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Cancer Type Classification in Liquid Biopsies Based on Sparse Mutational Profiles Enabled through Data Augmentation and Integration

Alexandra Danyi, Myrthe Jager, Jeroen de Ridder

2021Life12 citationsDOIOpen Access PDF

Abstract

Identifying the cell of origin of cancer is important to guide treatment decisions. Machine learning approaches have been proposed to classify the cell of origin based on somatic mutation profiles from solid biopsies. However, solid biopsies can cause complications and certain tumors are not accessible. Liquid biopsies are promising alternatives but their somatic mutation profile is sparse and current machine learning models fail to perform in this setting. We propose an improved method to deal with sparsity in liquid biopsy data. Firstly, data augmentation is performed on sparse data to enhance model robustness. Secondly, we employ data integration to merge information from: (i) SNV density; (ii) SNVs in driver genes and (iii) trinucleotide motifs. Our adapted method achieves an average accuracy of 0.88 and 0.65 on data where only 70% and 2% of SNVs are retained, compared to 0.83 and 0.41 with the original model, respectively. The method and results presented here open the way for application of machine learning in the detection of the cell of origin of cancer from liquid biopsy data.

Topics & Concepts

Merge (version control)Liquid biopsyComputer scienceRobustness (evolution)Pattern recognition (psychology)Artificial intelligenceCancer detectionBiopsySomatic cellCancerMachine learningGeneBiologyPathologyMedicineGeneticsInformation retrievalCancer Genomics and DiagnosticsGene expression and cancer classificationMolecular Biology Techniques and Applications
Cancer Type Classification in Liquid Biopsies Based on Sparse Mutational Profiles Enabled through Data Augmentation and Integration | Litcius