Zequan Wang, Sangchoon Jeon, Christine Tocchi, Samantha Conley, Stephen Walsh, Kyounghae Kim, Deborah Chyun, Nancy Redeker
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The aims of this study were to (1) describe symptom cluster profiles in older adults with HF in a nationally representative sample of community-dwelling older adults; and (2) determine the associations between demographic and clinical characteristics and membership in symptom cluster profiles.\nMethods: A secondary analysis was conducted using data from the Health and Retirement Study. Fatigue, shortness of breath, pain, swelling, depressive symptoms, and dizziness were measured. Latent class analysis was used to identify symptom cluster profiles. Bivariate associations and multinomial logistic regression were used to determine the associations between symptom cluster profiles and demographic and clinical characteristics. Results: The sample included 690 participants. Three symptom cluster profiles were identified [high-burden, low-burden, and cardiopulmonary-depressive]. Age, gender, BMI, marital status, alcohol consumption, diabetes, lung disease, and arthritis were significantly different across the three profiles. People in the high-burden and cardiopulmonary-depressive profiles, compared to those in low-burden, had higher odds of having lung disease and arthritis, yet lower odds of higher alcohol consumption. Conclusions: Older adults with HF residing in the community experienced distinct symptom cluster profiles. Research is needed to identify and test targeted interventions for specific symptom cluster profiles.","PeriodicalId":501260,"journal":{"name":"medRxiv - Nursing","volume":"35 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-07-26","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Symptom Cluster Profiles among Community-residing Older Adults with Heart Failure: Findings from the U.S. Health and Retirement Study\",\"authors\":\"Zequan Wang, Sangchoon Jeon, Christine Tocchi, Samantha Conley, Stephen Walsh, Kyounghae Kim, Deborah Chyun, Nancy Redeker\",\"doi\":\"10.1101/2024.07.25.24309835\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"ABSTRACT Background: The incidence of heart failure (HF) rises significantly as people age due to the accumulated influence of risk factors in cardiovascular structure and function. Among older adults with HF, symptoms are manifested in clustered symptoms. Few studies have addressed symptoms specifically in older adults with HF and most have been conducted with small samples. The aims of this study were to (1) describe symptom cluster profiles in older adults with HF in a nationally representative sample of community-dwelling older adults; and (2) determine the associations between demographic and clinical characteristics and membership in symptom cluster profiles.\\nMethods: A secondary analysis was conducted using data from the Health and Retirement Study. Fatigue, shortness of breath, pain, swelling, depressive symptoms, and dizziness were measured. Latent class analysis was used to identify symptom cluster profiles. Bivariate associations and multinomial logistic regression were used to determine the associations between symptom cluster profiles and demographic and clinical characteristics. Results: The sample included 690 participants. Three symptom cluster profiles were identified [high-burden, low-burden, and cardiopulmonary-depressive]. Age, gender, BMI, marital status, alcohol consumption, diabetes, lung disease, and arthritis were significantly different across the three profiles. People in the high-burden and cardiopulmonary-depressive profiles, compared to those in low-burden, had higher odds of having lung disease and arthritis, yet lower odds of higher alcohol consumption. Conclusions: Older adults with HF residing in the community experienced distinct symptom cluster profiles. 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引用次数: 0
摘要
摘要 背景:随着年龄的增长,心血管结构和功能中的危险因素的累积影响导致心力衰竭(HF)的发病率大幅上升。在患有心力衰竭的老年人中,症状表现为聚集性症状。很少有研究专门针对患有高血压的老年人的症状,而且大多数研究都是在小样本的情况下进行的。本研究的目的是:(1) 在具有全国代表性的社区居住老年人样本中,描述患有高血压的老年人的症状群特征;(2) 确定人口统计学和临床特征与症状群特征之间的关联:方法:利用健康与退休研究(Health and Retirement Study)的数据进行了二次分析。对疲劳、气短、疼痛、肿胀、抑郁症状和头晕进行了测量。采用潜类分析法确定症状群特征。二元关联和多项式逻辑回归用于确定症状群特征与人口统计学和临床特征之间的关联。研究结果样本包括 690 名参与者。确定了三种症状群特征[高负担、低负担和心肺抑郁]。年龄、性别、体重指数、婚姻状况、饮酒量、糖尿病、肺部疾病和关节炎在这三种特征中存在显著差异。与低负担人群相比,高负担人群和心肺抑郁人群患肺病和关节炎的几率更高,但饮酒量较高的几率较低。结论居住在社区的高血压老年人有不同的症状群特征。需要进行研究,以确定和测试针对特定症状群特征的针对性干预措施。
Symptom Cluster Profiles among Community-residing Older Adults with Heart Failure: Findings from the U.S. Health and Retirement Study
ABSTRACT Background: The incidence of heart failure (HF) rises significantly as people age due to the accumulated influence of risk factors in cardiovascular structure and function. Among older adults with HF, symptoms are manifested in clustered symptoms. Few studies have addressed symptoms specifically in older adults with HF and most have been conducted with small samples. The aims of this study were to (1) describe symptom cluster profiles in older adults with HF in a nationally representative sample of community-dwelling older adults; and (2) determine the associations between demographic and clinical characteristics and membership in symptom cluster profiles.
Methods: A secondary analysis was conducted using data from the Health and Retirement Study. Fatigue, shortness of breath, pain, swelling, depressive symptoms, and dizziness were measured. Latent class analysis was used to identify symptom cluster profiles. Bivariate associations and multinomial logistic regression were used to determine the associations between symptom cluster profiles and demographic and clinical characteristics. Results: The sample included 690 participants. Three symptom cluster profiles were identified [high-burden, low-burden, and cardiopulmonary-depressive]. Age, gender, BMI, marital status, alcohol consumption, diabetes, lung disease, and arthritis were significantly different across the three profiles. People in the high-burden and cardiopulmonary-depressive profiles, compared to those in low-burden, had higher odds of having lung disease and arthritis, yet lower odds of higher alcohol consumption. Conclusions: Older adults with HF residing in the community experienced distinct symptom cluster profiles. Research is needed to identify and test targeted interventions for specific symptom cluster profiles.