Novel Irritable Bowel Syndrome Subgroups are Reproducible in the Global Adult Population.

Clinical Gastroenterology and Hepatology(2024)

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摘要
Background & aims Current classification systems for irritable bowel syndrome (IBS) based on bowel habit do not consider psychological impact. We validated a classification model in a UK population with confirmed IBS, using latent class analysis, incorporating psychological factors. We applied this model in the Rome Foundation Global Epidemiological Survey (RFGES), assessing impact of IBS on the individual and the healthcare system, as well as examining reproducibility. Methods We applied our model to 2195 individuals in the RFGES with Rome IV-defined IBS. As described previously, we identified seven clusters, based on gastrointestinal symptom severity and psychological burden. We assessed demographics, healthcare-seeking, symptom severity, and quality of life in each. We also used the RFGES to derive a new model, examining whether the broader concepts of our original model were replicated, in terms of breakdown and characteristics of identified clusters. Results All seven clusters were identified. Those in clusters with highest psychological burden, and particularly cluster 6 with high overall gastrointestinal symptom severity, were more often female, exhibited higher levels of healthcare-seeking, were more likely to have undergone previous abdominal surgeries, and had higher symptom severity and lower quality of life (p<0.001 for trend for all). When deriving a new model, the best solution consisted of 10 clusters, although at least two appeared to be duplicates, and almost all mapped on to the previous clusters. Conclusions Even in the community, our original clusters derived from patients with physician-confirmed IBS identified groups of individuals with significantly higher rates of healthcare-seeking and abdominal surgery, more severe symptoms, and impairments in quality of life.
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关键词
irritable bowel syndrome,latent class analysis,subgrouping,quality of life,surgery
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