Qureshi K N, Naguib R N, Hamdy F C, Neal D E, Mellon J K
Department of Urology, Royal Hallamshire Hospital, Sheffield, United Kingdom.
J Urol. 2000 Feb;163(2):630-3.
To evaluate retrospectively the ability of an artificial neural network (ANN) to predict bladder cancer recurrence within 6 months of diagnosis and stage progression in patients with Ta/T1 bladder cancer, and 12-month cancer-specific survival in patients with T2-T4 bladder cancer.
Data were analyzed using a NeuralWorks Professional II/Plus software package. The input neural data consisted of clinicopathological and molecular characteristics. Distinct patient groups were used for the prediction of stage progression and tumor recurrence in Ta/T1 bladder cancers, and 12-month cancer-specific survival for patients with T2-T4 tumors. ANN predictions were compared with those of four consultant urologists.
The accuracy of the neural network in predicting stage progression and recurrence within 6 months for Ta/T1 tumors and 12-month cancer-specific survival for T2-T4 cancers was 80%, 75% and 82% respectively; with corresponding figures for clinicians being 74%, 79% and 65%. On restricting the validation subset to patients with T1G3 tumors in relation to stage progression, the sensitivity of the ANN analysis increased to 100% with a specificity of 78% and an overall accuracy of 82%. The performance of the ANN in predicting stage progression in T1G3 tumors was significantly higher than that of clinicians (p = 0.25 for the ANN and p = 0.008 for clinicians, McNemar test).
Data analysis using an ANN has been shown to be a useful adjunct in predicting outcomes in patients with bladder cancer and out-performs clinicians' predictions of stage progression in the high risk group of patients with T1G3 disease.
回顾性评估人工神经网络(ANN)预测Ta/T1期膀胱癌患者诊断后6个月内癌症复发及分期进展,以及T2-T4期膀胱癌患者12个月癌症特异性生存率的能力。
使用NeuralWorks Professional II/Plus软件包分析数据。输入的神经数据包括临床病理和分子特征。不同的患者组用于预测Ta/T1期膀胱癌的分期进展和肿瘤复发,以及T2-T4期肿瘤患者的12个月癌症特异性生存率。将人工神经网络的预测结果与四位泌尿外科顾问医生的预测结果进行比较。
神经网络预测Ta/T1期肿瘤6个月内分期进展和复发以及T2-T4期癌症12个月癌症特异性生存率的准确率分别为80%、75%和82%;临床医生的相应数字分别为74%、79%和65%。在将验证子集限制为与分期进展相关的T1G3肿瘤患者时,人工神经网络分析的敏感性提高到100%,特异性为78%,总体准确率为82%。人工神经网络在预测T1G3肿瘤分期进展方面的表现显著高于临床医生(人工神经网络的p = 0.25,临床医生的p = 0.008,McNemar检验)。
已证明使用人工神经网络进行数据分析是预测膀胱癌患者预后的有用辅助手段,并且在T1G3疾病高危组患者中,其在分期进展预测方面优于临床医生的预测。