Automated evaluation of Tuberculosis using Deep Neural Networks

Q2 Engineering
Truong-Minh Le, Tat-Bao-Thien Nguyen, V. M. Ngo
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引用次数: 2

Abstract

INTRODUCTION: Tuberculosis (TB) is a chronic, progressive infection that often has a latent period after the initial infection period. Early awareness from those period to have better prevention steps becomes an indispensable part for patients who want to lengthen their lives. Hence, applying cutting-edge technologies to support the medical business domain plays a key role in improving speed and accuracy in methods of diagnosis. Deep Neural Network-based technique (DNN) is one of such methods which offers positive results by leveraging the advantages of analyzing deeply the data, especially image data format via tons of deep layers of the neural networks. Our study was wrapped up by objectively assessing the performance of modern Deep Neural Network approaches and suggesting a model offering good results in terms of the selected metrics as defined later. In order to achieve optimized results, the chosen model must adapt well to the datasets but require less hardware and computational resources.OBJECTIVES: Our objective is to pick up and train a Deep Neural Network architecture which is highly trusted and flexibly fitted and applied to various datasets with minimum configurations. This will be used to produce good predictions based on the input data which are Chest X-ray images retrieved from the published datasets.METHODS: We have been approaching this problem by using the recognized datasets which have already been published before, then resizing them to the consistent input data for training purposes. In terms of Deep Neural Networks, we picked up VGG16 as the baseline network architecture, then use other ones which are state-of-the-art networks for comparison purposes. After all, we recommend the neural network architecture offering the most positive results based on accuracy and recall measurements. So that, this network architecture will show flexibility when fitting into diverse datasets representing different areas in the world that suffered from Tuberculosis before.RESULTS: After conducting the experiments, we observed that the Mobilenet model produced great results based on the predefined metrics for most of the proposed datasets. It shows the versatility which is applicable to all CXR datasets, especially for the Tuberculosis ones.CONCLUSION: Tuberculosis is still one of the most dangerous illnesses in the world that needs vital methods to prevent and detect soon so that patients are able to keep their lives longer. After this research, we are constantly improving the current accuracy of the models and applying the current results of this research for later problems such as detecting the Tuberculosis areas in real-time and supporting doctors to make decisions based on the current status of patients.
利用深度神经网络对肺结核进行自动评估
简介:结核病(TB)是一种慢性进行性感染,通常在初始感染期后有一段潜伏期。对于那些想要延长生命的患者来说,早期意识到这一点,采取更好的预防措施是必不可少的一部分。因此,应用尖端技术来支持医疗业务领域在提高诊断方法的速度和准确性方面起着关键作用。基于深度神经网络的技术(Deep Neural Network-based technique, DNN)就是其中的一种方法,它利用大量深层神经网络对数据,特别是图像数据格式进行深度分析的优势,取得了积极的效果。我们的研究是通过客观地评估现代深度神经网络方法的性能来结束的,并提出了一个模型,该模型在随后定义的选定指标方面提供了良好的结果。为了获得优化的结果,所选择的模型必须能够很好地适应数据集,但需要较少的硬件和计算资源。目标:我们的目标是选择和训练一个深度神经网络架构,它是高度可信的,灵活地拟合并应用于各种数据集的最小配置。这将用于根据输入数据(从已发布的数据集中检索的胸部x射线图像)产生良好的预测。方法:我们一直在通过使用之前已经发布的识别数据集来解决这个问题,然后将它们调整为一致的输入数据以用于训练目的。在深度神经网络方面,我们选择了VGG16作为基准网络架构,然后使用其他最先进的网络进行比较。毕竟,我们推荐基于准确率和召回率测量的神经网络架构提供最积极的结果。因此,这个网络架构在适应不同的数据集时将显示出灵活性,这些数据集代表了世界上以前遭受结核病折磨的不同地区。结果:在进行实验后,我们观察到Mobilenet模型基于大多数拟议数据集的预定义指标产生了很好的结果。它显示了适用于所有CXR数据集的多功能性,特别是肺结核数据集。结论:结核病仍然是世界上最危险的疾病之一,需要重要的预防和发现方法,以便患者能够延长生命。通过本次研究,我们正在不断提高目前模型的准确性,并将目前的研究成果应用于后续的问题,如实时检测结核病区域,支持医生根据患者的现状做出决策。
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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来源期刊
CiteScore
4.00
自引率
0.00%
发文量
15
审稿时长
10 weeks
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