Deep Learning-Based Model Enables Fast and Accurate Stroke Risk Prediction

Stroke is the second leading cause of death globally. Ischemic stroke, strongly linked to atherosclerotic plaques, requires accurate plaque and vessel wall segmentation and quantification for definitive diagnosis. However, conventional manual segmentation remains time-consuming and operator-dependent, whereas current computer-aided tools fall short in achieving the accuracy required for clinical applications. These technological bottlenecks severely hamper precise diagnosis and treatment of ischemic stroke.

In a study published in European Radiology, a research team led by Dr. ZHANG Na from the Shenzhen Institutes of Advanced Technology (SIAT) of Chinese Academy of Sciences, along with collaborators, has developed a fully learnable parameter based multi-task segmentation model and a structure-guided, two-stage small-target segmentation method based on high-resolution magnetic resonance (MR) vessel wall imaging. This approach enables automated and accurate segmentation and quantitative analysis of carotid arterial vessel lumens, vessel walls, and plaques, offering a reliable AI-assisted diagnostic tool for clinical risk assessment of ischemic stroke.

In this study, the proposed method consists of two key steps. The first step involves constructing a purely learning-based convolutional neural network (CNN), named Vessel-SegNet, to segment the lumen and vessel wall. The second step leverages vessel wall priors - specifically, manual priors and Tversky-loss-based automatic priors - to improve plaque segmentation by utilizing the morphological similarity between the vessel wall and atherosclerotic plaque.

This study included data from 193 patients with atherosclerotic plaque across five centers, all of whom underwent T1-weighted magnetic resonance imaging (MRI) scanning. The dataset was divided into three subsets: 107 patients for training and validation, 39 for internal testing, and 47 for external testing.

Experimental results demonstrated that most Dice similarity coefficients (DSC) for lumen and vessel wall segmentation exceeded 90%. The incorporation of vessel wall priors improved the DSC for plaque segmentation by over 10%, achieving 88.45%. Furthermore, compared to Dice-loss-based priors, Tversky-loss-based priors further enhanced the DSC by nearly 3%, reaching 82.84%.

In contrast to manual methods, the proposed technique provides accurate, automated plaque segmentation and completes quantitative plaque characteristic assessment for a single patient in under 3 seconds.

"The goal of our research is to leverage AI models to produce accurate, reproducible, and clinically relevant quantitative outcomes, which can assist healthcare professionals in stroke diagnosis and therapeutic decision-making," explained Dr. ZHANG.

Dr. ZHANG added, "In the future, we will need to conduct additional studies using other equipment, populations, and anatomical analyses to further validate the reliability of the research results."

Yang L, Yang X, Gong Z, Mao Y, Lu SS, Zhu C, Wan L, Huang J, Mohd Noor MH, Wu K, Li C, Cheng G, Li Y, Liang D, Liu X, Zheng H, Hu Z, Zhang N.
Deep learning-based automatic segmentation of arterial vessel walls and plaques in MR vessel wall images for quantitative assessment.
Eur Radiol. 2025 Jun 3. doi: 10.1007/s00330-025-11697-9

Most Popular Now

AI-Powered CRISPR could Lead to Faster G…

Stanford Medicine researchers have developed an artificial intelligence (AI) tool to help scientists better plan gene-editing experiments. The technology, CRISPR-GPT, acts as a gene-editing “copilot” supported by AI to help...

Groundbreaking AI Aims to Speed Lifesavi…

To solve a problem, we have to see it clearly. Whether it’s an infection by a novel virus or memory-stealing plaques forming in the brains of Alzheimer’s patients, visualizing disease processes...

AI Spots Hidden Signs of Depression in S…

Depression is one of the most common mental health challenges, but its early signs are often overlooked. It is often linked to reduced facial expressivity. However, whether mild depression or...

AI Tools Help Predict Severe Asthma Risk…

Mayo Clinic researchers have developed artificial intelligence (AI) tools that help identify which children with asthma face the highest risk of serious asthma exacerbation and acute respiratory infections. The study...

AI Model Forecasts Disease Risk Decades …

Imagine a future where your medical history could help predict what health conditions you might face in the next two decades. Researchers have developed a generative AI model that uses...

AI Model Indicates Four out of Ten Breas…

A project at Lund University in Sweden has trained an AI model to identify breast cancer patients who could be spared from axillary surgery. The model analyses previously unutilised information...

ChatGPT 4o Therapeutic Chatbot 'Ama…

One of the first randomized controlled trials assessing the effectiveness of a large language model (LLM) chatbot 'Amanda' for relationship support shows that a single session of chatbot therapy...

AI Distinguishes Glioblastoma from Look-…

A Harvard Medical School–led research team has developed an AI tool that can reliably tell apart two look-alike cancers found in the brain but with different origins, behaviors, and treatments. The...

Smart Device Uses AI and Bioelectronics …

As a wound heals, it goes through several stages: clotting to stop bleeding, immune system response, scabbing, and scarring. A wearable device called "a-Heal," designed by engineers at the University...

Overcoming the AI Applicability Crisis a…

Opinion Article by Harry Lykostratis, Chief Executive, Open Medical. The government’s 10 Year Health Plan makes a lot of the potential of AI-software to support clinical decision making, improve productivity, and...

Dartford and Gravesham Implements Clinis…

Dartford and Gravesham NHS Trust has taken a significant step towards a more digital future by rolling out electronic test ordering using Clinisys ICE. The trust deployed the order communications...