Diagnosing and categorizing of pulmonary diseases using Deep learning conventional Neural network

N. Reddy, V. Khanaa
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引用次数: 3

Abstract

Lung cancer is one of the major illnesses that contribute to millions of fatalities worldwide. Numerous deaths could be saved through the early identification and categorization of lung cancers. However, with traditional approaches, classification accuracy cannot be produced. To detect and classify lung diseases, a deep learning convolutional neural network model has been developed. LDDC, the customized local trilateral filter, is used for pre-processing the lung images from computing tomography for non-local trilateral filters. The region of interest for lung cancer was successfully restricted throughout the segmentation of the disease using hybrid fuzzy morphological procedures. To extract the deep seismic features, the Laplacian pyramid decomposition method was utilized for the segmented image. This paper covers an overall analysis of non-local trilateral filter Processing, hybrid fuzzy morphological techniques and analysis of patient and disease characteristics of LIDR- IDRI and FDA data of Group A (no co-AGA), P-value, Multi-mut Patient, Group B (with a co-AGA).
基于深度学习传统神经网络的肺部疾病诊断与分类
肺癌是导致全世界数百万人死亡的主要疾病之一。通过肺癌的早期识别和分类,可以挽救许多人的死亡。然而,传统的分类方法无法产生分类精度。为了检测和分类肺部疾病,我们开发了一个深度学习卷积神经网络模型。LDDC(自定义局部三边滤波器)用于对计算机断层扫描肺图像进行非局部三边滤波器预处理。在整个疾病分割过程中,使用混合模糊形态学程序成功地限制了肺癌的兴趣区域。为了提取深层地震特征,对分割后的图像采用拉普拉斯金字塔分解方法。本文全面分析了非局部三边滤波处理、混合模糊形态学技术以及A组(无共aga)、p值、多突变患者、B组(有共aga)的LIDR- IDRI和FDA数据的患者和疾病特征分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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