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Tumor classification by combining PNN classifier ensemble with neighborhood rough set based gene reduction.

机译:通过将PNN分类器集成与基于邻域粗糙集的基因归约相结合来进行肿瘤分类。

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Since Golub applied gene expression profiles (GEP) to the molecular classification of tumor subtypes for more accurately and reliably clinical diagnosis, a number of studies on GEP-based tumor classification have been done. However, the challenges from high dimension and small sample size of tumor dataset still exist. This paper presents a new tumor classification approach based on an ensemble of probabilistic neural network (PNN) and neighborhood rough set model based gene reduction. Informative genes were initially selected by gene ranking based on an iterative search margin algorithm and then were further refined by gene reduction to select many minimum gene subsets. Finally, the candidate base PNN classifiers trained by each of the selected gene subsets were integrated by majority voting strategy to construct an ensemble classifier. Experiments on tumor datasets showed that this approach can obtain both high and stable classification performance, which is not too sensitive to the number of initially selected genes and competitive to most existing methods. Additionally, the classification results can be cross-verified in a single biomedical experiment by the selected gene subsets, and biologically experimental results also proved that the genes included in the selected gene subsets are functionally related to carcinogenesis, indicating that the performance obtained by the proposed method is convincing.
机译:由于Golub将基因表达谱(GEP)应用于肿瘤亚型的分子分类以更准确和可靠地进行临床诊断,因此已经进行了许多基于GEP的肿瘤分类研究。然而,肿瘤数据集的高维和小样本量的挑战仍然存在。本文提出了一种新的基于概率神经网络(PNN)和基于邻域粗糙集模型的基因约简的肿瘤分类方法。信息性基因最初是基于迭代搜索余量算法通过基因排名选择的,然后通过基因还原进一步精炼以选择许多最小的基因子集。最后,通过多数投票策略将由每个选定基因子集训练的候选基础PNN分类器进行整合,以构建整体分类器。在肿瘤数据集上的实验表明,这种方法可以同时获得高和稳定的分类性能,这对最初选择的基因数量不太敏感,并且与大多数现有方法没有竞争性。此外,分类结果可以在单个生物医学实验中通过选定的基因子集进行交叉验证,并且生物学实验结果还证明了选定基因子集中包含的基因与癌变在功能上相关,表明该提议获得的性能方法令人信服。

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