Refining Muscle Morphometry Through Machine Learning and Spatial Analysis.

IF 3.4 2区 医学 Q1 CLINICAL NEUROLOGY Neuropathology and Applied Neurobiology Pub Date : 2025-04-01 DOI:10.1111/nan.70012
Daisuke Ono, Honami Kawai, Hiroya Kuwahara, Takanori Yokota
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Abstract

Aims: Muscle morphology provides important information in differentiating disease aetiology, but its measurement remains challenging because of the lack of an efficient and objective method. This study aimed to quantitatively refine the morphological features of muscle fibres in neuromuscular diseases using machine learning.

Methods: In this retrospective study, we analysed muscle biopsy specimens on haematoxylin and eosin-staining. Machine learning-based software was developed to segment muscle fibre contours and perform automated muscle morphometry and subsequent graph theory-based spatial analysis of atrophied fibre grouping. A decision tree-based framework, LightGBM, was trained to predict underlying aetiologies based on morphometric and spatial variables.

Results: The study included 100 muscle samples, including 20 normal muscles, 49 myopathies and 19 neuropathies. The fine-tuned segmentation model, YOLOv8, achieved a mask average precision of 0.819. The muscle morphometry revealed the significance of fibre circularity. The mean circularity was higher in the myopathy group, and the SD of circularity was elevated in the neuropathy group. Although most cases were consistent with textbook findings, atypical presentations, such as dermatomyositis with angular atrophy and amyotrophic lateral sclerosis with round atrophy, were objectively documented. Spatial analysis quantified grouped atrophy, showing the potential to feature specific atrophy patterns. The LightGBM model successfully predicted the final clinical diagnosis of the myopathies and neuropathies with an accuracy of 0.852, which exceeded that of 0.808 by human annotation.

Conclusion: Automated muscle morphometry and spatial analysis provide quantification of muscle morphology and patterns of atrophy, which will facilitate objective and efficient investigation of neuromuscular diseases.

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通过机器学习和空间分析改进肌肉形态测量。
目的:肌肉形态学为区分疾病病因提供了重要信息,但由于缺乏高效、客观的方法,其测量仍具有挑战性。本研究旨在利用机器学习方法定量完善神经肌肉疾病中肌肉纤维的形态特征:在这项回顾性研究中,我们对肌肉活检标本进行了血色素和伊红染色分析。我们开发了基于机器学习的软件,用于分割肌肉纤维轮廓、进行自动肌肉形态测量以及随后基于图论的萎缩纤维组空间分析。对基于决策树的框架 LightGBM 进行了训练,以根据形态和空间变量预测潜在病因:研究包括 100 块肌肉样本,其中包括 20 块正常肌肉、49 块肌病和 19 块神经病。微调分割模型 YOLOv8 的掩膜平均精确度为 0.819。肌肉形态测量显示了纤维圆度的重要性。肌病组的平均圆度较高,而神经病组的圆度 SD 值较高。虽然大多数病例与教科书上的结论一致,但也有非典型表现的病例,如皮肌炎伴角状萎缩和肌萎缩侧索硬化症伴圆形萎缩。空间分析对分组萎缩进行了量化,显示了以特定萎缩模式为特征的潜力。LightGBM 模型成功预测了肌病和神经病的最终临床诊断,准确率为 0.852,超过了人工标注的 0.808:自动肌肉形态测量和空间分析可量化肌肉形态和萎缩模式,有助于客观、高效地研究神经肌肉疾病。
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来源期刊
CiteScore
8.20
自引率
2.00%
发文量
87
审稿时长
6-12 weeks
期刊介绍: Neuropathology and Applied Neurobiology is an international journal for the publication of original papers, both clinical and experimental, on problems and pathological processes in neuropathology and muscle disease. Established in 1974, this reputable and well respected journal is an international journal sponsored by the British Neuropathological Society, one of the world leading societies for Neuropathology, pioneering research and scientific endeavour with a global membership base. Additionally members of the British Neuropathological Society get 50% off the cost of print colour on acceptance of their article.
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