利用取向区分重叠染色体

Daniel Kluvanec, Thomas B. Phillips, K. McCaffrey, N. A. Moubayed
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引用次数: 2

摘要

染色体组型的一个困难步骤是分割接触或重叠的染色体。为了使这一过程自动化,之前的研究转向了深度学习方法,其中一些将任务表述为语义分割问题。这些模型将单独的染色体实例视为语义类,我们认为这是有问题的,因为不确定哪条染色体应该被分类为#1和#2。根据比较规则分配类标签,例如染色体较短/较长,可以缓解,但不能完全解决这个问题。相反,我们在第二阶段分离染色体实例,通过模型预测染色体的方向,并将其作为染色体的关键区分因素之一。我们证明这种方法是有效的。此外,我们引入了一种新的双角度表示,神经网络可以使用它来预测方向。表示将任何方向及其反向映射到同一点。最后,我们提出了一个新的扩展合成数据集,该数据集基于Pommier的数据集,但解决了其训练集和测试集之间分离不足的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Orientation to Distinguish Overlapping Chromosomes
A difficult step in the process of karyotyping is segmenting chromosomes that touch or overlap. In an attempt to automate the process, previous studies turned to Deep Learning methods, with some formulating the task as a semantic segmentation problem. These models treat separate chromosome instances as semantic classes, which we show to be problematic, since it is uncertain which chromosome should be classed as #1 and #2. Assigning class labels based on comparison rules, such as the shorter/longer chromosome alleviates, but does not fully re-solve the issue. Instead, we separate the chromosome instances in a second stage, predict-ing the orientation of the chromosomes by the model and use it as one of the key distinguishing factors of the chromosomes. We demonstrate this method to be effective. Furthermore, we introduce a novel Double-Angle representation that a neural network can use to predict the orientation. The representation maps any direction and its reverse to the same point. Lastly, we present a new expanded synthetic dataset, which is based on Pommier’s dataset, but ad-dresses its issues with insufficient separation between its training and testing sets.
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