Development of an Algorithm(S) for Human Tissues Characterization
Loading...
Date
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Various imaging technologies have been employed to investigate skin tissues over the years,
but their inadequate sensitivity, specificity, and accuracy limit their usage. Optical coherence
tomography (OCT) is a promising imaging technique in comparison to other imaging
modalities since it is a non-invasive imaging modality with a high resolution that can do cellular
level imaging as well as provide depth information. This imaging technique has been widely
utilised to examine tissues in the human body, demonstrating its clinical promise. Furthermore,
OCT can be regarded a possible tool for identification, however modern high-speed OCT
systems capture a large amount of data, making human interpretation a time-consuming and
tiresome operation. Computer-aided diagnostic (CAD) systems can support clinicians in
diagnosing by rapidly assessing large amounts of data. The goal of this thesis is to create a
CAD system that uses OCT for human tissue measurement. The feasibility of fully automated
quantitative assessment based on morphological aspects of human tissue, which will become a
biomarker for the removal of non-viable skin, is described in this thesis research work.
We developed an automated algorithm for the classification of malignant and benign
human skin tissue, using the dermoscopic images. The resulting algorithm gives a prospective
approach for skin tissue characterization, which presents tangible findings in normal and
melanoma infected skin tissue by statistical means. Our proposed automated procedure entails
building a machine learning based classifier by extracting the features of normal and infected
skin images, augmented with various classical transformations and Generative Adversarial
Network. The resultant model obtained good accuracy by adding the synthetic data.
Further, a robust machine learning approach was utilised to correctly and automatically
identify breast cancer tissue. We presented a novel approach combining pre-trained deep
convolutional neural network (CNN) inception-V3 with DCGAN and optical coherence
tomography (OCT) imaging modality for classification of human breast tissue. The preliminary
results demonstrate the feasibility of using deep learning algorithms with OCT images to
perform the automated assessment of breast cancer margin. The results obtained from the
classifier has better performance metrics for the diagnosis of breast cancer in terms of accuracy,
specificity and sensitivity.
In the next part of this thesis, an automated full-field polarization sensitive optical
coherence tomography diagnostic system (FF-PS-OCT) was developed which would be more
accessible to laboratories as a research tool for the investigation of biological applications.
Spatial phase features were extracted for the investigation of breast cancer tissue. A 2D camera
was used instead of the photodetector that records the entire en-face image (orthogonal to the
optical axis) in the single shot. A number of optical parameters of the tissue obtained from their
phase images is used to differentiate between healthy and malignant tissues with SVM
classifier. Results suggest that FF-PS-OCT can be considered as a strong aspirant for robust
and automated diagnosis of breast cancer tissue.
In the last part, a new method to detect skin cancer has been developed, which is more
accurate than previous methods. The edges are recognised using a canny edge detector after
the input PH2 dataset image is transformed to gray images using gray scale conversion. For
edge identification, the canny edge detector employs a multi-stage approach that is smoothed
and run through a non-linear kernel-based ICA. SVM and the Naive Bayes classifier were used,
which produced accurate results than previous approaches.
