Telomere-based risk models for the early diagnosis of lung cancer
Sonia Molina-Pinelo,
Irene Ferrer Sánchez,
Pilar Najarro,
Luis Paz-Ares,
Luis Fernández,
Nila Castelló,
Luis Alberto Richart López,
Juan Diego Rodríguez Gambarte,
Máximo Sanz García,
Ana Salinas,
Rocío Suárez,
Beatriz Romero-Romero,
José Martín-Juan,
María Eugenia Viñuela,
Ray G. Butler,
Nuria de Pedro
Affiliations
Sonia Molina-Pinelo
Department de Medical Oncology, University Hospital Virgen del Rocío, Sevilla, Spain; Institute of Biomedicine de Seville (CSIC), University of Seville, Seville, Spain; Spanish Center for Biomedical Research Network in Oncology (CIBERONC), Madrid, Spain
Irene Ferrer Sánchez
Spanish Center for Biomedical Research Network in Oncology (CIBERONC), Madrid, Spain; H12O-CNIO Lung Cancer Clinical Research Unit, Health Research Institute Hospital 12 de Octubre (i+12)/Spanish National Cancer Research Center (CNIO), Madrid, Spain
Pilar Najarro
Life Length SL, Madrid, Spain
Luis Paz-Ares
Spanish Center for Biomedical Research Network in Oncology (CIBERONC), Madrid, Spain; Department of Medical Oncology, Hospital Universitario 12 de octubre, Madrid, Spain
Luis Fernández
Life Length SL, Madrid, Spain
Nila Castelló
Life Length SL, Madrid, Spain
Luis Alberto Richart López
Centro de Transfusión de la Comunidad de Madrid, Madrid, Spain
Juan Diego Rodríguez Gambarte
Centro de Transfusión de la Comunidad de Madrid, Madrid, Spain
Máximo Sanz García
Department of Anaesthesiology, Hospital Universitario Príncipe de Asturias, Alcalá de Henares, Spain
Ana Salinas
Department de Medical Oncology, University Hospital Virgen del Rocío, Sevilla, Spain; Institute of Biomedicine de Seville (CSIC), University of Seville, Seville, Spain
Rocío Suárez
Spanish Center for Biomedical Research Network in Oncology (CIBERONC), Madrid, Spain; H12O-CNIO Lung Cancer Clinical Research Unit, Health Research Institute Hospital 12 de Octubre (i+12)/Spanish National Cancer Research Center (CNIO), Madrid, Spain
Beatriz Romero-Romero
Department of Pneumology, University Hospital Virgen del Rocio, Seville, Spain
José Martín-Juan
Department of Pneumology, University Hospital Virgen del Rocio, Seville, Spain
María Eugenia Viñuela
Department of Pneumology, University Hospital Virgen del Rocio, Seville, Spain
Ray G. Butler
Butler Scientifics, Barcelona, Spain
Nuria de Pedro
Life Length SL, Madrid, Spain; Corresponding author.
Background: The objective of this study was to evaluate the use of telomere length measurements as diagnostic biomarkers during early screening for lung cancer in high-risk patients. Methods: This was a prospective study of patients undergoing lung cancer diagnosis at two Spanish hospitals between April 2017 and January 2020. Telomeres from peripheral blood lymphocytes were analysed by Telomere Analysis Technology, which is based in high-throughput quantitative fluorescent in situ hybridization. Analytical predictive models were developed using Random Forest from the dataset of telomere-associated variables (TAV). Receiver Operating Characteristic curves were used to characterize model performance. Findings: From 233 patients undergoing lung cancer diagnosis, 106 patients aged 55–75 with lung cancer or lung cancer and COPD were selected. A control group (N = 453) included individuals of similar age with COPD or healthy. Telomere analysis showed that patients in the cancer cohort had a higher proportion of short telomeres compared to the control cohort. A TAV-based predictive model assuming a prevalence of 5 % of lung cancer among screened subjects showed an AUC of 0.98 %, a positive predictive value of 0.60 (95 % CI, 0.49–0.70) and a negative predictive value of 0.99 (95 % CI, 0.98–0.99) for prediction of lung cancer. Interpretation: The results of this study suggest that TAV analysis in peripheral lymphocytes can be considered a useful diagnostic tool during screening for lung cancer in high-risk patients. TAV-based models could improve the predictive power of current initial diagnostic pathways, but further work is needed to integrate them into routine clinical evaluation. Funding: Life Length SL.