Algorithms for Color Normalization and Segmentation of Liver Cancer Histopathology Images
Date
2021
Authors
Roy, Santanu.
Journal Title
Journal ISSN
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Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
With the advent of Computer Assisted Diagnosis (CAD), accuracy of cancer detection
from histopathology images is significantly increased. However, color variation in CAD
system is inevitable due to variability of stain concentration and manual tissue sectioning.
Small variation in color may lead to misclassification of cancer cells. Therefore,
color normalization is the first step of Computer Assisted Diagnosis (CAD), in order to
reduce the inter-variability of background color among a set of source images. In this
thesis, first a novel color normalization method is proposed for Hematoxylin and Eosin
(H and E) stained histopathology images. Conventional Reinhard algorithm is modified
in our proposed method by incorporating fuzzy logic. Moreover, mathematically
it is proved that our proposed method satisfies all three hypotheses of color normalization.
Furthermore, several quality metrics are estimated locally for evaluating the
performance of various color normalization methods. Experimental result reveals that
our proposed method has outperformed all other benchmark methods.
The second step of CAD is nuclei segmentation which is the most significant step
since it enables the classification task computationally efficient and simple. However,
automatic nuclei detection is fraught with problems due to highly textured nuclei boundary
and various size and shapes of nuclei present in histopathology images. In this thesis,
a novel edge detection technique is proposed for segmenting the nuclei regions in
liver cancer Hematoxylin and Eosin (H and E) stained histopathology images, based on
the notion of computing local standard deviation value. Moreover, the edge-detected
image is converted into a binary image by using local Otsu thresholding and thereafter,
it is refined by an adaptive morphological filter. The experimental result indicates
that proposed segmentation method overcomes the limitations of existing unsupervised
methods and subsequently its performance is also comparable with deep neural models.
To the best of our knowledge, our proposed method is the only unsupervised method
iii
which achieves nuclei detection accuracy closest to 1 (0.9516). Furthermore, two more
quality metrics are computed in order to measure the performance of nuclei segmentation
methods quantitatively. The mean value of quality metrics reveals that our proposed
segmentation method outperforms other existing methods both qualitatively and
quantitatively.
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Keywords
Department of Electronics and Communication Engineering