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1.
EJIFCC ; 34(3): 228-244, 2023 Oct.
Artigo em Inglês | MEDLINE | ID: mdl-37868088

RESUMO

Background: Analyzing longitudinal gene expression data is extremely challenging due to limited prior information, high dimensionality, and heterogeneity. Similar difficulties arise in research of multifactorial diseases such as Type 2 Diabetes. Clustering methods can be applied to automatically group similar observations. Common clinical values within the resulting groups suggest potential associations. However, applying traditional clustering methods to gene expression over time fails to capture variations in the response. Therefore, shape-based clustering could be applied to identify patient groups by gene expression variation in a large time metabolic compensatory intervention. Objectives: To search for clinical grouping patterns between subjects that showed similar structure in the variation of IL-1ß gene expression over time. Methods: A new approach for shape-based clustering by IL-1ß expression behavior was applied to a real longitudinal database of Type 2 Diabetes patients. In order to capture correctly variations in the response, we applied traditional clustering methods to slopes between measurements. Results: In this setting, the application of K-Medoids using the Manhattan distance yielded the best results for the corresponding database. Among the resulting groups, one of the clusters presented significant differences in many key clinical values regarding the metabolic syndrome in comparison to the rest of the data. Conclusions: The proposed method can be used to group patients according to variation patterns in gene expression (or other applications) and thus, provide clinical insights even when there is no previous knowledge on the subject clinical profile and few timepoints for each individual.

2.
Int J Biostat ; 19(2): 389-415, 2023 11 01.
Artigo em Inglês | MEDLINE | ID: mdl-36279154

RESUMO

Many health care professionals and institutions manage longitudinal databases, involving follow-ups for different patients over time. Longitudinal data frequently manifest additional complexities such as high variability, correlated measurements and missing data. Mixed effects models have been widely used to overcome these difficulties. This work proposes the use of linear mixed effects models as a tool that allows to search conceptually different types of anomalies in the data simultaneously.


Assuntos
Gerenciamento de Dados , Humanos , Estudos Longitudinais , Modelos Lineares , Bases de Dados Factuais
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