌肉营养评估中仍未得到充分利用。这项概念验证研究旨在通过开发一种深度学习模型来克服这些局限性,该模型利用超声数据预测CT评估的肌肉密度,探索一种新的基于超声的肌肉营养参数的可行性。该单中心研究纳入了2022年5月至2023年3月期间在我院急诊科接受CT检查的成年参与者样本。超声检查采用L11-3 MHz探头。选取腹直肌作为靶肌,在横切面扫描,每侧记录一张超声图像。对于每个参与者,同一操作员根据与超声扫描平面密切匹配的轴向CT切片计算平均目标肌肉密度(Hounsfield Units)。最终数据集包括来自551名参与者(平均年龄67±17,323名男性)的1090张超声图像。开发了一种深度学习模型,根据CT值将超声图像分为三个肌肉密度类。该模型取得了良好的性能,分类准确率为70%,三个类别的AUC值分别为0.89、0.79和0.90。这项观察性研究引入了一种利用超声成像自动评估肌肉营养的创新方法。未来的工作应侧重于在不同人群和临床环境中的外部验证,以及将其应用于其他肌肉。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Radiologia Medica
Radiologia Medica 医学-核医学
CiteScore
14.10
自引率
7.90%
发文量
133
审稿时长
4-8 weeks
期刊介绍: Felice Perussia founded La radiologia medica in 1914. It is a peer-reviewed journal and serves as the official journal of the Italian Society of Medical and Interventional Radiology (SIRM). The primary purpose of the journal is to disseminate information related to Radiology, especially advancements in diagnostic imaging and related disciplines. La radiologia medica welcomes original research on both fundamental and clinical aspects of modern radiology, with a particular focus on diagnostic and interventional imaging techniques. It also covers topics such as radiotherapy, nuclear medicine, radiobiology, health physics, and artificial intelligence in the context of clinical implications. The journal includes various types of contributions such as original articles, review articles, editorials, short reports, and letters to the editor. With an esteemed Editorial Board and a selection of insightful reports, the journal is an indispensable resource for radiologists and professionals in related fields. Ultimately, La radiologia medica aims to serve as a platform for international collaboration and knowledge sharing within the radiological community.
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