0000000000201307

AUTHOR

Mikhail Sofiev

0000-0001-9542-5746

showing 6 related works from this author

A statistical model for predicting the inter-annual variability of birch pollen abundance in Northern and North-Eastern Europe

2018

The paper suggests a methodology for predicting next-year seasonal pollen index (SPI, a sum of daily-mean pollen concentrations) over large regions and demonstrates its performance for birch in Northern and North-Eastern Europe. A statistical model is constructed using meteorological, geophysical and biological characteristics of the previous year). A cluster analysis of multi-annual data of European Aeroallergen Network (EAN) revealed several large regions in Europe, where the observed SPI exhibits similar patterns of the multi-annual variability. We built the model for the northern cluster of stations, which covers Finland, Sweden, Baltic States, part of Belarus, and, probably, Russia and…

Baltic StatesEnvironmental EngineeringRepublic of Belarus010504 meteorology & atmospheric sciencesMeteorologyCorrelation coefficientta1172Birch pollen010501 environmental sciencesSeasonal pollen indexmedicine.disease_causeDisease cluster01 natural sciencesPollen forecastingAnnan biologiRussiaAbundance (ecology)PollenmedicineOther Biological TopicsEnvironmental ChemistryWaste Management and DisposalBetulaFinland0105 earth and related environmental sciencesSwedenModels Statisticalta114NorwayStatistical modelAllergensPollutionBirch pollenGeographyta1181PollenSeasonsPhysical geographyInter-annual variabilityScience of The Total Environment
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ARIA‐EAACI care pathways for allergen immunotherapy in respiratory allergy

2021

Funding Information: BSreports personal fees from Allergopharma, during the conduct of the study; grants from National Health Programm, grant, personal fees from Polpharma, ASTRA, personal fees from Mylan, Adamed, patient ombudsman, national Centre for Research and Development, Polish Allergology Society. Funding Information: NGP reports personal fees from Novartis, Nutricia, HAL, MENARINI/FAES FARMA, SANOFI, MYLAN/MEDA, BIOMAY, AstraZeneca, GSK, MSD, ASIT BIOTECH, Boehringer Ingelheim, grants from Gerolymatos International SA, Capricare. Funding Information: CA reports grants from Allergopharma, grants from Idorsia, Swiss National Science Foundation, Christine Kühne‐Center for Allergy Rese…

Pulmonary and Respiratory Medicineprecision medicineeducationImmunology610ReviewSettore MED/10 - Malattie Dell'Apparato Respiratorioimmune system diseasesHDE ALERallergic rhinitis ; asthma ; immunotherapy ; precision medicineMedicine and Health SciencesImmunology and Allergy[SDV.IMM.ALL]Life Sciences [q-bio]/Immunology/AllergologyComputingMilieux_MISCELLANEOUSRhinitisallergic rhinitisallergic rhinitis; asthma; immunotherapy; precision medicineasthmaRC581-607respiratory tract diseases3121 General medicine internal medicine and other clinical medicineimmunotherapyImmunologic diseases. Allergy600 Technik Medizin angewandte Wissenschaften::610 Medizin und Gesundheit::610 Medizin und Gesundheit[SDV.IMM.ALL] Life Sciences [q-bio]/Immunology/Allergologyallergic rhinitis asthma immunotherapy precision medicine
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Statistical modelling of non-stationary processes of atmospheric pollution from natural sources: example of birch pollen

2016

Abstract A statistical model for predicting daily mean pollen concentrations during the flowering season is constructed and its parameterization and application to birch pollen in Riga (Latvia) are discussed. The model involves several steps of transformations of both meteorological data and pollen observations, aiming at a normally distributed homogeneous stationary dataset with linearized dependencies between the transformed meteorological predictors and pollen concentrations. The data transformation includes normalization of daily mean birch pollen concentrations, a switch of the independent axis from time to heat sum, a projection of governing parameters to pollen concentrations, and a …

Normalization (statistics)Atmospheric ScienceGlobal and Planetary Change010504 meteorology & atmospheric sciencesPollen seasonMeteorologyForestryAtmospheric pollutionStatistical model010501 environmental sciencesAtmospheric sciencesmedicine.disease_cause01 natural sciencesRegressionBirch pollenFlowering seasonPollenmedicineEnvironmental scienceAgronomy and Crop Science0105 earth and related environmental sciencesAgricultural and Forest Meteorology
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MACC regional multi-model ensemble simulations of birch pollen dispersion in Europe

2015

Abstract. This paper presents the first ensemble modelling experiment in relation to birch pollen in Europe. The seven-model European ensemble of MACC-ENS, tested in trial simulations over the flowering season of 2010, was run through the flowering season of 2013. The simulations have been compared with observations in 11 countries, all members of the European Aeroallergen Network, for both individual models and the ensemble mean and median. It is shown that the models successfully reproduced the timing of the very late season of 2013, generally within a couple of days from the observed start of the season. The end of the season was generally predicted later than observed, by 5 days or more…

Atmospheric Sciencemedicine.medical_specialty010504 meteorology & atmospheric sciencesUrban Mobility & EnvironmentClimateAerobiologyUrbanisation010501 environmental sciencesmedicine.disease_cause01 natural sciencesAerobiologyFloweringlcsh:ChemistryPollenddc:550medicineStatistical dispersionAerosol0105 earth and related environmental sciencesEnsemble forecastingEnsemble averageModelingEnsemble forecastingCAS - Climate Air and SustainabilityMiljövetenskaplcsh:QC1-999EuropeBirch pollenlcsh:QD1-999HabitatClimatology[SDE]Environmental SciencesPollenLate seasonEnvironmental scienceELSS - Earth Life and Social SciencesEnvironment & Sustainabilitylcsh:PhysicsEnvironmental Sciences
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ARIA digital anamorphosis: Digital transformation of health and care in airway diseases from research to practice: Review

2020

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0301 basic medicineAllergyCARATComputer scienceIMPACTRespiratory Medicine and Allergy[SDV]Life Sciences [q-bio]computer.software_genreMedical and Health SciencesChange management (ITSM)Rhinitis.0302 clinical medicineQUALITY-OF-LIFEHDE ALERImmunology and AllergyLungmedicin och allergiSelf-managementRhinitis AllergicMultimediaAnamorphosisMOBILE TECHNOLOGYWORK PRODUCTIVITYdigital transformation of health and care3. Good healthsmernice ARIAAirway disease1107 ImmunologyGA(2)LENLife Sciences & BiomedicineASTHMA MULTIMORBIDITYe-zdravje600 Technik Medizin angewandte Wissenschaften::610 Medizin und Gesundheit::610 Medizin und GesundheitARIA; asthma; CARAT; digital transformation of health and care; MASK; rhinitisSEASONAL ALLERGIC RHINITISMASKProcess (engineering)digital transformation of healthcareEUROPEAN INNOVATION PARTNERSHIPImmunologydigitalizacija zdravstvaARIA guidelines61003 medical and health sciencesQuality of life (healthcare)rhinitisHumansMobile technologyddc:610SELF-MANAGEMENTudc:616.2Science & TechnologyARIADigital transformationasthmaRespiration DisordersRhinitis AllergicMODEL030104 developmental biology030228 respiratory system3121 General medicine internal medicine and other clinical medicinee-healthClinical Medicinecomputer
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Multi-model ensemble simulations of olive pollen distribution in Europe in 2014

2017

Abstract. A 6-models strong European ensemble of Copernicus Atmospheric Monitoring Service (CAMS) was run through the season of 2014 computing the olive pollen dispersion in Europe. The simulations have been compared with observations in 6 countries, members of the European Aeroallergen Network. Analysis was performed for individual models, the ensemble mean and median, and for a dynamically optimized combination of the ensemble members obtained via fusion of the model predictions with observations. The models, generally reproducing the olive season of 2014, showed noticeable deviations from both observations and each other. In particular, the season start was reported too early, by 8 days …

Meteorological modelsSeries (stratigraphy)010504 meteorology & atmospheric sciencesEnsemble averagingOlive pollen010501 environmental sciences01 natural sciencesWeightingDistribution (mathematics)Statisticsddc:550Statistical dispersionPrecipitation0105 earth and related environmental sciencesMathematics
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