Sepoy-logo
No Result
View All Result
Thursday, September 28, 2023
  • Home
  • News
  • Business
  • Health
  • Tech
  • Lifestyle
  • Economy
  • Crypto
  • Travel
  • Home
  • News
  • Business
  • Health
  • Tech
  • Lifestyle
  • Economy
  • Crypto
  • Travel
No Result
View All Result
SEPOY.NET
No Result
View All Result
Home Health

Novel geometric deep learning model improves stroke lesion segmentation

Nicholas by Nicholas
July 18, 2023
in Health
0
Novel geometric deep learning model improves stroke lesion segmentation

Ischemic stroke, which occurs when a blood vessel in the brain gets blocked by a clot, is among the leading causes of death worldwide. Fortunately, surgeons now have access to advanced imaging techniques that allow them to visualize the interior of a patient’s brain during a stroke. This helps them pinpoint the location of the clot and analyze the extent of damage to the brain tissue.

Computed tomography-perfusion (CT-P) is one of the most useful imaging modalities in the early stages of an acute stroke. However, it is challenging to accurately identify segmentation-;the outline of stroke lesions-;in a CT-P scan, and the final diagnosis depends greatly on the surgeon’s expertise and ability. To address this issue, scientists have come up with various machine learning models that perform automatic segmentation of CT-P scans. Unfortunately, none of them has reached a level of performance suitable for clinical applications.

Against this backdrop, a team of researchers from Germany recently developed a new segmentation algorithm for stroke lesions. As reported in their study published in the Journal of Medical Imaging, the team built a geometric deep learning model called “Graph Fully-Convolutional Network” (GFCN). The internal operations performed by their geometric algorithm differ fundamentally from those of the more widely used Euclidean models. In their study, the researchers explored the benefits and limitations of this alternative approach.

A key advantage of the proposed model is that it can better learn and preserve important features inherent to brain topology. By using a graph-based neural network, the algorithm can detect complex inter-pixel relationships from different angles. This, in turn, enables it to detect stroke lesions more accurately.

In addition, the team adopted “pooling” and “unpooling” blocks in their network structure. Put simply, the pooling operations, also called “downsampling,” reduce the overall size of the feature maps extracted by the network from input images. This reduces the computational complexity of the algorithm, enabling the model to extract the most salient features of the CT-P scans. In contrast, the unpooling operations (or “upsampling”) revert the pooling operations to help properly localize the detected features in the original image based on contextual cues. By combining these two operations, the network structure can extract richer geometric information.

The team conducted a series of analyses to determine the effect of each component of GFCN on its segmentation performance. They then compared the performance of the proposed algorithm against the state-of-the-art models, all trained using the same public dataset. Interestingly, although their model used basic unpooling techniques and a simple input configuration, it performed better than the conventional models under most conditions.

Notably, GFCN-8s, with three pooling layers and eight-fold upsampling, achieved a Dice coefficient score-;a metric indicating the overlap between the predicted and actual lesion areas-;of 0.4553, which is significantly higher than other models. Moreover, the proposed model could adapt to irregular segmentation boundaries better than the state-of-the-art models.

Overall, the findings of this study showcase the potential of geometric deep learning for segmentation problems in medical imaging. Further research on similar strategies could pave the way for highly accurate models for automatic stroke diagnosis that could improve patient outcomes and save lives.

Source:

SPIE–International Society for Optics and Photonics

Journal reference:

Iporre-Rivas, A., et al. (2023) Stroke-GFCN: ischemic stroke lesion prediction with a fully convolutional graph network. Journal of Medical Imaging. doi.org/10.1117/1.JMI.10.4.044502.

READ ALSO

Canadian adults with cannabis use disorder appear to have 60% higher risk of cardiovascular diseases

Examining the cardiac pathology in fatal cases of yellow fever

Tags: BloodBlood VesselBrainComputed TomographyCTDeep LearningImagingImaging TechniquesIschemic StrokeMedical ImagingStrokeTomography

Related Posts

Canadian adults with cannabis use disorder appear to have  60% higher risk of cardiovascular diseases
Health

Canadian adults with cannabis use disorder appear to have 60% higher risk of cardiovascular diseases

September 28, 2023
Examining the cardiac pathology in fatal cases of yellow fever
Health

Examining the cardiac pathology in fatal cases of yellow fever

September 28, 2023
Can AI outperform radiologists in detecting lung issues? New study weighs in
Health

Can AI outperform radiologists in detecting lung issues? New study weighs in

September 28, 2023
Greater PTSD symptoms lead to worse sexual functioning among midlife women
Health

Greater PTSD symptoms lead to worse sexual functioning among midlife women

September 28, 2023
UKHSA donates advanced genomic surveillance equipment to CARPHA
Health

UKHSA donates advanced genomic surveillance equipment to CARPHA

September 27, 2023
Zoonotic spillover safeguarding: computationally designed antigen targets range of coronaviruses
Health

Zoonotic spillover safeguarding: computationally designed antigen targets range of coronaviruses

September 27, 2023
Next Post
Study reveals molecular mechanisms of H. pylori-induced gastric carcinogenesis

Study reveals molecular mechanisms of H. pylori-induced gastric carcinogenesis

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

POPULAR NEWS

Roblox Is Unbreakable Trello Is this safe?

Roblox Is Unbreakable Trello Is this safe?

November 4, 2022
Discord Registered Games  Discord Registered Gaming You need to join the Club

Discord Registered Games Discord Registered Gaming You need to join the Club

November 4, 2022
How To Chose the Right Data Analytics Program

How To Chose the Right Data Analytics Program

November 4, 2022
Heavy explosion on market square in Halle – three injured

Heavy explosion on market square in Halle – three injured

November 4, 2022

Shivon Zilis Wiki, Height, Age, Boyfriend, Husband, Family, Biography & More

July 11, 2022

EDITOR'S PICK

Prior COVID Won't Shield Kids From Omicron, But Vaccine Might

June 3, 2022
Rugged Computers – A Boon for Healthcare Industry

Rugged Computers – A Boon for Healthcare Industry

November 5, 2022
CPAC Conference: Trump’s World

CPAC Conference: Trump’s World

March 5, 2023
IM Checklist V66 Becoming A Freelancer Review👈 Price & OTOs + Exclusive 3,000 Bonuses

IM Checklist V66 Becoming A Freelancer Review👈 Price & OTOs + Exclusive 3,000 Bonuses

June 1, 2023

About

Sepoy.net is a perfect place for people who want daily updates on news related to business, technology, entertainment, health, cryptocurrency etc.

Contact: [email protected]

Major Categories

News

Business

Tech

Economy

 

Recent Posts

  • Astronaut Frank Rubio: Am längsten im All
  • Why you might need a diversity, equity and inclusion partner
  • Le Web3 s'invite au cinéma : le nouvel Exorciste sort en partenariat avec la blockchain Aptos (APT)

Pages

  • About Us
  • Contact Us
  • Disclaimer
  • DMCA
  • Home
  • Privacy Policy

© 2023 Sepoy.net

No Result
View All Result
  • Home
  • Business
  • News
  • Health
  • Tech
  • Science
  • Lifestyle
  • Travel

© 2023 Sepoy.net

x