使用融合先验知识的深度学习框架,基于中期图像的自动染色体分类

Li Xiao, Chunlong Luo
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引用次数: 8

摘要

染色体分类是核型分析中一项重要但又困难而繁琐的工作。以往的方法仅对人工分割的单染色体进行分类,与临床实践相去甚远。在这项工作中,我们提出了一种基于检测的方法,即DeepACC,基于整个中期图像同时定位和精细分类染色体。首先引入加性角边缘损失来增强模型的判别能力。为了减轻批处理效应,我们充分利用染色体通常成对出现的先验知识,通过连体网络逐个变换每一类的决策边界。此外,我们将临床7组标准作为先验知识,并设计了额外的组内邻接损失,以进一步降低类间相似性。从临床实验室收集私人中期图像数据集并标记以评估性能。结果表明,与最先进的基线模型相比,新设计带来了令人鼓舞的性能提升。
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DEEPACC:Automate Chromosome Classification Based On Metaphase Images Using Deep Learning Framework Fused With Priori Knowledge
Chromosome classification is an important but difficult and tedious task in karyotyping. Previous methods only classify manually segmented single chromosome, which is far from clinical practice. In this work, we propose a detection based method, DeepACC, to locate and fine classify chromosomes simultaneously based on the whole metaphase image. We firstly introduce the Additive Angular Margin Loss to enhance the discriminative power of the model. To alleviate batch effects, we transform decision boundary of each class case-by-case through a siamese network which make full use of priori knowledges that chromosomes usually appear in pairs. Furthermore, we take the clinically seven group criteria as a prior-knowledge and design an additional Group Inner-Adjacency Loss to further reduce inter-class similarities. A private metaphase image dataset from clinical laboratory are collected and labelled to evaluate the performance. Results show that the new design brings encouraging performance gains comparing to the state-of-the-art baseline models.
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