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γ-H2AX: A Novel Prognostic Marker in a Prognosis Prediction Model of Patients with Early Operable Non-Small Cell Lung Cancer

机译:γ-H2AX:早期可手术治疗的非小细胞肺癌患者预后预测模型中的新预后标志物

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摘要

Cancer is a leading cause of death worldwide and the prognostic evaluation of cancer patients is of great importance in medical care. The use of artificial neural networks in prediction problems is well established in human medical literature. The aim of the current study was to assess the prognostic value of a series of clinical and molecular variables with the addition of γ-H2AX—a new DNA damage response marker—for the prediction of prognosis in patients with early operable non-small cell lung cancer by comparing the γ-H2AX-based artificial network prediction model with the corresponding LR one. Two prognostic models of 96 patients with 27 input variables were constructed by using the parameter-increasing method in order to compare the predictive accuracy of neural network and logistic regression models. The quality of the models was evaluated by an independent validation data set of 11 patients. Neural networks outperformed logistic regression in predicting the patient's outcome according to the experimental results. To assess the importance of the two factors p53 and γ-H2AX, models without these two variables were also constructed. JR and accuracy of these models were lower than those of the models using all input variables, suggesting that these biological markers are very important for optimal performance of the models. This study indicates that neural networks may represent a potentially more useful decision support tool than conventional statistical methods for predicting the outcome of patients with non-small cell lung cancer and that some molecular markers, such as γ-H2AX, enhance their predictive ability.
机译:癌症是世界范围内主要的死亡原因,癌症患者的预后评估在医疗保健中非常重要。在人类医学文献中已经很好地建立了在预测问题中使用人工神经网络的方法。本研究的目的是评估一系列临床和分子变量的预后价值,并添加一种新的DNA损伤反应标记物γ-H2AX,以预测可早期手术的非小细胞肺癌患者的预后通过将基于γ-H2AX的人工网络预测模型与相应的LR预测模型进行比较,发现癌症。为了比较神经网络和逻辑回归模型的预测准确性,使用参数增加法构建了96个具有27个输入变量的患者的两个预后模型。通过11位患者的独立验证数据集评估了模型的质量。根据实验结果,神经网络在预测患者预后方面胜过逻辑回归。为了评估两个因素p53和γ-H2AX的重要性,还构建了没有这两个变量的模型。这些模型的JR和准确性低于使用所有输入变量的模型,这表明这些生物学标记对于模型的最佳性能非常重要。这项研究表明,与传统的统计方法相比,神经网络可能是预测非小细胞肺癌患者预后的一种潜在的更有用的决策支持工具,并且某些分子标记(例如γ-H2AX)可增强其预测能力。

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