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Transductive local fisher discriminant analysis for gene expression profile-based cancer classification

机译:基于基因表达谱的癌症分类的转导局部费希尔判别分析

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Gene expression profiles provide hidden biological knowledge and key information that can be used to distinguish different types of cancer. Due to their high dimensionality and redundancy, gene expression data are often preprocessed by dimensionality reduction (DR) methods. Conventional supervised DR methods use only labeled samples to train the model, leading to a limited performance due to small number of labeled samples in the real world. This paper proposes a transductive local Fisher discriminant analysis (TLFDA) method that uses the available unlabeled data in the learning process. On the one hand, the label information is utilized to maximize the inter-class distance in the embedding space. On the other hand, the local structural information of all data samples is taken into consideration to maintain the smoothness property. In this way, the TLFDA provides more discriminative power than state-of-the-art supervised or semi-supervised DR methods, even when the number of labeled samples is very limited. Our experimental results on benchmark GCM and Acute Leukemia datasets show its promising performance on gene expression profile-based cancer classification.
机译:基因表达谱提供了隐藏的生物学知识和关键信息,可用于区分不同类型的癌症。由于它们的高维性和冗余性,经常通过降维(​​DR)方法对基因表达数据进行预处理。常规的监督DR方法仅使用标记的样本来训练模型,由于现实世界中标记的样本数量很少,因此导致性能有限。本文提出了一种转导式局部Fisher判别分析(TLFDA)方法,该方法在学习过程中使用了可用的未标记数据。一方面,利用标签信息来最大化嵌入空间中的类间距离。另一方面,考虑所有数据样本的局部结构信息以保持平滑性。这样,即使标记的样品数量非常有限,TLFDA仍比最新的监督或半监督DR方法具有更大的判别力。我们在基准GCM和急性白血病数据集上的实验结果显示了其在基于基因表达谱的癌症分类中的有希望的表现。

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