Network Analysis of Persistent Somatic Symptoms in Two Clinical Patient Samples

PSYCHOSOMATIC MEDICINE(2022)

引用 7|浏览0
暂无评分
摘要
Objective Previous attempts to group persistent somatic symptoms (PSSs) with factor-analytic approaches have obtained heterogeneous results. An alternative approach that seems to be more suitable is the network theory. Compared with factor analysis, which focuses on the underlying factor of symptoms, network analysis focuses on the dynamic relationships and interactions among different symptoms. The main aim of this study is to apply the network approach to examine the heterogeneous structure of PSS within two clinical samples. Methods The first data set consisted of n = 254 outpatients who were part of a multicenter study. The second data set included n = 574 inpatients, both with somatoform disorders. Somatic symptom severity was assessed with the Screening of Somatoform Disorder (SOMS-7T). Results Results indicate that there are five main symptom groups that were found in both samples: neurological, gastrointestinal, urogenital, cardiovascular, and musculoskeletal symptoms. Although patterns of symptoms with high connection to each other look quite similar in both networks, the order of the most central symptoms (e.g., symptoms with a high connection to other symptoms in the network) differs. Conclusions This work is the first to estimate the structure of PSS using network analysis. A next step could be first to replicate our findings before translating them into clinical practice. Second, results may be useful for generating hypotheses to be tested in future studies, and the results open new opportunities for a better understanding for etiology, prevention, and intervention research.
更多
查看译文
关键词
network analyses, persistent somatic symptoms, somatic symptom disorder, SOMS-7T, clinical sample, CI = confidence interval, CS = correlation stability coefficients, EBIC = extended Bayesian information criterion, PSS = persistent physical symptoms, SOMS-7T=Screening of Somatoform Disorder, SSD = somatic symptom disorder
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要