Gene and protein networks are very important to model complex large-scale systems in molecular biology. Inferring or reverseengineering such networks can be defined as the process of identifying gene/protein interactions from experimental data through computational analysis. However, this task is typically complicated by the enormously large scale of the unknowns in a rather small sample size. Furthermore, when the goal is to study causal relationships within the network, tools capable of overcoming the limitations of correlation networks are required. In this work, we make use of Bayesian Graphical Models to attach this problem and, specifically, we perform a comparative study of different state-of-the-art heuristics, analyzing their performance in inferring the structure of the Bayesian Network from breast cancer data.
Ramazzotti, D., Merelli, I., Gonçalves, I., Castelli, M., Beretta, S. (2016). Combining Bayesian approaches and evolutionary techniques for the inference of breast cancer networks. In Proceedings of the 8th International Joint Conference on Computational Intelligence (pp.217-224). SciTePress [10.5220/0006064102170224].
Combining Bayesian approaches and evolutionary techniques for the inference of breast cancer networks
RAMAZZOTTI, DANIELEPrimo
;MERELLI, IVANSecondo
;CASTELLI, MAUROPenultimo
;BERETTA, STEFANOUltimo
2016
Abstract
Gene and protein networks are very important to model complex large-scale systems in molecular biology. Inferring or reverseengineering such networks can be defined as the process of identifying gene/protein interactions from experimental data through computational analysis. However, this task is typically complicated by the enormously large scale of the unknowns in a rather small sample size. Furthermore, when the goal is to study causal relationships within the network, tools capable of overcoming the limitations of correlation networks are required. In this work, we make use of Bayesian Graphical Models to attach this problem and, specifically, we perform a comparative study of different state-of-the-art heuristics, analyzing their performance in inferring the structure of the Bayesian Network from breast cancer data.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.