“…These dependencies can be deterministic, as in Oncogenetic Trees (OT) (Desper et al ., 1999; Szabo and Boucher, 2008), Conjunctive Bayesian Networks (CBN) (Gerstung et al ., 2009; Montazeri et al ., 2016), Disjunctive Bayesian Networks (DBN) (Nicol et al ., 2021), and Hidden Extended Suppes-Bayes Causal Networks (H-ESBCNs) (Angaroni et al ., 2021), or stochastic as in Mutual Hazard Networks (MHN) (Schill et al ., 2020). These models also implicitly encode the possible mutational trajectories with predictions about their probability, and have been used for predicting cancer evolution, both long-term (Diaz-Uriarte and Vasallo, 2019; Hosseini et al ., 2019) and short-term (Diaz-Colunga and Diaz-Uriarte, 2021). Although developed in the field of computational oncology, these models are not limited to cancer: they can be applied to other questions involving the (irreversible) accumulation of discrete items (Gotovos et al ., 2021), and have been used to examine tool use in animal taxa (Johnston and Røyrvik, 2020).…”