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A prostate CAD system based on multiparametric analysis of DCE T1-w, and DW automatically registered images.

机译:一种基于DCE T1-W的多丙基划分的前列腺CAD系统,DW自动注册图像。

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Prostate specific antigen (PSA)-based screening reduces the rate of death from prostate cancer (PCa) by 31%, but this benefit is associated with a high risk of overdiagnosis and overtreatment. As prostate transrectal ultrasound-guided biopsy, the standard procedure for prostate histological sampling, has a sensitivity of 77% with a considerable falsenegative rate, more accurate methods need to be found to detect or rule out significant disease. Prostate magnetic resonance imaging has the potential to improve the specificity of PSA-based screening scenarios as a non-invasive detection tool, in particular exploiting the combination of anatomical and functional information in a multiparametric framework. The purpose of this study was to describe a computer aided diagnosis (CAD) method that automatically produces a malignancy likelihood map by combining information from dynamic contrast enhanced MR images and diffusion weighted images. The CAD system consists of multiple sequential stages, from a preliminary registration of images of different sequences, in order to correct for susceptibility deformation and/or movement artifacts, to a Bayesian classifier, which fused all the extracted features into a probability map. The promising results (AUROC=0.87) should be validated on a larger dataset, but they suggest that the discrimination on a voxel basis between benign and malignant tissues is feasible with good performances. This method can be of benefit to improve the diagnostic accuracy of the radiologist, reduce reader variability and speed up the reading time, automatically highlighting probably cancer suspicious regions.
机译:前列腺特异性抗原(PSA)基础筛选将前列腺癌(PCA)的死亡率降低了31%,但这种益处与过度诊断和过度过度的高风险有关。作为前列腺癌超声引导的活组织检查,前列腺组织学采样的标准程序具有77%的灵敏度,具有相当大的伪造率,需要发现更准确的方法来检测或排除显着的疾病。前列腺磁共振成像具有改善基于PSA的筛选场景的特异性作为非侵入性检测工具,特别是利用在多分法框架中的解剖学和功能信息的组合。本研究的目的是描述一种计算机辅助诊断(CAD)方法,通过组合来自动态对比增强的MR图像和扩散加权图像的信息来自动产生恶性似然映射。 CAD系统由多个顺序阶段组成,从不同序列的图像的初步登记,以便将易感性变形和/或移动伪影校正到贝叶斯分类器,这将所有提取的特征融入概率图中。应该在更大的数据集上验证有希望的结果(AUROC = 0.87),但他们表明良性和恶性组织之间对体素基于群体的歧视,具有良好的性能。这种方法可以有益于提高放射科学家的诊断准确性,降低读者可变性并加速阅读时间,自动突出显示可能是癌症可疑地区。

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