Design and Implementation of an Orthanc Plugin for Semi-Automatic Interpretation of Medical Images
Abstract
In the domain of medical imaging, the role of automated image interpretation tools is becoming increasingly critical in facilitating the diagnosis and treatment of diverse diseases. The escalating volume and intricacy of medical images necessitate the development of advanced tools that can support automatic image analysis. This paper outlines work associated with the design and implementation of a plugin for semi automated interpretation of medical images for the free and open source DICOM viewers, specifically DICOM viewers embedded inside the Orthanc server. The primary objective is to augment the functionality of these viewers, empowering them to assist radiologists and healthcare professionals in the comprehensive interpretation and analysis of medical images. This abstract outlines how DICOM viewer plugins can be integrated with machine learning models to enhance the efficiency and accuracy of medical image interpretation, ultimately leading to improved patient care and outcomes.
Year of Publication
2023
Academic Department
Department of Computer Science
Degree
Postgraduate Diploma in Computer Science
Number of Pages
53
Thesis Type
Postgraduate Diploma Dissertation
University
University of Zambia
City
Lusaka, Zambia
Thesis
Shawa, Andrew. 2023. “Design And Implementation Of An Orthanc Plugin For Semi-Automatic Interpretation Of Medical Images”. Department Of Computer Science . Lusaka, Zambia : University of Zambia . |