医学
妇科癌症
横断面研究
老年学
癌症
妇科
肿瘤科
内科学
卵巢癌
病理
作者
Melissa Lavecchia,Maura Marcucci,Parminder Raina,Waldo Jiménez,Julie Nguyen
标识
DOI:10.1016/j.ijgc.2025.101642
摘要
There is significant heterogeneity in the recovery of individuals after gynecological cancer treatment. The Canadian Longitudinal Study on Aging provided a distinct opportunity to evaluate the associations between psychosocial and functional factors and long-term health outcomes. We sought to examine the prevalence of frailty and utilization of social and community support among community-dwelling older adults with a history of gynecologic cancer. We conducted a cross-sectional analysis of female participants in the Canadian Longitudinal Study on Aging, a population-based cohort comprising over 50,000 individuals aged 45 to 85 years old. Frailty was operationalized using the deficit accumulation model (frailty defined as Frailty Index >0.21). Associations were evaluated using multivariate regression analyses adjusted for sociodemographic, lifestyle, economic, and social support factors. Data points to measure frailty were available for 15,149 of the 15,320 (98.8%) female participants. The prevalence of frailty was 19.9% in those with a history of gynecologic cancer compared to 9.1% in those without (p < .001; adjusted OR 2.2, 95% CI 1.6 to 2.9). For all female participants, regardless of a history of gynecologic cancer, history of smoking, alcohol use, lower income, lower educational level, never having been married, living alone, and less social support availability were significantly associated with frailty in univariate analysis. Those with a history of gynecologic cancer classified as frail were more likely to require assistance from family members (OR 3.4, 95% CI 2.0 to 5.7) and professional community supports (OR 7.9, 95% CI 4.1 to 15.0) than those who were not frail. In this large national cohort study, a history of gynecological cancer was independently associated with frailty. We identified the factors of social vulnerability that may affect health outcomes. These novel findings can be instrumental in advocating for resource allocation and designing proactive strategies.
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