Park Seonghwan, Kim Min Young, Jeong Jaewon, Yang Sohae, Kim Minseok S, Moon Inkyu
Department of Robotics and Mechatronics Engineering, DGIST, Daegu, 42988, South Korea.
Department of New Biology, DGIST, Daegu, 42988, South Korea.
Bioinformatics. 2024 Dec 26;41(1). doi: 10.1093/bioinformatics/btae658.
Skeletal muscle cells (skMCs) combine together to create long, multi-nucleated structures called myotubes. By studying the size, length, and number of nuclei in these myotubes, we can gain a deeper understanding of skeletal muscle development. However, human experimenters may often derive unreliable results owing to the unusual shape of the myotube, which causes significant measurement variability.
We propose a new method for quantitative analysis of the dexamethasone side effect on human-derived young and aged skeletal muscle by simultaneous myotube and nuclei segmentation using deep learning combined with post-processing techniques. The deep learning model outputs myotube semantic segmentation, nuclei semantic segmentation, and nuclei center, and post-processing applies a watershed algorithm to accurately distinguish overlapped nuclei and identify myotube branches through skeletonization. To evaluate the performance of the model, the myotube diameter and the number of nuclei were calculated from the generated segmented images and compared with the results calculated by human experimenters. In particular, the proposed model produced outstanding outcomes when comparing human-derived primary young and aged skMCs treated with dexamethasone. The proposed standardized and consistent automated image segmentation system for myotubes is expected to help streamline the drug-development process for skeletal muscle diseases.
The code and the data are available at https://github.com/tdn02007/QA-skMCs-Seg.
骨骼肌细胞(skMCs)组合在一起形成称为肌管的长的、多核结构。通过研究这些肌管中细胞核的大小、长度和数量,我们可以更深入地了解骨骼肌发育。然而,由于肌管形状异常,人类实验者往往会得出不可靠的结果,这会导致显著的测量变异性。
我们提出了一种新的方法,通过使用深度学习结合后处理技术同时进行肌管和细胞核分割,对人类来源的年轻和老年骨骼肌中地塞米松的副作用进行定量分析。深度学习模型输出肌管语义分割、细胞核语义分割和细胞核中心,后处理应用分水岭算法准确区分重叠的细胞核,并通过骨架化识别肌管分支。为了评估模型的性能,从生成的分割图像中计算肌管直径和细胞核数量,并与人类实验者计算的结果进行比较。特别是,在比较用地塞米松处理的人类来源的原代年轻和老年skMCs时,所提出的模型产生了出色的结果。所提出的用于肌管的标准化且一致的自动图像分割系统有望有助于简化骨骼肌疾病的药物开发过程。