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首页> 外文期刊>IEEE transactions on systems, man, and cybernetics. Part B >Toward a completely automatic neural-network-based human chromosome analysis
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Toward a completely automatic neural-network-based human chromosome analysis

机译:走向基于全自动神经网络的人类染色体分析

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摘要

The application of neural networks (NNs) to automatic analysis of chromosome images is investigated in this paper. All aspects of the analysis, namely segmentation, feature description, selection and extraction, and classification, are studied. As part of the segmentation process, the separation of clusters of partially occluded chromosomes, which is the critical stage that state-of-the-art chromosome analyzers usually fail to accomplish, is performed. First, a moment representation of the image pixels is clustered to create a binary image without a need for threshold selection. Based on the binary image, lines connecting cut points imply possible separations. These hypotheses are verified by a multilayer perceptron (MLP) NN that classifies the two segments created by each separating line. Use of a classification-driven segmentation process gives very promising results without a need for shape modeling or an excessive use of heuristics. In addition, an NN implementation of Sammon's mapping using principal component based initialization is applied to feature extraction, significantly reducing the dimensionality of the feature space and allowing high classification capability. Finally, by applying MLP based hierarchical classification strategies to a well-explored chromosome database, we achieve a classification performance of 83.6%. This is higher than ever published on this database and an improvement of more than 10% in the error rate. Therefore, basing a chromosome analysis on the NN-based techniques that are developed in this research leads toward a completely automatic human chromosome analysis.
机译:本文研究了神经网络在染色体图像自动分析中的应用。研究了分析的所有方面,即分割,特征描述,选择和提取以及分类。作为分割过程的一部分,对部分被遮挡的染色体的簇进行分离,这是最先进的染色体分析仪通常无法完成的关键阶段。首先,图像像素的矩表示被聚类以创建二进制图像,而无需阈值选择。根据二值图像,连接切割点的线表示可能存在分隔。这些假设由多层感知器(MLP)NN进行验证,该感知器对由每个分隔线创建的两个段进行分类。使用分类驱动的分割过程可提供非常有希望的结果,而无需进行形状建模或过度使用启发式方法。另外,使用基于主成分的初始化的Sammon映射的NN实现被应用于特征提取,从而显着降低了特征空间的维数,并具有很高的分类能力。最后,通过将基于MLP的分层分类策略应用于经过充分开发的染色体数据库,我们实现了83.6%的分类性能。这比该数据库上发布的版本更高,错误率提高了10%以上。因此,基于这项研究中所开发的基于NN的技术进行染色体分析可以实现全自动的人类染色体分析。

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