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SHR Neuro Cancer Cardio Lipid Metab Microb

Lazzeri, I; Spiegl, BG; Hasenleithner, SO; Speicher, MR; Kircher, M.
LBFextract: Unveiling transcription factor dynamics from liquid biopsy data
COMPUT STRUCT BIOTEC. 2024; 23: 3163-3174. Doi: 10.1016/j.csbj.2024.08.007 [OPEN ACCESS]
Web of Science PubMed PUBMED Central FullText FullText_MUG

 

Leading authors Med Uni Graz
Hasenleithner Samantha
Lazzeri Isaac
Co-authors Med Uni Graz
Speicher Michael
Spiegl Benjamin Gernot
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Abstract:
MOTIVATION: The analysis of circulating cell-free DNA (cfDNA) holds immense promise as a non-invasive diagnostic tool across various human conditions. However, extracting biological insights from cfDNA fragments entails navigating complex and diverse bioinformatics methods, encompassing not only DNA sequence variation, but also epigenetic characteristics like nucleosome footprints, fragment length, and methylation patterns. RESULTS: We introduce Liquid Biopsy Feature extract (LBFextract), a comprehensive package designed to streamline feature extraction from cfDNA sequencing data, with the aim of enhancing the reproducibility and comparability of liquid biopsy studies. LBFextract facilitates the integration of preprocessing and postprocessing steps through alignment fragment tags and a hook mechanism. It incorporates various methods, including coverage-based and fragment length-based approaches, alongside two novel feature extraction methods: an entropy-based method to infer TF activity from fragmentomics data and a technique to amplify signals from nucleosome dyads. Additionally, it implements a method to extract condition-specific differentially active TFs based on these features for biomarker discovery. We demonstrate the use of LBFextract for the subtype classification of advanced prostate cancer patients using coverage signals at transcription factor binding sites from cfDNA. We show that LBFextract can generate robust and interpretable features that can discriminate between different clinical groups. LBFextract is a versatile and user-friendly package that can facilitate the analysis and interpretation of liquid biopsy data. DATA AND CODE AVAILABILITY AND IMPLEMENTATION: LBFextract is freely accessible at https://github.com/Isy89/LBF. It is implemented in Python and compatible with Linux and Mac operating systems. Code and data to reproduce these analyses have been uploaded to 10.5281/zenodo.10964406.

Find related publications in this database (Keywords)
Cell-free DNA
Bioinformatics
Whole-genome sequencing
Transcription factors
Fragmentomics
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