Tian Xu, Jin Yanfei, Tang Ling, Pi Yuan-Ping, Chen Wei-Qing, Jiménez-Herrera Maria F
Department of Nursing, Rovira I Virgili University, Tarragona, Spain.
Department of Gastroenterology, Chongqing University Cancer Hospital, Chongqing, China.
Asia Pac J Oncol Nurs. 2021 May 31;8(4):403-412. doi: 10.4103/apjon.apjon-2114. eCollection 2021 Jul-Aug.
Lung cancer patients reported the highest incidence of psychological distress. It is extremely important to identify which patients at high risk for psychological distress. The study aims to develop and validate a predictive algorithm to identify lung cancer patients at high risk for psychological distress.
This cross-sectional study identified the risk factors of psychological distress in lung cancer patients. Data on sociodemographic and clinical variables were collected from September 2018 to August 2019. Structural equation model (SEM) was conducted to determine the associations between all factors and psychological distress, and then construct a predictive algorithm. Coincidence rate was also calculated to validate this predictive algorithm.
Total 441 participants sent back validated questionnaires. After performing SEM analysis, educational level ( = 0.151, = 0.004), residence ( = 0.146, = 0.016), metastasis ( = 0.136, = 0.023), pain degree ( = 0.133, = 0.005), family history ( = -0.107, = 0.021), and tumor, node, and metastasis stage ( = -0.236, < 0.001) were independent predictors for psychological distress. The model built with these predictors showed an area under the curve of 0.693. A cutoff of 66 predicted clinically significant psychological distress with a sensitivity, specificity, positive predictive value, and negative predictive value of 65.41%, 66.90%, 28.33%, and 89.67%, respectively. The coincidence rate between predictive algorithm and distress thermometer was 64.63%.
A validated, easy-to-use predictive algorithm was developed in this study, which can be used to identify patients at high risk of psychological distress with moderate accuracy.
肺癌患者报告的心理困扰发生率最高。识别哪些患者有心理困扰的高风险极为重要。本研究旨在开发并验证一种预测算法,以识别有心理困扰高风险的肺癌患者。
这项横断面研究确定了肺癌患者心理困扰的风险因素。于2018年9月至2019年8月收集社会人口统计学和临床变量数据。进行结构方程模型(SEM)以确定所有因素与心理困扰之间的关联,然后构建一种预测算法。还计算了符合率以验证该预测算法。
共有441名参与者返回了有效问卷。进行SEM分析后,教育程度(β = 0.151,P = 0.004)、居住地(β = 0.146,P = 0.016)、转移情况(β = 0.136,P = 0.023)、疼痛程度(β = 0.133,P = 0.005)、家族史(β = -0.107,P = 0.021)以及肿瘤、淋巴结和转移分期(β = -0.236,P < 0.001)是心理困扰的独立预测因素。用这些预测因素构建的模型曲线下面积为0.693。截断值为66时预测具有临床意义的心理困扰,其灵敏度、特异度、阳性预测值和阴性预测值分别为65.41%、66.90%、28.33%和89.67%。预测算法与困扰温度计之间的符合率为64.63%。
本研究开发了一种经过验证且易于使用的预测算法,可用于以中等准确度识别有心理困扰高风险的患者。