使用混合特征描述符和深度学习网络进行结核病的早期检测。

Polish journal of radiology Pub Date : 2023-09-29 eCollection Date: 2023-01-01 DOI:10.5114/pjr.2023.131732
Garima Verma, Ajay Kumar, Sushil Dixit
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引用次数: 0

摘要

目的:通过使用深度神经网络分析胸部X射线图像,在早期发现结核病,并通过与现有研究的比较来评估所提出的模型的疗效。材料和方法:在这项研究中,使用了开源的X射线图像。数据集由两种类型的图像组成,即标准图像和结核病图像。数据集中的图像总数为4200张,其中3500张是正常的胸部X光片,其余700张是肺结核患者的X光片。该研究通过将深度特征与手工设计特征相结合,提出并模拟了一种用于结核病早期诊断的深度学习预测模型。采用Gabor滤波器和Canny边缘检测方法来提高性能,降低计算成本。结果:所提出的模型模拟了两种场景:没有滤波器和边缘检测技术,只有一个具有自动特征提取的预训练模型,以及滤波器和边缘探测技术。两个模型的结果分别为95.7%和97.9%。结论:如果没有放射科医生,建议的研究可以帮助检测。此外,该模型还用实时图像进行了测试,以检查疗效,并且比其他可用模型更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Early detection of tuberculosis using hybrid feature descriptors and deep learning network.

Early detection of tuberculosis using hybrid feature descriptors and deep learning network.

Early detection of tuberculosis using hybrid feature descriptors and deep learning network.

Early detection of tuberculosis using hybrid feature descriptors and deep learning network.

Purpose: To detect tuberculosis (TB) at an early stage by analyzing chest X-ray images using a deep neural network, and to evaluate the efficacy of proposed model by comparing it with existing studies.

Material and methods: For the study, an open-source X-ray images were used. Dataset consisted of two types of images, i.e., standard and tuberculosis. Total number of images in the dataset was 4,200, among which, 3,500 were normal chest X-rays, and the remaining 700 X-ray images were of tuberculosis patients. The study proposed and simulated a deep learning prediction model for early TB diagnosis by combining deep features with hand-engineered features. Gabor filter and Canny edge detection method were applied to enhance the performance and reduce computation cost.

Results: The proposed model simulated two scenarios: without filter and edge detection techniques and only a pre-trained model with automatic feature extraction, and filter and edge detection techniques. The results achieved from both the models were 95.7% and 97.9%, respectively.

Conclusions: The proposed study can assist in the detection if a radiologist is not available. Also, the model was tested with real-time images to examine the efficacy, and was better than other available models.

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