T. A. Docusse, Alexandre César Rodrigues da Silva, Aledir Silveira Pereira, N. Marranghello
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引用次数: 0
摘要
本文描述了一种嵌入式系统的开发,该系统可以自动将数字乳房x线照片上检测到的微钙化分类为Mich 'ele Le Gal提出的五种类型之一,这种分类方案允许放射科医生在不需要手术的情况下确定乳腺癌是否恶性。该系统的硬件部分基于Altera Nios II软件处理器,嵌入式软件部分基于小波和人工神经网络。我们使用Altera DE2-115开发套件来创建自定义的片上系统(SoC),它比普通台式计算机具有许多优势。在我们的测试中,该系统正确分类了94.90%的测试图像,证明了它可以作为放射科医生在乳腺癌早期诊断中的第二意见。
A FPGA-based embedded system for automatic classification of microcalcifications
This paper describes the development of an embedded system that automatically classifies microcalcifications detected on digital mammograms into one of the five types proposed by Mich`ele Le Gal, a classification scheme that allows radiologists to decide whether a breast cancer is malignant or not without the need for surgeries. The hardware part of the developed system is based on an Altera Nios II software processor and the embedded software is based on wavelets and artificial neural networks. We have used an Altera DE2-115 development kit in order to create a custom System-on-Chip (SoC) that has many advantages over common desktop computers. In our tests the system correctly classified 94.90% of test images, proving it can be used as a second opinion by radiologists in breast cancer early diagnosis.