Pain Phenotypes in Endometriosis: A Population-Based Study Using Latent Class Analysis

To identify pain phenotypes in patients with endometriosis and investigate their associations with demographics, clinical characteristics, comorbidities and pain-related quality of life (QoL). Cross-sectional, single-centre, population-based study. Referral university centre in Quebec City, Canada....

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Veröffentlicht in:BJOG : an international journal of obstetrics and gynaecology 2024-12
Hauptverfasser: Kanti, Fleur Serge, Allard, Valérie, Métivier, Andrée-Ann, Lemyre, Madeleine, Arendas, Kristina, Maheux-Lacroix, Sarah
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container_title BJOG : an international journal of obstetrics and gynaecology
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creator Kanti, Fleur Serge
Allard, Valérie
Métivier, Andrée-Ann
Lemyre, Madeleine
Arendas, Kristina
Maheux-Lacroix, Sarah
description To identify pain phenotypes in patients with endometriosis and investigate their associations with demographics, clinical characteristics, comorbidities and pain-related quality of life (QoL). Cross-sectional, single-centre, population-based study. Referral university centre in Quebec City, Canada. Patients diagnosed with endometriosis were enrolled consecutively between January 2020 and April 2024. Latent class analysis was used to identify pain phenotypes. A three-step approach of latent class analysis, involving logistic regression models, was applied to assess the associations between pain phenotypes and demographics, clinical characteristics, comorbidities and pain-related QoL. Pain phenotypes; demographic, clinical and comorbidity predictors of phenotype membership; association between QoL and pain phenotypes. A total of 352 patients were included. Two pain phenotypes were identified with distinct clinical presentations: one (54% of the participants) with more severe and frequent pain symptoms and poorer QoL and the other (46% of the participants) with mild and less frequent pain symptoms. The high pain phenotype was associated with previous treatment failure, painkiller use, familial history of endometriosis, low annual family income and comorbidities, including painful bladder, fibromyalgia, migraines, lower back pain, irritable bowel syndrome, anxiety and depression or mood disorders. The presence of endometrioma was associated with the low pain phenotype. Phenotype membership was associated with distinct QoL profiles (p 
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Cross-sectional, single-centre, population-based study. Referral university centre in Quebec City, Canada. Patients diagnosed with endometriosis were enrolled consecutively between January 2020 and April 2024. Latent class analysis was used to identify pain phenotypes. A three-step approach of latent class analysis, involving logistic regression models, was applied to assess the associations between pain phenotypes and demographics, clinical characteristics, comorbidities and pain-related QoL. Pain phenotypes; demographic, clinical and comorbidity predictors of phenotype membership; association between QoL and pain phenotypes. A total of 352 patients were included. Two pain phenotypes were identified with distinct clinical presentations: one (54% of the participants) with more severe and frequent pain symptoms and poorer QoL and the other (46% of the participants) with mild and less frequent pain symptoms. The high pain phenotype was associated with previous treatment failure, painkiller use, familial history of endometriosis, low annual family income and comorbidities, including painful bladder, fibromyalgia, migraines, lower back pain, irritable bowel syndrome, anxiety and depression or mood disorders. The presence of endometrioma was associated with the low pain phenotype. Phenotype membership was associated with distinct QoL profiles (p &lt; 0.001). The mean QoL score was higher in the high pain phenotype (59; 95% CI, 56-62) than in the low pain phenotype (33; 95% CI, 29-37). Patients with endometriosis can be categorised into two distinct phenotypes that correlate with QoL and patient characteristics. 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The high pain phenotype was associated with previous treatment failure, painkiller use, familial history of endometriosis, low annual family income and comorbidities, including painful bladder, fibromyalgia, migraines, lower back pain, irritable bowel syndrome, anxiety and depression or mood disorders. The presence of endometrioma was associated with the low pain phenotype. Phenotype membership was associated with distinct QoL profiles (p &lt; 0.001). The mean QoL score was higher in the high pain phenotype (59; 95% CI, 56-62) than in the low pain phenotype (33; 95% CI, 29-37). Patients with endometriosis can be categorised into two distinct phenotypes that correlate with QoL and patient characteristics. 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title Pain Phenotypes in Endometriosis: A Population-Based Study Using Latent Class Analysis
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