使用深度学习对痴呆症患者的咬肌和舌肌进行自动定量测量:横断面研究。

IF 5 Q1 GERIATRICS & GERONTOLOGY
JMIR Aging Pub Date : 2025-03-19 DOI:10.2196/63686
Mahdi Imani, Miguel G Borda, Sara Vogrin, Erik Meijering, Dag Aarsland, Gustavo Duque
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引用次数: 0

摘要

背景:骨骼肌减少症(肌肉质量和力量的损失)增加了老年人不良后果的风险,并导致认知能力下降。目前仍缺乏量化肌肉质量和预测不良后果的准确方法,特别是在老年痴呆症患者中。目的:本研究的主要目的是评估在神经认知障碍患者的头部磁共振成像(MRI)扫描中使用深度学习技术对肌肉骨骼组织进行分割和量化的可行性。本研究旨在为神经认知障碍患者使用自动化技术机会性检测肌肉减少症铺平道路。方法:在53名参与者的横断面分析中,我们使用7种类似u - net的深度学习模型对头部MRI图像中的5种不同组织进行分割,并使用Dice相似系数和平均对称表面距离作为主要评估技术对结果进行比较。我们还分析了BMI与肌肉和脂肪量之间的关系。结果:我们的框架准确量化了头、舌肌左右两侧的咬肌和皮下脂肪(平均Dice相似系数92.4%)。舌肌、左咬肌的面积和体积与BMI之间存在显著的相关性。结论:我们的研究证明了深度学习模型在神经认知障碍患者头部MRI中量化肌肉体积的成功应用。这是朝着临床应用人工智能和深度学习方法来估计咬肌和舌肌并预测这一人群的不良后果迈出的有希望的第一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Deep Learning to Perform Automatic Quantitative Measurement of Masseter and Tongue Muscles in Persons With Dementia: Cross-Sectional Study.

Background: Sarcopenia (loss of muscle mass and strength) increases adverse outcomes risk and contributes to cognitive decline in older adults. Accurate methods to quantify muscle mass and predict adverse outcomes, particularly in older persons with dementia, are still lacking.

Objective: This study's main objective was to assess the feasibility of using deep learning techniques for segmentation and quantification of musculoskeletal tissues in magnetic resonance imaging (MRI) scans of the head in patients with neurocognitive disorders. This study aimed to pave the way for using automated techniques for opportunistic detection of sarcopenia in patients with neurocognitive disorder.

Methods: In a cross-sectional analysis of 53 participants, we used 7 U-Net-like deep learning models to segment 5 different tissues in head MRI images and used the Dice similarity coefficient and average symmetric surface distance as main assessment techniques to compare results. We also analyzed the relationship between BMI and muscle and fat volumes.

Results: Our framework accurately quantified masseter and subcutaneous fat on the left and right sides of the head and tongue muscle (mean Dice similarity coefficient 92.4%). A significant correlation exists between the area and volume of tongue muscle, left masseter muscle, and BMI.

Conclusions: Our study demonstrates the successful application of a deep learning model to quantify muscle volumes in head MRI in patients with neurocognitive disorders. This is a promising first step toward clinically applicable artificial intelligence and deep learning methods for estimating masseter and tongue muscle and predicting adverse outcomes in this population.

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来源期刊
JMIR Aging
JMIR Aging Social Sciences-Health (social science)
CiteScore
6.50
自引率
4.10%
发文量
71
审稿时长
12 weeks
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