The Path-Label Reconciliation (PLR) Dissimilarity Measure for Gene Trees
Alitzel L\'opez S\'anchez, Jos\'e Antonio Ram\'irez-Rafael, Alejandro, Flores-Lamas, Maribel Hern\'andez-Rosales, Manuel Lafond

TL;DR
This paper introduces the Path-Label Reconciliation (PLR) dissimilarity measure for comparing gene trees reconciled with the same species tree, accounting for topology, ancestral maps, and event discrepancies, with efficient computation and practical advantages.
Contribution
It proposes a novel semi-metric for gene tree comparison that refines existing metrics by incorporating multiple biological features and offers linear-time computation.
Findings
PLR provides a more evenly distributed range of distances.
It is less susceptible to overestimating differences due to small topological changes.
PLR is computationally efficient and practically applicable.
Abstract
In this study, we investigate the problem of comparing gene trees reconciled with the same species tree using a novel semi-metric, called the Path-Label Reconciliation (PLR) dissimilarity measure. This approach not only quantifies differences in the topology of reconciled gene trees, but also considers discrepancies in predicted ancestral gene-species maps and speciation/duplication events, offering a refinement of existing metrics such as Robinson-Foulds (RF) and their labeled extensions LRF and ELRF. A tunable parameter {\alpha} also allows users to adjust the balance between its species map and event labeling components. We show that PLR can be computed in linear time and that it is a semi-metric. We also discuss the diameters of reconciled gene tree measures, which are important in practice for normalization, and provide initial bounds on PLR, LRF, and ELRF. To validate PLR, we…
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