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Assessment of prostate cancer prognostic Gleason grade group using zonal-specific features extracted from biparametric MRI using a KNN classifier

机译:使用KNN分类器使用从Biparametric MRI提取的区域特异性特征评估前列腺癌预测GLEASION级组的评估

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Purpose To automatically assess the aggressiveness of prostate cancer (PCa) lesions using zonal-specific image features extracted from diffusion weighted imaging (DWI) and T2W MRI. Methods Region of interest was extracted from DWI (peripheral zone) and T2W MRI (transitional zone and anterior fibromuscular stroma) around the center of 112 PCa lesions from 99 patients. Image histogram and texture features, 38 in total, were used together with a k-nearest neighbor classifier to classify lesions into their respective prognostic Grade Group (GG) (proposed by the International Society of Urological Pathology 2014 consensus conference). A semi-exhaustive feature search was performed (1-6 features in each feature set) and validated using threefold stratified cross validation in a one-versus-rest classification setup. Results Classifying PCa lesions into GGs resulted in AUC of 0.87, 0.88, 0.96, 0.98, and 0.91 for GG1, GG2, GG1 + 2, GG3, and GG4 + 5 for the peripheral zone, respectively. The results for transitional zone and anterior fibromuscular stroma were AUC of 0.85, 0.89, 0.83, 0.94, and 0.86 for GG1, GG2, GG1 + 2, GG3, and GG4 + 5, respectively. CONCLUSION This study showed promising results with reasonable AUC values for classification of all GG indicating that zonal-specific imaging features from DWI and T2W MRI can be used to differentiate between PCa lesions of various aggressiveness.
机译:目的使用从扩散加权成像(DWI)和T2W MRI中提取的区域特异性图像特征自动评估前列腺癌(PCA)病变的侵蚀性。方法从99名患者的112个PCA病变中心左右从DWI(外周区)和T2W MRI(过渡带和前纤维纤维素基质)中提取利息区域。图像直方图和纹理特征总共38个与K-Collect邻分类器一起使用,将病变分类为各自的预后级组(GG)(由国际泌尿理性2014年度协商会会议提出)。执行半详尽功能搜索(每个功能集中的1-6个功能),并在一个与RES-REST分类设置中使用三倍分层交叉验证进行验证。结果分别将PCA病变分类为GGS的GGS为0.87,0.8,0.96,0.98和0.91的外围区域的GG1,GG2,GG1 + 2,GG3和GG4 + 5。过渡区和前纤维纤维素基质的结果分别为GG1,GG2,GG1 + 2,GG3和GG4 + 5的0.85,0.89,0.83,0.94和0.86的AUC。结论该研究表明,对于所有GG的分类,表明,所有GG的分类,表明DWI和T2W MRI的区域特异性成像特征可用于区分各种侵略性的PCA病变。

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