论文标题

使用图像处理技术和自动编码器的染色体分割分析分析

Chromosome Segmentation Analysis Using Image Processing Techniques and Autoencoders

论文作者

Pallavoor, Amritha S, A, Prajwal, TS, Sundareshan, Pallavoor, Sreekanth K

论文摘要

中期图像中的染色体分析和鉴定是基于细胞遗传学的医学诊断的关键部分。它主要用于识别遗传疾病和疾病的宪法,产前和获得异常。从中期鉴定染色体的过程是一个乏味的过程,需要训练有素的人员和几个小时才能进行。挑战特别是在中期图像中处理触摸,重叠和聚集的染色体时存在挑战,如果未正确进行分割,则会导致错误的分类。我们提出了一种自动化从给定的中期图像的检测和分割过程的方法,并在使用深层CNN体系结构中对其进行分类以了解染色体类型。我们已经使用了两种方法来处理中期中发现的重叠染色体的分离 - 一种涉及流域算法的方法,其次是自动编码器,另一种纯粹基于流域算法的方法。这些方法涉及自动化和非常最小的手动努力来执行分割,从而产生输出。手动努力确保了人类的直觉得到考虑,尤其是在处理触摸,重叠和聚类染色体时。分割后,使用深CNN模型将单个染色体图像分类为95.75 \%精度。此外,我们将分布策略从给定输出(通常可以在正常情况下的46个单个图像组成)中分类为分布策略,以98 \%的精度为98 \%。我们的研究有助于得出结论,通过图像处理技术可以将参与染色体分割的纯手动努力自动化至非常好的水平,以产生可靠且令人满意的结果。

Chromosome analysis and identification from metaphase images is a critical part of cytogenetics based medical diagnosis. It is mainly used for identifying constitutional, prenatal and acquired abnormalities in the diagnosis of genetic diseases and disorders. The process of identification of chromosomes from metaphase is a tedious one and requires trained personnel and several hours to perform. Challenge exists especially in handling touching, overlapping and clustered chromosomes in metaphase images, which if not segmented properly would result in wrong classification. We propose a method to automate the process of detection and segmentation of chromosomes from a given metaphase image, and in using them to classify through a Deep CNN architecture to know the chromosome type. We have used two methods to handle the separation of overlapping chromosomes found in metaphases - one method involving watershed algorithm followed by autoencoders and the other a method purely based on watershed algorithm. These methods involve a combination of automation and very minimal manual effort to perform the segmentation, which produces the output. The manual effort ensures that human intuition is taken into consideration, especially in handling touching, overlapping and cluster chromosomes. Upon segmentation, individual chromosome images are then classified into their respective classes with 95.75\% accuracy using a Deep CNN model. Further, we impart a distribution strategy to classify these chromosomes from the given output (which typically could consist of 46 individual images in a normal scenario for human beings) into its individual classes with an accuracy of 98\%. Our study helps conclude that pure manual effort involved in chromosome segmentation can be automated to a very good level through image processing techniques to produce reliable and satisfying results.

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