Multi-source data approach for personalized outcome prediction in lung cancer screening: update from the NELSON trial

Publication date

2023-04

Authors

Sidorenkov, Grigory
Stadhouders, Ralph
Jacobs, Colin
Hoesein, Firdaus A. A. MohamedISNI 0000000387296109
Gietema, Hester A.
Nackaerts, Kristiaan
Saghir, Zaigham
Heuvelmans, Marjolein A.
Donker, Hylke C.
Aerts, Joachim G.

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Supervisors

Document Type

Article

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cc_by

Abstract

Trials show that low-dose computed tomography (CT) lung cancer screening in long-term (ex-)smokers reduces lung cancer mortality. However, many individuals were exposed to unnecessary diagnostic procedures. This project aims to improve the efficiency of lung cancer screening by identifying high-risk participants, and improving risk discrimination for nodules. This study is an extension of the Dutch-Belgian Randomized Lung Cancer Screening Trial, with a focus on personalized outcome prediction (NELSON-POP). New data will be added on genetics, air pollution, malignancy risk for lung nodules, and CT biomarkers beyond lung nodules (emphysema, coronary calcification, bone density, vertebral height and body composition). The roles of polygenic risk scores and air pollution in screen-detected lung cancer diagnosis and survival will be established. The association between the AI-based nodule malignancy score and lung cancer will be evaluated at baseline and incident screening rounds. The association of chest CT imaging biomarkers with outcomes will be established. Based on these results, multisource prediction models for pre-screening and post-baseline-screening participant selection and nodule management will be developed. The new models will be externally validated. We hypothesize that we can identify 15–20% participants with low-risk of lung cancer or short life expectancy and thus prevent ~140,000 Dutch individuals from being screened unnecessarily. We hypothesize that our models will improve the specificity of nodule management by 10% without loss of sensitivity as compared to assessment of nodule size/growth alone, and reduce unnecessary work-up by 40–50%.

Keywords

CT screening, Imaging biomarkers, Lung cancer, Lung nodules, Prediction model, Epidemiology

Citation

Sidorenkov, G, Stadhouders, R, Jacobs, C, Mohamed Hoesein, F A A, Gietema, H A, Nackaerts, K, Saghir, Z, Heuvelmans, M A, Donker, H C, Aerts, J G, Vermeulen, R, Uitterlinden, A, Lenters, V, van Rooij, J, Schaefer-Prokop, C, Groen, H J M, de Jong, P A, Cornelissen, R, Prokop, M, de Bock, G H & Vliegenthart, R 2023, 'Multi-source data approach for personalized outcome prediction in lung cancer screening : update from the NELSON trial', European Journal of Epidemiology, vol. 38, no. 4, pp. 445-454. https://doi.org/10.1007/s10654-023-00975-9