Digital pathology has emerged as a promising tool for the diagnosis and management of
cancer. However, the accurate and efficient analysis of histopathology images is still a
challenging task. Recently, artificial intelligence (AI) has matured enough to provide models
for large-scale detection and classification of cellular structures. In this thesis, we propose
an automatic multi-scale visual annotation approach for histopathology images. We use
AI to automatically detect and classify whole slide images (WSIs) of histopathology tissue
samples. We then create annotations using AI, density, and topology analysis. The proposed
approach provides these visual annotations for histopathologists to ease their workflow. We
provide 3 types of visual annotations: microscale, mesoscale, and multiscale annotations.
Microscale annotations involve drawing different colored bounding boxes around nuclei of a
specific cancer type inWSIs and are generated automatically by AI. Mesoscale annotations use
kernel density estimation to provide colored contours overlayed on top of the WSI. Macroscale
annotations are the most general and use topology to provide annotations that summarize the
WSI. We evaluate the performance of the proposed approach through qualitative assessment
by interviewing a histopathologist working in the field. We find that our proposed approach
has the potential to aid histopathologists in the accurate and efficient analysis of histopathology
images, and could contribute to the development of computer-aided diagnosis systems for
cancer.
Date of Award | 2023 |
---|
Original language | American English |
---|
Awarding Institution | - HBKU College of Science and Engineering
|
---|
- Data Science and Engineering
AUTOMATIC MULTI-SCALE VISUAL ANNOTATIONS OF HISTOPATHOLOGY IMAGES BASED ON DENSITY AND TOPOLOGY ANALYSIS
Joad, F. (Author). 2023
Student thesis: Master's Dissertation