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Bayesian networks for cell differentiation process assessment

Academic Article
Publication Date:
2020
Short description:
Bayesian networks for cell differentiation process assessment / Di Serio, C.; Scala, S.; Vicard, P.. - In: STAT. - ISSN 2049-1573. - 9:1(2020). [10.1002/sta4.287]
abstract:
The way cell differentiate from bone marrow to peripheral blood level plays a crucial role in understanding and treating rare diseases and more common tumours. The main goal of this paper is to introduce a flexible statistical framework able to describe the cell differentiation process and to reconstruct a dependence structure along different levels of differentiation. We use next generation sequencing data on haematological diseases (severe combined immunodeficiency) within a gene therapy framework. The proposed statistical approach is based on Bayesian networks (BNs) and aims at finding a probabilistic model to describe the most important features of cell differentiation, without requiring specific detailed assumptions concerning the interactions among genes or the confounding effects of experimental conditions. Bayesian networks enable analyses on gene therapy-treated patients in a data-driven fashion and allow for exploring all relationships among different blood cell types integrating biological information, subject-matter knowledge, and probabilistic principles.
Iris type:
1.1 Articolo in rivista
Keywords:
Bayesian networks; cell differentiation; gene therapy; impact analysis; structural learning
List of contributors:
Di Serio, C.; Scala, S.; Vicard, P.
Authors of the University:
DI SERIO MARIACLELIA
Handle:
https://iris.unisr.it/handle/20.500.11768/109747
Published in:
STAT
Journal
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