| Literature DB >> 36038778 |
Rami S Vanguri1, Jia Luo2, Andrew T Aukerman1, Jacklynn V Egger3, Christopher J Fong1, Natally Horvat4, Andrew Pagano4, Jose de Arimateia Batista Araujo-Filho4, Luke Geneslaw5, Hira Rizvi2, Ramon Sosa4, Kevin M Boehm1,6, Soo-Ryum Yang5, Francis M Bodd5, Katia Ventura5, Travis J Hollmann5,7, Michelle S Ginsberg4, Jianjiong Gao1,8, Matthew D Hellmann2,7, Jennifer L Sauter9, Sohrab P Shah10.
Abstract
Immunotherapy is used to treat almost all patients with advanced non-small cell lung cancer (NSCLC); however, identifying robust predictive biomarkers remains challenging. Here we show the predictive capacity of integrating medical imaging, histopathologic and genomic features to predict immunotherapy response using a cohort of 247 patients with advanced NSCLC with multimodal baseline data obtained during diagnostic clinical workup, including computed tomography scan images, digitized programmed death ligand-1 immunohistochemistry slides and known outcomes to immunotherapy. Using domain expert annotations, we developed a computational workflow to extract patient-level features and used a machine-learning approach to integrate multimodal features into a risk prediction model. Our multimodal model (area under the curve (AUC) = 0.80, 95% confidence interval (CI) 0.74-0.86) outperformed unimodal measures, including tumor mutational burden (AUC = 0.61, 95% CI 0.52-0.70) and programmed death ligand-1 immunohistochemistry score (AUC = 0.73, 95% CI 0.65-0.81). Our study therefore provides a quantitative rationale for using multimodal features to improve prediction of immunotherapy response in patients with NSCLC using expert-guided machine learning.Entities:
Year: 2022 PMID: 36038778 PMCID: PMC9586871 DOI: 10.1038/s43018-022-00416-8
Source DB: PubMed Journal: Nat Cancer ISSN: 2662-1347