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Combination of nuclear NF-κB/p65 localization and gland morphological features from surgical specimens is predictive of early biochemical recurrence in prostate cancer patients

机译:来自外科标本的核NF-κB/ p65本地化和腺体形态特征的组合是预测前列腺癌患者的早期生化复发

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Identifying patients who are high-risk for biochemical recurrence (BCR) following radical prostatectomy could enable direction of adjuvant therapy to those patients while sparing low-risk patients the side effects of treatment. Current BCR prediction tools require human judgment, limiting repeatability and accuracy. Quantitative histomorphometry (QH) is the extraction of quantitative descriptors of morphology and texture from digitized tissue slides. These features are used in conjunction with machine learning classifiers for disease diagnosis and prediction. Features quantifying gland orientation disorder have been found to be predictive of BCR. Separately, staining intensity of NF-κB protein family member RelA/p65. which regulates cell growth, apoptosis, and angiogensis. has been connected to BCR. In this study we combine nuclear NF-κB/p65 and H&E gland morphology features to structurally and functionally characterize prostate cancer. This enables description of cancer phenotypes according to cellular molecular profile and social behavior. We collected radical prostatectomy specimens from 21 patients, 7 of whom experienced BCR (prostate specific antigen > .2 ng/ml) within two years of surgery. Our goal was to demonstrate the value of combining morphological and functional information for BCR prediction. Firstly, we used the top two features from each stain channel via. the Wilcoxon rank-sum test using a leave-one-out cross validation approach in conjunction with a linear discriminant analysis classifier. Secondly we used the product of the posterior class probabilities from each classifier to produce an aggregate classifier. Accuracy was 0.76 with H&E features alone, 0.71 with NF-κB/p65 features alone, and 0.81 via the aggregate model.
机译:在自由基前列腺切除术后鉴定生物化复发(BCR)的高风险的患者可以使辅助疗法的方向能够在备受低危患者的治疗副作用时向那些患者提供辅助疗法的方向。当前的BCR预测工具需要人为判断,限制可重复性和准确性。定量组织形态形态(QH)是从数字化组织载玻片的形态学和质地的定量描述符的提取。这些特征与机器学习分类器结合使用,用于疾病诊断和预测。已经发现量化腺体定向障碍的特征是预测的BCR。另外,染色强度NF-κB蛋白质成员Rela / P65。调节细胞生长,细胞凋亡和血管内。已连接到BCR。在这项研究中,我们将核NF-κB/ p65和H&E腺体形态特征结合在结构上和功能性地表征前列腺癌。这使得根据细胞分子曲线和社会行为可以描述癌症表型。从21例患者中收集了自由基前列腺切除术标本,其中7例经历了两年内经历过BCR(前列腺特异性抗原> .2ng / ml)。我们的目标是展示组合BCR预测的形态学和功能信息的价值。首先,我们使用来自每个污渍通道的顶层两个特征。 Wilcoxon使用休假交叉验证方法与线性判别分析分类器一起排名的秩。其次,我们使用来自每个分类器的后级概率的乘积来生成聚合分类器。单独使用H&E特征的精度为0.76,单独使用NF-κB/ P65特征,并通过聚集模型0.81。

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