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Comparative analysis of methods for identifying multimorbidity patterns: a study of 'real-world' data.

Albert Roso-LlorachConcepción ViolánQuintí Foguet-BoreuTeresa Rodriguez-BlancoMariona Pons-ViguésEnriqueta Pujol-RiberaJose Maria Valderas
Published in: BMJ open (2018)
This study showed that multimorbidity patterns vary depending on the method of analysis used (HCA vs EFA) and provided new evidence about the known limitations of attempts to compare multimorbidity patterns in real-world data studies. We found that EFA was useful in describing comorbidity relationships and HCA could be useful for in-depth study of multimorbidity. Our results suggest possible applications for each of these methods in clinical and research settings, and add information about some aspects that must be considered in standardisation of future studies: spectrum of diseases, data usage and methods of analysis.
Keyphrases
  • electronic health record
  • big data
  • healthcare
  • machine learning
  • data analysis
  • health information