An overview of clustering methods with guidelines for application in mental health research
Metadata
Show full item recordAuthor
Gao, Caroline X.Editorial
Universidad de Granada
Materia
Clustering Cluster analysis Machine learning Unsupervised learning Mental health research
Date
2023-05-27Referencia bibliográfica
C.X. Gao et al. An overview of clustering methods with guidelines for application in mental health research. Psychiatry Research 327 (2023) 115265 2[https://doi.org/10.1016/j.psychres.2023.115265]
Abstract
Cluster analyzes have been widely used in mental health research to decompose inter-individual heterogeneity
by identifying more homogeneous subgroups of individuals. However, despite advances in new algorithms and
increasing popularity, there is little guidance on model choice, analytical framework and reporting requirements.
In this paper, we aimed to address this gap by introducing the philosophy, design, advantages/disadvantages and
implementation of major algorithms that are particularly relevant in mental health research. Extensions of basic
models, such as kernel methods, deep learning, semi-supervised clustering, and clustering ensembles are subsequently
introduced. How to choose algorithms to address common issues as well as methods for pre-clustering
data processing, clustering evaluation and validation are then discussed. Importantly, we also provide general
guidance on clustering workflow and reporting requirements. To facilitate the implementation of different algorithms,
we provide information on R functions and libraries