Search results for "biclustering"

showing 8 items of 8 documents

Machine learning for mortality analysis in patients with COVID-19

2020

This paper analyzes a sample of patients hospitalized with COVID-19 in the region of Madrid (Spain). Survival analysis, logistic regression, and machine learning techniques (both supervised and unsupervised) are applied to carry out the analysis where the endpoint variable is the reason for hospital discharge (home or deceased). The different methods applied show the importance of variables such as age, O2 saturation at Emergency Rooms (ER), and whether the patient comes from a nursing home. In addition, biclustering is used to globally analyze the patient-drug dataset, extracting segments of patients. We highlight the validity of the classifiers developed to predict the mortality, reaching…

feature importanceComputer scienceHealth Toxicology and MutagenesisPneumonia ViralDecision treelcsh:MedicineSample (statistics)Machine learningcomputer.software_genreLogistic regressionArticlesurvival analysisBiclustering03 medical and health sciencesBetacoronavirus0302 clinical medicineMachine learningRisk of mortalitygraphical modelsHumans030212 general & internal medicineGraphical modelPandemicsSurvival analysisInformática0303 health sciences030306 microbiologybusiness.industrySARS-CoV-2Decision Treeslcsh:RPublic Health Environmental and Occupational HealthCOVID-19Decision ruleSurvival analysisFeature importancemachine learningSpainArtificial intelligenceGraphical modelsbusinessCoronavirus Infectionscomputer
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Xylo-Oligosaccharides in Prevention of Hepatic Steatosis and Adipose Tissue Inflammation: Associating Taxonomic and Metabolomic Patterns in Fecal Mic…

2021

We have shown that prebiotic xylo-oligosaccharides (XOS) increased beneficial gut microbiota (GM) and prevented high fat diet-induced hepatic steatosis, but the mechanisms associated with these effects are not clear. We studied whether XOS affects adipose tissue inflammation and insulin signaling, and whether the GM and fecal metabolome explain associated patterns. XOS was supplemented or not with high (HFD) or low (LFD) fat diet for 12 weeks in male Wistar rats (n = 10/group). Previously analyzed GM and fecal metabolites were biclustered to reduce data dimensionality and identify interpretable groups of co-occurring genera and metabolites. Based on our findings, biclustering provides a use…

MaleDOWN-REGULATIONsuolistomikrobistoHealth Toxicology and Mutagenesismedicine.medical_treatmentOligosaccharidesPROTEINAdipose tissuelcsh:MedicineGut florabiclusteringGLUCOSE0302 clinical medicineAMINO-ACIDSxylo-oligosaccharidesaineenvaihduntametabolites2. Zero hungerINSULIN-RESISTANCE0303 health sciencesmicroRNAhigh fat diet1184 Genetics developmental biology physiology3142 Public health care science environmental and occupational health3. Good healthCHAIN FATTY-ACIDSAdipose TissueLiverB-CELLSOBESITY1181 Ecology evolutionary biology030211 gastroenterology & hepatologymedicine.symptommedicine.medical_specialtyInflammationBiologyDiet High-FatArticle03 medical and health sciencesMetabolomicsprebiootitLIVER-DISEASEInternal medicineMetabolomemedicineAnimalsbiochemistryRats Wistar1172 Environmental sciences030304 developmental biologyInflammationgut microbiotaPrebioticlcsh:RPublic Health Environmental and Occupational Healthnon-alcoholic fatty liver diseaseACETYL-COA CARBOXYLASEksylo-oligosakkariditbiology.organism_classificationmedicine.diseaserotta (laji)Fatty LiverratsInsulin receptorEndocrinologyei-alkoholiperäinen rasvamaksasairaus3121 General medicine internal medicine and other clinical medicinebiology.proteinaineenvaihduntatuotteetkoe-eläinmallitSteatosismikro-RNAInternational Journal of Environmental Research and Public Health
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Solution Using Clustering Methods

1987

The main aim of this analysis is to find out typical morphologies from the multivariate and longitudinal data set on growing children and to describe the morphological evolution of the found groups of girls. The finding out of typical morphologies is, in our opinion, strictly linked to the search of structures in the individuals and in the variables.

Set (abstract data type)BiclusteringMultivariate statisticsComputer scienceCURE data clustering algorithmbusiness.industryLongitudinal dataConsensus clusteringCorrelation clusteringPattern recognitionArtificial intelligencebusinessCluster analysis
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PINCoC: a Co-Clustering based Method to Analyze Protein-Protein Interaction Networks

2007

Anovel technique to search for functionalmodules in a protein-protein interaction network is presented. The network is represented by the adjacency matrix associated with the undirected graph modelling it. The algorithm introduces the concept of quality of a sub-matrix of the adjacency matrix, and applies a greedy search technique for finding local optimal solutions made of dense submatrices containing the maximum number of ones. An initial random solution, constituted by a single protein, is evolved to search for a locally optimal solution by adding/removing connected proteins that best contribute to improve the quality function. Experimental evaluations carried out on Saccaromyces Cerevis…

BiclusteringMathematical optimizationBioinformatics network analysisCompact spaceInteraction networkBlock matrixFunction (mathematics)Adjacency matrixGreedy algorithmAlgorithmProtein protein interaction networkMathematics
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A novel heuristic memetic clustering algorithm

2013

In this paper we introduce a novel clustering algorithm based on the Memetic Algorithm meta-heuristic wherein clusters are iteratively evolved using a novel single operator employing a combination of heuristics. Several heuristics are described and employed for the three types of selections used in the operator. The algorithm was exhaustively tested on three benchmark problems and compared to a classical clustering algorithm (k-Medoids) using the same performance metrics. The results show that our clustering algorithm consistently provides better clustering solutions with less computational effort.

ta113Determining the number of clusters in a data setBiclusteringClustering high-dimensional dataDBSCANComputingMethodologies_PATTERNRECOGNITIONTheoretical computer scienceCURE data clustering algorithmCorrelation clusteringCanopy clustering algorithmCluster analysisAlgorithmMathematics2013 IEEE International Workshop on Machine Learning for Signal Processing (MLSP)
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The Three Steps of Clustering In The Post-Genomic Era

2013

This chapter descibes the basic algorithmic components that are involved in clustering, with particular attention to classification of microarray data.

Clustering high-dimensional dataSettore INF/01 - Informaticabusiness.industryCorrelation clusteringPattern recognitioncomputer.software_genreBiclusteringCURE data clustering algorithmClustering Classification Biological Data MiningConsensus clusteringArtificial intelligenceData miningbusinessCluster analysiscomputerMathematics
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Plaid model for microarray data: an enhancement of the pruning step

2010

Microarrays have become a standard tool for studying gene functions. For example, we can investigate if a subset of genes shows a coherent expression pattern under different conditions. The plaid model, a model-based biclustering method, can be used to incorporate the addiction structure used for the microarray experiment. In this paper we describe an enhancement for the plaid model algorithm based on the theory of the false discovery rate.

False discovery rateStructure (mathematical logic)MicroarrayMicroarray Plaid model pruning step.Microarray analysis techniquesComputer sciencefood and beveragescomputer.software_genreBiclusteringDNA microarray experimentPruning (decision trees)Data miningDNA microarraySettore SECS-S/01 - Statisticacomputer
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GenClust: A genetic algorithm for clustering gene expression data

2005

Abstract Background Clustering is a key step in the analysis of gene expression data, and in fact, many classical clustering algorithms are used, or more innovative ones have been designed and validated for the task. Despite the widespread use of artificial intelligence techniques in bioinformatics and, more generally, data analysis, there are very few clustering algorithms based on the genetic paradigm, yet that paradigm has great potential in finding good heuristic solutions to a difficult optimization problem such as clustering. Results GenClust is a new genetic algorithm for clustering gene expression data. It has two key features: (a) a novel coding of the search space that is simple, …

Clustering high-dimensional dataDNA ComplementaryComputer scienceRand indexCorrelation clusteringOligonucleotidesEvolutionary algorithmlcsh:Computer applications to medicine. Medical informaticscomputer.software_genreBiochemistryPattern Recognition AutomatedBiclusteringOpen Reading FramesStructural BiologyCURE data clustering algorithmConsensus clusteringGenetic algorithmCluster AnalysisCluster analysislcsh:QH301-705.5Molecular BiologyGene expression data Clustering Evolutionary algorithmsOligonucleotide Array Sequence AnalysisModels StatisticalBrown clusteringHeuristicGene Expression ProfilingApplied MathematicsComputational BiologyComputer Science Applicationslcsh:Biology (General)Gene Expression RegulationMutationlcsh:R858-859.7Data miningSequence AlignmentcomputerSoftwareAlgorithmsBMC Bioinformatics
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