南方医科大学学报 ›› 2020, Vol. 40 ›› Issue (10): 1500-1506.doi: 10.12122/j.issn.1673-4254.2020.10.17

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优化的概率神经网络对基于介电常数的肺癌及其周围正常组织的鉴别

于洪峰,孙 颖,卢 笛,蔡开灿,余学飞   

  • 出版日期:2020-10-20 发布日期:2020-10-20

Discrimination of lung cancer and adjacent normal tissues based on permittivity by optimized probabilistic neural network

  • Online:2020-10-20 Published:2020-10-20

摘要: 目的 提出一种基于介电常数,模拟退火算法优化的概率神经网络(SA-PNN)分类鉴别方法,用于肺癌及其周围正常组织的鉴别。方法 基于开端同轴探头测量得到的肺肿瘤及其周围正常组织的介电常数,利用Statistical DependencySD)算法进行频率筛选,将筛选得到的频率点下的介电常数作为特征变量,使用SA-PNN进行分类鉴别。结果 经过SD算法最终筛选出3个频率点,分别为98427242723 MHz,将这3个频率点下的介电常数作为特征变量,利用SA-PNN200例样本数据进行鉴别,通过10折交叉验证,最终鉴别准确率为92.50%,灵敏度为90.65%,特异性为94.62%结论 SA-PNN方法与传统的概率神经网络、BP神经网络、RBF神经网络以及MATLAB中的Classify判别分析函数相比,基于介电常数,SA-PNN方法对肺癌及其周围正常组织进行鉴别具有更高的准确率、灵敏度及其特异性。

关键词: 介电常数;肺癌;模拟退火算法;概率神经网络 ,

Abstract: Objective To propose a probabilistic neural network classification method optimized by simulated annealing algorithm (SA-PNN) to discriminate lung cancer and adjacent normal tissues based on permittivity. Methods The permittivity of lung tumors and the adjacent normal tissues was measured by an open-ended coaxial probe, and the statistical dependency (SD) algorithm was used for frequency screening. The permittivity associated with the selected frequency points was taken as the characteristic variable, and SA-PNN was used to discriminate lung cancer and the adjacent normal tissues. Results Three frequency points, namely 984 MHz, 2724 MHz and 2723 MHz, were selected by SD algorithm. SA-PNN was used to discriminate 200 samples with the permittivity at the 3 frequency points as the characteristic variable. After 10-fold cross-validation, the final discrimination accuracy was 92.50% , the sensitivity was 90.65% , and the specificity was 94.62%. Conclusion Compared with the traditional probabilistic neural network, BP neural network, RBF neural network and the classification discriminant analysis function (Classify) in MATLAB, the proposed SA-PNN has higher accuracy, sensitivity and specificity for discriminating lung cancer and the adjacent normal tissues based on permittivity.

Key words: permittivity, lung cancer, simulated annealing algorithm, probabilistic neural network