M
Mandev S. Gill
Researcher at Katholieke Universiteit Leuven
Publications - 23
Citations - 1063
Mandev S. Gill is an academic researcher from Katholieke Universiteit Leuven. The author has contributed to research in topics: Population & Bayesian probability. The author has an hindex of 7, co-authored 18 publications receiving 733 citations. Previous affiliations of Mandev S. Gill include Columbia University.
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Research article Improving Bayesian Population Dynamics Inference: A Coalescent-Based Model for Multiple Loci
TL;DR: This work presents a generalization of the GMRF model that allows for the analysis of multilocus sequence data and recovers an older and more reconcilable TMRCA for a classic ancient DNA data set.
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Evolution and epidemic spread of SARS-CoV-2 in Brazil.
Darlan da Silva Candido,Darlan da Silva Candido,Ingra Morales Claro,Jaqueline Goes de Jesus,William Marciel de Souza,Filipe R. R. Moreira,Simon Dellicour,Simon Dellicour,Thomas A. Mellan,Louis du Plessis,Rafael Henrique Moraes Pereira,Flavia C. S. Sales,Erika R. Manuli,Julien Thézé,Luiz Carlos de Almeida,Mariane Talon de Menezes,Carolina M. Voloch,Marcílio Jorge Fumagalli,Thais M. Coletti,Camila A. M. Silva,Mariana S. Ramundo,Mariene R. Amorim,Henrique Hoeltgebaum,Swapnil Mishra,Mandev S. Gill,Luiz Max Carvalho,Lewis F Buss,Carlos A. Prete,Jordan Ashworth,Helder I. Nakaya,Pedro S. Peixoto,Oliver J. Brady,Samuel M. Nicholls,Amilcar Tanuri,Átila Duque Rossi,Carlos Kaue Vieira Braga,Alexandra L. Gerber,Ana Paula de C Guimarães,Nelson Gaburo,Cecila Salete Alencar,Alessandro C. S. Ferreira,Cristiano Xavier Lima,José Eduardo Levi,Celso Francisco Hernandes Granato,Giulia M. Ferreira,Ronaldo da Silva Francisco,Fabiana Granja,Fabiana Granja,Márcia Teixeira Garcia,Maria Luiza Moretti,Mauricio W. Perroud,Terezinha M. P. P. Castineiras,Carolina S. Lazari,Sarah C. Hill,Sarah C. Hill,Andreza Aruska de Souza Santos,Camila L. Simeoni,Julia Forato,Andrei C. Sposito,Angelica Zaninelli Schreiber,Magnun N. N. Santos,Camila Zolini de Sá,Renan P. Souza,Luciana C. Resende-Moreira,Mauro M. Teixeira,Josy Hubner,Patricia Asfora Falabella Leme,Rennan G. Moreira,Maurício Lacerda Nogueira,Neil M. Ferguson,Silvia Figueiredo Costa,José Luiz Proença-Módena,Ana Tereza Ribeiro de Vasconcelos,Samir Bhatt,Philippe Lemey,Chieh-Hsi Wu,Andrew Rambaut,Nicholas J. Loman,Renato Santana Aguiar,Oliver G. Pybus,Ester Cerdeira Sabino,Ester Cerdeira Sabino,Ester Cerdeira Sabino,Nuno R. Faria,Nuno R. Faria,Nuno R. Faria +85 more
TL;DR: New light is shed on the epidemic transmission and evolutionary trajectories of SARS-CoV-2 lineages in Brazil and evidence that current interventions remain insufficient to keep virus transmission under control in this country is provided.
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Untangling introductions and persistence in COVID-19 resurgence in Europe.
Philippe Lemey,Philippe Lemey,Nick W. Ruktanonchai,Nick W. Ruktanonchai,Samuel L. Hong,Vittoria Colizza,Chiara Poletto,Frederik Van den Broeck,Frederik Van den Broeck,Mandev S. Gill,Xiang Ji,Anthony Levasseur,Bas B. Oude Munnink,Marion Koopmans,Adam Sadilek,Shengjie Lai,Andrew J. Tatem,Guy Baele,Marc A. Suchard,Simon Dellicour,Simon Dellicour +20 more
TL;DR: In this article, a phylogeographical model was built to evaluate how newly introduced lineages, as opposed to the rekindling of persistent linesages, contributed to the resurgence of COVID-19 in Europe.
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Understanding Past Population Dynamics: Bayesian Coalescent-Based Modeling with Covariates.
TL;DR: In this paper, a flexible framework that incorporates time-varying covariates that exploit Gaussian Markov random fields to achieve temporal smoothing of effective population size trajectories is proposed.
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A Relaxed Directional Random Walk Model for Phylogenetic Trait Evolution.
TL;DR: A relaxed directional random walk (RDRW) model is introduced for the evolution of multivariate continuously varying traits along a phylogenetic tree and the development of a computationally efficient dynamic programming approach to compute the data likelihood enables scaling of the method to large data sets frequently encountered in phylogenetic comparative studies and viral evolution.