Jove
Visualize
Contact Us
JoVE
x logofacebook logolinkedin logoyoutube logo
ABOUT JoVE
OverviewLeadershipBlogJoVE Help Center
AUTHORS
Publishing ProcessEditorial BoardScope & PoliciesPeer ReviewFAQSubmit
LIBRARIANS
TestimonialsSubscriptionsAccessResourcesLibrary Advisory BoardFAQ
RESEARCH
JoVE JournalMethods CollectionsJoVE Encyclopedia of ExperimentsArchive
EDUCATION
JoVE CoreJoVE BusinessJoVE Science EducationJoVE Lab ManualFaculty Resource CenterFaculty Site
Terms & Conditions of Use
Privacy Policy
Policies

Related Concept Videos

You might also read

Related Articles

Articles linked to this work by shared authors, journal, and citation graph.

Sort by
Same author

MultiRetNet: A Lightweight Explainable AI Approach to Diabetic Retinopathy Grading and DME Detection Using Fundus-OCT Fusion.

Journal of imaging·2026
Same author

Reconfiguring brain networks via lightweight dynamic connectivity framework: An EEG-based stress validation.

Computers in biology and medicine·2026
Same author

Artificial intelligence potential in ovarian endometriosis imaging: a comparative meta-analysis of transvaginal ultrasound-based AI models and human readers.

Abdominal radiology (New York)·2026
Same author

Uncertainty quantification-based DMEFNet for reliable modelling of heart sound signals.

Scientific reports·2026
Same author

Impact of Pollution on Mental Health: A Systematic Review of Associations, Methodological Challenges, and Future Directions.

Health science reports·2026
Same author

LymphUs: A multicenter open-access database of lymph node ultrasound images in patients with papillary thyroid carcinoma for clinical and artificial intelligence research.

Data in brief·2026
Same journal

A computational model of chemically- and mechanically-induced thrombus formation in cerebral aneurysms.

Computers in biology and medicine·2026
Same journal

An improved catch fish optimization based deep learning model for Parkinson disease classification using EEG signal.

Computers in biology and medicine·2026
Same journal

Assessing the robustness of evaluation metrics for synthetic ECG signal quality.

Computers in biology and medicine·2026
Same journal

Integrating stemness and epithelial-mesenchymal transition signatures with machine learning identifies RUNX1 as a therapeutic vulnerability in colorectal cancer.

Computers in biology and medicine·2026
Same journal

Differential regional textural attributes of tongue in normal and acidity patients in the light of traditional Chinese medicine.

Computers in biology and medicine·2026
Same journal

SC-MSDNet: Spatial-consistent multi-view self-distillation for retinal OCT classification.

Computers in biology and medicine·2026
See all related articles

Related Experiment Video

Updated: Aug 23, 2025

Application of Deep Learning-Based Medical Image Segmentation via Orbital Computed Tomography
04:48

Application of Deep Learning-Based Medical Image Segmentation via Orbital Computed Tomography

Published on: November 30, 2022

2.9K

Explainable multi-module semantic guided attention based network for medical image segmentation.

Meghana Karri1, Chandra Sekhara Rao Annavarapu1, U Rajendra Acharya2

  • 1Computer Science and Engineering Department, Indian Institute of Technology (ISM), Dhanbad, 826004, Jharkhand, India.

Computers in Biology and Medicine
|November 6, 2022
PubMed
Summary
This summary is machine-generated.

This study introduces MSGA-Net, an explainable deep learning model for accurate medical image segmentation. It enhances segmentation by focusing on important features across various scales and regions, improving clinical decision-making.

Keywords:
Channel attentionConvolutional neural networkEdge attentionExplainabilityLocation attentionMedical image segmentationMulti-scale attention

More Related Videos

Swin-PSAxialNet: An Efficient Multi-Organ Segmentation Technique
04:48

Swin-PSAxialNet: An Efficient Multi-Organ Segmentation Technique

Published on: July 5, 2024

481
Objectification of Tongue Diagnosis in Traditional Medicine, Data Analysis, and Study Application
05:56

Objectification of Tongue Diagnosis in Traditional Medicine, Data Analysis, and Study Application

Published on: April 14, 2023

2.6K

Related Experiment Videos

Last Updated: Aug 23, 2025

Application of Deep Learning-Based Medical Image Segmentation via Orbital Computed Tomography
04:48

Application of Deep Learning-Based Medical Image Segmentation via Orbital Computed Tomography

Published on: November 30, 2022

2.9K
Swin-PSAxialNet: An Efficient Multi-Organ Segmentation Technique
04:48

Swin-PSAxialNet: An Efficient Multi-Organ Segmentation Technique

Published on: July 5, 2024

481
Objectification of Tongue Diagnosis in Traditional Medicine, Data Analysis, and Study Application
05:56

Objectification of Tongue Diagnosis in Traditional Medicine, Data Analysis, and Study Application

Published on: April 14, 2023

2.6K

Area of Science:

  • Medical Imaging
  • Artificial Intelligence
  • Computer Vision

Background:

  • Automated medical image segmentation is vital for diagnostics and treatment planning.
  • Convolutional Neural Networks (CNNs) have advanced segmentation but struggle with variations in object size, shape, and position.
  • Current CNNs lack explainability, hindering clinical adoption.

Purpose of the Study:

  • To develop an explainable and highly accurate medical image segmentation network.
  • To address limitations of existing CNNs regarding segmentation variability and clinical interpretability.
  • To integrate multi-scale and semantic guided attention mechanisms for improved feature extraction.

Main Methods:

  • Proposed the explainable multi-module semantic guided attention based network (MSGA-Net).
  • Introduced a multi-scale attention module (MSA) for salient feature extraction at various scales.
  • Developed a semantic region-guided attention mechanism (SRGA) with location, channel-wise, and edge attention modules.
  • Employed a fine-tuning strategy with SRGA to enhance region significance and reduce noise.

Main Results:

  • MSGA-Net demonstrated substantial performance improvements across all metrics on dermoscopic, CT, and MRI datasets.
  • The model achieved higher accuracy and explainability compared to existing state-of-the-art models.
  • Attention feature maps provided enhanced interpretability for clinical insights.

Conclusions:

  • MSGA-Net offers a significant advancement in explainable and accurate medical image segmentation.
  • The proposed attention mechanisms effectively handle variations in medical image segmentation tasks.
  • MSGA-Net shows promise for clinical applications requiring reliable and interpretable segmentation results.