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Breast Cancer Biomarker Prediction Model Based on Principal Component Extraction and Deep Convolutional Network Integration Learning

机译:基于主成分提取的乳腺癌生物标志物预测模型和深度卷积网络集成学习

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Effective extraction of characteristic information from sequencing data of cancer patients is an essential application for cancer research. Several prognostic classification models for breast cancer sequencing data have been established to assist patients in their treatment. However, these models still have problems such as poor robustness and low precision. Based on the convolutional network model in deep learning, we construct a new classifier PCA-1D LeNet-Ada (PLA) by using principal component extraction method, Le-Net convolution network, and Adaptive Boosting method. PLA predicts three biomarkers for breast cancer patients based on their somatic cell copy number variations and gene expression profiles.
机译:从癌症患者的测序数据有效提取特征信息是癌症研究的重要应用。已经建立了几种乳腺癌测序数据的预后分类模型,以帮助患者治疗。然而,这些模型仍然存在诸如稳健性和低精度差的问题。基于深度学习的卷积网络模型,通过使用主成分提取方法,LE-NET卷积网络和自适应增压方法来构建新的分类器PCA-1D LENET-ADA(PLA)。 PLA基于躯体细胞拷贝数变异和基因表达谱预测乳腺癌患者的三种生物标志物。

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