一种用于乳腺肿块检测和分类的并行计算机系统

Soha Yousuf, S. Mohammed
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引用次数: 2

摘要

乳房肿块被认为是至关重要的,因为它具有明确的恶性目标,其检测对乳腺癌的诊断证明是急性的。尽管技术的进步促进了医疗领域的诊断和临床发展;乳房x线摄影评估肿瘤的准确性仍然是一个重要的问题。这是对大规模探测的更大关注。本文旨在创建一个动态乳房x线图像增强系统并行肿瘤检测和分类系统。基于直方图算法的动态列表构成了增强系统。该检测分类系统由种子区域生长(SRG)分割算法和多层感知器(MLP)神经分类器组成,采用反向传播算法。结果表明,所提出的技术有望准确地区分良恶性肿瘤,并提高乳房图像质量。后者的灵敏度为88%,特异度为72%,Az值为0.84,总体分类准确率为80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A parallel computer system for the detection and classification of breast masses
Breast masses are regarded of paramount importance attributed clear malignancy targets whose detection proves acute for breast cancer diagnosis. Despite the boost in technology that has enhanced diagnostic and clinical developments in the medical field; the accuracy in mammographic tumor evaluation still remains a comprising issue. This is with an even greater regard towards mass detection. This paper is aimed towards creating a dynamic mammographic image enhancement system in parallel to a tumor detection and classification system. A dynamic list of histogram based algorithms constitutes the enhancement system. The detection and classification system comprise of a Seed Region Growing (SRG) segmentation algorithm and a Multi Layer Perceptron (MLP) neural classifier using the Backpropagation algorithm. Results have rendered the proposed techniques promising with accurate levels of benign and malignant tumor discrimination and enhanced breast image quality. The latter system achieved 88% sensitivity, 72% specificity, an Az value of 0.84 and an overall classification accuracy of 80%.
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