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Image Similarity and Asymmetry to Improve Computer-Aided Detection of Breast Cancer

机译:图像相似性与不对称,提高计算机辅助检测乳腺癌

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An improved image similarity method is introduced to recognize breast cancer, and it is incorporated into a computer-aided breast cancer detection system through Bayes Theorem. Radiologists can use the differences between the left and right breasts, or asymmetry, in mammograms to help detect certain malignant breast cancers. Image similarity is used to determine asymmetry using a contextual and then a spatial comparison. The mammograms are filtered to find the most contextually significant points, and then the resulting point set is analyzed for spatial similarity. We develop the analysis through a combination of modeling and supervised learning of model parameters. This process correctly classifies mammograms 84% of the time, and significantly improves the accuracy of a computer-aided breast cancer detection system by 71%.
机译:引入改进的图像相似性方法以识别乳腺癌,通过贝叶斯定理掺入计算机辅助乳腺癌检测系统中。放射科医师可以使用左右乳房或不对称之间的差异在乳房X光线中,以帮助检测某些恶性乳腺癌。图像相似度用于使用上下文和空间比较来确定不对称性。滤波乳房X线照片以找到最内部有效点,然后分析所得到的点集以进行空间相似度。通过模型参数的建模和监督学习的组合,我们开发分析。该过程正确分类了乳房X光图84%的时间,并且显着提高了计算机辅助乳腺癌检测系统的准确性71%。

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