Research Institute, Hospital for Special Surgery, New York, USA.
Orthopedic Soft Tissue Research Program, Hospital for Special Surgery, New York, USA.
Arthritis Res Ther. 2022 Mar 11;24(1):68. doi: 10.1186/s13075-021-02716-3.
Histopathology is widely used to analyze clinical biopsy specimens and tissues from pre-clinical models of a variety of musculoskeletal conditions. Histological assessment relies on scoring systems that require expertise, time, and resources, which can lead to an analysis bottleneck. Recent advancements in digital imaging and image processing provide an opportunity to automate histological analyses by implementing advanced statistical models such as machine learning and deep learning, which would greatly benefit the musculoskeletal field. This review provides a high-level overview of machine learning applications, a general pipeline of tissue collection to model selection, and highlights the development of image analysis methods, including some machine learning applications, to solve musculoskeletal problems. We discuss the optimization steps for tissue processing, sectioning, staining, and imaging that are critical for the successful generalizability of an automated image analysis model. We also commenting on the considerations that should be taken into account during model selection and the considerable advances in the field of computer vision outside of histopathology, which can be leveraged for image analysis. Finally, we provide a historic perspective of the previously used histopathological image analysis applications for musculoskeletal diseases, and we contrast it with the advantages of implementing state-of-the-art computational pathology approaches. While some deep learning approaches have been used, there is a significant opportunity to expand the use of such approaches to solve musculoskeletal problems.
组织病理学被广泛用于分析各种肌肉骨骼疾病的临床活检标本和临床前模型的组织。组织学评估依赖于需要专业知识、时间和资源的评分系统,这可能导致分析瓶颈。数字成像和图像处理的最新进展为通过实施机器学习和深度学习等先进统计模型来自动化组织学分析提供了机会,这将极大地有益于肌肉骨骼领域。
本文综述了机器学习应用的高级概述,从组织采集到模型选择的一般流程,并强调了图像分析方法的发展,包括一些机器学习应用,以解决肌肉骨骼问题。我们讨论了组织处理、切片、染色和成像的优化步骤,这些步骤对于自动化图像分析模型的成功通用性至关重要。我们还评论了在模型选择过程中应考虑的因素,以及组织病理学之外计算机视觉领域的重要进展,可以将其用于图像分析。
最后,我们提供了以前用于肌肉骨骼疾病的组织病理学图像分析应用的历史观点,并将其与实施最先进的计算病理学方法的优势进行了对比。虽然已经使用了一些深度学习方法,但有很大的机会扩大这些方法的使用范围,以解决肌肉骨骼问题。