Chen Lu, Li Ling, Qiao Kexin, Qiao Zhengxue, Xiang Ying, Zhou Jiawei, Bu Tianyi, Hu Xiaomeng, Ke Siyuan, Kan Yuecui, Liu Xuan, Ji Yanping, Qiu Xiaohui, Yang Yanjie
Department of Health Prevention and Care, Beijing Hospital, Beijing, China.
Institute of Geriatric Medicine, Chinese Academy of Medical Sciences, Beijing, China.
Front Psychiatry. 2024 Nov 18;15:1431772. doi: 10.3389/fpsyt.2024.1431772. eCollection 2024.
The purpose of this study was to explore the key pathways leading to low quality of life in type 2 diabetes patients by means of network analysis, so as to provide the possibility of effective interventions.
The study involved 1,011 adult type 2 diabetes patients from a tertiary hospital in Harbin. Data was collected through questionnaires, and network analysis was performed using R software to assess the centrality and predictability of each node.
"Depression" and "Submission" (weight = 0.26), "Depression" and "Physiological field" (weight = -0.16), exhibit the strongest associations. Overall, "Depression" has the highest weight in the association with diabetes symptom, regarding betweenness, "Depression" and "Submission" exhibit the highest scores, Furthermore, the analysis of closeness centrality reveals that "Depression" and "Submission" share the highest level of proximity, it suggests that they have the shortest distances to other network factors in our research network.
Depression and Submission are likely to be key factors affecting the quality of life of people with diabetes. Providing psychological support and scientific coping strategies for diabetes patients may be an effective way to help them live a better life.
本研究旨在通过网络分析探索导致2型糖尿病患者生活质量低下的关键途径,从而提供有效干预的可能性。
本研究纳入了哈尔滨一家三级医院的1011例成年2型糖尿病患者。通过问卷调查收集数据,并使用R软件进行网络分析,以评估每个节点的中心性和可预测性。
“抑郁”与“屈服”(权重=0.26)、“抑郁”与“生理领域”(权重=-0.16)呈现出最强的关联。总体而言,就中介中心性而言,“抑郁”在与糖尿病症状的关联中权重最高,“抑郁”与“屈服”的中介中心性得分最高。此外,接近中心性分析显示,“抑郁”与“屈服”的接近程度最高,这表明在我们的研究网络中,它们与其他网络因素的距离最短。
抑郁和屈服可能是影响糖尿病患者生活质量的关键因素。为糖尿病患者提供心理支持和科学的应对策略可能是帮助他们过上更好生活的有效途径。