Understanding chromatin architecture requires robust methods that capture its nested hierarchy across scales. Sequencing-based approaches such as Hi-C provide genome-wide contact maps, but their inherent sparsity and noise limit structural interpretation. Moreover, assigns contact importance scores, enabling denoising, feature discovery, and functional interpretation. Applied to both sequencing and imaging datasets, HiCONA accurately identifies known structures across scales, recovers important contact patterns including microcompartments, and recapitulates architectural changes after cohesin-depletion. HiCONA is implemented as an accessible Python tool, HiCONA facilitates interpretable, unified analysis of chromatin architecture and opens the door to integrating Hi-C data with other omics modalities.

HiCONA: a graph-based framework for identifying the hierarchical 3D backbone of chromatin

Morelli, Leonardo
2026

Abstract

Understanding chromatin architecture requires robust methods that capture its nested hierarchy across scales. Sequencing-based approaches such as Hi-C provide genome-wide contact maps, but their inherent sparsity and noise limit structural interpretation. Moreover, assigns contact importance scores, enabling denoising, feature discovery, and functional interpretation. Applied to both sequencing and imaging datasets, HiCONA accurately identifies known structures across scales, recovers important contact patterns including microcompartments, and recapitulates architectural changes after cohesin-depletion. HiCONA is implemented as an accessible Python tool, HiCONA facilitates interpretable, unified analysis of chromatin architecture and opens the door to integrating Hi-C data with other omics modalities.
16-apr-2026
Inglese
Zippo, Alessio
Università degli studi di Trento
TRENTO
116
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14242/365508
Il codice NBN di questa tesi è URN:NBN:IT:UNITN-365508