Many systems in nature, society and technology are composed of numerous interacting parts. Very often these dynamics lead to the formation of medium-level structures, whose detection could allow a high-level description of the dynamical organization of the system itself, and thus to its understanding. In this work we apply this idea to the “cancer evolution” models, of which each individual patient represents a particular instance. This approach - in this paper based on the RI methodology, which is based on entropic measures - allows us to identify distinct independent cancer progression patterns in simulated patients, planning a road towards applications to real cases.

The detection of dynamical organization in cancer evolution models / Sani, L.; D'Addese, G.; Graudenzi, A.; Villani, M.. - 1200:(2020), pp. 49-61. [10.1007/978-3-030-45016-8_6]

The detection of dynamical organization in cancer evolution models

D'Addese G.;Villani M.
2020

Abstract

Many systems in nature, society and technology are composed of numerous interacting parts. Very often these dynamics lead to the formation of medium-level structures, whose detection could allow a high-level description of the dynamical organization of the system itself, and thus to its understanding. In this work we apply this idea to the “cancer evolution” models, of which each individual patient represents a particular instance. This approach - in this paper based on the RI methodology, which is based on entropic measures - allows us to identify distinct independent cancer progression patterns in simulated patients, planning a road towards applications to real cases.
2020
11-lug-2020
no
Inglese
Communications in Computer and Information Science
Franco Cicirelli Antonio Guerrieri Clara Pizzuti Annalisa Socievole Giandomenico Spezzano Andrea Vinci
1200
49
61
978-3-030-45015-1
978-3-030-45016-8
Springer
SVIZZERA
Cham
Cancer evolution; Complex systems analysis; Information theory; Relevance index
The detection of dynamical organization in cancer evolution models / Sani, L.; D'Addese, G.; Graudenzi, A.; Villani, M.. - 1200:(2020), pp. 49-61. [10.1007/978-3-030-45016-8_6]
Sani, L.; D'Addese, G.; Graudenzi, A.; Villani, M.
4
Contributo su VOLUME::Capitolo/Saggio
268
none
info:eu-repo/semantics/bookPart
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1209544
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