Conjoint Trajectories of Anxiety and Depression in Patients with Heart Failure and Their Caregivers within Three Months Post-Discharge: Exploring Their Interconnections with Dyadic Burdens Using Network Analysis.

Bowen Wan, Yaqi Wang, Qingyun Lv, Sisi Cheng, Yujun Wang, Jingwen Liu, Yuan He, Hairong Chang, Xueying Xu, Xia Chen, Li Fu, Xiaoying Zang, Xiaonan Zhang
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Abstract

Aims: To reveal the multi-trajectory of anxiety and depression in patients with HF(heart failure) and their caregivers within three months post-discharge and to illustrate the interconnections among these trajectories and dyadic burden components.

Methods and results: We recruited 248 pairs of patients with HF and caregivers from four tertiary hospitals in Tianjin, China. Data were collected at baseline, two weeks, four weeks, and three months post-discharge. Group-Based Trajectory Modeling (GBTM) was used to identify the trajectories, while network analysis was used to explore interconnections among these trajectories and dyadic burdens components. Expected Influence (EI) was utilized to identify core nodes within the network. Three co-joint trajectories were identified: mild disorder (27.4%), moderate disorder (58.9%), and severe disorder (13.7%), with significant demographic differences noted among groups. The five most core nodes in the network were personal burden (EI=1.19), role burden (EI=1.07), dyspnea when lying down (EI=0.83), daytime dyspnea (EI=0.38), and difficulty sleeping (EI=0.36). The nodes most strongly associated with anxiety and depression trajectories included chest pain, fatigue, and dizziness. Sensitivity analysis affirmed the findings' robustness.

Conclusion: Anxiety and depression co-joint trajectories among patients with HF and caregivers showed heterogeneity, with core constructions identified for future intervention studies to reduce dyadic burdens and improve the adverse development of anxiety and depression.

Registration: ChiTR ChiCTR2400088241.

心衰患者及其护理人员出院后3个月内焦虑和抑郁的联合轨迹:使用网络分析探索他们与二元负担的相互联系。
目的:揭示HF(心力衰竭)患者及其护理人员出院后3个月内焦虑和抑郁的多轨迹,并说明这些轨迹与二元负担成分之间的相互关系。方法和结果:我们从中国天津的四所三级医院招募了248对心衰患者和护理人员。在基线、出院后2周、4周和3个月收集数据。基于群的轨迹建模(GBTM)用于识别轨迹,网络分析用于探索轨迹之间的相互关系和二元负荷分量。期望影响(EI)用于识别网络中的核心节点。确定了三种共同的轨迹:轻度障碍(27.4%),中度障碍(58.9%)和严重障碍(13.7%),组间存在显著的人口统计学差异。网络中最核心的5个节点分别是个人负担(EI=1.19)、角色负担(EI=1.07)、躺下呼吸困难(EI=0.83)、日间呼吸困难(EI=0.38)和睡眠困难(EI=0.36)。与焦虑和抑郁轨迹最密切相关的淋巴结包括胸痛、疲劳和头晕。敏感性分析证实了研究结果的稳健性。结论:心衰患者和照顾者之间的焦虑和抑郁联合轨迹存在异质性,为未来的干预研究确定了核心结构,以减轻双重负担,改善焦虑和抑郁的不良发展。注册号:ChiTR ChiCTR2400088241。
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