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A Study on Automated Process for Extracting White Blood Cellular Data from Microscopic Digital Injured Skeletal Muscle Images

机译:从显微数字受伤骨骼肌图像中提取白细胞数据的自动过程研究

摘要

Skeletal muscle injury is one of the common injuries caused by high-intensity sports activities, military related works, and natural disasters. In order to discover better therapies, it is important to study muscle regeneration process. Muscle regeneration process tracking is the act of monitoring injured tissue section over time, noting white blood cell behavior and cell-fiber relations. A large number of microscopic images are taken for tracking muscle regeneration process over multiple time instances. Currently, manual approach is widely used to analyze a microscopic image of muscle cross section, which is time consuming, tedious and buggy.Automation of this research methodology is essential to process a big amount of data. The objective of this thesis is to develop a framework to track the regeneration process automatically. The framework includes dynamic thresholding, morphological processing, and feature extraction.Based on the clinical assumptions, the threshold is calculated using standard deviation and mean of probable single cells. After thresholding, six parameters are calculated including average size, cell count, cell area density, cell count on the basis of size, the number of cytoplasmic and membrane cells as well as the average distance between cellular objects. All these parameters are estimated over the time, which helped to note the pattern of change in leukocytes (White blood cells) presence. Based on these results, a clear pattern of leukocyte movement is observed. Our future work includes deriving the mathematical equations using regression model on the data set of increased time points.
机译:骨骼肌损伤是高强度运动,军事相关工作和自然灾害引起的常见伤害之一。为了发现更好的疗法,研究肌肉再生过程很重要。肌肉再生过程跟踪是随时间监视受伤组织切片的行为,注意白细胞行为和细胞纤维关系。拍摄大量显微图像以跟踪多个时间实例上的肌肉再生过程。目前,人工方法被广泛用于分析肌肉横截面的显微图像,这是费时,繁琐和越野车。这种研究方法的自动化对于处理大量数据至关重要。本文的目的是建立一个自动跟踪再生过程的框架。该框架包括动态阈值处理,形态学处理和特征提取,基于临床假设,使用标准差和可能的单细胞平均值计算阈值。阈值化后,计算六个参数,包括平均大小,细胞数,细胞面积密度,基于大小的细胞数,细胞质和膜细胞的数量以及细胞对象之间的平均距离。所有这些参数都是随时间估算的,有助于记录白细胞(白细胞)存在的变化模式。基于这些结果,观察到白细胞运动的清晰模式。我们未来的工作包括在增加时间点的数据集上使用回归模型推导数学方程式。

著录项

  • 作者

    Karki Bibek;

  • 作者单位
  • 年度 2016
  • 总页数
  • 原文格式 PDF
  • 正文语种 English
  • 中图分类

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