Author
Listed:
- Nicolas Captier
(PSL Research University
PSL Research University)
- Marvin Lerousseau
(PSL Research University
PSL Research University)
- Fanny Orlhac
(PSL Research University)
- Narinée Hovhannisyan-Baghdasarian
(PSL Research University)
- Marie Luporsi
(PSL Research University
Institut Curie)
- Erwin Woff
(PSL Research University
Université Libre de Bruxelles)
- Sarah Lagha
(Institut Curie)
- Paulette Salamoun Feghali
(Institut Curie)
- Christine Lonjou
(PSL Research University)
- Clément Beaulaton
(Institut Curie)
- Andrei Zinovyev
(Evotec)
- Hélène Salmon
(PSL Research University)
- Thomas Walter
(PSL Research University
PSL Research University)
- Irène Buvat
(PSL Research University)
- Nicolas Girard
(Institut Curie)
- Emmanuel Barillot
(PSL Research University)
Abstract
Immunotherapy is improving the survival of patients with metastatic non-small cell lung cancer (NSCLC), yet reliable biomarkers are needed to identify responders prospectively and optimize patient care. In this study, we explore the benefits of multimodal approaches to predict immunotherapy outcome using multiple machine learning algorithms and integration strategies. We analyze baseline multimodal data from a cohort of 317 metastatic NSCLC patients treated with first-line immunotherapy, including positron emission tomography images, digitized pathological slides, bulk transcriptomic profiles, and clinical information. Testing multiple integration strategies, most of them yield multimodal models surpassing both the best unimodal models and established univariate biomarkers, such as PD-L1 expression. Additionally, several multimodal combinations demonstrate improved patient risk stratification compared to models built with routine clinical features only. Our study thus provides evidence of the superiority of multimodal over unimodal approaches, advocating for the collection of large multimodal NSCLC datasets to develop and validate robust and powerful immunotherapy biomarkers.
Suggested Citation
Nicolas Captier & Marvin Lerousseau & Fanny Orlhac & Narinée Hovhannisyan-Baghdasarian & Marie Luporsi & Erwin Woff & Sarah Lagha & Paulette Salamoun Feghali & Christine Lonjou & Clément Beaulaton & A, 2025.
"Integration of clinical, pathological, radiological, and transcriptomic data improves prediction for first-line immunotherapy outcome in metastatic non-small cell lung cancer,"
Nature Communications, Nature, vol. 16(1), pages 1-19, December.
Handle:
RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-55847-5
DOI: 10.1038/s41467-025-55847-5
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