E3S Web of Conferences (Jan 2020)

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

  • Ruan Kun,
  • Peng Yuhao,
  • Kang Yuhan,
  • Zhao Shun,
  • Wang Tanke,
  • Zhang Yuchi,
  • Liu Tao

DOI
https://doi.org/10.1051/e3sconf/202018504028
Journal volume & issue
Vol. 185
p. 04028

Abstract

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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.