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Prognostic Reporting of p53 Expression by Image Analysis in Glioblastoma Patients: Detection and Classification

机译:胶质母细胞瘤患者p53表达的预后报告:检测和分类

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In this paper, we present a computer aided diagnosis system focusing on one important diagnostic branchpoint in clinical decision-making: prognostic reporting of p53 expression in glioblastoma patients. Studies in other tumor paradigms have shown that the staining intensity correlates with TP53 mutation status, and that gliomas show inter-tumoral heterogeneity in p53 mutation status. Increasing diagnostic accuracy by computer-aided image analysis algorithms would deliver an objective assessment of such prognostic biomark-ers. We proposed a method for the detection and classification of positive and negative cells in digitized p53-stained images by means of a novel adaptive thresholding for the detection, and two-step rule based on weighted color and intensity for the classification. The proposed thresholding technique is able to correctly locate both positive and negative cells by effectively addressing the closely connected cells problem, and records a promising 85% average precision and 88% average recall rate. On the other hand, the proposed two-step rule achieves 81% classification accuracy, which is comparable with neuropathologists' markings.
机译:在本文中,我们提出了一种计算机辅助诊断系统,该系统着重于临床决策中的一个重要诊断分支点:胶质母细胞瘤患者中p53表达的预后报告。在其他肿瘤范例中的研究表明,染色强度与TP53突变状态相关,并且神经胶质瘤在p53突变状态中显示出肿瘤间异质性。通过计算机辅助图像分析算法提高诊断准确性将对此类预后生物标志物进行客观评估。我们提出了一种方法,通过新颖的自适应阈值检测和基于加权颜色和强度的两步法则对数字化的p53染色图像中的阳性和阴性细胞进行检测和分类。所提出的阈值技术能够通过有效解决紧密连接的电池问题来正确定位正电池和负电池,并记录了令人鼓舞的85%的平均精度和88%的平均召回率。另一方面,建议的两步法则可达到81%的分类准确度,与神经病理学家的标记相当。

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