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The Application of Clustering on Principal Components for Nutritional Epidemiology: A Workflow to Derive Dietary Patterns

Andrea Maugeri, Martina Barchitta, Giuliana Favara, Claudia La Mastra, Maria Clara La Rosa, Roberta Magnano San Lio, Antonella Agodi

2022Nutrients28 citationsDOIOpen Access PDF

Abstract

In the last decades, different multivariate techniques have been applied to multidimensional dietary datasets to identify meaningful patterns reflecting the dietary habits of populations. Among them, principal component analysis (PCA) and cluster analysis represent the two most used techniques, either applied separately or in parallel. Here, we propose a workflow to combine PCA, hierarchical clustering, and a K-means algorithm in a novel approach for dietary pattern derivation. Since the workflow presents certain subjective decisions that might affect the final clustering solution, we also provide some alternatives in relation to different dietary data used. For example, we used the dietary data of 855 women from Catania, Italy. Our approach-defined as clustering on principal components-could be useful to leverage the strengths of each method and to obtain a better cluster solution. In fact, it seemed to disentangle dietary data better than simple clustering algorithms. However, before choosing between the alternatives proposed, it is suggested to consider the nature of dietary data and the main questions raised by the research.

Topics & Concepts

Principal component analysisCluster analysisWorkflowComputer scienceHierarchical clusteringLeverage (statistics)Nutritional epidemiologyData miningMultivariate statisticsCluster (spacecraft)Artificial intelligenceMachine learningMedicineEpidemiologyDatabaseProgramming languageInternal medicineNutritional Studies and DietAdvanced Chemical Sensor TechnologiesSensory Analysis and Statistical Methods
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