: The multilevel organization of nature is self-evident: proteins do interact among them to give rise to an organized metabolism and the same hierarchical organization is in action for gene expression, tissue and organ architectures, and ecological systems.The still more common approach to such state of affairs is to think that causally relevant events originate from the lower level in the form of perturbations, that climb up the hierarchy reaching the ultimate layer of macroscopic behavior (e.g., causing a specific disease). Such rigid bottom-up causative model is unable to offer realistic models of many biological phenomena.Complex network approach allows to uncover the nature of multilevel organization, but in order to operationally define the organization principles of biological systems, we need to go further and complement network approach with sensible measures of order and organization. These measures, while keeping their original physical meaning, must not impose theoretical premises not verifiable in biological frameworks. We will show here how relatively simple and largely hypothesis-free multidimensional statistics tools can satisfactorily meet these criteria.

Soft Statistical Mechanics for Biology / Bizzarri, Mariano; Giuliani, Alessandro. - (2022), pp. 263-280. [10.1007/978-1-0716-2095-3_11].

Soft Statistical Mechanics for Biology

Bizzarri, Mariano
Conceptualization
;
2022

Abstract

: The multilevel organization of nature is self-evident: proteins do interact among them to give rise to an organized metabolism and the same hierarchical organization is in action for gene expression, tissue and organ architectures, and ecological systems.The still more common approach to such state of affairs is to think that causally relevant events originate from the lower level in the form of perturbations, that climb up the hierarchy reaching the ultimate layer of macroscopic behavior (e.g., causing a specific disease). Such rigid bottom-up causative model is unable to offer realistic models of many biological phenomena.Complex network approach allows to uncover the nature of multilevel organization, but in order to operationally define the organization principles of biological systems, we need to go further and complement network approach with sensible measures of order and organization. These measures, while keeping their original physical meaning, must not impose theoretical premises not verifiable in biological frameworks. We will show here how relatively simple and largely hypothesis-free multidimensional statistics tools can satisfactorily meet these criteria.
2022
Methods in Molecular Biology
978-1-0716-2094-6
978-1-0716-2095-3
Bio-complexity; Cell fate; Complex networks; Differentiation; Multidimensional statistics; Networks; Phase transitions; Physics of life
02 Pubblicazione su volume::02a Capitolo o Articolo
Soft Statistical Mechanics for Biology / Bizzarri, Mariano; Giuliani, Alessandro. - (2022), pp. 263-280. [10.1007/978-1-0716-2095-3_11].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1682078
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