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TITLE:
Predicting the Risk of Psychological Distress among Lung Cancer Patients: Development and Validation of a Predictive Algorithm Based on Sociodemographic and Clinical Factors - imarina:9218780

URV's Author/s:Jiménez Herrera, María Francisca / Jin, Yan Fei / Tian, Xu
Author, as appears in the article.:Tian X; Jin Y; Tang L; Pi YP; Chen WQ; Jimenez-Herrera M
Author's mail:xu.tian@estudiants.urv.cat
maria.jimenez@urv.cat
Author identifier:0000-0003-2599-3742
Journal publication year:2021
Publication Type:Journal Publications
APA:Tian X; Jin Y; Tang L; Pi YP; Chen WQ; Jimenez-Herrera M (2021). Predicting the Risk of Psychological Distress among Lung Cancer Patients: Development and Validation of a Predictive Algorithm Based on Sociodemographic and Clinical Factors. Asia-Pacific Journal Of Oncology Nursing, 8(4), 403-412. DOI: 10.4103/apjon.apjon-2114
Papper original source:Asia-Pacific Journal Of Oncology Nursing. 8 (4): 403-412
Abstract:Objective: 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. Methods: 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. Results: Total 441 participants sent back validated questionnaires. After performing SEM analysis, educational level (β = 0.151, P = 0.004), residence (β = 0.146, P = 0.016), metastasis (β = 0.136, P = 0.023), pain degree (β = 0.133, P = 0.005), family history (β = -0.107, P = 0.021), and tumor, node, and metastasis stage (β = -0.236, P < 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%. Conclusions: 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.
Article's DOI:10.4103/apjon.apjon-2114
Link to the original source:https://apjon.org/article/S2347-5625(21)00064-0/fulltext
Papper version:info:eu-repo/semantics/publishedVersion
licence for use:https://creativecommons.org/licenses/by/3.0/es/
Department:Infermeria
Licence document URL:https://repositori.urv.cat/ca/proteccio-de-dades/
Thematic Areas:Oncology (nursing)
Oncology
Nursing
Keywords:Structural equation model
Quality-of-life
Psychological distress
Prediction model
Lung neoplasm
women
thermometer
structural equation model
stress
service use
psychological distress
prevalence
prediction model
model
depression
care
anxiety
Entity:Universitat Rovira i Virgili
Record's date:2024-07-27
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