Statistical methods for dementia risk prediction and recommendations for future work: A systematic review

Goerdten, Jantje; Cukic, Iva; Danso, Samuel O.; Carriere, Isabelle; Muniz-Terrera, Graciela

Abstract

IntroductionNumerous dementia risk prediction models have been developed in the past decade. However, methodological limitations of the analytical tools used may hamper their ability to generate reliable dementia risk scores. We aim to review the used methodologies. MethodsWe systematically reviewed the literature from March 2014 to September 2018 for publications presenting a dementia risk prediction model. We critically discuss the analytical techniques used in the literature. ResultsIn total 137 publications were included in the qualitative synthesis. Three techniques were identified as the most commonly used methodologies: machine learning, logistic regression, and Cox regression. DiscussionWe identified three major methodological weaknesses: (1) over-reliance on one data source, (2) poor verification of statistical assumptions of Cox and logistic regression, and (3) lack of validation. The use of larger and more diverse data sets is recommended. Assumptions should be tested thoroughly, and actions should be taken if deviations are detected.

Más información

Título según WOS: ID WOS:000737692800060 Not found in local WOS DB
Título de la Revista: ALZHEIMERS DEMENTIA-TRANSLATIONAL RESEARCH CLINICAL INTERVENTIONS
Volumen: 5
Número: 1
Editorial: Wiley
Fecha de publicación: 2019
Página de inicio: 563
Página final: 569
DOI:

10.1016/j.trci.2019.08.001

Notas: ISI