Thyroid Ultrasound Texture Classification Using Autoregressive Features in Conjunction With Machine Learning Approaches

The thyroid is one of the largest endocrine glands in the human body, which is involved in several body mechanisms like controlling protein synthesis, use of energy sources, and controlling the body's sensitivity to other hormones. Thyroid segmentation and volume reconstruction are hence essent...

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Main Authors: Prabal Poudel, Alfredo Illanes, Elmer J. G. Ataide, Nazila Esmaeili, Sathish Balakrishnan, Michael Friebe
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8737902/
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spelling doaj-04ac7f9b54244765b85796dc09db38122021-03-30T00:12:02ZengIEEEIEEE Access2169-35362019-01-017793547936510.1109/ACCESS.2019.29235478737902Thyroid Ultrasound Texture Classification Using Autoregressive Features in Conjunction With Machine Learning ApproachesPrabal Poudel0https://orcid.org/0000-0002-9383-7963Alfredo Illanes1Elmer J. G. Ataide2Nazila Esmaeili3Sathish Balakrishnan4Michael Friebe5Faculty of Medical Engineering, Otto-von-Guericke University, Magdeburg, GermanyFaculty of Medical Engineering, Otto-von-Guericke University, Magdeburg, GermanyFaculty of Medical Engineering, Otto-von-Guericke University, Magdeburg, GermanyFaculty of Medical Engineering, Otto-von-Guericke University, Magdeburg, GermanyFaculty of Medical Engineering, Otto-von-Guericke University, Magdeburg, GermanyFaculty of Medical Engineering, Otto-von-Guericke University, Magdeburg, GermanyThe thyroid is one of the largest endocrine glands in the human body, which is involved in several body mechanisms like controlling protein synthesis, use of energy sources, and controlling the body's sensitivity to other hormones. Thyroid segmentation and volume reconstruction are hence essential to diagnose thyroid related diseases as most of these diseases involve a change in the shape and size of the thyroid over time. Classification of thyroid texture is the first step toward the segmentation of the thyroid. The classification of texture in thyroid Ultrasound (US) images is not an easy task as it suffers from low image contrast, presence of speckle noise, and non-homogeneous texture distribution inside the thyroid region. Hence, a robust algorithmic approach is required to accurately classify thyroid texture. In this paper, we propose three machine learning based approaches: Support Vector Machine; Artificial Neural Network; and Random Forest Classifier to classify thyroid texture. The computation of features for training these classifiers is based on a novel approach recently proposed by our team, where autoregressive modeling was applied on a signal version of the 2D thyroid US images to compute 30 spectral energy-based features for classifying the thyroid and non-thyroid textures. Our approach differs from the methods proposed in the literature as they use image-based features to characterize thyroid tissues. We obtained an accuracy of around 90% with all the three methods.https://ieeexplore.ieee.org/document/8737902/Medical imagingsupport vector machineartificial neural networkrandom forest classifiertexture classificationthyroid ultrasound
collection DOAJ
language English
format Article
sources DOAJ
author Prabal Poudel
Alfredo Illanes
Elmer J. G. Ataide
Nazila Esmaeili
Sathish Balakrishnan
Michael Friebe
spellingShingle Prabal Poudel
Alfredo Illanes
Elmer J. G. Ataide
Nazila Esmaeili
Sathish Balakrishnan
Michael Friebe
Thyroid Ultrasound Texture Classification Using Autoregressive Features in Conjunction With Machine Learning Approaches
IEEE Access
Medical imaging
support vector machine
artificial neural network
random forest classifier
texture classification
thyroid ultrasound
author_facet Prabal Poudel
Alfredo Illanes
Elmer J. G. Ataide
Nazila Esmaeili
Sathish Balakrishnan
Michael Friebe
author_sort Prabal Poudel
title Thyroid Ultrasound Texture Classification Using Autoregressive Features in Conjunction With Machine Learning Approaches
title_short Thyroid Ultrasound Texture Classification Using Autoregressive Features in Conjunction With Machine Learning Approaches
title_full Thyroid Ultrasound Texture Classification Using Autoregressive Features in Conjunction With Machine Learning Approaches
title_fullStr Thyroid Ultrasound Texture Classification Using Autoregressive Features in Conjunction With Machine Learning Approaches
title_full_unstemmed Thyroid Ultrasound Texture Classification Using Autoregressive Features in Conjunction With Machine Learning Approaches
title_sort thyroid ultrasound texture classification using autoregressive features in conjunction with machine learning approaches
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description The thyroid is one of the largest endocrine glands in the human body, which is involved in several body mechanisms like controlling protein synthesis, use of energy sources, and controlling the body's sensitivity to other hormones. Thyroid segmentation and volume reconstruction are hence essential to diagnose thyroid related diseases as most of these diseases involve a change in the shape and size of the thyroid over time. Classification of thyroid texture is the first step toward the segmentation of the thyroid. The classification of texture in thyroid Ultrasound (US) images is not an easy task as it suffers from low image contrast, presence of speckle noise, and non-homogeneous texture distribution inside the thyroid region. Hence, a robust algorithmic approach is required to accurately classify thyroid texture. In this paper, we propose three machine learning based approaches: Support Vector Machine; Artificial Neural Network; and Random Forest Classifier to classify thyroid texture. The computation of features for training these classifiers is based on a novel approach recently proposed by our team, where autoregressive modeling was applied on a signal version of the 2D thyroid US images to compute 30 spectral energy-based features for classifying the thyroid and non-thyroid textures. Our approach differs from the methods proposed in the literature as they use image-based features to characterize thyroid tissues. We obtained an accuracy of around 90% with all the three methods.
topic Medical imaging
support vector machine
artificial neural network
random forest classifier
texture classification
thyroid ultrasound
url https://ieeexplore.ieee.org/document/8737902/
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