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Radiomic Features derived from Pre-operative Multi-parametric MRI of Prostate Cancer are associated with Decipher Risk Score

机译:源自前列腺癌前术前多参数MRI的辐射瘤特征与破译风险分数相关

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Decipher?, a genomic test, is used to predict the likelihood of metastasis and prostate cancer (PCa) specific mortality based on expression patterns of 22 RNA markers from radical prostatectomy (RP) specimens. It has been shown to be strongly correlated with metastasis-free prognosis and has been integrated with the National Comprehensive Cancer Network (NCCN) guidelines. However, Decipher is expensive and tissue destructive. Radiomic features refer to the high-throughput computational texture or shape features extracted from radiographic scans. Radiomic features derived from multi-parametric magnetic resonance imaging (mpMRI) of prostate cancer have been shown to be associated with clinically significant PCa. In this study, we sought to evaluate whether radiomic features derived from T2-weighted MRI (T2WI) and apparent diffusion coefficient (ADC) maps of the prostate could distinguish different Decipher risk groups (low, intermediate and high). We also explored correlations between Decipher risk associated radiomic features and features relating to gland morphology on corresponding digitized surgical specimens. A retrospectively acquired, de-identified cohort of 70 PCa patients (N = 74 lesions) who underwent 3T mpMRI prior to RP and Decipher tests after RP were used in this study. The Decipher risk score, ranging from 0 to 1, was used to categorize patients into low/intermediate (D_1) and high (D_2) risk groups. A multivariate logistic regression model was trained (N = 37 lesions) using radiomic features selected via elastic-net regularization to predict the Decipher risk groups. The model was evaluated on a hold-out test set (N = 37 lesions) and resulted in an area under the receiver operating characteristic curve (AUC) = 0.80. Our model outperformed the prediction using PIRADS v2 (AUC = 0.67), but showed comparable performance with Gleason Grade Group (GGG) (AUC = 0.80). We observed that the best discriminating radiomic features were correlated with gland morphol
机译:破译?,基因组试验,用于预测来自自由基前列腺切除术(RP)标本的22个RNA标志物的表达模式的转移和前列腺癌(PCA)特异性死亡的可能性。已显示与无转移预后强烈相关,并已与国家综合癌症网络(NCCN)指南一体化。但是,破译昂贵且组织破坏性。辐射特征是指从射线照相扫描中提取的高通量计算纹理或形状特征。已显示前列腺癌的多参数磁共振成像(MPMRI)的辐射瘤特征已被证明与临床显着的PCA相关。在这项研究中,我们试图评估从前列腺的T2加权MRI(T2WI)和表观扩散系数(ADC)地图的辐射组件是否可以区分不同的破解风险群(低,中间和高)。我们还探讨了破译风险与相应数字化外科手术标本上有关的腺体形态的相关射域特征和特征之间的相关性。在本研究中使用之前,在RP和破裂后,在RP和RP后破译试验之前接受了3T MPMRI的70个PCA患者(n = 74个病变)的回顾性地获得的70个患者(n = 74病变)。从0到1的解码风险评分用于将患者分为低/中间(D_1)和高(D_2)风险群体。使用通过弹性净正则化选择的射系特征培训多变量逻辑回归模型(n = 37个病变),以预测破译风险群。在保持试验组(n = 37个病变)上评估模型,并导致接收器操作特性曲线(AUC)= 0.80的区域。我们的模型使用PiRADS V2(AUC = 0.67)来表现出预测,但与Gleason级组(GGG)(AUC = 0.80)显示了相当的性能。我们观察到,最佳辨别的射线组件与腺体晶粒相关

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