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109


Interspecific hybridization facilitates niche adaptation in beer yeast

Gallone, Brigida; Steensels, Jan; Mertens, Stijn; Dzialo, Maria C; Gordon, Jonathan L; Wauters, Ruben; Theßeling, Florian A; Bellinazzo, Francesca; Saels, Veerle; Herrera-Malaver, Beatriz; Prahl, Troels; White, Christopher; Hutzler, Mathias; Meußdoerffer, Franz; Malcorps, Philippe; Souffriau, Ben; Daenen, Luk; Baele, Guy; Maere, Steven; Verstrepen, Kevin J
Hybridization between species often leads to non-viable or infertile offspring, yet examples of evolutionarily successful interspecific hybrids have been reported in all kingdoms of life. However, many questions on the ecological circumstances and evolutionary aftermath of interspecific hybridization remain unanswered. In this study, we sequenced and phenotyped a large set of interspecific yeast hybrids isolated from brewing environments to uncover the influence of interspecific hybridization in yeast adaptation and domestication. Our analyses demonstrate that several hybrids between Saccharomyces species originated and diversified in industrial environments by combining key traits of each parental species. Furthermore, posthybridization evolution within each hybrid lineage reflects subspecialization and adaptation to specific beer styles, a process that was accompanied by extensive chimerization between subgenomes. Our results reveal how interspecific hybridization provides an important evolutionary route that allows swift adaptation to novel environments.
PMID: 31636425
ISSN: 2397-334x
CID: 5170382

Using phylogeographic approaches to analyse the dispersal history, velocity and direction of viral lineages - Application to rabies virus spread in Iran

Dellicour, Simon; Troupin, Cécile; Jahanbakhsh, Fatemeh; Salama, Akram; Massoudi, Siamak; Moghaddam, Madjid K; Baele, Guy; Lemey, Philippe; Gholami, Alireza; Bourhy, Hervé
Recent years have seen the extensive use of phylogeographic approaches to unveil the dispersal history of virus epidemics. Spatially explicit reconstructions of viral spread represent valuable sources of lineage movement data that can be exploited to investigate the impact of underlying environmental layers on the dispersal of pathogens. Here, we performed phylogeographic inference and applied different post hoc approaches to analyse a new and comprehensive data set of viral genomes to elucidate the dispersal history and dynamics of rabies virus (RABV) in Iran, which have remained largely unknown. We first analysed the association between environmental factors and variations in dispersal velocity among lineages. Second, we present, test and apply a new approach to study the link between environmental conditions and the dispersal direction of lineages. The statistical performance (power of detection, false-positive rate) of this new method was assessed using simulations. We performed phylogeographic analyses of RABV genomes, allowing us to describe the large diversity of RABV in Iran and to confirm the cocirculation of several clades in the country. Overall, we estimate a relatively high lineage dispersal velocity, similar to previous estimates for dog rabies virus spread in northern Africa. Finally, we highlight a tendency for RABV lineages to spread in accessible areas associated with high human population density. Our analytical workflow illustrates how phylogeographic approaches can be used to investigate the impact of environmental factors on several aspects of viral dispersal dynamics.
PMID: 31535448
ISSN: 1365-294x
CID: 5170372

Travel Surveillance and Genomics Uncover a Hidden Zika Outbreak during the Waning Epidemic

Grubaugh, Nathan D; Saraf, Sharada; Gangavarapu, Karthik; Watts, Alexander; Tan, Amanda L; Oidtman, Rachel J; Ladner, Jason T; Oliveira, Glenn; Matteson, Nathaniel L; Kraemer, Moritz U G; Vogels, Chantal B F; Hentoff, Aaron; Bhatia, Deepit; Stanek, Danielle; Scott, Blake; Landis, Vanessa; Stryker, Ian; Cone, Marshall R; Kopp, Edgar W; Cannons, Andrew C; Heberlein-Larson, Lea; White, Stephen; Gillis, Leah D; Ricciardi, Michael J; Kwal, Jaclyn; Lichtenberger, Paola K; Magnani, Diogo M; Watkins, David I; Palacios, Gustavo; Hamer, Davidson H; Gardner, Lauren M; Perkins, T Alex; Baele, Guy; Khan, Kamran; Morrison, Andrea; Isern, Sharon; Michael, Scott F; Andersen, Kristian G
The Zika epidemic in the Americas has challenged surveillance and control. As the epidemic appears to be waning, it is unclear whether transmission is still ongoing, which is exacerbated by discrepancies in reporting. To uncover locations with lingering outbreaks, we investigated travel-associated Zika cases to identify transmission not captured by reporting. We uncovered an unreported outbreak in Cuba during 2017, a year after peak transmission in neighboring islands. By sequencing Zika virus, we show that the establishment of the virus was delayed by a year and that the ensuing outbreak was sparked by long-lived lineages of Zika virus from other Caribbean islands. Our data suggest that, although mosquito control in Cuba may initially have been effective at mitigating Zika virus transmission, such measures need to be maintained to be effective. Our study highlights how Zika virus may still be "silently" spreading and provides a framework for understanding outbreak dynamics. VIDEO ABSTRACT.
PMCID:6716374
PMID: 31442400
ISSN: 1097-4172
CID: 5170362

Bayesian Inference of Evolutionary Histories under Time-Dependent Substitution Rates

Membrebe, Jade Vincent; Suchard, Marc A; Rambaut, Andrew; Baele, Guy; Lemey, Philippe
Many factors complicate the estimation of time scales for phylogenetic histories, requiring increasingly complex evolutionary models and inference procedures. The widespread application of molecular clock dating has led to the insight that evolutionary rate estimates may vary with the time frame of measurement. This is particularly well established for rapidly evolving viruses that can accumulate sequence divergence over years or even months. However, this rapid evolution stands at odds with a relatively high degree of conservation of viruses or endogenous virus elements over much longer time scales. Building on recent insights into time-dependent evolutionary rates, we develop a formal and flexible Bayesian statistical inference approach that accommodates rate variation through time. We evaluate the novel molecular clock model on a foamy virus cospeciation history and a lentivirus evolutionary history and compare the performance to other molecular clock models. For both virus examples, we estimate a similarly strong time-dependent effect that implies rates varying over four orders of magnitude. The application of an analogous codon substitution model does not implicate long-term purifying selection as the cause of this effect. However, selection does appear to affect divergence time estimates for the less deep evolutionary history of the Ebolavirus genus. Finally, we explore the application of our approach on woolly mammoth ancient DNA data, which shows a much weaker, but still important, time-dependent rate effect that has a noticeable impact on node age estimates. Future developments aimed at incorporating more complex evolutionary processes will further add to the broad applicability of our approach.
PMCID:6657730
PMID: 31004175
ISSN: 1537-1719
CID: 5170302

Bayesian estimation of past population dynamics in BEAST 1.10 using the Skygrid coalescent model

Hill, Verity; Baele, Guy
Inferring past population dynamics over time from heterochronous molecular sequence data is often achieved using the Bayesian Skygrid model, a non-parametric coalescent model that estimates the effective population size over time. Available in BEAST, a cross-platform program for Bayesian analysis of molecular sequences using Markov chain Monte Carlo, this coalescent model is often estimated in conjunction with a molecular clock model to produce time-stamped phylogenetic trees. We here provide a practical guide to using BEAST and its accompanying applications for the purpose of drawing inference under these models. We focus on best practices, potential pitfalls and recommendations that can be generalized to other software packages for Bayesian inference. This protocol shows how to use TempEst, BEAUti and BEAST 1.10 (http://beast.community/), LogCombiner as well as Tracer in a complete workflow.
PMCID:6805224
PMID: 31364710
ISSN: 1537-1719
CID: 5170342

Divergence dating using mixed effects clock modelling: An application to HIV-1

Bletsa, Magda; Suchard, Marc A; Ji, Xiang; Gryseels, Sophie; Vrancken, Bram; Baele, Guy; Worobey, Michael; Lemey, Philippe
The need to estimate divergence times in evolutionary histories in the presence of various sources of substitution rate variation has stimulated a rich development of relaxed molecular clock models. Viral evolutionary studies frequently adopt an uncorrelated clock model as a generic relaxed molecular clock process, but this may impose considerable estimation bias if discrete rate variation exists among clades or lineages. For HIV-1 group M, rate variation among subtypes has been shown to result in inconsistencies in time to the most recent common ancestor estimation. Although this calls into question the adequacy of available molecular dating methods, no solution to this problem has been offered so far. Here, we investigate the use of mixed effects molecular clock models, which combine both fixed and random effects in the evolutionary rate, to estimate divergence times. Using simulation, we demonstrate that this model outperforms existing molecular clock models in a Bayesian framework for estimating time-measured phylogenies in the presence of mixed sources of rate variation, while also maintaining good performance in simpler scenarios. By analysing a comprehensive HIV-1 group M complete genome data set we confirm considerable rate variation among subtypes that is not adequately modelled by uncorrelated relaxed clock models. The mixed effects clock model can accommodate this rate variation and results in a time to the most recent common ancestor of HIV-1 group M of 1920 (1915-25), which is only slightly earlier than the uncorrelated relaxed clock estimate for the same data set. The use of complete genome data appears to have a more profound impact than the molecular clock model because it reduces the credible intervals by 50 per cent relative to similar estimates based on short envelope gene sequences.
PMCID:6830409
PMID: 31720009
ISSN: 2057-1577
CID: 5170392

Identifying the patterns and drivers of Puumala hantavirus enzootic dynamics using reservoir sampling

Laenen, Lies; Vergote, Valentijn; Vanmechelen, Bert; Tersago, Katrien; Baele, Guy; Lemey, Philippe; Leirs, Herwig; Dellicour, Simon; Vrancken, Bram; Maes, Piet
Hantaviruses are zoonotic hemorrhagic fever viruses for which prevention of human spillover remains the first priority in disease management. Tailored intervention measures require an understanding of the drivers of enzootic dynamics, commonly inferred from distorted human incidence data. Here, we use longitudinal sampling of approximately three decades of Puumala orthohantavirus (PUUV) evolution in isolated reservoir populations to estimate PUUV evolutionary rates, and apply these to study the impact of environmental factors on viral spread. We find that PUUV accumulates genetic changes at a rate of ∼10-4 substitutions per site per year and that land cover type defines the dispersal dynamics of PUUV, with forests facilitating and croplands impeding virus spread. By providing reliable short-term PUUV evolutionary rate estimates, this work facilitates the evaluation of spatial risk heterogeneity starting from timed phylogeographic reconstructions based on virus sampling in its animal reservoir, thereby side-stepping the need for difficult-to-collect human disease incidence data.
PMCID:6476162
PMID: 31024739
ISSN: 2057-1577
CID: 5170312

High-Performance Computing in Bayesian Phylogenetics and Phylodynamics Using BEAGLE

Baele, Guy; Ayres, Daniel L; Rambaut, Andrew; Suchard, Marc A; Lemey, Philippe
In this chapter, we focus on the computational challenges associated with statistical phylogenomics and how use of the broad-platform evolutionary analysis general likelihood evaluator (BEAGLE), a high-performance library for likelihood computation, can help to substantially reduce computation time in phylogenomic and phylodynamic analyses. We discuss computational improvements brought about by the BEAGLE library on a variety of state-of-the-art multicore hardware, and for a range of commonly used evolutionary models. For data sets of varying dimensions, we specifically focus on comparing performance in the Bayesian evolutionary analysis by sampling trees (BEAST) software between multicore central processing units (CPUs) and a wide range of graphics processing cards (GPUs). We put special emphasis on computational benchmarks from the field of phylodynamics, which combines the challenges of phylogenomics with those of modelling trait data associated with the observed sequence data. In conclusion, we show that for increasingly large molecular sequence data sets, GPUs can offer tremendous computational advancements through the use of the BEAGLE library, which is available for software packages for both Bayesian inference and maximum-likelihood frameworks.
PMID: 31278682
ISSN: 1940-6029
CID: 5170332

Advances in Visualization Tools for Phylogenomic and Phylodynamic Studies of Viral Diseases

Theys, Kristof; Lemey, Philippe; Vandamme, Anne-Mieke; Baele, Guy
Genomic and epidemiological monitoring have become an integral part of our response to emerging and ongoing epidemics of viral infectious diseases. Advances in high-throughput sequencing, including portable genomic sequencing at reduced costs and turnaround time, are paralleled by continuing developments in methodology to infer evolutionary histories (dynamics/patterns) and to identify factors driving viral spread in space and time. The traditionally static nature of visualizing phylogenetic trees that represent these evolutionary relationships/processes has also evolved, albeit perhaps at a slower rate. Advanced visualization tools with increased resolution assist in drawing conclusions from phylogenetic estimates and may even have potential to better inform public health and treatment decisions, but the design (and choice of what analyses are shown) is hindered by the complexity of information embedded within current phylogenetic models and the integration of available meta-data. In this review, we discuss visualization challenges for the interpretation and exploration of reconstructed histories of viral epidemics that arose from increasing volumes of sequence data and the wealth of additional data layers that can be integrated. We focus on solutions that address joint temporal and spatial visualization but also consider what the future may bring in terms of visualization and how this may become of value for the coming era of real-time digital pathogen surveillance, where actionable results and adequate intervention strategies need to be obtained within days.
PMCID:6688121
PMID: 31428595
ISSN: 2296-2565
CID: 5170352

NOSOI: TRANSMISSION CHAIN SIMULATOR IMPLEMENTING WITHIN-HOST DYNAMICS TO LEVERAGE VECTOR COMPETENCE DATA [Meeting Abstract]

Lequime, Sebastian; Bastide, Paul; Dellicour, Simon; Fontaine, Albin; Baele, Guy; Lemey, Philippe
ISI:000507364503140
ISSN: 0002-9637
CID: 5171112