Lessons learned from RadiologyNET foundation models for transfer learning in medical radiology.

Publication date: Jul 01, 2025

Deep learning models require large amounts of annotated data, which are hard to obtain in the medical field, as the annotation process is laborious and depends on expert knowledge. This data scarcity hinders a model’s ability to generalise effectively on unseen data, and recently, foundation models pretrained on large datasets have been proposed as a promising solution. RadiologyNET is a custom medical dataset that comprises 1,902,414 medical images covering various body parts and modalities of image acquisition. We used the RadiologyNET dataset to pretrain several popular architectures (ResNet18, ResNet34, ResNet50, VGG16, EfficientNetB3, EfficientNetB4, InceptionV3, DenseNet121, MobileNetV3Small and MobileNetV3Large). We compared the performance of ImageNet and RadiologyNET foundation models against training from randomly initialiased weights on several publicly available medical datasets: (i) Segmentation-LUng Nodule Analysis Challenge, (ii) Regression-RSNA Pediatric Bone Age Challenge, (iii) Binary classification-GRAZPEDWRI-DX and COVID-19 datasets, and (iv) Multiclass classification-Brain Tumor MRI dataset. Our results indicate that RadiologyNET-pretrained models generally perform similarly to ImageNet models, with some advantages in resource-limited settings. However, ImageNet-pretrained models showed competitive performance when fine-tuned on sufficient data. The impact of modality diversity on model performance was tested, with the results varying across tasks, highlighting the importance of aligning pretraining data with downstream applications. Based on our findings, we provide guidelines for using foundation models in medical applications and publicly release our RadiologyNET-pretrained models to support further research and development in the field. The models are available at https://github. com/AIlab-RITEH/RadiologyNET-TL-models .

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Concepts Keywords
Efficientnetb4 Classification
Pretraining COVID-19
Radiology Deep Learning
Scarcity Foundation models
Humans
Model pretraining
Radiology
RadiologyNET
Regression
SARS-CoV-2
Segmentation
Transfer learning

Semantics

Type Source Name
disease IDO process
disease MESH COVID-19
disease MESH Brain Tumor
pathway REACTOME Release
drug DRUGBANK Coenzyme M
disease MESH pneumonia
disease MESH Uncertainty
disease MESH Musculoskeletal abnormality
disease MESH abnormalities
disease MESH dementia
drug DRUGBANK Resiniferatoxin
drug DRUGBANK Spinosad
disease MESH osteopenia
drug DRUGBANK Isoxaflutole
disease MESH infection
disease MESH viral pneumonia
disease MESH glioma
pathway KEGG Glioma
disease MESH meningioma
drug DRUGBANK Phenylbutyric acid
drug DRUGBANK Aspartame
disease IDO quality
drug DRUGBANK Gold
disease IDO role
disease IDO intervention
disease MESH polyp
drug DRUGBANK Flunarizine
drug DRUGBANK Trestolone
pathway REACTOME Reproduction

Original Article

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