Abstract:
With the advent of research, it has been established that many leading diseases among women, such as
breast cancer, cervical cancer, and autoimmune diseases, can be prevented if diagnosed at initial stage.
This research aims at development and analysis of computer assisted systems for accurate diagnosis
of such diseases. Among various diseases, this thesis focus upon developing automated systems for
screening breast cancer and autoimmune diseases.
Significant research efforts are being made to detect breast cancer symptoms on screening mammograms,
however, mass detection has been the most challenging task. The complexity of the task is attributed to
varying shape and size of masses and presence of artifacts and pectoral muscles. In this research, we
pursue the idea of visual saliency and propose a novel framework to detect mass(es) from screening
mammogram(s). The concept of visual saliency is based properties of human vision, therefore, it may
help in performing the ”intuitive” tasks which human eye perform with ease such as finding the region
of interest. We use the saliency algorithm to segment candidate regions which may contain masses. The
qualitative analysis shows that saliency algorithm is capable of detecting mass containing regions without
any prior segmentation of pectoral muscles. Extensive feature analysis is performed to obtain the optimal
set of features to detect masses using Support Vector Machine based classification. Experiments are
conducted on publicly available MIAS database using existing protocols. Results from the comparative
analysis show that the proposed framework outperforms the state-of-art algorithms.
Identification of antigen patterns from HEp-2 cells is crucial for the diagnosis of autoimmune diseases.
The manual inspection under microscope as well as computer screens is prone to inter-observer variability
and lack of standardization. Therefore, efforts are being made to automate the antigen pattern
classification from HEp-2 cell images. In this research, we propose a feature categorization to analyze
the existing research associated with HEp-2 cell image classification. We also propose an efficient
classification system for antigen pattern identification based on Laws texture features. Experiments are
conducted using public datasets and existing protocols. Comparison with state-of-the-art techniques
clearly indicate that Laws texture features are more efficient for the given task.