Zhang Jiajia, Wang Shan, Wang Yuan, Zhuang Jiaru, Hang Ling, Wu Yibo, Xu Dewu, Huang Chunyan
Obstetrics, Gynecology and Reproduction Research Center, Affiliated Hospital of Jiangnan University, Wuxi, Jiangsu, China.
Wuxi Furen Senior High School, Wuxi, Jiangsu, China.
Asia Pac J Oncol Nurs. 2024 Oct 26;11(12):100612. doi: 10.1016/j.apjon.2024.100612. eCollection 2024 Dec.
This study aimed to explore the complex relationships among symptoms and symptom clusters in patients with gynecologic cancer receiving chemotherapy using symptom network analysis, and to identify core symptoms and core symptom clusters.
A cross-sectional study was conducted at the Affiliated Hospital of Jiangnan University from December 2023 to June 2024, including 221 patients with gynecologic tumors. Participants completed demographic and clinical information questionnaires and the Chinese version of the MD Anderson Symptom Inventory (MDASI-C). Univariate analysis and multiple linear regression were used to screen covariates, exploratory factor analysis to determine symptom clusters, and network analysis to identify core symptoms and core symptom clusters.
A total of 221 patients were included, with an average age of 58.73 years (SD = 11.50). Fatigue ( = 197, 89.1%) and lack of appetite ( = 192, 86.9%) were the most common symptoms, while fatigue (mean = 4.17, SD = 2.07) and distress (mean = 3.43, SD = 2.20) were the most severe symptoms. Several distinct symptom clusters were identified: sickness behavior, gastrointestinal, psychological, and side-effect clusters. In the constructed network, fatigue emerged as the most central symptom (rs = 1.28), while the sickness behavior cluster was identified as the most central symptom cluster (rs = 1.11).
Patients with gynecologic cancer undergoing chemotherapy commonly experience a range of symptoms. Our findings suggest that targeted interventions focusing on the sickness behavior symptom cluster may help reduce the overall symptom burden and assist caregivers in developing more effective symptom management strategies.
本研究旨在运用症状网络分析法探讨接受化疗的妇科癌症患者症状与症状群之间的复杂关系,并识别核心症状和核心症状群。
于2023年12月至2024年6月在江南大学附属医院开展一项横断面研究,纳入221例妇科肿瘤患者。参与者完成人口统计学和临床信息问卷以及中文版MD安德森症状量表(MDASI-C)。采用单因素分析和多元线性回归筛选协变量,探索性因素分析确定症状群,网络分析识别核心症状和核心症状群。
共纳入221例患者,平均年龄58.73岁(标准差=11.50)。疲劳(n=197,89.1%)和食欲缺乏(n=192,86.9%)是最常见的症状,而疲劳(均值=4.17,标准差=2.07)和苦恼(均值=3.43,标准差=2.20)是最严重的症状。识别出几个不同的症状群:疾病行为群、胃肠道群、心理群和副作用群。在构建的网络中,疲劳成为最核心的症状(相关系数=1.28),而疾病行为群被确定为最核心的症状群(相关系数=1.11)。
接受化疗的妇科癌症患者普遍经历一系列症状。我们的研究结果表明,针对疾病行为症状群的靶向干预可能有助于减轻整体症状负担,并协助护理人员制定更有效的症状管理策略。