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A robust and extendable framework towards fully automated diagnosis of nonmass lesions in breast DCE-MRI

机译:一种稳健且可扩展的框架,旨在在乳房DCE-MRI中全自动诊断非贵病变

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Diagnosis of breast nonmass lesions, most notably ductal carcinoma in situ, is challenging. Recent studies show that dynamic contrast enhanced MRI achieves high sensitivity in diagnosis of nonmass lesions. Unlike successfully applied to diagnose mass lesions, particularly kinetic features are reported to be less effective in discriminating nonmass lesions. It is even difficult for human observers to differentiate nonmass lesions against the enhancing parenchymal or benign lesions due to their sometimes similar morphology and contrast kinetics. Towards an automated computer-aided diagnosis system of nonmass lesions, we implemented an extendable and completely automated framework that is efficient and modularized, aiming to discriminate detected suspicious regions into malignant and benign. The entire framework consists of five sequentially executed modules: motion correction, segmentation of breast regions, detection of suspicious regions, feature extraction, and knowledge-based analysis of suspicious regions. A preliminary test was performed on a data set collecting 162 nonmass lesions extracted from 67 patients, which achieved an area under ROC curve value of 0.74 for malignant lesions.
机译:乳腺非肥能病变的诊断,最符合的导管癌原位,是具有挑战性的。最近的研究表明,动态对比增强的MRI在非肥胖病变的诊断中实现了高敏感性。与成功应用于诊断质量病变不同,据报道特别是动力学特征在鉴别非镉性病变方面不太有效。人类观察者甚至难以通过它们有时相似的形态和对比动力学来区分对增强的实质或良性病变来区分非测量病变。对于非贵病变的自动化计算机辅助诊断系统,我们实施了一种可扩展的和完全自动化的框架,其有效和模块化,旨在区分检测到的可疑地区变为恶性和良性。整个框架由五个顺序执行的模块组成:运动校正,乳房区域的分割,可疑地区的检测,特征提取和基于知识的可疑地区的分析。对从67名患者提取的数据集收集162个非测量病变的数据集进行初步试验,该患者在ROC曲线值下实现了0.74的区域,对于恶性病变。

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