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A Cad System For Accurate Diagnosis Of Bladder Cancer Staging Using A Multiparametric MRI

机译:一种CAD系统,用于准确诊断膀胱癌使用多级MRI的分期

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In this paper, a computer-aided diagnostic (CAD) system is developed using a multiparametric magnetic resonance imaging (MPMRI) (T2-MRI and DW-MRI) to differentiate between BC staging, especially T1 and T2. The segmentation of the bladder wall (BW) and the localization of the whole BC area (At) and its extent inside the wall (Aw) is first performed. Secondly, a set of functional, texture, and morphological features are estimated. Due to the massive difference between the wall and bladder lumen cells, At is split into nested equidistance contours (i.e., iso-contours), and features are estimated for each iso-contours. The functional features are based on the cumulative distribution function (CDF) statistical measures for the estimated apparent diffusion coefficient (ADC) from DWMRI. Texture features, namely radiomic features, are derived from T2W-MRI, At both carcinoma intensity and gradient images for each iso-contours from At, T2-MRI. Besides, morphological features are also incorporated to describe the tumors' geometric from T2W-MRI, Aw. Finally, the estimated iso-features are augmented and used to train and test neural networks classifier as well as a statistical machine learning (ML) classifier. The system has been tested using a leave-one-subject-out approach on 42 data sets. The overall accuracy, sensitivity, specificity, and area under the curve (AUC) of the receiver operating characteristics (ROC) are 92.86%, 97.05%, 100%, and 0.9705, respectively. We introduce the diagnostic accuracy of individual MRI modality for our proposal to highlight the advantage of fusion multiparametric iso-features that is confirmed by the ROC analysis. Furthermore, the accuracy of two different techniques statistical ML classifiers (i.e., random forest (RF) and support vector machine (SVM)) and end-to-end convolution neural networks (i.e., ResNet50) is compared against our pipeline.
机译:在本文中,使用多个磁共振成像(MPMRI)(T2-MRI和DW-MRI)来开发计算机辅助诊断(CAD)系统,以区分BC分期,尤其是T1和T2。膀胱壁(BW)的分割和整个BC区域的定位(a t )在墙内的范围(a w 首先进行)。其次,估计了一组功能,纹理和形态特征。由于墙壁和膀胱内腔细胞之间的巨大差异,a t 被分成嵌套等距轮廓(即,ISO轮廓),并且为每个ISO轮廓估计特征。功能特征基于来自DWMRI的估计表观扩散系数(ADC)的累积分布函数(CDF)统计措施。纹理特征,即射致特征,来自T2W-MRI,a t 来自a的每个iso-contours的癌强度和梯度图像 t ,T2-MRI。此外,还含有形态学特征,以描述来自T2W-MRI的肿瘤几何,a w 。最后,估计的ISO - 功能被增强并用于培训和测试神经网络分类器以及统计机器学习(ML)分类器。系统已经在42个数据集上使用休假 - 一次出局方法进行了测试。接收器操作特性(ROC)的曲线(AUC)下的总体精度,灵敏度,特异性和面积分别为92.86%,97.05%,100%和0.9705。我们介绍了各个MRI模型的诊断准确性,以突出ROC分析确认的融合多体ISO - 特征的优势。此外,两种不同技术的准确性统计ML分类器(即随机森林(RF)和支持向量机(SVM))和端到端卷积神经网络(即,RESET50)与我们的管道进行比较。

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