Leveraging unsupervised segmentation for semi-supervised renal calculi and carcinoma segmentation and classification
Abstract
Indeed it became crucial to develop an AI-driven system for detecting Renal illnesses
spontaneously due to a healthcare issue of Renal failure. The global shortage of
nephrologists is the core reason for this. This research concerns two crucial diseases:
Renal Calculi and Carcinoma by using semi-supervised localization and unsupervised
segmentation of a total 5477 CT images of axial point of view in order to use
it in commonly used models. The gathered CT images are prepared by resizing and
balancing via augmentation and the analysis shows that the mean color distribution
of images was the same across all classes. We have used YoloV8 for kidney localization,
quick shift and label merge for segmentation. Also, we manually annotated
all the images with the supervision of a medical expert. Furthermore, we compare
both datasets using VGG19, AlexNet, ResNet50. We got better output in Semi-
Supervised localized and unsupervised segmented images rather than the annotated
images via experts in terms of classification. We believe that reducing and focusing
on the region of interest can easily achieve good output in commonly used models
which will be very time efficient and cost effective as well.