Search results for "Machine learning"

showing 10 items of 1464 documents

Local staging of rectal carcinoma and assessment of the circumferential resection margin with high-resolution MRI using an integrated parallel acquis…

2005

Purpose To assess the diagnostic accuracy of integrated parallel acquisition technique (iPAT) in local staging of rectal carcinoma in comparison to conventional high-resolution MRI. Materials and Methods A total of 28 patients with a neoplasm of the rectum and 15 control patients underwent MRI of the pelvis. High-resolution images were acquired conventionally and with iPAT using a modified sensitivity encoding (mSENSE). Image quality, signal-to-noise and contrast-to-noise ratios (SNR, CNR), tumor extent, nodal status, and delineation of the circumferential resection margin (CRM) were compared. In 19 patients with a carcinoma, MR findings were correlated with the histopathological diagnosis.…

AdultMalemedicine.medical_specialtyRectumSensitivity and SpecificityMargin (machine learning)Rectal carcinomamedicineCarcinomaHumansRadiology Nuclear Medicine and imagingPelvisAgedNeoplasm StagingAged 80 and overRectal Neoplasmsbusiness.industryMiddle Agedmedicine.diseaseMagnetic Resonance Imagingmedicine.anatomical_structureResection marginFemaleHistopathologyCircumferential resection marginLymph NodesRadiologybusinessJournal of Magnetic Resonance Imaging
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Decoding Musical Training from Dynamic Processing of Musical Features in the Brain

2018

AbstractPattern recognition on neural activations from naturalistic music listening has been successful at predicting neural responses of listeners from musical features, and vice versa. Inter-subject differences in the decoding accuracies have arisen partly from musical training that has widely recognized structural and functional effects on the brain. We propose and evaluate a decoding approach aimed at predicting the musicianship class of an individual listener from dynamic neural processing of musical features. Whole brain functional magnetic resonance imaging (fMRI) data was acquired from musicians and nonmusicians during listening of three musical pieces from different genres. Six mus…

AdultMaleoppiminenSpeech recognitionlcsh:MedicineMusical050105 experimental psychologykuunteleminenArticle03 medical and health sciencesYoung Adult0302 clinical medicinemusiikintutkimusalgoritmitmedicineFeature (machine learning)Journal ArticleharjoitteluHumans0501 psychology and cognitive sciencesActive listeningTonalitylcsh:Sciencelearning algorithmsBrain MappingMultidisciplinarymedicine.diagnostic_testMusic psychology05 social scienceslcsh:RBrainMagnetic Resonance Imagingneural decodingAcoustic StimulationPattern recognition (psychology)Auditory Perceptionlcsh:QFemaleFunctional magnetic resonance imagingPsychologyaivotTimbre030217 neurology & neurosurgeryMusic
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Subgrouping factors influencing migraine intensity in women: A semi-automatic methodology based on machine learning and information geometry

2019

[EN] Background Migraine is a heterogeneous condition with multiple clinical manifestations. Machine learning algorithms permit the identification of population groups, providing analytical advantages over other modeling techniques. Objective The aim of this study was to analyze critical features that permit the differentiation of subgroups of patients with migraine according to the intensity and frequency of attacks by using machine learning algorithms. Methods Sixty-seven women with migraine participated. Clinical features of migraine, related disability (Migraine Disability Assessment Scale), anxiety/depressive levels (Hospital Anxiety and Depression Scale), anxiety state/trait levels (S…

AdultMigraine DisordersMachine learningcomputer.software_genreMachine LearningDisability Evaluation03 medical and health sciences0302 clinical medicine030202 anesthesiologyMachine learningHumansMedicine03.- Garantizar una vida saludable y promover el bienestar para todos y todas en todas las edadesInformation geometryPhysical ExaminationMigraineMultisource variabilityThesaurus (information retrieval)business.industryMiddle Agedmedicine.diseaseAnesthesiology and Pain MedicineMigraineFISICA APLICADAFemaleArtificial intelligenceSemi automaticbusinessMATEMATICA APLICADAcomputer030217 neurology & neurosurgeryRandom forest
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On the complementarity of holistic and analytic approaches to performance assessment scoring.

2019

BACKGROUND A holistic approach to performance assessment recognizes the theoretical complexity of multifaceted critical thinking (CT), a key objective of higher education. However, issues related to reliability, interpretation, and use arise with this approach. AIMS AND METHOD Therefore, we take an analytic approach to scoring students' written responses on a performance assessment. We focus on the complementarity of holistic and analytic approaches and on whether theoretically developed analytical scoring rubrics can produce sub-scores that may measure the 'whole' performance in a holistic assessment. SAMPLE We use data from the Wind Turbines performance assessment, developed in the iPAL p…

AdultPerformance based assessmentEducational measurementHigher educationUniversitiesMachine learningcomputer.software_genreEducationThinkingYoung AdultAcademic PerformanceDevelopmental and Educational PsychologyHumans0501 psychology and cognitive sciencesTest interpretationStudentsRating schemebusiness.industry05 social sciences050301 educationRubricComplementarity (physics)Critical thinkingArtificial intelligenceEducational MeasurementbusinessPsychology0503 educationcomputer050104 developmental & child psychologyThe British journal of educational psychologyReferences
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Whole-body MRI radiomics model to predict relapsed/refractory Hodgkin Lymphoma: A preliminary study.

2022

Purpose A strong prognostic score that enables a stratification of newly diagnosed Hodgkin Lymphoma (HL) to identify patients at high risk of refractory/relapsed disease is still needed. Our aim was to investigate the potential value of a radiomics analysis pipeline from whole-body MRI (WB-MRI) exams for clinical outcome prediction in patients with Hodgkin Lymphoma (HL). Materials and methods Index lesions from baseline WB-MRIs of 40 patients (22 females; mean age 31.7 ± 11.4 years) with newly diagnosed HL treated by ABVD chemotherapy regimen were manually segmented on T1-weighted, STIR, and DWI images for texture analysis feature extraction. A machine learning approach based on the Extra T…

AdultPositron emission tomographymedicine.medical_specialtyWhole body mriBiomedical EngineeringBiophysicsVinblastineBleomycinYoung AdultRefractoryRadiomicsPositron Emission Tomography Computed TomographyMachine learningAntineoplastic Combined Chemotherapy ProtocolsMedicineHumansRadiology Nuclear Medicine and imagingMagnetic resonance imaging Positron emission tomography Machine learning Texture analysis Hodgkin Lymphomamedicine.diagnostic_testHodgkin Lymphomabusiness.industryMagnetic resonance imagingMetabolic tumor volumeHodgkin DiseaseMagnetic Resonance ImagingDacarbazineTexture analysisPositron emission tomographyDoxorubicinRelapsed refractoryHodgkin lymphomaFemaleRadiologySettore MED/36 - Diagnostica Per Immagini E RadioterapiabusinessMagnetic resonance imaging
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How to assess the risks associated with the usage of a medical device based on predictive modeling: the case of an anemia control model certified as …

2021

Background The successful application of Machine Learning (ML) to many clinical problems can lead to its implementation as medical devices (MD), being important to assess the associated risks. Methods An anemia control model (ACM), certified as MD may face adverse events as the result of wrong predictions that are translated into suggestions of doses of erythropoietic stimulating agents to dialysis patients. Risks are assessed as the combination of severity and probability of a given hazard. While severities are typically assessed by clinicians, probabilities are tightly related to the performance of the predictive model. Results A post-marketing dataset formed by all adult patients registe…

Adultmedicine.medical_specialtyAnemiabusiness.industryControl (management)Biomedical EngineeringAnemiaGeneral MedicineCertificationmedicine.diseaseHazardCohort StudiesMachine LearningRenal DialysisTest setCohortmedicineHematinicsHumansSurgeryIntensive care medicineAdverse effectRisk assessmentbusinessExpert review of medical devices
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Achievement of treatment targets predicts progression of vascular complications in type 1 diabetes.

2021

Abstract Background and aim To study the association between achievement of guideline-defined treatment targets on HbA1c, low-density lipoproteins (LDL-C), and blood pressure with the progression of diabetic complications in patients with type 1 diabetes (T1D). Methods The study included 355 patients at baseline and 114 patients with follow-up data after 3–5 years. Outcome variables were the progression of diabetic kidney disease, retinopathy, or cardiovascular disease (CVD). We used logistic regression and other machine learning algorithms (MLA) to model the association of achievement of treatment targets and probability of progression of complications. Results Achievement of the target bl…

Adultmedicine.medical_specialtyEndocrinology Diabetes and MetabolismDiseaseLogistic regressionOddsDiabetes ComplicationsMachine LearningEndocrinologyRisk FactorsInternal medicineDiabetes mellitusInternal MedicinemedicineHumansDiabetic NephropathiesGlycated HemoglobinType 1 diabetesbusiness.industryCholesterol LDLMiddle Agedmedicine.diseaseLatviaBlood pressureDiabetes Mellitus Type 1Treatment OutcomeCardiovascular DiseasesHypertensionDisease ProgressionComplicationbusinessRetinopathyFollow-Up StudiesJournal of diabetes and its complications
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miR-126-3p and miR-21-5p as Hallmarks of Bio-Positive Ageing; Correlation Analysis and Machine Learning Prediction in Young to Ultra-Centenarian Sici…

2022

Human ageing can be characterized by a profile of circulating microRNAs (miRNAs), which are potentially predictors of biological age. They can be used as a biomarker of risk for age-related inflammatory outcomes, and senescent endothelial cells (ECs) have emerged as a possible source of circulating miRNAs. In this paper, a panel of four circulating miRNAs including miR-146a-5p, miR-126-3p, miR-21-5p, and miR-181a-5p, involved in several pathways related to inflammation, and ECs senescence that seem to be characteristic of the healthy ageing phenotype. The circulating levels of these miRNAs were determined in 78 healthy subjects aged between 22 to 111 years. Contextually, extracellular miR-1…

Aged 80 and overSettore MED/04 - Patologia Generaleageing; inflamm-ageing; endothelial senescence; longevity; miRNAsagingEndothelial Cellsinflamm-ageingGeneral Medicineinflamm-agingMachine LearningMicroRNAslongevityageingendothelial senescenceCentenariansmiRNAsHumansCirculating MicroRNABiomarkersCells; Volume 11; Issue 9; Pages: 1505
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Methods matter: Testing competing models for designing short-scale Big-Five assessments

2015

Abstract Many psychological instruments are psychometrically inadequate because derived person-parameters are unfounded and models will be rejected using established psychometric criteria. One strategy towards improving the psychometric properties is to shorten instruments. We present and compare the following procedures for the abbreviation of self-report assessments on the Trait Self-Description Inventory in a sample of 14,347 participants: (a) Maximizing reliability/main loadings, (b) Minimizing modification indices/cross loadings, (c) the PURIFY Algorithm in Tetrad, (d) Ant Colony Optimization, and (e) a genetic algorithm. Ant Colony Optimization was superior to all other methods in imp…

AgreeablenessSocial PsychologyPsychometricsbusiness.industryAnt colony optimization algorithmsConscientiousnessSample (statistics)Machine learningcomputer.software_genreConfirmatory factor analysisGenetic algorithmTraitArtificial intelligencebusinessPsychologycomputerSocial psychologyGeneral PsychologyJournal of Research in Personality
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Worker safety in agriculture 4.0: A new approach for mapping operator's vibration risk through Machine Learning activity recognition

2022

While being a fundamental driver of competitiveness in agroindustry, technological innovation has also introduced new critical elements related, for example, to the sustainability of the production processes as well as to the safety of workers. In such regard, the advent of the 4th industrial revolution (Agriculture 4.0) based on digitalization, is an unprecedented opportunity of rethinking the role of innovation in a new human-centric perspective. In particular, the establishment of an interconnected work environment and the augmentation of the operator’s physical, sensorial, and cognitive capabilities, are two technologies which can be effectively employed for substantially improving the …

Agriculture 4.0 Operator safety Muscoskeletal disorders Vibration risk Machine learning ErgonomicsForestryHorticultureAgriculture 4.0; Ergonomics; Machine learning; Muscoskeletal disorders; Operator safety; Vibration riskAgronomy and Crop ScienceComputer Science Applications
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