Pantazopoulos D, Karakitsos P, Iokim-Liossi A, Pouliakis A, Dimopoulos K
Department of Urology, Laiko Hospital, University of Athens, Greece.
Br J Urol. 1998 Apr;81(4):574-9. doi: 10.1046/j.1464-410x.1998.00587.x.
To compare the performance of two different neural networks (NNs) in the discrimination of benign and malignant lower urinary tract lesions.
A group of patients was evaluated, comprising 50 cases of lithiasis, 61 of inflammation, 99 of benign prostatic hyperplasia (BPH), five of in situ carcinoma, 71 of grade I transitional cell carcinoma of the bladder (TCCB), and 184 of grade II and grade III TCCB. Images of routinely processed voided urine smears were stained using the Giemsa technique and analysed using an image-analysis system, providing a dataset of 45452 cells. Two NN models of the back propagation (BP) and learning vector quantizer (LVQ) type were used to discriminate benign from malignant cells and lesions, based on morphometric and textural features. The data from 13636 randomly selected cells (30% of the total data) were used as a training set and data from the remaining 31816 cells comprised the test set. Similarly, in an attempt to discriminate patients, 30% of the cases, selected randomly, were used to train a BP and an LVQ NN, with the remaining 329 cases used for the test set. The data used for training and testing were the same for the two kinds of classifiers.
The two NNs gave similar results, with an overall accuracy of discrimination of approximately 90.5% at the cellular level and of approximately 97% for individual patients. There were no statistically significant differences between the two NNs at the cellular or patient level.
The use of NNs and image morphometry could increase the diagnostic accuracy of voided urine cytology; despite the different nature of the two classifiers, the results obtained were very similar.
比较两种不同神经网络(NNs)在鉴别下尿路良恶性病变中的表现。
对一组患者进行评估,包括50例结石、61例炎症、99例良性前列腺增生(BPH)、5例原位癌、71例膀胱I级移行细胞癌(TCCB)以及184例II级和III级TCCB。对常规处理的排尿后尿液涂片图像采用吉姆萨技术染色,并使用图像分析系统进行分析,得到一个包含45452个细胞的数据集。基于形态计量学和纹理特征,使用两种反向传播(BP)和学习向量量化器(LVQ)类型的NN模型来鉴别良性和恶性细胞及病变。从13636个随机选择的细胞(占总数据的30%)的数据用作训练集,其余31816个细胞的数据组成测试集。同样,为了鉴别患者,随机选择30%的病例用于训练BP和LVQ NN,其余329例用于测试集。两种分类器用于训练和测试的数据相同。
两种NNs给出了相似的结果,在细胞水平上鉴别总体准确率约为90.5%,对个体患者的准确率约为97%。在细胞或患者水平上,两种NNs之间没有统计学上的显著差异。
使用NNs和图像形态计量学可以提高排尿后尿液细胞学的诊断准确性;尽管两种分类器性质不同,但获得的结果非常相似。