利用机器学习方法在呼吸道疾病感染检测中增强放射学图像数据和图像效果

Prita Patil, Vaibhav Narawade
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引用次数: 0

摘要

医学成像在医疗诊断和治疗中发挥着重要作用。它在医疗应用中也非常有用。所提出概念的目标是了解数据平衡、数据增强和分割在临床领域的重要性,利用数据增强和边缘检测技术改进图像数据平衡,改进放射学图像预处理以定位感兴趣区(ROI),并利用机器学习方法构建用于诊断呼吸系统疾病的定制深度神经网络(DNN)。不同数据集中经常包含来自多种机器类型的不同质量的图像。本研究使用了四个数据集,其中三个是来自 Kaggle 的在线数据集,第四个是来自邻近地方医院的 COVID 和肺炎感染者的实时放射学图片。我们提出了 RESP_DATA_BALANCE 算法,用于在数据集构建过程中平衡图像数据,并提出了 RDD_ROI 算法(呼吸系统疾病检测感兴趣区域),该算法结合了使用 GLCM 的改进图像特征提取技术和无监督 K-means 聚类分割技术,以识别呼吸系统疾病检测中的感兴趣区域。我们建议使用定制的 28 层呼吸道疾病检测深度神经网络(RDD_DNN)进行进一步的训练、测试和验证。此外,实验结果侧重于使用各种数据增强、边缘检测和预处理策略的性能特征。 我们研究的实验目的是帮助对呼吸系统疾病进行分类和早期诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Radiology Image Data Augmentation and Image Enhancement in Respiratory Disease Infection Detection Using Machine Learning Approach
Medical imaging plays an important role in medical diagnosis and treatment. It is also useful in medical applications. The proposed concept's goal is to understand the importance of data balancing, data augmentation, and segmentation in the clinical field, to improve image data balancing using data augmentation and edge detection techniques, to improve radiology image preprocessing to locate regions of interest (ROI), and to construct custom-built Deep Neural Networks (DNN) in diagnosing respiratory illness using Machine Learning approaches. Images of varying quality from multiple machine types are frequently included in different datasets. This study used four datasets, three of which are online datasets from Kaggle and the fourth is real-time radiology pictures of COVID and Pneumonia-infected persons from neighboring local hospitals. We proposed RESP_DATA_BALANCE for image data balance in dataset construction, and RDD_ROI (Respiratory Disease Detection Region of Interest) algorithm, which combines improved image feature extraction technique using a GLCM and unsupervised K-means clustering for segmentation to identify the region of interest in the detection of respiratory diseases. Our suggested custom-built 28-layer Respiratory Disease Detection Deep Neural Network (RDD_DNN) is used for further training, testing, and validation. Furthermore, experimental results focus on performance characteristics using various data augmentation, edge detection, and preprocessing strategies.  The experimental purpose of our research study is to aid in the classification and early diagnosis of respiratory disorders.
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