染色体分类的暹罗网络

Swati, Gaurav Gupta, Mohit Yadav, Monika Sharma, L. Vig
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引用次数: 57

摘要

染色体核合是根据细胞图像中的大小、着丝粒位置和带型对23对人类染色体进行配对和排序的过程。临床细胞遗传学家经常使用中期核型分析人类染色体的诊断目的。它需要经验,领域的专业知识和相当大的人工努力,有效地执行核型和各种疾病的诊断。因此,自动化或甚至部分自动化是非常可取的,以协助技术人员并减少核型所必需的认知负荷。基于这些动机,在本文中,我们尝试通过借鉴深度学习的最新思想来开发染色体分类方法。更具体地说,我们对染色体进行拉直,并将它们输入到暹罗网络中,以使来自相似标签的样本嵌入得更近。此外,我们建议从成对数据集中进行平衡采样,同时为Siamese网络选择不同的训练对,并在从训练的Siamese网络获得的嵌入之上进行基于MLP的预测。我们在从医院收集的健康患者的真实世界数据集上进行实验,并通过在分类之前将它们应用于染色体图像,详尽地比较了不同矫直技术的效果。结果表明,该方法的训练和预测速度分别提高了83倍和3倍;同时超越了利用深度卷积神经网络创建的非常有竞争力的基线的性能。
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Siamese Networks for Chromosome Classification
Karyotying is the process of pairing and ordering 23 pairs of human chromosomes from cell images on the basis of size, centromere position, and banding pattern. Karyotyping during metaphase is often used by clinical cytogeneticists to analyze human chromosomes for diagnostic purposes. It requires experience, domain expertise and considerable manual effort to efficiently perform karyotyping and diagnosis of various disorders. Therefore, automation or even partial automation is highly desirable to assist technicians and reduce the cognitive load necessary for karyotyping. With these motivations, in this paper, we attempt to develop methods for chromosome classification by borrowing the latest ideas from deep learning. More specifically, we perform straightening on chromosomes and feed them into Siamese Networks to push the embeddings of samples coming from similar labels closer. Further, we propose to perform balanced sampling from the pairwise dataset while selecting dissimilar training pairs for Siamese Networks, and an MLP based prediction on top of the embeddings obtained from the trained Siamese Networks. We perform our experiments on a real world dataset of healthy patients collected from a hospital and exhaustively compare the effect of different straightening techniques, by applying them to chromosome images prior to classification. Results demonstrate that the proposed methods speed up both training and prediction by 83 and 3 folds, respectively; while surpassing the performance of a very competitive baseline created utilizing deep convolutional neural networks.
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