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人工神经网络对膀胱癌根治性膀胱切除术患者的预后准确性:与逻辑回归分析的比较

Prognostic accuracy of an artificial neural network in patients undergoing radical cystectomy for bladder cancer: a comparison with logistic regression analysis.

作者信息

Bassi PierFrancesco, Sacco Emilio, De Marco Vincenzo, Aragona Maurizio, Volpe Andrea

机构信息

Department of Urology, Catholic University Medical School, Rome.

出版信息

BJU Int. 2007 May;99(5):1007-12. doi: 10.1111/j.1464-410X.2007.06755.x.

Abstract

OBJECTIVE

To compare the prognostic performance of an artificial neural network (ANN) with that of standard logistic regression (LR), in patients undergoing radical cystectomy for bladder cancer.

PATIENTS AND METHODS

From February 1982 to February 1994, 369 evaluable patients with non-metastatic bladder cancer had pelvic lymph node dissection and radical cystectomy for either stage Ta-T1 (any grade) tumour not responding to intravesical therapy, with or with no carcinoma in situ, or stage T2-T4 tumour. LR analysis based on 12 variables was used to identify predictors of overall 5-year survival, and the ANN model was developed to predict the same outcome. The LR analysis, based on statistically significant predictors, and the ANN model were the compared for their accuracy in predicting survival.

RESULTS

The median age of the patients was 63 years, and overall 201 of them died. The tumour stage and nodal involvement (both P<0.001) were the only statistically independent predictors of overall 5-year survival on LR analysis. Based on these variables, LR had a sensitivity and specificity for predicting survival of 68.4% and 82.8%, respectively; corresponding values for the ANN were 62.7% and 86.1%. For LR and ANN, the positive predictive values were 78.6% and 76.2%, and the negative predictive values were 73.9% and 76.5%, respectively. The index of diagnostic accuracy was 75.9% for LR and 76.4% for ANN.

CONCLUSIONS

The ANN accurately predicted the survival of patients undergoing radical cystectomy for bladder cancer and had a prognostic performance comparable with that of LR. As ANNs are based on easy-to-use software that can identify nonlinear interactions between variables, they might become the preferred tool for predicting outcome.

摘要

目的

比较人工神经网络(ANN)与标准逻辑回归(LR)对膀胱癌根治性膀胱切除术患者的预后预测性能。

患者与方法

1982年2月至1994年2月,369例可评估的非转移性膀胱癌患者接受了盆腔淋巴结清扫和根治性膀胱切除术,这些患者的肿瘤分期为Ta-T1期(任何分级),对膀胱内治疗无反应,伴或不伴原位癌,或为T2-T4期肿瘤。基于12个变量的逻辑回归分析用于确定总体5年生存率的预测因素,并建立人工神经网络模型来预测相同的结果。将基于具有统计学意义的预测因素的逻辑回归分析与人工神经网络模型在预测生存率方面的准确性进行比较。

结果

患者的中位年龄为63岁,其中共有201例死亡。肿瘤分期和淋巴结受累情况(均P<0.001)是逻辑回归分析中总体5年生存率仅有的具有统计学意义的独立预测因素。基于这些变量,逻辑回归预测生存率的敏感性和特异性分别为68.4%和82.8%;人工神经网络的相应值分别为62.7%和86.1%。对于逻辑回归和人工神经网络,阳性预测值分别为78.6%和76.2%,阴性预测值分别为73.9%和76.5%。逻辑回归的诊断准确性指数为75.9%,人工神经网络为76.4%。

结论

人工神经网络准确地预测了膀胱癌根治性膀胱切除术患者的生存率,其预后预测性能与逻辑回归相当。由于人工神经网络基于易于使用的软件,能够识别变量之间的非线性相互作用,它们可能会成为预测结果的首选工具。

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