MTG2: An efficient algorithm for multivariate linear mixed model analysis based on genomic information

MTG2: An efficient algorithm for multivariate linear mixed model analysis based on genomic information

Sang Hong Lee, Julius van der Werf

Genomic variant calling: Flexible tools and a diagnostic data set

Genomic variant calling: Flexible tools and a diagnostic data set

Michael Lawrence, Melanie A Huntley, Eric Stawiski, Art Owen, Thomas D Wu, Leonard D Goldstein, Yi Cao, Jeremiah Degenhardt, Jason Young, Joseph Guillory, Sherry Heldens, Marlena Jackson, Somasekar Seshagiri, Robert Gentleman

Deep sequencing of environmental DNA isolated from the Cuyahoga River highlights the utility of river water samples to query surrounding aquatic and terrestrial biodiversity

Deep sequencing of environmental DNA isolated from the Cuyahoga River highlights the utility of river water samples to query surrounding aquatic and terrestrial biodiversity

Matthew Cannon, James Hester, Amanda Shalkhauser, Ernest R Chan, Kyle Logue, Scott T Small, David Serre

Complete assembly of novel environmental bacterial genomes by MinIONTM sequencing

Complete assembly of novel environmental bacterial genomes by MinIONTM sequencing

Daniel J Turner, Xiaoguang Dai, Simon Mayes, Sissel Juul

Rolling the Dice Twice: Evolving Reconstructed Ancient Proteins in Extant Organisms

Rolling the Dice Twice: Evolving Reconstructed Ancient Proteins in Extant Organisms

Betul Kacar

Assortment and the evolution of cooperation in a Moran process with exponential fitness

Assortment and the evolution of cooperation in a Moran process with exponential fitness
Daniel Cooney, Carl Veller

We study the evolution of cooperation in a finite population interacting according to a simple model of like-with-like assortment. Evolution proceeds as a Moran process, and payoffs from the underlying cooperator-defector game are translated to positive fitnesses by an exponential transformation. The use of the exponential transformation, rather than the usual linear one, allows for a tractable characterization of the effect of assortment on the evolution of cooperation. We define two senses in which a greater degree of assortment can favour the evolution of cooperation, the first stronger than the second: (i) greater assortment increases, at all population states, the probability that the number of cooperators increases, relative to the probability that the number of defectors increases; and (ii) greater assortment increases the fixation probability of cooperation, relative to that of defection. We show that, even by the stronger definition, greater assortment favours the evolution of cooperation for many cooperative dilemmas of interest, including prisoners’ dilemmas, snowdrift games, and stag-hunt games. For other cooperative dilemmas, greater assortment favours cooperation by the weak definition, but not by the strong definition. Allen and Nowak (2015) have derived similar results for a Wright-Fisher process with assortment. Our results complement theirs, and extend them in two ways: First, while their results hold only for weak selection, our results hold for any strength of selection. Second, while their results apply only to the weak definition by which assortment favours cooperation, we derive results for the strong definition too.

Diverse phenotypic and genetic responses to short-term selection in evolving Escherichia coli populations

Diverse phenotypic and genetic responses to short-term selection in evolving Escherichia coli populations

Marcus M Dillon, Nicholas P Rouillard, Brian Van Dam, Romain Gallet, Vaughn S Cooper

The UCSC Genome Browser database: 2016 update

The UCSC Genome Browser database: 2016 update

Matthew Speir, Ann S. Zweig, Kate R. Rosenbloom, Brian J. Raney, Benedict Paten, Parisa Nejad, Brian T. Lee, Katrina Learned, Donna Karolchik, Angie S. Hinrichs, Steve Heitner, Rachel A. Harte, Maximilian Haeussler, Luvina Guruvadoo, Pauline A. Fujita, Christopher Eisenhart, Mark Diekhans, Hiram Clawson, Jonathan Casper, Galt P. Barber, David Haussler, Robert M. Kuhn, W. James Kent

Structure and evolutionary history of a large family of NLR proteins in the zebrafish

Structure and evolutionary history of a large family of NLR proteins in the zebrafish

Kerstin Howe, Philipp Schiffer, Julia Zielinski, Thomas Wiehe, Gavin Laird, John Marioni, Onuralp Soylemez, Fyodor Kondrashov, Maria Leptin

Assessment of the potential impacts of plant traits across environments by combining global sensitivity analysis and dynamic modeling in wheat

Assessment of the potential impacts of plant traits across environments by combining global sensitivity analysis and dynamic modeling in wheat
Pierre Casadebaig, Bangyou Zheng, Scott Chapman, Neil Huth, Robert Faivre, Karine Chenu

A crop can be viewed as a complex system with outputs (e.g. yield) that are affected by inputs of genetic, physiology, pedo-climatic and management information. Application of numerical methods for model exploration assist in evaluating the major most influential inputs, providing the simulation model is a credible description of the biological system. A sensitivity analysis was used to assess the simulated impact on yield of a suite of traits involved in major processes of crop growth and development, and to evaluate how the simulated value of such traits varies across environments and in relation to other traits (which can be interpreted as a virtual change in genetic background). The study focused on wheat in Australia, with an emphasis on adaptation to low rainfall conditions. A large set of traits (90) was evaluated in a wide target population of environments (4 sites x 125 years), management practices (3 sowing dates x 2 N fertilization) and CO2 (2 levels). The Morris sensitivity analysis method was used to sample the parameter space and reduce computational requirements, while maintaining a realistic representation of the targeted trait x environment x management landscape (∼ 82 million individual simulations in total). The patterns of parameter x environment x management interactions were investigated for the most influential parameters, considering a potential genetic range of +/- 20% compared to a reference. Main (i.e. linear) and interaction (i.e. non-linear and interaction) sensitivity indices calculated for most of APSIM-Wheat parameters allowed the identifcation of 42 parameters substantially impacting yield in most target environments. Among these, a subset of parameters related to phenology, resource acquisition, resource use efficiency and biomass allocation were identified as potential candidates for crop (and model) improvement.