定量核特征的概率神经网络分析在预测不同随访时间肿瘤复发风险中的应用

P. Petalas, P. Spyridonos, D. Glotsos, Dionisis A. Cavouras, P. Ravazoula, G. Nikiforidis
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引用次数: 6

摘要

本文探讨膀胱浅表性移行细胞癌(tcc)活检自动生成特征在预测肿瘤复发可能性的时间间隔中的预后意义。临床资料包括73例诊断为浅表TCC的患者,随访至少60个月。根据肿瘤可能复发的时间间隔,将患者数据集分为三个预后组。对于每个案例,生成了40个与核特征相关的描述性定量特征。利用概率神经网络(PNN)分类器分析估计特征的预测价值。为了找到分类误差最小的最佳向量组合,在特征空间中进行穷举搜索。采用留一法对分类器性能进行评价。通过对预后特征组合的分析,确定了4个特征作为预测患者预后的重要标志,其中2个特征描述了细胞核的质地,2个特征与样本中细胞核的形状分布有关。总体预测准确率为73%。中期和长期复发病例的识别准确率为76%。短期组的预测准确率为63%。通过分析核特征的预测信息并结合PNN模型对未来一定时间内的递归进行检测似乎是可行的。预后能力的改善可能对患者随访和治疗具有重要的临床意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Probabilistic neural network analysis of quantitative nuclear features in predicting the risk of cancer recurrence at different follow-up times
This paper explores the prognostic significance of automatically generated features from biopsies of superficial transitional cell carcinomas (TCCs) of urinary bladder in predicting the time interval in which the tumor is more likely to recur. Clinical material comprised 73 patients diagnosed with superficial TCC and followed-up for at least 60 months. Patients' data set was separated into three prognostic groups in respect to time interval in which the tumor may recur. For each case, 40 descriptive quantitative features related to nuclear characteristics were generated. The prognostic value of the estimated features was analyzed by means of a probabilistic neural network (PNN) classifier. To find best vector combination leading to the smallest classification error, an exhaustive search procedure in feature space was utilized. Classifier performance was evaluated by means of the leave-one-out method. Throughout the analysis of the prognostic feature combinations, four features, two describing nuclear texture, and two related to shape distribution of nuclei in the sample, were identified as the important markers for patients' outcome prediction. The overall predictive accuracy was 73%. Intermediate and long-term recurrent cases were identified with an accuracy of 76%. For the short-term group the predictive accuracy was 63%. The detection of recurrences in certain future time seems feasible by analyzing the prognostic information of nuclear features and incorporating the PNN model. The improvement in prognostic ability may be clinically important for patient follow-up, and therapeutic treatment.
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