Automated Muscle and Fat Segmentation in Computed Tomography for Comprehensive Body Composition Analysis
PositiveArtificial Intelligence
- A new publicly accessible model for automated segmentation of muscle and fat in computed tomography (CT) images has been introduced, enhancing body composition analysis. This model effectively segments skeletal muscle, subcutaneous adipose tissue, and visceral adipose tissue in axial CT images, addressing a significant gap in available tools for clinical applications.
- This development is crucial as it enables more accurate assessments of body composition, which can inform clinical decisions related to cardiovascular health, metabolic conditions, and treatment responses in oncology, ultimately improving patient outcomes.
- The introduction of this model aligns with ongoing advancements in medical imaging and artificial intelligence, reflecting a broader trend towards integrating automated tools in healthcare. Similar innovations in pose estimation and dental imaging highlight the growing importance of precise segmentation techniques across various medical fields.
— via World Pulse Now AI Editorial System
