CVMar 6

GreenRFM: Toward a resource-efficient radiology foundation model

arXiv:2603.06467v11 citations
Predicted impact top 11% in CV · last 90 daysOriginality Highly original
AI Analysis

This work addresses the problem of high computational cost and brittleness in radiology foundation models, making state-of-the-art RFM development more accessible for clinicians and researchers with limited resources.

The authors developed GreenRFM, a resource-efficient pre-training framework for radiology foundation models (RFMs), which achieves state-of-the-art performance while significantly reducing computational requirements. One configuration establishes a new SOTA using a single 24GB GPU within 24 hours, and a lightweight model matches existing benchmarks with 6GB VRAM in 4 hours.

The development of radiology foundation models (RFMs) is hindered by a reliance on brute-force scaling. Existing approaches often directly translate methods for natural images, which prioritize scale over precision and hence lead to brittle and expensive models in clinical practice. To address this, we present a resource-efficient pre-training framework, GreenRFM, that achieves state-of-the-art performance. Our framework ensures robust generalization across diverse patient populations and imaging protocols, reducing computational requirements by orders of magnitude while surpassing complex, parameter-heavy models. These capabilities stem from principled supervision design that aims to maximally utilize supervisory signals via More distilled, Ubiquitous, Semantic-enforcing, and Task-aligning (MUST) supervision, rather than simply piling up the quantity of training data. We offer two GreenRFM configurations: (i) a performant model that establishes a new state-of-the-art using a single 24GB GPU within 24 hours, and (ii) a lightweight model that matches existing benchmarks with 6GB VRAM in 4 hours. We conduct extensive experiments using over 200,000 images from four institutions and of two modalities. GreenRFMs achieve superior performances on chest and abdominal CT datasets, regardless of public or private benchmark, surpassing a range of baseline models. In addition, the results on internal musculoskeletal MRI images show that the same supervision principles transfer between different modalities. Our performance and efficiency challenge the ``scale is all you need'' dogma and democratize the equitable development of state-of-the-art RFMs for clinicians even on a laptop.

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