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A novel approach to segment cortical neurons in histological images of the near-term fetal sheep brain model

机译:在近期胎羊脑模型的组织学图像中分割皮质神经元的新方法

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Oxygen deprivation (hypoxia) and reduced blood supply (ischemia) can occur before, during or shortly after birth and can result in death, brain damage and long-term disability. Assessing neuronal survival after hypoxia-ischemia in the near-term fetal sheep brain model is essential for the development of novel treatment strategies. As manual quantification of neurons in histological images varies between different assessors and is extremely time-consuming, automation of the process is needed and has not been currently achieved. To achieve automation, successfully segmenting the neurons from the background is very important. Due to presence of densely populated overlapping cells and with no prior information of shapes and sizes, the segmentation of neurons from the image is complex. Initially, we segmented the RGB images by using K-means clustering to primarily segment the neurons from the background based on their colour value, a distance transform for seed detection and watershed method for separating overlapping objects. However, this resulted in unsatisfactory sensitivity and performance due to over-segmentation if we use the RGB image directly. In this paper, we propose a semi-automated modified approach to segment neurons that tackles the over-segmentation issue that we encountered. Initially, we separated the red, green and blue colour channel information from the RGB image. We determined that by applying the same segmentation method first to the blue channel image, then by performing segmentation on the green channel for the neurons that remain unsegmented from the blue channel segmentation and finally by performing segmentation on red channel for neurons that were still unsegmented from the green channel segmentation, improved performance results could be achieved. The modified approach increased performance for the healthy and ischemic animal images from 89.7% to 98.08% and from 94.36% to 98.06% respectively as compared to using RGB image directly.
机译:出生前,出生中或出生后不久会发生缺氧(缺氧)和血液供应减少(缺血),并可能导致死亡,脑部损伤和长期残疾。在近期的胎儿绵羊脑模型中评估缺氧缺血后的神经元存活对于开发新的治疗策略至关重要。由于组织学图像中神经元的人工定量在不同的评估者之间变化并且非常耗时,因此该过程的自动化是必需的,并且目前尚未实现。为了实现自动化,成功地从背景中分割神经元非常重要。由于存在人口稠密的重叠细胞并且没有形状和大小的先验信息,因此神经元从图像中的分割是复杂的。最初,我们通过使用K-均值聚类对RGB图像进行分割,主要是基于神经元的颜色值,距离转换进行种子检测以及分水岭方法(用于分离重叠对象)将神经元从背景中进行分割。但是,如果直接使用RGB图像,则会由于过度分割而导致灵敏度和性能无法令人满意。在本文中,我们提出了一种半自动化的改进方法来分割神经元,以解决我们遇到的过度分割问题。最初,我们从RGB图像中分离了红色,绿色和蓝色通道信息。我们确定,首先对蓝通道图像应用相同的分割方法,然后对绿色通道进行分割,以对仍未从蓝色通道分割中分离出来的神经元进行处理,最后对红色通道进行分离,以对仍未进行分割的神经元进行分割。绿色通道细分可以提高性能。与直接使用RGB图像相比,改进后的方法将健康和缺血动物图像的性能分别从89.7%提高到98.08%,从94.36%提高到98.06%。

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