2020
DOI: 10.1101/2020.12.16.423099
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Conditional prediction of consecutive tumor evolution using cancer progression models: What genotype comes next?

Abstract: Accurate prediction of tumor progression would be helpful for adaptive therapy and precision medicine. Cancer progression models (CPMs) can be used to infer dependencies in mutation accumulation from cross-sectional data and provide predictions of tumor progression paths. But their performance when predicting the complete evolutionary paths is limited by violations of assumptions and the size of available data sets. Instead of predicting full tumor progression paths, we can focus on short-term predictions, mor… Show more

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Cited by 2 publications
(3 citation statements)
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“…Since clonal interactions have a major impact on intratumor heterogeneity and the observed evolutionary trajectories, it would be beneficial to exploit the pairwise frequencies of mutational events within and between subclones when modelling tumor progression. For cross-sectional bulk sequencing data, a collection of probabilistic methods for inferring the temporal order of mutations and predicting tumor progression is called cancer progression models (CPMs) (Beerenwinkel et al, 2015;Diaz-Colunga and Diaz-Uriarte, 2020). In light of the observation that mutually exclusive mutations are often associated with genes in the same functional pathway (Yeang et al, 2008;Vandin, 2017), Raphael and Vandin (2015) developed the first CPM that jointly infers sets of mutually exclusive mutations and the temporal order among them using a chain model.…”
Section: Introductionmentioning
confidence: 99%
See 1 more Smart Citation
“…Since clonal interactions have a major impact on intratumor heterogeneity and the observed evolutionary trajectories, it would be beneficial to exploit the pairwise frequencies of mutational events within and between subclones when modelling tumor progression. For cross-sectional bulk sequencing data, a collection of probabilistic methods for inferring the temporal order of mutations and predicting tumor progression is called cancer progression models (CPMs) (Beerenwinkel et al, 2015;Diaz-Colunga and Diaz-Uriarte, 2020). In light of the observation that mutually exclusive mutations are often associated with genes in the same functional pathway (Yeang et al, 2008;Vandin, 2017), Raphael and Vandin (2015) developed the first CPM that jointly infers sets of mutually exclusive mutations and the temporal order among them using a chain model.…”
Section: Introductionmentioning
confidence: 99%
“…For cross-sectional bulk sequencing data, where each tumor is summarized by a binary genotype, a collection of probabilistic methods for inferring the temporal order of mutations and predicting tumor progression is called cancer progression models (CPMs) [25, 26]. In light of the observation that mutually exclusive mutations are often associated with genes in the same functional pathway, Raphael & Vandin developed the first CPM that jointly infers sets of mutually exclusive mutations and the temporal order among them using a chain model [27].…”
Section: Introductionmentioning
confidence: 99%
“…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).…”
Section: Introductionmentioning
confidence: 99%