0000000000178108

AUTHOR

Danilo Alvares

showing 9 related works from this author

Incidence and control of black spot syndrome of tiger nut

2017

Tiger nut (Cyperus esculentum) is a very profitable crop in Valencia, Spain, but in the last years, part of the harvested tubers presents black spots in the skin making them unmarketable. Surveys performed in two consecutive years showed that about 10% of the tubers were severely affected by the black spot syndrome whose aetiology is unknown. Disease control procedures based on selection of tubers used as seed (seed tubers) or treatment with hot-water and/or chemicals were assayed in greenhouse. These assays showed that that this syndrome had a negative impact on the germination rate, tuber size and yield. Selection of asymptomatic seed tubers reduced drastically the incidence of the black …

0106 biological sciencesbiologyfungifood and beveragesbiology.organism_classification01 natural sciencesPlant diseaseFungicideCrop010104 statistics & probabilitychemistry.chemical_compoundHorticultureCyperusAgronomyTrisodium phosphatechemistryGerminationSodium hypochlorite0101 mathematicsAgronomy and Crop Science010606 plant biology & botanyBlack spotAnnals of Applied Biology
researchProduct

Sequential Monte Carlo Methods in Random Intercept Models for Longitudinal Data

2017

Longitudinal modelling is common in the field of Biostatistical research. In some studies, it becomes mandatory to update posterior distributions based on new data in order to perform inferential process on-line. In such situations, the use of posterior distribution as the prior distribution in the new application of the Bayes’ theorem is sensible. However, the analytic form of the posterior distribution is not always available and we only have an approximated sample of it, thus making the process “not-so-easy”. Equivalent inferences could be obtained through a Bayesian inferential process based on the set that integrates the old and new data. Nevertheless, this is not always a real alterna…

Hybrid Monte Carlosymbols.namesakeComputer scienceMonte Carlo methodPosterior probabilityPrior probabilitysymbolsMonte Carlo integrationMarkov chain Monte CarloParticle filterAlgorithmMarginal likelihoodStatistics::Computation
researchProduct

Bayesian survival analysis with BUGS

2020

Survival analysis is one of the most important fields of statistics in medicine and biological sciences. In addition, the computational advances in the last decades have favored the use of Bayesian methods in this context, providing a flexible and powerful alternative to the traditional frequentist approach. The objective of this article is to summarize some of the most popular Bayesian survival models, such as accelerated failure time, proportional hazards, mixture cure, competing risks, multi-state, frailty, and joint models of longitudinal and survival data. Moreover, an implementation of each presented model is provided using a BUGS syntax that can be run with JAGS from the R programmin…

Statistics and ProbabilityFOS: Computer and information sciencesEpidemiologyComputer scienceBayesian probabilityContext (language use)Accelerated failure time modelMachine learningcomputer.software_genreBayesian inference01 natural sciencesStatistics - Applications010104 statistics & probability03 medical and health sciences0302 clinical medicineFrequentist inferenceHumansApplications (stat.AP)030212 general & internal medicine0101 mathematicsModels StatisticalSyntax (programming languages)business.industryR Programming LanguageBayes TheoremSurvival AnalysisMedical statisticsArtificial intelligencebusinesscomputer
researchProduct

Bayesian joint modeling of bivariate longitudinal and competing risks data: An application to study patient-ventilator asynchronies in critical care …

2017

Mechanical ventilation is a common procedure of life support in intensive care. Patient-ventilator asynchronies (PVAs) occur when the timing of the ventilator cycle is not simultaneous with the timing of the patient respiratory cycle. The association between severity markers and the events death or alive discharge has been acknowledged before, however, little is known about the addition of PVAs data to the analyses. We used an index of asynchronies (AI) to measure PVAs and the SOFA (sequential organ failure assessment) score to assess overall severity. To investigate the added value of including the AI, we propose a Bayesian joint model of bivariate longitudinal and competing risks data. Th…

RiskStatistics and ProbabilityMixed modelmedicine.medical_specialtyBiometryCritical Caremedicine.medical_treatmentBayesian probabilityBivariate analysisCompeting risks01 natural sciences010104 statistics & probability03 medical and health sciences0302 clinical medicineIntensive careStatisticsmedicineHumansLongitudinal Studies0101 mathematicsMechanical ventilationModels Statisticalbusiness.industryRespirationBayes TheoremGeneral MedicineRespiration Artificial030228 respiratory systemLife supportEmergency medicineSOFA scoreStatistics Probability and UncertaintybusinessBiometrical Journal
researchProduct

S. Typhimurium virulence changes caused by exposure to different non-thermal preservation treatments using C. elegans

2017

The aims of this research study were: (i) to postulate Caenorhabditis elegans (C. elegans) as a useful organism to describe infection by Salmonella enterica serovar Typhimurium (S. Typhimurium), and (ii) to evaluate changes in virulence of S. Typhimurium when subjected repetitively to different antimicrobial treatments. Specifically, cauliflower by-product infusion, High Hydrostatic Pressure (HHP), and Pulsed Electric Fields (PEF). This study was carried out by feeding C. elegans with different microbial populations: E. coli OP50 (optimal conditions), untreated S. Typhimurium, S. Typhimurium treated once and three times with cauliflower by-product infusion, S. Typhimurium treated once and f…

Salmonella typhimurium0301 basic medicineSerotype030106 microbiologyHydrostatic pressureVirulenceBrassicaMicrobiologyMicrobiologyFoodborne Diseases03 medical and health sciences0404 agricultural biotechnologyPulsed Electric FieldsEscherichia coliHydrostatic PressureAnimalsCaenorhabditis elegansCaenorhabditis elegansVirulencebiologyBayes Theorem04 agricultural and veterinary sciencesGeneral Medicinebiology.organism_classificationAntimicrobial040401 food scienceAnti-Bacterial AgentsDisease Models AnimalBayesian survival analysisHigh Hydrostatic PressureSalmonella entericaSalmonella InfectionsbacteriaAntimicrobialPlant PreparationsS typhimuriumFood ScienceInternational Journal of Food Microbiology
researchProduct

Sequential Monte Carlo methods in Bayesian joint models for longitudinal and time-to-event data

2020

The statistical analysis of the information generated by medical follow-up is a very important challenge in the field of personalized medicine. As the evolutionary course of a patient's disease progresses, his/her medical follow-up generates more and more information that should be processed immediately in order to review and update his/her prognosis and treatment. Hence, we focus on this update process through sequential inference methods for joint models of longitudinal and time-to-event data from a Bayesian perspective. More specifically, we propose the use of sequential Monte Carlo (SMC) methods for static parameter joint models with the intention of reducing computational time in each…

Statistics and ProbabilityComputer sciencebusiness.industryBayesian probabilitySequential monte carlo methodsMachine learningcomputer.software_genre01 natural sciencesField (computer science)010104 statistics & probability03 medical and health sciences0302 clinical medicineEvent data030220 oncology & carcinogenesisStatistical analysisPersonalized medicineArtificial intelligence0101 mathematicsStatistics Probability and UncertaintybusinessJoint (audio engineering)CartographycomputerStatistical Modelling
researchProduct

Bayesian regularization for flexible baseline hazard functions in Cox survival models.

2019

Fully Bayesian methods for Cox models specify a model for the baseline hazard function. Parametric approaches generally provide monotone estimations. Semi-parametric choices allow for more flexible patterns but they can suffer from overfitting and instability. Regularization methods through prior distributions with correlated structures usually give reasonable answers to these types of situations. We discuss Bayesian regularization for Cox survival models defined via flexible baseline hazards specified by a mixture of piecewise constant functions and by a cubic B-spline function. For those "semi-parametric" proposals, different prior scenarios ranging from prior independence to particular c…

Statistics and ProbabilityComputer scienceProportional hazards modelModel selectionBayesian probabilityPosterior probabilityMarkov chain Monte CarloBayes TheoremGeneral MedicineOverfittingSurvival AnalysisMarkov Chainssymbols.namesakeStatisticsCovariatesymbolsPiecewiseStatistics Probability and UncertaintyMonte Carlo MethodProportional Hazards ModelsBiometrical journal. Biometrische ZeitschriftREFERENCES
researchProduct

A DGS gesture dictionary for modelling on mobile devices

2017

ABSTRACTInteractive or Dynamic Geometry System (DGS) is a tool that help to teach and learn geometry using a computer-based interactive environment. Traditionally, the interaction with DGS is based on keyboard and mouse events where the functionalities are accessed using a menu of icons. Nevertheless, recent findings suggest that such a traditional model of interaction has a steep learning curve and is inadequate to develop DGS for devices with multi-touch screens. Thus, we propose a new interaction model for DGS based on a gesture dictionary which enables the construction and manipulation of geometric objects without the need of accessing a menu of icons. The dictionary is divided into thr…

USABILIDADE DE SOFTWAREInformationSystems_INFORMATIONINTERFACESANDPRESENTATION(e.g.HCI)Computer sciencebusiness.industry05 social sciences050301 educationComputer-Assisted InstructionInteraction modelUsabilityData_CODINGANDINFORMATIONTHEORYComputer Science ApplicationsEducationKernel (image processing)Learning curveHuman–computer interaction0501 psychology and cognitive sciencesHeuristicsbusiness0503 educationMobile device050107 human factorsGesture
researchProduct

What Does Objective Mean in a Dirichlet-multinomial Process?

2017

Summary The Dirichlet-multinomial process can be seen as the generalisation of the binomial model with beta prior distribution when the number of categories is larger than two. In such a scenario, setting informative prior distributions when the number of categories is great becomes difficult, so the need for an objective approach arises. However, what does objective mean in the Dirichlet-multinomial process? To deal with this question, we study the sensitivity of the posterior distribution to the choice of an objective Dirichlet prior from those presented in the available literature. We illustrate the impact of the selection of the prior distribution in several scenarios and discuss the mo…

Statistics and Probability05 social sciencesPosterior probabilityBayesian inference01 natural sciencesDirichlet distributionBinomial distribution010104 statistics & probabilitysymbols.namesake0502 economics and businessStatisticsObjective approachPrior probabilitysymbolsEconometricsMultinomial distribution0101 mathematicsStatistics Probability and UncertaintyBeta distribution050205 econometrics MathematicsInternational Statistical Review
researchProduct