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A new modular neural network approach with fuzzy response integration for lung disease classification based on multiple objective feature optimization in chest X-ray images

机译:一种新的模块神经网络方法,基于胸X射线图像多目标特征优化的肺病分类模糊响应集成

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This paper describes a new hybrid approach, based on modular artificial neural networks with fuzzy logic integration, for the diagnosis of pulmonary diseases such as pneumonia and lung nodules. In particular, the proposed approach analyzes medical images, which are digitized chest X-rays, focusing on a classification method based on descriptors, such as grayscale histogram features, gray-level co-occurrence matrix (GLCM) texture-based features, and local binary pattern texture features. Then, to perform feature reduction, a multi-objective genetic algorithm is used to obtain an optimized neuro-fuzzy classifier, which is able to classify the pathology found in the analyzed chest X-ray. The main contribution of this paper is the proposed modular neural network approach, which divides features to achieve specialized analysis in the modules for digital image analysis and classification. The proposed approach achieves high classification accuracy after evaluating the neuro-fuzzy model with three large datasets of chest X-rays.
机译:本文介绍了一种新的混合方法,基于模块化人工神经网络的模糊逻辑集成,用于诊断肺病等肺病和肺结核。特别地,所提出的方法分析了数字化胸部X射线的医学图像,专注于基于描述符的分类方法,例如灰度直方图特征,灰度级共发生矩阵(GLCM)基于纹理的特征和本地二进制模式纹理特征。然后,为了执行特征,使用多目标遗传算法来获得优化的神经模糊分类器,其能够对分析的胸部X射线中发现的病理学进行分类。本文的主要贡献是提出的模块化神经网络方法,该方法划分了在模块中实现了数字图像分析和分类的专业分析。在评估胸部X射线三个大型数据集之后,所提出的方法实现了高分类准确性。

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