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GRNN Ensemble Classifier for Lung Cancer Prognosis Using Only Demographic and TNM features

机译:GRNN合奏分类器用于肺癌预后仅使用人口统计和TNM功能

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Predicting the recurrence of non-small cell lung cancer remains a clinical challenge. The current best practice employs heuristic decisions based on the TNM classification scheme that many believe can be improved upon. Much research has recently been devoted to searching for gene signatures derived from gene expression microarrays for this challenge, but a consensus signature is still elusive. We present an approach to first create a benchmark for recurrence prediction based only upon gender, age and TNM features that uses several learning classifier induction methods and combines them into an ensemble using a recent extension of the general regression neural network. Using this approach on a pooled sample of 422 patients from two previously published studies (Shedden and Raponi), we demonstrate error rates in the low 20% for both false positives and negatives. Future work will focus on discovering if gene signatures can be discovered that can improve this performance.
机译:预测非小细胞肺癌的复发仍然是临床攻击。目前的最佳实践采用了基于TNM分类方案的启发式决策,许多人认为可以改善。最近致力于寻找来自基因表达微阵列的基因签名进行了许多研究,但仍然难以实现共识。我们提出了一种仅仅基于使用多个学习分类器诱导方法的性别,年龄和TNM特征来创建复发预测的基准的方法,并使用近期将它们的常规回归神经网络扩展组合成集合中的集合。使用这种方法在来自两个先前发表的研究(Shedden和Raponi)的422名患者的汇集样本上,我们向误报和底片展示了低20%的误差率。未来的工作将专注于发现基因签名,如果可以改善这种性能。

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