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Computer-aided diagnosis for diagnostically challenging breast lesions in DCE-MRI based on image registration and integration of morphologic and dynamic characteristics

机译:基于图像配准以及形态和动态特征的整合,在DCE-MRI中对诊断性乳腺病变进行计算机辅助诊断

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Diagnostically challenging lesions comprise both foci (small lesions) and non-mass-like enhancing lesions and pose a challenge to current computer-aided diagnosis systems. Motion-based artifacts lead in dynamic contrast-enhanced breast magnetic resonance to diagnostic misinterpretation; therefore, motion compensation represents an important prerequisite to automatic lesion detection and diagnosis. In addition, the extraction of pertinent kinetic and morphologic features as lesion descriptors is an equally important task. In the present paper, we evaluate the performance of a computer-aided diagnosis system consisting of motion correction, lesion segmentation, and feature extraction and classification. We develop a new feature extractor, the radial Krawtchouk moment, which guarantees rotation invariance. Many novel feature extraction techniques are proposed and tested in conjunction with lesion detection. Our simulation results have shown that motion compensation combined with Minkowski functionals and Bayesian classifier can improve lesion detection and classification.
机译:具有诊断挑战性的病变包括病灶(小病变)和非肿块状增强病变,这对当前的计算机辅助诊断系统构成了挑战。基于运动的伪像会导致动态对比度增强的乳房磁共振导致诊断错误。因此,运动补偿是自动病变检测和诊断的重要前提。此外,提取相关的动力学和形态学特征作为病灶描述符同样重要。在本文中,我们评估了由运动校正,病变分割以及特征提取和分类组成的计算机辅助诊断系统的性能。我们开发了一种新的特征提取器,即径向Krawtchouk矩,可确保旋转不变性。提出了许多新颖的特征提取技术,并结合病变检测对其进行了测试。我们的仿真结果表明,运动补偿结合Minkowski功能和贝叶斯分类器可以改善病变的检测和分类。

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