基于深度学习的胸肌分割在胸部CT诊断肌少症中的效果分析。

Joo Chan Choi, Young Jae Kim, Kwang Gi Kim, Eun Young Kim
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引用次数: 0

摘要

骨骼肌减少症是骨骼肌功能和质量的丧失,是一个不良的预后因素。这种情况通常通过测量L3水平的骨骼肌质量来诊断。胸部计算机断层扫描(CT)不包括L3层。我们的目的是确定这些扫描是否可以用于诊断肌肉减少症,从而指导患者的管理和治疗决策。本研究比较了ResNet-UNet、Recurrent Residual UNet和UNet3 +模型在胸部CT图像中分割和测量胸肌面积的效果。共收集了1644例患者的4932张胸部CT图像,并收集了294例患者的腹部CT数据。使用骰子相似系数(DSC)、准确性、灵敏度和特异性来评估模型的性能。此外,采用线性回归分析比较胸肌与L3肌区之间的相关性。三种模型均表现出较高的分割性能,其中UNet3 +模型的分割性能最佳(DSC为0.95±0.03)。胸肌与L3肌区Pearson相关系数呈显著正相关(r = 0.65)。在单因素分析中,仅考虑肌肉面积(r = 0.74)和考虑性别、体重、年龄和肌肉面积(r = 0.83)的多因素分析中,转化后的胸肌与L3肌肉面积之间的相关系数均显示出较强的正相关。利用人工智能(AI)在胸部CT上分割胸肌区域准确率高,测量值与L3肌区域相关性强。采用人工智能技术的胸部CT对肌少症的诊断有重要作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Analysis of the Efficacy of Deep Learning-Based Pectoralis Muscle Segmentation in Chest CT for Sarcopenia Diagnosis.

Sarcopenia is the loss of skeletal muscle function and mass and is a poor prognostic factor. This condition is typically diagnosed by measuring skeletal muscle mass at the L3 level. Chest computed tomography (CT) scans do not include the L3 level. We aimed to determine if these scans can be used to diagnose sarcopenia and thus guide patient management and treatment decisions. This study compared the ResNet-UNet, Recurrent Residual UNet, and UNet3 + models for segmenting and measuring the pectoralis muscle area in chest CT images. A total of 4932 chest CT images were collected from 1644 patients, and additional abdominal CT data were collected from 294 patients. The performance of the models was evaluated using the dice similarity coefficient (DSC), accuracy, sensitivity, and specificity. Furthermore, the correlation between the segmented pectoralis and L3 muscle areas was compared using linear regression analysis. All three models demonstrated a high segmentation performance, with the UNet3 + model achieving the best performance (DSC 0.95 ± 0.03). Pearson correlation coefficient between the pectoralis and L3 muscle areas showed a significant positive correlation (r = 0.65). The correlation coefficient between the transformed pectoralis and L3 muscle areas showed a stronger positive correlation in both univariate analysis using only muscle area (r = 0.74) and multivariate analysis considering sex, weight, age, and muscle area (r = 0.83). Segmentation of the pectoralis muscle area using artificial intelligence (AI) on chest CT was highly accurate, and the measured values showed a strong correlation with the L3 muscle area. Chest CT using AI technology could play a significant role in the diagnosis of sarcopenia.

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