PHOC描述符用于乳腺摄影分类

G. B. Santos, André Tragancin Filho
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引用次数: 3

摘要

本文描述了PHOC(颜色金字塔直方图)特征描述符在表示乳房x线摄影(也称为乳房x线摄影)中呈现的特征的能力方面的实验。从数字乳房x线摄影的区域中取下斑块,分别代表良性、癌性、正常组织和图像背景。这样做的动机是为了在远离医学专家的地方,在一台廉价的普通台式电脑上执行这项提议。从DDSM数据库中获取图像,处理后生成用于训练人工神经网络的特征数据集,通过学习率曲线和ROC曲线分析对结果进行评价,并提取混淆矩阵和其他定量指标(TPR、FPR和Accuracy)进行分析。平均精度≈0。8和从结果中提取的其他指标表明,该提案具有进一步发展的潜力。在最大的努力下,PHOC在文献中没有发现在乳房x线摄影中的应用,如本文所提出的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PHOC Descriptor Applied for Mammography Classification
This paper describes experiments with PHOC (Pyramid Histogram of Color) features descriptor in terms of capacity for representing features presented in breast radiograph (also known as mammography). Patches were taken from regions in digital mammographies, representing benign, cancerous, normal tissues and image’s background. The motivation is to evaluate the proposal in perspective of using it for execution in an inexpensive ordinary desktop computer in places located far from medical experts. The images were obtained from DDSM database and processed producing the feature-dataset used for training an Artificial Neural Network, the results were evaluated by analysis of the learning rate curve and ROC curves, besides these graphical analytical tools the confusion matrix and other quantitative metrics (TPR, FPR and Accuracy) were also extracted and analyzed. The average accuracy  ≈  0 . 8  and the other metrics extracted from results demonstrate that the proposal presents potential for further developments. At the best effort, PHOC was not found in literature for applications in mammographies such as it is proposed here.
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