Skip to content
GCC AI Research

Search

Results for "MICCAI 2025"

New approach for better AI analysis of medical images presented at MICCAI

MBZUAI ·

MBZUAI researchers developed a new approach called Multimodal Optimal Transport via Grounded Retrieval (MOTOR) to improve the accuracy of vision-language models for medical image analysis. MOTOR combines retrieval-augmented generation (RAG) with an optimal transport algorithm to retrieve and rank relevant image and textual data. Testing on two medical datasets showed that MOTOR improved average performance by 6.45%. Why it matters: This technique addresses the challenges of limited specialized medical datasets and computational costs associated with training AI models for medical image interpretation, offering a more efficient and accurate solution.

MBZUAI to showcase assistive AI technologies at GITEX 2025

MBZUAI ·

MBZUAI will present two assistive AI prototypes at GITEX 2025: smart glasses with a camera and eye tracker that identify objects and medication, and a brain-computer interface (BCI) device integrated with robotics to control a robotic dog's movements. The smart glasses use a multimodal large language model (LLM) to help visually impaired individuals, while the BCI aims to restore hands-free communication for people with mobility limitations. Hisham Cholakkal leads the research team, which received a Meta Regional Research Grant 2025 for its work on multimodal LLM for smart wearables. Why it matters: The research demonstrates the potential of AI to improve the quality of life for vulnerable populations and addresses the challenge of providing cost-effective care for aging societies.

MBZUAI students shine at MICCAI

MBZUAI ·

MBZUAI faculty, researchers, and students presented eight academic papers at the 25th International Conference on Medical Image Computing and Computer Assisted Intervention (MICCAI 2022) in Singapore. Seven of the accepted papers feature a master’s or doctoral student as first author. The papers are the outcome of two MBZUAI faculty led labs – BioMedical Image Analysis (BioMedIA) lab and SPriNT-AI. Why it matters: This highlights MBZUAI's growing prominence in medical image analysis and AI, showcasing the university's commitment to producing high-quality research and fostering young talent in the field.

Continual Learning in Medical Imaging: A Survey and Practical Analysis

arXiv ·

This survey paper reviews recent literature on continual learning in medical imaging, addressing challenges like catastrophic forgetting and distribution shifts. It covers classification, segmentation, detection, and other tasks, while providing a taxonomy of studies and identifying challenges. The authors also maintain a GitHub repository to keep the survey up-to-date with the latest research.

Adapting foundation models for medical image segmentation: a new approach presented at MICCAI

MBZUAI ·

MBZUAI researchers developed a method to adapt Meta's Segment Anything Model (SAM) for medical image segmentation, addressing its performance gap with natural images. Their approach improves SAM's accuracy without requiring extensive retraining or large medical image datasets. The research, led by Chao Qin, was nominated for the Best Paper Award at the MICCAI conference in Marrakesh. Why it matters: This offers a more efficient and effective way to leverage foundation models in specialized medical imaging applications, potentially improving diagnostic accuracy and reducing the need for large-scale, domain-specific training data.

Augmented Humans 2025: Advancing Human Potential at MBZUAI

MBZUAI ·

The Augmented Humans International Conference 2025 (AHs) was held at MBZUAI in Abu Dhabi, focusing on technology's role in advancing human capabilities. The conference, in cooperation with ACM, attracted over 180 researchers to discuss innovations from AI-enhanced storytelling to AI-enhanced prosthetics. The program included talks, papers, posters, demonstrations, and workshops on topics like AR/VR interaction, bionic systems, and cognitive augmentation with AI. Why it matters: Hosting AHs at MBZUAI highlights the UAE's growing role as a hub for AI research and its applications in enhancing human potential.

Medical Image Computing: Harvesting the Healing Power of AI and Domain Knowledg

MBZUAI ·

MBZUAI hosted a panel discussion in collaboration with the Manara Center for Coexistence and Dialogue. The discussion focused on the intersection of AI and medical image computing. Jiebo Luo, a professor at the University of Rochester, discussed his work on applying AI to healthcare, including moving beyond classification to semantic description and expanding use from hospitals to home telemedicine. Why it matters: This highlights the increasing focus on AI applications in healthcare within the Middle East, particularly at institutions like MBZUAI, which are fostering discussions on the ethical and practical implications of AI in medicine.

MBZUAI to showcase AI innovation at Machines Can See 2025 with expert speakers and live demos

MBZUAI ·

MBZUAI will participate as an official partner at Machines Can See 2025 (MCS 2025) during Dubai AI Week, showcasing AI innovation with expert speakers and live demos. MBZUAI will present BiMediX2, a multimodal virtual assistant that answers medical questions in Arabic and English and won Meta’s Llama Impact Innovation Award. They will also demonstrate Voodoo XP, a one-shot face re-enactment tool, and LAIKA, an AI-powered robot dog. Why it matters: This event highlights MBZUAI's contributions to AI and robotics, strengthening the UAE's position as a leader in science and technology, especially in healthcare and advanced robotics.