Department of Electrical and Computer Engineering, COMSATS University Islamabad, Abbottabad Campus, Abbottabad, Pakistan.
Department of Radiation Sciences, Umeå University, Umeå, Sweden.
Biomed Eng Online. 2022 Jul 8;21(1):46. doi: 10.1186/s12938-022-01016-4.
Advances in sports medicine, rehabilitation applications and diagnostics of neuromuscular disorders are based on the analysis of skeletal muscle contractions. Recently, medical imaging techniques have transformed the study of muscle contractions, by allowing identification of individual motor units' activity, within the whole studied muscle. However, appropriate image-based simulation models, which would assist the continued development of these new imaging methods are missing. This is mainly due to a lack of models that describe the complex interaction between tissues within a muscle and its surroundings, e.g., muscle fibres, fascia, vasculature, bone, skin, and subcutaneous fat. Herein, we propose a new approach to overcome this limitation.
In this work, we propose to use deep learning to model the authentic intra-muscular skeletal muscle contraction pattern using domain-to-domain translation between in silico (simulated) and in vivo (experimental) image sequences of skeletal muscle contraction dynamics. For this purpose, the 3D cycle generative adversarial network (cycleGAN) models were evaluated on several hyperparameter settings and modifications. The results show that there were large differences between the spatial features of in silico and in vivo data, and that a model could be trained to generate authentic spatio-temporal features similar to those obtained from in vivo experimental data. In addition, we used difference maps between input and output of the trained model generator to study the translated characteristics of in vivo data.
This work provides a model to generate authentic intra-muscular skeletal muscle contraction dynamics that could be used to gain further and much needed physiological and pathological insights and assess and overcome limitations within the newly developed research field of neuromuscular imaging.
运动医学、康复应用和神经肌肉疾病诊断学的进步是基于对骨骼肌收缩的分析。最近,医学成像技术通过识别整个研究肌肉中单个运动单位的活动,改变了肌肉收缩的研究方式。然而,适当的基于图像的模拟模型,将有助于这些新的成像方法的进一步发展,这些模型还没有出现。这主要是由于缺乏能够描述肌肉内组织与周围环境(如肌肉纤维、筋膜、脉管系统、骨骼、皮肤和皮下脂肪)之间复杂相互作用的模型。在此,我们提出了一种克服这一局限性的新方法。
在这项工作中,我们提出使用深度学习来模拟真实的肌内骨骼肌收缩模式,通过骨骼肌肉收缩动力学的计算机模拟(模拟)和体内(实验)图像序列之间的域到域转换来实现。为此,对几种超参数设置和修改的 3D 循环生成对抗网络(cycleGAN)模型进行了评估。结果表明,计算机模拟和体内数据的空间特征之间存在很大差异,可以训练一个模型来生成与从体内实验数据获得的真实时空特征相似的特征。此外,我们还使用训练后的模型生成器的输入和输出之间的差异图来研究体内数据的转换特征。
这项工作提供了一种生成真实的肌内骨骼肌收缩动力学的模型,可用于进一步深入了解生理和病理机制,并评估和克服神经肌肉成像这一新研究领域的局限性。