Search results for "ARTIFICIAL NEURAL NETWORKS"

showing 10 items of 45 documents

Machine learning techniques to estimate the degree of binder activity of reclaimed asphalt pavement

2022

Part of this research was funded by the project RTI2018-096224-J-I00 that has been cofounded by the Spanish Ministry of Science and Innovation, inside the National Program for Fostering Excellence in Scientific and Technical Research, National Subprogram of Knowledge Generation, 2018 call, in the framework of the Spanish National Plan for Scientific and Technical Research and Innovation 2017-2020, and by the European Union, through the European Regional Development Fund, with the main objective of Promoting technological development, innovation and quality research. Part of this work was financially supported by the Italian Ministry of University and Research with the research Grant PRIN 20…

Intel·ligència artificial - Aplicacions a la medicinaArtificial neural networks:Natural Science Disciplines::Mathematics::Data Analysis [DISCIPLINES AND OCCUPATIONS]:disciplinas de las ciencias naturales::matemáticas::análisis de datos [DISCIPLINAS Y OCUPACIONES]Asphalt pavementsIndirect tensile strengthBuilding and ConstructionHot mix asphaltReclaimed asphalt pavementMechanics of Materials:Mathematical Concepts::Algorithms::Artificial Intelligence::Machine Learning [PHENOMENA AND PROCESSES]Machine learningAprenentatge automàticDegree of binder activity:conceptos matemáticos::algoritmos::inteligencia artificial::aprendizaje automático [FENÓMENOS Y PROCESOS]AsfaltSettore ICAR/04 - Strade Ferrovie Ed AeroportiRecyclingGeneral Materials Science:Enginyeria civil::Infraestructures i modelització dels transports::Transport per carretera [Àrees temàtiques de la UPC]Hot mix asphalt Recycling Reclaimed asphalt pavement Degree of binder activity Machine learning Artificial neural networks Random forest Indirect tensile strengthRandom forestCivil and Structural Engineering
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A smart tele-cytology point-of-care platform for oral cancer screening.

2019

Early detection of oral cancer necessitates a minimally invasive, tissue-specific diagnostic tool that facilitates screening/surveillance. Brush biopsy, though minimally invasive, demands skilled cyto-pathologist expertise. In this study, we explored the clinical utility/efficacy of a tele-cytology system in combination with Artificial Neural Network (ANN) based risk-stratification model for early detection of oral potentially malignant (OPML)/malignant lesion. A portable, automated tablet-based tele-cytology platform capable of digitization of cytology slides was evaluated for its efficacy in the detection of OPML/malignant lesions (n = 82) in comparison with conventional cytology and hist…

MaleMedical DoctorsHealth Care ProvidersPathology and Laboratory Medicine030218 nuclear medicine & medical imaging0302 clinical medicineCohen's kappaConventional cytologyCytologyImage Processing Computer-AssistedMedicine and Health SciencesMedical PersonnelEarly Detection of CancerMultidisciplinaryOral cancer screeningQRMiddle AgedTelemedicine3. Good healthProfessionsOncology030220 oncology & carcinogenesisMedicineFemaleMouth NeoplasmsRadiologyAnatomyRisk assessmentAlgorithmsResearch ArticleComputer and Information SciencesDysplasiamedicine.medical_specialtyHistologyCytodiagnosisPoint-of-Care SystemsRemote diagnosisScienceEarly detectionRisk AssessmentSensitivity and Specificity03 medical and health sciencesSigns and SymptomsDiagnostic MedicineArtificial IntelligenceCancer Detection and DiagnosismedicineHumansArtificial Neural NetworksPoint of careComputational Neurosciencebusiness.industryBiology and Life SciencesComputational BiologyCell BiologyPathologistsHealth CarePeople and PlacesLesionsPopulation GroupingsNeural Networks ComputerCytologybusinessNeurosciencePLoS ONE
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Performance of a Predictive Model for Long-Term Hemoglobin Response to Darbepoetin and Iron Administration in a Large Cohort of Hemodialysis Patients

2016

International audience; Anemia management, based on erythropoiesis stimulating agents (ESA) and iron supplementation, has become an increasingly challenging problem in hemodialysis patients. Maintaining hemodialysis patients within narrow hemoglobin targets, preventing cycling outside target, and reducing ESA dosing to prevent adverse outcomes requires considerable attention from caregivers. Anticipation of the long-term response (i.e. at 3 months) to the ESA/iron therapy would be of fundamental importance for planning a successful treatment strategy. To this end, we developed a predictive model designed to support decision-making regarding anemia management in hemodialysis (HD) patients tr…

MalePediatricsBlood transfusionDarbepoetin alfaPhysiologymedicine.medical_treatment030232 urology & nephrologylcsh:Medicine030204 cardiovascular system & hematologyFerric CompoundsBiochemistryGlucaric AcidHemoglobinsMathematical and Statistical Techniques0302 clinical medicineMedicine and Health SciencesDarbepoetin alfaErythropoiesislcsh:ScienceFerric Oxide SaccharatedMultidisciplinaryPharmaceuticsDisease ManagementAnemia[SDV.MHEP.HEM]Life Sciences [q-bio]/Human health and pathology/HematologyHematologyMiddle Aged3. Good healthNephrologyInjections IntravenousPhysical SciencesFemaleHemodialysisStatistics (Mathematics)Research Articlemedicine.drugComputer and Information Sciencesmedicine.medical_specialtyAnemiaResearch and Analysis Methods03 medical and health sciencesDose Prediction MethodsRenal DialysisArtificial IntelligenceMedical DialysismedicineHumansHemoglobinDosingStatistical MethodsIron Deficiency AnemiaIntensive care medicineArtificial Neural NetworksAgedRetrospective StudiesComputational NeuroscienceModels Statisticalbusiness.industrylcsh:RBiology and Life SciencesComputational BiologyProteinsRetrospective cohort studymedicine.diseaseIron-deficiency anemiaHematinicsKidney Failure ChronicCognitive Sciencelcsh:QNeural Networks ComputerHemoglobinPhysiological ProcessesbusinessMathematicsNeuroscienceForecasting
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Why retail investors traded equity during the pandemic? An application of artificial neural networks to examine behavioral biases

2021

Behavioral biases are known to influence the investment decisions of retail investors. Indeed, extant research has revealed interesting findings in this regard. However, the literature on the impact of these biases on millennials' trading activity, particularly during a health crisis like the COVID-19 pandemic, as well as the equity recommendation intentions of such investors, is limited. The present study addressed these gaps by investigating the influence of eight behavioral biases: overconfidence and self-attribution, over-optimism, hindsight, representativeness, anchoring, loss aversion, mental accounting, and herding on the trading activity and recommendation intentions of millennials …

MarketingActuarial scienceMental accounting:Samfunnsvitenskap: 200::Økonomi: 210::Bedriftsøkonomi: 213 [VDP]Behavioral economicsRepresentativeness heuristicVDP::Samfunnsvitenskap: 200::Økonomi: 210Investment decisionsLoss aversionVDP::Samfunnsvitenskap: 200::Psykologi: 260detaljhandelHerdingPsychologyartificial neural networkspandemiApplied PsychologyHindsight biasOverconfidence effectPsychology & Marketing
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Seasonal patterns of biodiversity in Mediterranean coastal lagoons

2019

Aim: Understanding and quantifying the seasonal patterns in biodiversity of phyto- benthos, macro-zoobenthos and fishes in Mediterranean coastal lagoons, and the species dependence upon environmental factors. Location: The study was carried out in the “Stagnone di Marsala e Saline di Trapani e Paceco,” the largest coastal lagoon system in the central Mediterranean Sea (Sicily, Italy), a Special Protection Area located along one of the central ecological corridors joining Africa and Europe. Methods: The coastal lagoon system was selected as a model ecosystem to investi- gate the seasonal variations in biodiversity indices and dominance–diversity relation- ships in phytobenthos, macro-zoobent…

Mediterranean climatefishSettore BIO/07 - EcologiaEcologySettore BIO/02 - Botanica SistematicaBiodiversityCommunity structureartificial neural networks biodiversity climate change community structure confirmatory path analysis fish lagoon systems phytobenthos ridge regression zoobenthosClimate changelagoon systemsartificial neural networks; biodiversity; climate change; community structure; confirmatory path analysis; fish; lagoon systems; phytobenthos; ridge regression; zoobenthosclimate changeridge regressionEnvironmental scienceFish <Actinopterygii>zoobenthoscommunity structureconfirmatory path analysisartificial neural networksEcology Evolution Behavior and Systematicsbiodiversityphytobenthos
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Advances in photonic reservoir computing

2017

We review a novel paradigm that has emerged in analogue neuromorphic optical computing. The goal is to implement a reservoir computer in optics, where information is encoded in the intensity and phase of the optical field. Reservoir computing is a bio-inspired approach especially suited for processing time-dependent information. The reservoir’s complex and high-dimensional transient response to the input signal is capable of universal computation. The reservoir does not need to be trained, which makes it very well suited for optics. As such, much of the promise of photonic reservoirs lies in their minimal hardware requirements, a tremendous advantage over other hardware-intensive neural net…

Nonlinear opticsQC1-99942.55.pxAnalogue computingMathematicsofComputing_NUMERICALANALYSISOptical computing05.45.-a02 engineering and technologyEuropean Social Fund01 natural sciences020210 optoelectronics & photonics42.79.ta0103 physical sciences0202 electrical engineering electronic engineering information engineeringOptical computing07.05.mh85.60.-qElectrical and Electronic Engineering010306 general physics[PHYS.PHYS.PHYS-OPTICS]Physics [physics]/Physics [physics]/Optics [physics.optics]Artificial neural networksPhysicsnonlinear opticsReservoir computing42.79.hpanalogue computingAtomic and Molecular Physics and OpticsElectronic Optical and Magnetic Materials42.65.-kEngineering managementWork (electrical)Research counciloptical computingScience policy42.82.-martificial neural networksBiotechnologyNanophotonics
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Artificial neural networks for neutron/ γ discrimination in the neutron detectors of NEDA

2020

Three different Artificial Neural Network architectures have been applied to perform neutron/? discrimination in NEDA based on waveform and time-of-flight information. Using the coincident ?-rays from AGATA, we have been able to measure and compare on real data the performances of the Artificial Neural Networks as classifiers. While the general performances are quite similar for the data set we used, differences, in particular related to the computing times, have been highlighted. One of the Artificial Neural Network architecture has also been found more robust to time misalignment of the waveforms. Such a feature is of great interest for online processing of waveforms. Narodowe Centrum Nau…

Nuclear and High Energy Physics[formula omitted]-ray spectroscopyNeutron detectorComputer Science::Neural and Evolutionary Computationγ -ray spectroscopy[PHYS.NEXP]Physics [physics]/Nuclear Experiment [nucl-ex]01 natural sciences030218 nuclear medicine & medical imaging03 medical and health sciences0302 clinical medicineCoincident0103 physical sciencesMachine learningNeutron detectionWaveformNeutron[PHYS.PHYS.PHYS-INS-DET]Physics [physics]/Physics [physics]/Instrumentation and Detectors [physics.ins-det]InstrumentationComputingMilieux_MISCELLANEOUSPhysicsArtificial neural networkArtificial neural networksPulse-shape discriminationn- γ discrimination010308 nuclear & particles physicsbusiness.industryPattern recognitionData setn-[formula omitted] discriminationFeature (computer vision)n-? discriminationAGATAArtificial intelligencey-ray spectroscopybusiness
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Dynamic Pattern Recognition in Sport by Means of Artificial Neural Networks

2008

Behavioural processes like those in sports, motor activities or rehabilitation are often the object of optimization methods. Such processes are often characterized by a complex structure. Measurements considering them may produce a huge amount of data. It is an interesting challenge not only to store these data, but also to transform them into useful information. Artificial Neural Networks turn out to be an appropriate tool to transform abstract numbers into informative patterns that help to understand complex behavioural phenomena. The contribution presents some basic ideas of neural network approaches and several examples of application. The aim is to give an impression of how neural meth…

Physical neural networkArtificial Intelligence Systembusiness.industryTime delay neural networkComputer scienceDeep learningNeocognitronMachine learningcomputer.software_genreCellular neural networkArtificial intelligenceTypes of artificial neural networksbusinesscomputerNervous system network models
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Neural Networks in ECG Classification

2011

In this chapter, we review the vast field of application of artificial neural networks in cardiac pathology discrimination based on electrocardiographic signals. We discuss advantages and drawbacks of neural and adaptive systems in cardiovascular medicine and catch a glimpse of forthcoming developments in machine learning models for the real clinical environment. Some problems are identified in the learning tasks of beat detection, feature selection/extraction, and classification, and some proposals and suggestions are given to alleviate the problems of interpretability, overfitting, and adaptation. These have become important problems in recent years and will surely constitute the basis of…

Physical neural networkComputingMethodologies_PATTERNRECOGNITIONArtificial neural networkbusiness.industryComputer scienceTime delay neural networkAdaptive systemArtificial intelligenceTypes of artificial neural networksbusiness
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A NEURAL NETWORK PRIMER

1994

Neural networks are composed of basic units somewhat analogous to neurons. These units are linked to each other by connections whose strength is modifiable as a result of a learning process or algorithm. Each of these units integrates independently (in paral lel) the information provided by its synapses in order to evaluate its state of activation. The unit response is then a linear or nonlinear function of its activation. Linear algebra concepts are used, in general, to analyze linear units, with eigenvectors and eigenvalues being the core concepts involved. This analysis makes clear the strong similarity between linear neural networks and the general linear model developed by statisticia…

Radial basis function networkTheoretical computer scienceEcologyLiquid state machineComputer scienceTime delay neural networkApplied MathematicsActivation functionGeneral MedicineTopologyAgricultural and Biological Sciences (miscellaneous)Hopfield networkRecurrent neural networkMultilayer perceptronTypes of artificial neural networksJournal of Biological Systems
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