» Articles » PMID: 39833271

Symptom Clusters and Networks Analysis in Acute-phase Stroke Patients: a Cross-sectional Study

Overview
Journal Sci Rep
Date 2025 Jan 20
PMID 39833271
Authors
Affiliations
Soon will be listed here.
Abstract

The symptoms of stroke jeopardize patients' health and increase the burden on society and caregivers. Although the traditional symptom cluster research paradigm can enhance management efficiency, it fails to provide targets for intervention, thereby hindering the development of patient-centered precision medicine. However, the symptom network paradigm, as a novel research approach, addresses the limitations of traditional symptom management by identifying core symptoms and determining intervention targets, thereby enhancing the efficiency and precision of symptom management. This study. aims to explore the symptom network and core symptoms of acute-phase stroke patients. A convenience sample of 505 stroke patients was selected for this study. Symptoms were assessed by the Stroke Symptom Experience Scale.Exploratory factor analysis was utilized to extract symptom clusters, and network analysis was conducted to construct the symptom network and characterize its nodes. In this study, four symptom clusters were extracted through exploratory factor analysis. Based on the results of node predictability(re) and node centrality such as strength centrality (rs), it was found that the symptoms of "No interest in surroundings" (rs = 1.299, re = 1.081), "Be disappointed about future" (rs = 0.922, re = 0.901), and "Unable to maintain body balance" (rs = 0.747, re = 0.744) had the highest centrality and predictability values, indicating their core positions within the symptom network. No interest in surroundings, Be disappointed about future, and Unable to maintain body balance are core symptoms in the symptom network. In the future, intervention methods for core symptoms can be constructed and validated for their intervention effects to further demonstrate the benefits of core symptoms.

References
1.
Zhu Z, Sun Y, Kuang Y, Yuan X, Gu H, Zhu J . Contemporaneous symptom networks of multidimensional symptom experiences in cancer survivors: A network analysis. Cancer Med. 2022; 12(1):663-673. PMC: 9844664. DOI: 10.1002/cam4.4904. View

2.
Olatunji B, Levinson C, Calebs B . A network analysis of eating disorder symptoms and characteristics in an inpatient sample. Psychiatry Res. 2018; 262:270-281. DOI: 10.1016/j.psychres.2018.02.027. View

3.
Ward Sullivan C, Leutwyler H, Dunn L, Cooper B, Paul S, Conley Y . Differences in symptom clusters identified using symptom occurrence rates versus severity ratings in patients with breast cancer undergoing chemotherapy. Eur J Oncol Nurs. 2017; 28:122-132. PMC: 5494962. DOI: 10.1016/j.ejon.2017.04.001. View

4.
Mansfield A, Inness E, McIlroy W . Stroke. Handb Clin Neurol. 2018; 159:205-228. DOI: 10.1016/B978-0-444-63916-5.00013-6. View

5.
Meng L, Liang Q, Yuan J, Li S, Ge Y, Yang J . Vestibular rehabilitation therapy on balance and gait in patients after stroke: a systematic review and meta-analysis. BMC Med. 2023; 21(1):322. PMC: 10464347. DOI: 10.1186/s12916-023-03029-9. View