Publication | Open Access
Prediction of lung cancer metastasis by gene expression
19
Citations
37
References
2022
Year
EngineeringPathologyGene Expression ProfilingTumor BiologyTumor MetastasisMolecular DiagnosticsRadiation OncologyCancer ResearchSystems BiologyTranslational BioinformaticsDeep LearningDeep Neural NetworkLung CancerTumor MicroenvironmentRadiomicsCancer GenomicsBronchial NeoplasmGene Expression LevelsLung Cancer MetastasisMedicine
Tumor metastasis is the main cause of death in cancer patients. Early prediction of tumor metastasis can allow for timely intervention. At present, research on tumor metastasis mainly focuses on manual diagnosis by imaging or diagnosis by computational methods. With the deterioration of the tumor, gene expression levels in blood change greatly. It is feasible to measure the transcripts of key genes to predict whether cancer will metastasize. Therefore, in this paper, we obtained gene expression data from 226 patients from TCGA. These data included 239,322 transcripts. Background screening and LASSO analysis were used to select 31 transcripts as features. Finally, a deep neural network (DNN) was used to determine whether or not lung cancer would metastasize. We compared our methods with several other methods and found that our method achieved the best precision. In addition, in a previous study, we identified 7 genes that play a vital role in lung cancer. We added those gene transcripts into the DNN and found that the AUC and AUPR of the model were increased.
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