Frontiers in Genetics (Feb 2021)

A Novel XGBoost Method to Infer the Primary Lesion of 20 Solid Tumor Types From Gene Expression Data

  • Sijie Chen,
  • Wenjing Zhou,
  • Jinghui Tu,
  • Jian Li,
  • Bo Wang,
  • Bo Wang,
  • Xiaofei Mo,
  • Xiaofei Mo,
  • Geng Tian,
  • Geng Tian,
  • Kebo Lv,
  • Zhijian Huang

DOI
https://doi.org/10.3389/fgene.2021.632761
Journal volume & issue
Vol. 12

Abstract

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PurposeEstablish a suitable machine learning model to identify its primary lesions for primary metastatic tumors in an integrated learning approach, making it more accurate to improve primary lesions’ diagnostic efficiency.MethodsAfter deleting the features whose expression level is lower than the threshold, we use two methods to perform feature selection and use XGBoost for classification. After the optimal model is selected through 10-fold cross-validation, it is verified on an independent test set.ResultsSelecting features with around 800 genes for training, the R2-score of a 10-fold CV of training data can reach 96.38%, and the R2-score of test data can reach 83.3%.ConclusionThese findings suggest that by combining tumor data with machine learning methods, each cancer has its corresponding classification accuracy, which can be used to predict primary metastatic tumors’ location. The machine-learning-based method can be used as an orthogonal diagnostic method to judge the machine learning model processing and clinical actual pathological conditions.

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