Lin Hairong, Luo Huaili, Lin Mei, Li Hong, Sun Dingce
J Cardiovasc Nurs. 2024 Oct 14. doi: 10.1097/JCN.0000000000001133.
The symptom network can provide a visual insight into the symptom mechanisms. However, few study authors have explored the multidimensional symptom network of patients with atrial fibrillation (AF).
We aimed to identify the core symptom and symptom clusters of patients with AF by generating a symptom network. Furthermore, we wanted to identify multiple characteristics related to symptom clusters.
This is a cross-sectional study. A total of 384 patients with AF at Tianjin Medical University General Hospital were enrolled. The University of Toronto Atrial Fibrillation Severity Scale was used to assess AF symptoms. Network analysis was used to explore the core symptom and symptom cluster.
Shortness of breath at rest ( rs = 1.189, rc = 0.024), exercise intolerance ( rs = 1.116), shortness of breath during physical activity ( rs = 1.055, rc = 0.022), and fatigue at rest ( rc = 0.020) have the top centrality for strength and closeness. The top 3 symptoms of bridge strength were shortness of breath at rest ( rs = 0.264), dizziness ( rs = 0.208), and palpitations ( rs = 0.207). Atrial fibrillation symptoms could be clustered into the breathless cluster and the cardiac cluster. We have identified multiple factors such as mental health status, left ventricular ejection fraction, heart failure, sex, B-type natriuretic peptide, and chronic obstructive pulmonary disease as significant contributors within the breathless cluster, whereas sex, mental health status, and history of radiofrequency ablation were strongly associated with the cardiac cluster, holding promise in elucidating the underlying mechanisms of these symptoms.
Special attention should be given to shortness of breath at rest as its core and bridging role in patients' symptoms. Furthermore, both the breathless and cardiac clusters are common among patients. Network analysis reveals direct connections between symptoms, symptom clusters, and their influencing factors, providing a foundation for clinicians to effectively manage patients' symptoms.
症状网络能够直观地展现症状机制。然而,很少有研究作者探索过房颤(AF)患者的多维症状网络。
我们旨在通过生成症状网络来确定房颤患者的核心症状和症状簇。此外,我们还想确定与症状簇相关的多个特征。
这是一项横断面研究。天津医科大学总医院共纳入了384例房颤患者。使用多伦多大学房颤严重程度量表评估房颤症状。采用网络分析来探索核心症状和症状簇。
静息时气短(rs = 1.189,rc = 0.024)、运动不耐受(rs = 1.116)、体力活动时气短(rs = 1.055,rc = 0.022)和静息时疲劳(rc = 0.020)在强度和接近度方面具有最高的中心性。桥接强度排名前3的症状是静息时气短(rs = 0.264)、头晕(rs = 0.208)和心悸(rs = 0.207)。房颤症状可分为呼吸急促簇和心脏簇。我们已经确定了多个因素,如心理健康状况、左心室射血分数、心力衰竭、性别、B型利钠肽和慢性阻塞性肺疾病是呼吸急促簇中的重要因素,而性别、心理健康状况和射频消融史与心脏簇密切相关,有望阐明这些症状的潜在机制。
应特别关注静息时气短在患者症状中的核心和桥接作用。此外,呼吸急促簇和心脏簇在患者中都很常见。网络分析揭示了症状、症状簇及其影响因素之间的直接联系,为临床医生有效管理患者症状提供了基础。