Zhang Dawei, Kang Hongyu, Sun Yu, Liu Justina Yat Wa, Lee Ka-Shing, Song Zhen, Khaw Jien Vei, Yeung Jackie, Peng Tao, Lam Sai-Kit, Zheng Yongping
Department of Biomedical Engineering, The Hong Kong Polytechnic University, Hong Kong SAR, China.
School of Nursing, The Hong Kong Polytechnic University, Hong Kong SAR, China.
Bioengineering (Basel). 2024 Dec 19;11(12):1291. doi: 10.3390/bioengineering11121291.
Sarcopenia is characterized by a degeneration of muscle mass and strength that incurs impaired mobility, posing grievous impacts on the quality of life and well-being of older adults worldwide. In 2018, a new international consensus was formulated to incorporate ultrasound imaging of the rectus femoris (RF) muscle for early sarcopenia assessment. Nonetheless, current clinical RF muscle identification and delineation procedures are manual, subjective, inaccurate, and challenging. Thus, developing an effective AI-empowered RF segmentation model to streamline downstream sarcopenia assessment is highly desirable. Yet, this area of research readily goes unnoticed compared to other disciplines, and relevant research is desperately wanted, especially in comparison among traditional, classic, and cutting-edge segmentation networks. This study evaluated an emerging Automatic Segment Anything Model (AutoSAM) compared to the U-Net and nnU-Net models for RF segmentation on ultrasound images. We prospectively analyzed ultrasound images of 257 older adults (aged > 65) in a community setting from Hong Kong's District Elderly Community Centers. Three models were developed on a training set ( = 219) and independently evaluated on a testing set ( = 38) in aspects of DICE, Intersection-over-Union, Hausdorff Distance (HD), accuracy, precision, recall, as well as stability. The results indicated that the AutoSAM achieved the best segmentation agreement in all the evaluating metrics, consistently outperforming the U-Net and nnU-Net models. The results offered an effective state-of-the-art RF muscle segmentation tool for sarcopenia assessment in the future.
肌肉减少症的特征是肌肉质量和力量退化,导致行动能力受损,对全球老年人的生活质量和幸福感产生严重影响。2018年,制定了一项新的国际共识,将股直肌(RF)的超声成像纳入早期肌肉减少症评估。然而,目前临床中对RF肌肉的识别和描绘程序是手动的、主观的、不准确的且具有挑战性。因此,开发一种有效的人工智能驱动的RF分割模型以简化下游肌肉减少症评估非常必要。然而,与其他学科相比,这一研究领域很容易被忽视,急需相关研究,特别是在传统、经典和前沿分割网络之间的比较方面。本研究将新兴的自动分割任何事物模型(AutoSAM)与U-Net和nnU-Net模型进行比较,用于超声图像上的RF分割。我们前瞻性地分析了来自香港地区老年人社区中心的257名老年人(年龄>65岁)在社区环境中的超声图像。在训练集(=219)上开发了三种模型,并在测试集(=38)上对其在DICE、交并比、豪斯多夫距离(HD)、准确性、精确性、召回率以及稳定性等方面进行了独立评估。结果表明,AutoSAM在所有评估指标上都取得了最佳的分割一致性,始终优于U-Net和nnU-Net模型。这些结果为未来肌肉减少症评估提供了一种有效的先进RF肌肉分割工具。