ONCOPILOT: A Promptable CT Foundation Model For Solid Tumor Evaluation
L\'eo Machado, H\'el\`ene Philippe, \'Elodie Ferreres, Julien Khlaut, Julie Dupuis, Korentin Le Floch, Denis Habip Gatenyo, Pascal Roux, Jules Gr\'egory, Maxime Ronot, Corentin Dancette, Tom Boeken, Daniel Tordjman, Pierre Manceron, Paul H\'erent

TL;DR
ONCOPILOT is a versatile, promptable CT foundation model that enhances tumor segmentation accuracy, accelerates measurements, and integrates seamlessly into clinical workflows, surpassing existing models and aiding in better cancer assessment.
Contribution
The paper introduces ONCOPILOT, a novel foundation model trained on diverse CT scans that achieves radiologist-level tumor measurement accuracy with interactive prompts.
Findings
Outperforms state-of-the-art models like nnUnet in tumor segmentation.
Achieves radiologist-level accuracy in RECIST 1.1 measurements.
Reduces inter-reader variability and speeds up measurement processes.
Abstract
Carcinogenesis is a proteiform phenomenon, with tumors emerging in various locations and displaying complex, diverse shapes. At the crucial intersection of research and clinical practice, it demands precise and flexible assessment. However, current biomarkers, such as RECIST 1.1's long and short axis measurements, fall short of capturing this complexity, offering an approximate estimate of tumor burden and a simplistic representation of a more intricate process. Additionally, existing supervised AI models face challenges in addressing the variability in tumor presentations, limiting their clinical utility. These limitations arise from the scarcity of annotations and the models' focus on narrowly defined tasks. To address these challenges, we developed ONCOPILOT, an interactive radiological foundation model trained on approximately 7,500 CT scans covering the whole body, from both…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging
MethodsFocus
