Artículo de Publicación Periódica:
Detection of atypical response trajectories in biomedical longitudinal databases

Fecha

2022-10-24

Título de la revista

ISSN de la revista

Título del volumen

Editor

De Gruyter

Resumen

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.

Descripción

Detection of atypical response trajectories in biomedical longitudinal databases

Palabras clave

LONGITUDINAL DATA, MIXED EFFECTS MODELS, OUTLIER DETECTION, DATA LONGITUDINAL, MODELO DE EFECTOS MIXTOS

Citación

Colecciones