4noSeveral diseases related to cell proliferation are characterized by the accumulation of somatic DNA changes, with respect to wild-type conditions. Cancer and HIV are 2 common examples of such diseases, where the mutational load in the cancerous/viral population increases over time. In these cases, selective pressures are often observed along with competition, co-operation, and parasitism among distinct cellular clones. Recently, we presented a mathematical framework to model these phenomena, based on a combination of Bayesian inference and Suppes’ theory of probabilistic causation, depicted in graphical structures dubbed Suppes-Bayes Causal Networks (SBCNs). The SBCNs are generative probabilistic graphical models that recapitulate the po...
Many applications in translational medicine require the understanding of how diseases progress throu...
The last decade has been characterized by an explosion of biological sequence information. When the ...
Abstract Background Disease progression models are important for understanding the critical steps du...
Several diseases related to cell proliferation are characterized by the accumulation of somatic DNA ...
\u3cp\u3eStructural learning of Bayesian Networks (BNs) is a NP-hard problem, which is further compl...
\u3cp\u3eOne of the critical issues when adopting Bayesian networks (BNs) to model dependencies amon...
\u3cp\u3eThe emergence and development of cancer is a consequence of the accumulation over time of g...
We introduce and analyze a waiting time model for the accumulation of genetic changes. The continuou...
Existing techniques to reconstruct tree models of progression for accumulative processes, such as ca...
The continuous time conjunctive Bayesian network (CT-CBN) is a graphical model for analyzing the wai...
The continuous time conjunctive Bayesian network (CT-CBN) is a graphical model for analyzing the wai...
Existing techniques to reconstruct tree models of progression for accumulative processes, such as ca...
Motivation: Cancer is an evolutionary process characterized by accumulating mutations. However, the ...
We introduce a new model called the observed time conjunctive Bayesian network (OT-CBN) that describ...
Identifying the interrelations among cancer driver genes and the patterns in which the driver genes ...
Many applications in translational medicine require the understanding of how diseases progress throu...
The last decade has been characterized by an explosion of biological sequence information. When the ...
Abstract Background Disease progression models are important for understanding the critical steps du...
Several diseases related to cell proliferation are characterized by the accumulation of somatic DNA ...
\u3cp\u3eStructural learning of Bayesian Networks (BNs) is a NP-hard problem, which is further compl...
\u3cp\u3eOne of the critical issues when adopting Bayesian networks (BNs) to model dependencies amon...
\u3cp\u3eThe emergence and development of cancer is a consequence of the accumulation over time of g...
We introduce and analyze a waiting time model for the accumulation of genetic changes. The continuou...
Existing techniques to reconstruct tree models of progression for accumulative processes, such as ca...
The continuous time conjunctive Bayesian network (CT-CBN) is a graphical model for analyzing the wai...
The continuous time conjunctive Bayesian network (CT-CBN) is a graphical model for analyzing the wai...
Existing techniques to reconstruct tree models of progression for accumulative processes, such as ca...
Motivation: Cancer is an evolutionary process characterized by accumulating mutations. However, the ...
We introduce a new model called the observed time conjunctive Bayesian network (OT-CBN) that describ...
Identifying the interrelations among cancer driver genes and the patterns in which the driver genes ...
Many applications in translational medicine require the understanding of how diseases progress throu...
The last decade has been characterized by an explosion of biological sequence information. When the ...
Abstract Background Disease progression models are important for understanding the critical steps du...