基于概率神经网络预测膀胱癌复发的预后分类系统

P. Spyridonos, D. Glotsos, D. Cavouras, P. Ravazoula, G. Nikiforidis
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引用次数: 2

摘要

在本文中,我们的目的是设计一个基于概率神经网络(PNN)的预测分类系统,用于预测膀胱癌复发。对92例膀胱癌患者进行了诊断和随访。对每个患者组织样本的图像进行数字化处理,并对每个病例中足够数量的细胞核进行分割,以生成形态学和质地核特征。利用PNN自动表征膀胱肿瘤复发或不复发的可能性。基于分类器性能的穷举搜索表明产生最小分类误差的最佳特征组合。采用由一个纹理特征和三个核大小分布描述符组成的四维特征向量对PNN的分类性能进行了优化。复发组的分类准确率为72.3%(35/47),无复发组的分类准确率为71.1%(32/45)。所提出的预后系统在提供诊断性核信息作为疾病复发标记方面具有价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A prognostic-classification system based on a probabilistic NN for predicting urine bladder cancer recurrence
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 sample 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 a 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 cases 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.
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