longmixr: a tool for robust clustering of high-dimensional cross-sectional and longitudinal variables of mixed data types

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Abstract

Accurate clustering of mixed data, encompassing binary, categorical, and continuous variables, is vital for effective patient stratification in clinical questionnaire analysis. To address this need, we present longmixr, a comprehensive R package providing a robust framework for clustering mixed longitudinal data using finite mixture modeling techniques. By incorporating consensus clustering, longmixr ensures reliable and stable clustering results. Moreover, the package includes a detailed vignette that facilitates cluster exploration and visualization.

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Hagenberg, J., Budde, M., Pandeva, T., Kondofersky, I., Schaupp, S. K., Theis, F. J., … Knauer-Arloth, J. (2024). longmixr: a tool for robust clustering of high-dimensional cross-sectional and longitudinal variables of mixed data types. Bioinformatics, 40(4). https://doi.org/10.1093/bioinformatics/btae137

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