Abstract:
Throughout the most recent couple of years, major breakthroughs were achieved in many computer 
visions tasks, such as image classification and segmentation by using the application of deep 
learning. The programmed liver division from Computed Tomography (CT) pictures has become 
a significant territory in clinical research, including radiotherapy, liver volume estimation, and 
liver transplant medical procedures. This research introduces a framework for the automated 
segmentation of liver and lesions in images of the CT and Magnetic Resonance Images (MRI) 
abdomen using Cascaded Fully Convolutional Neural (CFCN) networks for the segmentation of 
large-scale medical trials and quantitative image analysis. We train and cascade two Fully 
Convolutional Neural (FCN) networks for the combination of liver segmentation and lesions. We
train an FCN as a first step to segment the liver as an input of Region of Interest (ROI) for a 
second FCN. The second FCN segments only lesions inside phase one's estimated liver ROIs. 
CFCN models have been trained on a 100-volume abdominal CT dataset. Validation tests on 
additional data sets show that linguistic liver and lesion segmentation based on CFCN achieves 
Dice scores above 94% for the liver with computation times below 100s per volume. On 38 MRI 
liver tumor volumes and the public 3DIRCAD dataset, we further experimentally demonstrate the 
robustness of the proposed method.
 
Description:
This thesis submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Information and Communication Engineering of East West University, Dhaka, Bangladesh