logo
ResearchBunny Logo
Segment anything in medical images

Medicine and Health

Segment anything in medical images

J. Ma, Y. He, et al.

Discover MedSAM, a groundbreaking foundation model developed by Jun Ma and colleagues, that revolutionizes medical image segmentation, ensuring increased accuracy and reliability across diverse clinical tasks. This model is a game changer, trained on millions of image-mask pairs to significantly enhance diagnosis and treatment!

00:00
00:00
~3 min • Beginner • English
Abstract
Medical image segmentation is a critical component in clinical practice, facilitating accurate diagnosis, treatment planning, and disease monitoring. However, existing methods, often tailored to specific modalities or disease types, lack generalizability across the diverse spectrum of medical image segmentation tasks. Here we present MedSAM, a foundation model designed for bridging this gap by enabling universal medical image segmentation. The model is developed on a large-scale medical image dataset with 1,570,263 image-mask pairs, covering 10 imaging modalities and over 30 cancer types. We conduct a comprehensive evaluation on 86 internal validation tasks and 60 external validation tasks, demonstrating better accuracy and robustness than modality-wise specialist models. By delivering accurate and efficient segmentation across a wide spectrum of tasks, MedSAM holds significant potential to expedite the evolution of diagnostic tools and the personalization of treatment plans.
Publisher
Nature Communications
Published On
Jan 22, 2024
Authors
Jun Ma, Yuting He, Feifei Li, Lin Han, Chenyu You, Bo Wang
Tags
medical image segmentation
generalizability
foundation model
diagnosis
treatment
accuracy
robustness
Listen, Learn & Level Up
Over 10,000 hours of research content in 25+ fields, available in 12+ languages.
No more digging through PDFs, just hit play and absorb the world's latest research in your language, on your time.
listen to research audio papers with researchbunny