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A prognostic-classification system based on a probabilistic NN for predicting urine bladder cancer recurrence

机译:基于概率NN预测尿膀胱癌复发的预后分类系统

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In this paper our purpose was to design a prognostic-classification system, based on a probabilistic neural network (PNN), for predicting urine bladder cancer recurrence. Ninety-two patients with bladder cancer were diagnosed and followed up. Images from each patient tissue same were digitized and an adequate number of nuclei per case were segmented for the generation of morphological and textural nuclear features. Automatic urine bladder tumor characterization as potential to recur or not was performed utilizing a PNN. An exhaustive search based on classifier performance indicated the best feature combination that produced the minimum classification error. The classification performance of the PNN was optimized employing a 4-dimensional feature vector that comprised one texture feature and three descriptors of nucleus size distribution. The classification accuracy for the group of eases with recurrence was 72.3% (35/47) and 71.1% (32/45) accuracy for the group of cases with no recurrence. The proposed prognostic-system could prove of value in rendering the diagnostic nuclear information a marker of disease recurrence.
机译:在本文中,我们的目的是根据概率神经网络(PNN)设计预后分类系统,用于预测尿膀胱癌复发。诊断并随访九十二名膀胱癌患者。来自每个患者组织的图像相同的图像被数字化,并且每种情况的足够数量的核被分段,用于产生形态和纹理核特征。自动尿膀胱肿瘤表征作为潜在的反复或未使用PNN进行。基于分类器性能的详尽搜索指示了产生最小分类错误的最佳功能组合。 PNN的分类性能被优化采用包括一个纹理特征的4维特征载体和三核尺寸分布的三个描述符。具有复发群体的简化群体的分类准确性为72.3%(35/47)和71.1%(32/45)的案例组,没有复发。所提出的预后系统可以证明使诊断核信息赋予疾病复发的标志物。

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