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Automated quantification of white blood cells in light microscopic images of injured skeletal muscle

机译:受伤骨骼肌的轻微微观图像中白细胞的自动定量

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摘要

Muscle regeneration process tracking and analysis aim to monitor the injured muscle tissue section over time and analyze the muscle healing procedure. In this procedure, as one of the most diverse cell types observed, white blood cells (WBCs) exhibit dynamic cellular response and undergo multiple protein expression changes. The characteristics, amount, location, and distribution compose the action of cells which may change over time. Their actions and relationships over the whole healing procedure can be analyzed by processing the microscopic images taken at different time points after injury. The previous studies of muscle regeneration usually employ manual approach or basic intensity process to detect and count WBCs. In comparison, computer vision method is more promising in accuracy, processing speed, and labor cost. Besides, it can extract features like cell/cluster size and eccentricity fast and accurately.In this thesis, we propose an automated quantifying and analysis framework to analyze the WBC in light microscope images of uninjured and injured skeletal muscles. The proposed framework features a hybrid image segmentation method combining the Localized Iterative Otsu’s threshold method assisted by neural networks classifiers and muscle edge detection. In specific, both neural network and convoluted neural network based classifiers are studied and compared. Via this framework, the CD68-positive WBC and 7/4-positive WBC quantification and density distribution results are analyzed for demonstrating the effectiveness of the proposed method.
机译:肌肉再生过程跟踪和分析目的是随着时间的推移监测受伤的肌肉组织部分并分析肌肉愈合程序。在该过程中,作为观察到的最多样化的细胞类型之一,白细胞(WBCS)表现出动态细胞反应并经历多种蛋白质表达变化。特征,金额,位置和分布构成了可能随时间变化的细胞的动作。可以通过处理在损伤后不同时间点拍摄的微观图像来分析整个愈合程序的动作和关系。以前的肌肉再生研究通常采用手动方法或基本强度过程来检测和计算WBC。相比之下,计算机视觉方法的准确性,加工速度和劳动力成本更为有前景。此外,它可以快速准确地提取细胞/簇大小和偏心度等特征。本文提出了一种自动化的量化和分析框架,以分析WBC在未受约束和受伤的骨骼肌的光学显微镜图像中。所提出的框架具有混合图像分割方法,该方法组合了神经网络分类器和肌边检测的局部迭代OTSU的阈值方法。具体而言,研究并比较了神经网络和基于卷积的神经网络的分类器。通过该框架,分析了CD68阳性WBC和7/4阳性WBC定量和密度分布结果以证明所提出的方法的有效性。

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