Analyzing diagnostic and treatment wait times for lung cancer Patients: Key insights from a provincial registry study

•Timeliness of care is crucial in lung cancer care.•Survival is not impacted by treatment timing.•Comprehensive evaluation of treatment wait times.•COVID-19 adds complexity to lung cancer care.•Survival analysis, prognostic factors. Lung cancer (LC) remains the leading cause of cancer-related mortal...

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Veröffentlicht in:Lung cancer (Amsterdam, Netherlands) Netherlands), 2024-08, Vol.194, p.107867, Article 107867
Hauptverfasser: Blanco-Villar, Manuel Luis, Expósito-Hernández, José, Navarro-Moreno, Eulalia, López Martín, José María, Mota, Adrián Aparicio, Couñago, Felipe
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container_start_page 107867
container_title Lung cancer (Amsterdam, Netherlands)
container_volume 194
creator Blanco-Villar, Manuel Luis
Expósito-Hernández, José
Navarro-Moreno, Eulalia
López Martín, José María
Mota, Adrián Aparicio
Couñago, Felipe
description •Timeliness of care is crucial in lung cancer care.•Survival is not impacted by treatment timing.•Comprehensive evaluation of treatment wait times.•COVID-19 adds complexity to lung cancer care.•Survival analysis, prognostic factors. Lung cancer (LC) remains the leading cause of cancer-related mortality globally, necessitating timely diagnosis and treatment to improve patient outcomes. This study aimed to evaluate the timeliness of care for LC patients at a public hospital in Almería, Spain, assess adherence to guidelines, and explore associations between timeliness and survival. A retrospective cohort study was conducted, reviewing medical records of LC patients diagnosed between 2019 and 2021. Quality indicators, adapted from prevailing guidelines, facilitated the assessment of care timeliness, with a focus on diagnostic and treatment wait times. Cox regression modeling was employed to explore survival associations, adjusting for covariates including age, performance status, stage, histology, and treatment modalities. Of 539 patients included, most (79.84 %) had initial specialist contact within 7 days, and 82.25 % received diagnosis within 30 days. However, delays were observed in treatment initiation, with surgery experiencing the longest median wait time (78 days). Survival analysis showed no significant difference between shorter and longer diagnostic (HR: 0.87, 95 % CI: 0.62–1.24) or treatment intervals (HR: 1.14, 95 % CI: 0.83–1.58). Multivariate analysis identified age, performance status, stage, histology, and treatment as prognostic factors. This study highlights the importance of timely diagnosis and treatment in improving lung cancer outcomes. Despite achieving diagnostic targets, treatment delays were common, particularly for surgical interventions. These findings underscore the need for enhanced coordination and efficient care pathways to minimize delays, ultimately improving survival rates and quality of life for lung cancer patients. Addressing these issues is crucial for optimizing lung cancer care delivery in the future.
doi_str_mv 10.1016/j.lungcan.2024.107867
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subjects Delays
Lung cancer
Overall Survival
Prognostic factors
Timeliness
Wait times
title Analyzing diagnostic and treatment wait times for lung cancer Patients: Key insights from a provincial registry study
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