scholarly journals Characterizing the dynamical accumulation of nuclear DNA in the sperm cells of Lycium barbarum L.

2016 ◽  
Vol 6 (1) ◽  
Author(s):  
Hua Deng ◽  
Pierre Nouvellet ◽  
David Waxman

When sperm cells of the plant <em>Lycium</em> <em>barbarum</em> L. (<em>L</em>. <em>barbarum</em>) form in a style they begin to synthesize nuclear DNA (nDNA), which monotonically increases over time. To characterize the dynamics of nDNA accumulation, we present two new dynamical/statistical models. We applied these models to the accumulation of the nDNA content of sperm cells in L. barbarum between 16 to 32 hours after pollination in a style. A statistical analysis of experimental data, involving Markov chain Monte Carlo methods, allowed estimation of parameters of the models. We conclude that the model with no variation in the rate of nDNA accumulation adequately summarizes the data. This is the first work where the dynamics of nDNA accumulation has been quantitatively modeled and analyzed.

2016 ◽  
Author(s):  
Oona Kupiainen-Määttä

Abstract. Evaporation rates of small negatively charged sulfuric acid–ammonia clusters are determined by combining detailed cluster formation simulations with cluster distributions measured at CLOUD. The analysis is performed by varying the evaporation rates with Markov chain Monte Carlo (MCMC), running cluster formation simulations with each new set of evaporation rates and comparing the obtained cluster distributions to the measurements. In a second set of simulations, the fragmentation of clusters in the mass spectrometer due to energetic collisions is studied by treating also the fragmentation probabilities as unknown parameters and varying them with MCMC. This second set of simulations results in a better fit to the experimental data, suggesting that a large fraction of the observed HSO4− and HSO4− ⋅ H2SO4 signals may result from fragmentation of larger clusters, most importantly the HSO4− ⋅ (H2SO4)2 trimer.


2016 ◽  
Author(s):  
Martin L. Rennie ◽  
Richard L Kingston

AbstractThe association and dissociation of protein oligomers is frequently coupled to the binding of ligands, facilitating the regulation of many biological processes. Equilibrium thermodynamic models are needed to describe the linkage between ligand binding and homo-oligomerization. These models must be parameterized in a way that makes physical interpretation straightforward, and allows elaborations or simplifications to be readily incorporated. We propose a systematic framework for the equilibrium analysis of ligand-linked oligomerization, treating in detail the case of a homo-oligomer with cyclic point group symmetry, where each subunit binds a ligand at a single site. Exploiting the symmetry of the oligomer, in combination with a nearest-neighbors approximation, we derive a class of site-specific ligand binding models involving only four parameters, irrespective of the size of the oligomer. The model parameters allow direct quantitative assessment of ligand binding cooperativity, and the influence of ligand binding on protein oligomerization, which are the key questions of biological interest. These models, which incorporate multiple types of linkage, are practically applicable, and we show how Markov Chain Monte Carlo (MCMC) methods can be used to characterize the agreement of the model with experimental data. Simplifications to the model emerge naturally, as its parameters take on extremal values. The nearest-neighbors approximation underpinning the model is transparent, and the model could be augmented in obvious fashion if the approximation were inadequate. The approach is generalizable, and could be used to treat more complex situations, involving more than a single kind of ligand, or a different protein symmetry.Author SummaryThe assembly and disassembly of protein complexes in response to the binding of ligands is a ubiquitous biological phenomenon. This is often linked, in turn, to the activation or deactivation of protein function. Methods are therefore needed to quantitate the linkage or coupling between protein assembly and effector binding, requiring the development of mathematical models describing the coupled binding processes. As proteins usually assemble in a symmetric fashion, the nature of any symmetry present has to be considered during model construction. We have developed a class of models than can effectively describe the coupling between effector binding and protein assembly into symmetric ring-like structures of any size. Despite the relatively complex mathematical form of the models, they are practically applicable. Markov Chain Monte Carlo methods, a form of Bayesian statistical analysis, can be used to analyze the fit of the models to experimental data, and recover the model parameters. This allows the direct assessment of the nature and magnitude of the coupling between effector binding and protein assembly, as well as other relevant characteristics of the system.


2004 ◽  
Vol 29 (4) ◽  
pp. 461-488 ◽  
Author(s):  
Sandip Sinharay

There is an increasing use of Markov chain Monte Carlo (MCMC) algorithms for fitting statistical models in psychometrics, especially in situations where the traditional estimation techniques are very difficult to apply. One of the disadvantages of using an MCMC algorithm is that it is not straightforward to determine the convergence of the algorithm. Using the output of an MCMC algorithm that has not converged may lead to incorrect inferences on the problem at hand. The convergence is not one to a point, but that of the distribution of a sequence of generated values to another distribution, and hence is not easy to assess; there is no guaranteed diagnostic tool to determine convergence of an MCMC algorithm in general. This article examines the convergence of MCMC algorithms using a number of convergence diagnostics for two real data examples from psychometrics. Findings from this research have the potential to be useful to researchers using the algorithms. For both the examples, the number of iterations required (suggested by the diagnostics) to be reasonably confident that the MCMC algorithm has converged may be larger than what many practitioners consider to be safe.


Author(s):  
Andreas Raue ◽  
Clemens Kreutz ◽  
Fabian Joachim Theis ◽  
Jens Timmer

Increasingly complex applications involve large datasets in combination with nonlinear and high-dimensional mathematical models. In this context, statistical inference is a challenging issue that calls for pragmatic approaches that take advantage of both Bayesian and frequentist methods. The elegance of Bayesian methodology is founded in the propagation of information content provided by experimental data and prior assumptions to the posterior probability distribution of model predictions. However, for complex applications, experimental data and prior assumptions potentially constrain the posterior probability distribution insufficiently. In these situations, Bayesian Markov chain Monte Carlo sampling can be infeasible. From a frequentist point of view, insufficient experimental data and prior assumptions can be interpreted as non-identifiability. The profile-likelihood approach offers to detect and to resolve non-identifiability by experimental design iteratively. Therefore, it allows one to better constrain the posterior probability distribution until Markov chain Monte Carlo sampling can be used securely. Using an application from cell biology, we compare both methods and show that a successive application of the two methods facilitates a realistic assessment of uncertainty in model predictions.


2006 ◽  
Vol 16 (1) ◽  
pp. 37-56 ◽  
Author(s):  
Nicola J. Cooper ◽  
Paul C. Lambert ◽  
Keith R. Abrams ◽  
Alexander J. Sutton

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