Author:
Yu Duo,Kane Michael J.,Koay Eugene J.,Wistuba Ignacio I.,Hobbs Brian P.
Abstract
AbstractThe tumor microenvironment (TME) plays a fundamental role in tumorigenesis, tumor progression, and anti-cancer immunity potential of emerging cancer therapeutics. Understanding inter-patient TME heterogeneity, however, remains a challenge to efficient drug development. This article applies recent advances in machine learning (ML) for survival analysis to a retrospective study of NSCLC patients who received definitive surgical resection and immune pathology following surgery. ML methods are compared for their effectiveness in identifying prognostic subtypes. Six survival models, including Cox regression and five survival machine learning methods, were calibrated and applied to predict survival for NSCLC patients based on PD-L1 expression, CD3 expression, and ten baseline patient characteristics. Prognostic subregions of the biomarker space are delineated for each method using synthetic patient data augmentation and compared between models for overall survival concordance. A total of 423 NSCLC patients (46% female; median age [inter quantile range]: 67 [60–73]) treated with definite surgical resection were included in the study. And 219 (52%) patients experienced events during the observation period consisting of a maximum follow-up of 10 years and median follow up 78 months. The random survival forest (RSF) achieved the highest predictive accuracy, with a C-index of 0.84. The resultant biomarker subtypes demonstrate that patients with high PD-L1 expression combined with low CD3 counts experience higher risk of death within five-years of surgical resection.
Publisher
Springer Science and Business Media LLC
Reference37 articles.
1. Howlader, N. et al. SEER Cancer Statistics Review, 1975–2017 Vol. 4 (National Cancer Institute, 2020).
2. Liao, G. et al. Prognostic role of soluble programmed death ligand 1 in non-small cell lung cancer: A systematic review and meta-analysis. Front. Oncol. 11, 774131 (2021).
3. Tubin, S., Khan, M. K., Gupta, S. & Jeremic, B. Biology of NSCLC: Interplay between cancer cells, radiation and tumor immune microenvironment. Cancers 13, 775 (2021).
4. Barta, J. A., Powell, C. A. & Wisnivesky, J. P. Global epidemiology of lung cancer. Ann. Glob. Health 85, 2419 (2019).
5. Howlader, N. et al. The effect of advances in lung-cancer treatment on population mortality. N. Engl. J. Med. 383, 640–649 (2020).