Extending UML for Conceptual Modeling of Annotation of Medical Images
This work targets physicians and radiologists by providing a domain-specific modeling approach for medical image annotation, but it is incremental as it extends existing UML tools.
The paper addresses the lack of domain-specific conceptual modeling for medical image annotation by proposing a new UML profile using StarUML extensibility, aiming to improve design phases for faster and more accurate medical solutions.
Imaging has occupied a huge role in the management of patients, whether hospitalized or not. Depending on the patients clinical problem, a variety of imaging modalities were available for use. This gave birth of the annotation of medical image process. The annotation is intended to image analysis and solve the problem of semantic gap. The reason for image annotation is due to increase in acquisition of images. Physicians and radiologists feel better while using annotation techniques for faster remedy in surgery and medicine due to the following reasons: giving details to the patients, searching the present and past records from the larger databases, and giving solutions to them in a faster and more accurate way. However, classical conceptual modeling does not incorporate the specificity of medical domain specially the annotation of medical image. The design phase is the most important activity in the successful building of annotation process. For this reason, we focus in this paper on presenting the conceptual modeling of the annotation of medical image by defining a new profile using the StarUML extensibility mechanism.