Litcius/Paper detail

Bridging biological cfDNA features and machine learning approaches

Tina Moser, Stefan Kühberger, Isaac Lazzeri, Georgios Vlachos, Ellen Heitzer

2023Trends in Genetics132 citationsDOIOpen Access PDF

Abstract

Liquid biopsies (LBs), particularly using circulating tumor DNA (ctDNA), are expected to revolutionize precision oncology and blood-based cancer screening. Recent technological improvements, in combination with the ever-growing understanding of cell-free DNA (cfDNA) biology, are enabling the detection of tumor-specific changes with extremely high resolution and new analysis concepts beyond genetic alterations, including methylomics, fragmentomics, and nucleosomics. The interrogation of a large number of markers and the high complexity of data render traditional correlation methods insufficient. In this regard, machine learning (ML) algorithms are increasingly being used to decipher disease- and tissue-specific signals from cfDNA. Here, we review recent insights into biological ctDNA features and how these are incorporated into sophisticated ML applications.

Topics & Concepts

DECIPHERBiologyComputational biologyLiquid biopsyCell-free fetal DNAPersonalized medicineDNABridging (networking)CancerComputer scienceBioinformaticsGeneticsComputer networkFetusPrenatal diagnosisPregnancyCancer Genomics and DiagnosticsSingle-cell and spatial transcriptomicsMolecular Biology Techniques and Applications