对维持性血液透析患者核心症状和症状群的调查:网络分析

IF 2.4 3区 医学 Q1 NURSING Journal of Nursing Scholarship Pub Date : 2024-05-13 DOI:10.1111/jnu.12982
Yingjun Zhang MM, Li Liu BNS, Lin Chen BNS, Li He MM, Mei Shi BNS, Hui Chen MM
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引用次数: 0

摘要

目的:构建维持性血液透析患者的症状网络,识别核心症状和核心症状群。最后,本研究为准确的症状管理提供参考:相关横断面设计。在中国四川省成都市的两家血液透析中心共招募了 368 名接受维持性血液透析的患者。使用 R 编码语言构建了症状网络,以分析中心性指数。通过探索性因子分析提取症状群,并根据症状网络的中心性指数初步确定核心症状群:维持性血液透析患者最常见的症状是疲劳、皮肤干燥和瘙痒。在症状网络中,头痛的中介中心度(rB = 2.789)和亲近中心度(rC = 2.218)最高,脚麻或刺痛的强度最大(rS = 1.952)。共提取了六个症状群,包括疼痛和不适症状群、情绪症状群、胃肠道症状群、睡眠障碍症状群、干燥症状群和性功能障碍症状群。累计方差贡献率为 69.269%:疲劳、皮肤干燥和瘙痒是维持性血液透析患者的前哨症状,头痛是核心症状和桥梁症状,疼痛症状群是MHD患者的核心症状群。护士可根据核心症状和症状群制定干预措施,以提高维持性血液透析患者症状管理的有效性:了解困扰维持性血液透析患者的核心症状和症状群对于提供准确的症状管理至关重要。为了确保维持性血液透析患者在治疗期间得到有效的支持,减少症状的不良影响,提高患者的生活质量。
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Investigation of core symptoms and symptom clusters in maintenance hemodialysis patients: A network analysis

Purpose

To construct a symptom network of maintenance hemodialysis patients and identify the core symptoms and core symptom clusters. Finally, this study provides a reference for accurate symptom management.

Design and Method

A correlational cross-sectional design. A total of 368 patients who underwent maintenance hemodialysis were enrolled from two hemodialysis centers in Chengdu, Sichuan Province, China. A symptom network was constructed with the R coding language to analyze the centrality index. Symptom clusters were extracted by exploratory factor analysis, and core symptom clusters were preliminarily determined according to the centrality index of the symptom network.

Findings

The most common symptoms in maintenance hemodialysis patients were fatigue, dry skin, and pruritus. In the symptom network, headache had the highest mediation centrality (rB = 2.789) and closeness centrality (rC = 2.218) and the greatest intensity of numbness or tingling in the feet (rS = 1.952). A total of six symptom clusters were extracted, including pain and discomfort symptom clusters, emotional symptom clusters, gastrointestinal symptom clusters, sleep disorder symptom clusters, dry symptom clusters, and sexual dysfunction symptom clusters. The cumulative variance contribution rate was 69.269%.

Conclusions

Fatigue, dry skin, and pruritus are the sentinel symptoms of maintenance hemodialysis patients, headache is the core symptom and bridge symptom, and pain symptom clusters are the core symptom clusters of MHD patients. Nurses can develop interventions based on core symptoms and symptom clusters to improve the effectiveness of symptom management in maintenance hemodialysis patients.

Clinical Relevance

Understanding the core symptoms and symptom groups that plague maintenance hemodialysis patients is critical to providing accurate symptom management. To ensure that maintenance hemodialysis patients receive effective support during treatment, reduce the adverse effects of symptoms, and improve the quality of life of patients.

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来源期刊
CiteScore
6.30
自引率
5.90%
发文量
85
审稿时长
6-12 weeks
期刊介绍: This widely read and respected journal features peer-reviewed, thought-provoking articles representing research by some of the world’s leading nurse researchers. Reaching health professionals, faculty and students in 103 countries, the Journal of Nursing Scholarship is focused on health of people throughout the world. It is the official journal of Sigma Theta Tau International and it reflects the society’s dedication to providing the tools necessary to improve nursing care around the world.
期刊最新文献
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