Accurate prediction of disease-risk factors from volumetric medical scans by a deep vision model pre-trained with 2D scans

Oren Avram*, Berkin Durmus, Nadav Rakocz, Giulia Corradetti, Ulzee An, Muneeswar G. Nittala, Prerit Terway, Akos Rudas, Zeyuan Johnson Chen, Yu Wakatsuki, Kazutaka Hirabayashi, Swetha Velaga, Liran Tiosano, Federico Corvi, Aditya Verma, Ayesha Karamat, Sophiana Lindenberg, Deniz Oncel, Louay Almidani, Victoria HullSohaib Fasih-Ahmad, Houri Esmaeilkhanian, Maxime Cannesson, Charles C. Wykoff, Elior Rahmani, Corey W. Arnold, Bolei Zhou, Noah Zaitlen, Ilan Gronau, Sriram Sankararaman, Jeffrey N. Chiang, Srinivas R. Sadda*, Eran Halperin*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

The application of machine learning to tasks involving volumetric biomedical imaging is constrained by the limited availability of annotated datasets of three-dimensional (3D) scans for model training. Here we report a deep-learning model pre-trained on 2D scans (for which annotated data are relatively abundant) that accurately predicts disease-risk factors from 3D medical-scan modalities. The model, which we named SLIViT (for ‘slice integration by vision transformer’), preprocesses a given volumetric scan into 2D images, extracts their feature map and integrates it into a single prediction. We evaluated the model in eight different learning tasks, including classification and regression for six datasets involving four volumetric imaging modalities (computed tomography, magnetic resonance imaging, optical coherence tomography and ultrasound). SLIViT consistently outperformed domain-specific state-of-the-art models and was typically as accurate as clinical specialists who had spent considerable time manually annotating the analysed scans. Automating diagnosis tasks involving volumetric scans may save valuable clinician hours, reduce data acquisition costs and duration, and help expedite medical research and clinical applications.

Original languageEnglish
JournalNature Biomedical Engineering
DOIs
StateAccepted/In press - 2024
Externally publishedYes

Funding

FundersFunder number
Research to Prevent Blindness
University of California, Los Angeles
National Institutes of Health
National Institute of General Medical Sciences5R25GM135043
National Institute of Biomedical Imaging and BioengineeringR01EB035028
National Eye InstituteR01EY023164, 1R01EY030614

    Fingerprint

    Dive into the research topics of 'Accurate prediction of disease-risk factors from volumetric medical scans by a deep vision model pre-trained with 2D scans'. Together they form a unique fingerprint.

    Cite this