Clustering long-term health conditions among 67728 people with multimorbidity using electronic health records in Scotland.
Adeniyi Francis FagbamigbeUtkarsh AgrawalAmaya Azcoaga-LorenzoBriana MacKerronEda Bilici ÖzyiğitDaniel C AlexanderAshley AkbariRhiannon K OwenJane LyonsRonan A LyonsSpiros DenaxasPaul KirkAna Corina MillerGill HarperCarol DezateuxAnthony BrookesSylvia RichardsonKrishnarajah NirantharakumarBruce GuthrieLloyd HughesUmesh T KadamKamlesh KhuntiKeith R AbramsColin McCowanPublished in: PloS one (2023)
There is still limited understanding of how chronic conditions co-occur in patients with multimorbidity and what are the consequences for patients and the health care system. Most reported clusters of conditions have not considered the demographic characteristics of these patients during the clustering process. The study used data for all registered patients that were resident in Fife or Tayside, Scotland and aged 25 years or more on 1st January 2000 and who were followed up until 31st December 2018. We used linked demographic information, and secondary care electronic health records from 1st January 2000. Individuals with at least two of the 31 Elixhauser Comorbidity Index conditions were identified as having multimorbidity. Market basket analysis was used to cluster the conditions for the whole population and then repeatedly stratified by age, sex and deprivation. 318,235 individuals were included in the analysis, with 67,728 (21·3%) having multimorbidity. We identified five distinct clusters of conditions in the population with multimorbidity: alcohol misuse, cancer, obesity, renal failure, and heart failure. Clusters of long-term conditions differed by age, sex and socioeconomic deprivation, with some clusters not present for specific strata and others including additional conditions. These findings highlight the importance of considering demographic factors during both clustering analysis and intervention planning for individuals with multiple long-term conditions. By taking these factors into account, the healthcare system may be better equipped to develop tailored interventions that address the needs of complex patients.
Keyphrases
- end stage renal disease
- electronic health record
- ejection fraction
- chronic kidney disease
- healthcare
- peritoneal dialysis
- public health
- metabolic syndrome
- insulin resistance
- physical activity
- body mass index
- single cell
- mental health
- squamous cell carcinoma
- patient reported outcomes
- artificial intelligence
- patient safety
- rna seq
- big data
- lymph node metastasis
- health information
- deep learning
- papillary thyroid