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The Concept of an Artificial Neural Network for the Classification of Atheromous Plaques from Digitized Segmented Histological Images

机译:人工神经网络的概念从数字化的分割的组织学图像的动脉粥样硬化斑块的分类。

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This paper is dedicted to the concept of an artificial neural network (ANN) for the classification of atheromatous plaque based on digitized histological patterns of areas segmented by means of the Region Growing algorithm. For this purpose, a multi-layered feedforward ANN with supervised learning has been used to successfully classify the segmented areas accordingly. The first phase is focused to find an optimal method for image segmentation. The Region Growing algorithm allows us to separate continuously segmented regions. For each region, appropriate features are selected, which are put into the neural network. The goal of the ANN is to classify plaque patterns into four classes according to their features. The classes represent the following types of plaque: homogeneous, heterogeneous, calcified and that with a high ratio of fat.. Successful plaque classification will be a helpful tool for long-term clinical projects, e.g. investigation of plaque composition.
机译:本文将基于人工神经网络(ANN)的概念用于基于区域增长算法分割的区域的数字化组织学模式对动脉粥样硬化斑块进行分类。为此,具有监督学习的多层前馈ANN已被用于成功地对分割区域进行相应的分类。第一阶段的重点是找到一种最佳的图像分割方法。区域增长算法使我们能够分离连续分割的区域。对于每个区域,选择适当的特征,并将其放入神经网络。人工神经网络的目标是根据斑块特征将斑块图案分为四类。这些类别代表以下几种斑块类型:均质,异质,钙化以及脂肪比例高。成功的斑块分类将是长期临床项目的有用工具,例如:斑块组成的调查。

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