医学
应对(心理学)
心理干预
肺癌
临床心理学
生活质量(医疗保健)
疾病
心理弹性
人口
结构方程建模
肿瘤科
内科学
老年学
精神科
心理学
环境卫生
心理治疗师
护理部
统计
数学
作者
Qiuhong Chen,Yunqin Weng,Fangfang Wang,Xiaoyan Yang,Wei‐Ti Chen,Feifei Huang
出处
期刊:Cancer Nursing
[Ovid Technologies (Wolters Kluwer)]
日期:2024-03-27
被引量:1
标识
DOI:10.1097/ncc.0000000000001339
摘要
Background Fear of cancer recurrence (FCR) significantly impacts the treatment and prognosis of lung cancer survivors. However, the mechanisms and factors contributing to FCR and its related consequences in lung cancer remain poorly understood. Objective To evaluate the validity of the Lee-Jones Theoretical Model of FCR in lung cancer survivors. Methods A cross-sectional survey was conducted among 257 lung cancer survivors who had undergone surgical treatment 1 year prior. The participants completed a comprehensive set of questionnaires, and the data were analyzed using structural equation modeling to test the proposed model. Results The analysis confirmed direct relationships between family resilience, coping behaviors, illness perceptions, FCR triggers, and FCR. Fear of cancer recurrence was also found to have a direct negative impact on quality of life (QOL). Furthermore, levels of family resilience, coping behaviors, illness perceptions, and FCR triggers indirectly influenced QOL through their association with FCR. Conclusions This study provides partial support for the validity of the Lee-Jones Theoretical Model of FCR in lung cancer survivors. The findings contribute to a better understanding of FCR in this population and lay the groundwork for targeted interventions. Effective strategies to reduce FCR in lung cancer survivors should focus on enhancing family resilience, improving disease cognition, minimizing FCR triggers, and guiding patients toward adopting positive coping styles, ultimately improving their QOL. Implications for Practice Fear of cancer recurrence plays a vital role in relationships between internal and external cues and QOL. We can construct interventions to enhance the QOL of survivors based on the FCR influencing factors.
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