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用于微钙化分类的多尺度连接链拓扑建模。

Multiscale connected chain topological modelling for microcalcification classification.

机构信息

Department of Computer Science, Aberystwyth University, SY23 3DB, UK.

School of Information and Control Engineering, Shenyang Jianzhu University, Shenyang, 110168, China.

出版信息

Comput Biol Med. 2019 Nov;114:103422. doi: 10.1016/j.compbiomed.2019.103422. Epub 2019 Sep 5.

DOI:10.1016/j.compbiomed.2019.103422
PMID:31521895
Abstract

Computer-aided diagnosis (CAD) systems can be employed to help classify mammographic microcalcification clusters. In this paper, a novel method for the classification of the microcalcification clusters based on topology/connectivity has been introduced. The proposed method is distinct from existing techniques which concentrate on morphology and texture of microcalcifications and surrounding tissue. The proposed approach used multiscale morphological relationship of connectivity between microcalcifications where connected chains between nearest microcalcifications were generated at each scale. Subsequently, graph connectivity features at each scale were extracted to estimate the topological connectivity structure of microcalcification clusters for benign versus malignant classification. The proposed approach was evaluated using publicly available digitized datasets: MIAS and DDSM, in addition to the digital OPTIMAM dataset. The classification of features using KNN obtained a classification accuracy of 86.47±1.30%, 90.0±0.00%, 82.5±2.63%, 76.75±0.66% for the DDSM, MIAS-manual, MIAS-auto and OPTIMAM datasets respectively. The study showed that topological/connectivity modelling using a multiscale approach was appropriate for microcalcification cluster analysis and classification; topological connectivity and distribution can be linked to clinical understanding of microcalcification spatial distribution.

摘要

计算机辅助诊断(CAD)系统可用于帮助对乳腺钼靶微钙化簇进行分类。本文提出了一种基于拓扑/连通性的微钙化簇分类新方法。该方法与现有技术不同,后者主要关注微钙化和周围组织的形态和纹理。所提出的方法使用了微钙化之间连通性的多尺度形态关系,在每个尺度上生成最近微钙化之间的连通链。然后,提取每个尺度的图连通性特征,以估计微钙化簇的拓扑连通结构,用于良性与恶性分类。该方法使用公开的数字化数据集(MIAS 和 DDSM)以及数字化 OPTIMAM 数据集进行了评估。使用 KNN 对特征进行分类,得到的 DDSM、MIAS-manual、MIAS-auto 和 OPTIMAM 数据集的分类准确率分别为 86.47±1.30%、90.0±0.00%、82.5±2.63%和 76.75±0.66%。研究表明,使用多尺度方法进行拓扑/连通性建模适用于微钙化簇分析和分类;拓扑连通性和分布可以与微钙化空间分布的临床理解联系起来。

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