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Evaluation of Commonly Used Algorithms for Thyroid Ultrasound Images Segmentation and Improvement Using Machine Learning Approaches

机译:机器学习方法对甲状腺超声图像分割和改进常用算法的评估

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摘要

The thyroid is one of the largest endocrine glands in the human body, which is involved in several body mechanisms like controlling protein synthesis and the body's sensitivity to other hormones and use of energy sources. Hence, it is of prime importance to track the shape and size of thyroid over time in order to evaluate its state. Thyroid segmentation and volume computation are important tools that can be used for thyroid state tracking assessment. Most of the proposed approaches are not automatic and require long time to correctly segment the thyroid. In this work, we compare three different nonautomatic segmentation algorithms (i.e., active contours without edges, graph cut, and pixel-based classifier) in freehand three-dimensional ultrasound imaging in terms of accuracy, robustness, ease of use, level of human interaction required, and computation time. We figured out that these methods lack automation and machine intelligence and are not highly accurate. Hence, we implemented two machine learning approaches (i.e., random forest and convolutional neural network) to improve the accuracy of segmentation as well as provide automation. This comparative study intends to discuss and analyse the advantages and disadvantages of different algorithms. In the last step, the volume of the thyroid is computed using the segmentation results, and the performance analysis of all the algorithms is carried out by comparing the segmentation results with the ground truth.
机译:甲状腺是人体最大的内分泌腺之一,它参与多种人体机制,例如控制蛋白质的合成以及人体对其他激素的敏感性和能源的使用。因此,追踪甲状腺随时间的形状和大小以评估其状态至关重要。甲状腺分割和体积计算是可用于甲状腺状态跟踪评估的重要工具。大多数提议的方法不是自动的,需要很长时间才能正确分割甲状腺。在这项工作中,我们比较了徒手三维超声成像中三种不同的非自动分割算法(即,没有边缘的活动轮廓,图形切割和基于像素的分类器),包括准确性,鲁棒性,易用性,人类互动程度所需的时间和计算时间。我们发现这些方法缺乏自动化和机器智能,并且准确性不高。因此,我们实施了两种机器学习方法(即随机森林和卷积神经网络)以提高分割的准确性并提供自动化。这项比较研究旨在讨论和分析不同算法的优缺点。在最后一步中,使用分割结果计算甲状腺的体积,然后通过将分割结果与地面真实情况进行比较,对所有算法进行性能分析。

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