Using Various Convolutional Neural Network to Detect Pneumonia from Chest X-Ray Images: A Systematic Literature Review

Q3 Decision Sciences
Darnell Kikoo, Bryan Tamin, Stephen Hardjadilaga, -. Anderies, Irene Anindaputri Iswanto
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引用次数: 0

Abstract

Pneumonia is one of the world's top causes of mortality, especially for children. Chest X-rays serve an important part in diagnosing pneumonia due to the cost-effectiveness and quick advancement of the technology. Detecting Pneumonia through Chest X-rays (CXR) is a challenging and time-consuming process requiring trained professionals. This issue has been solved by the development of automation technology which is machine learning. Moreover, Deep Learning (DL), a machine learning specification that uses an algorithm that resembles the human brain, can predict more accurately and is now dependable enough to predict pneumonia. As time passes, another Deep Learning improvement has been made to produce a new method called Transfer Learning, that is done by extracting specific layers from some pre-trained network to be used on other datasets, which reduces the training time and improves the model performance. Although numerous algorithms are already available for pneumonia identification, a comprehensive literature evaluation and clinical recommendations are still small in numbers. This research will assist practitioners in choosing some of the best procedures from the recent research, reviewing the available datasets, and comprehending the outcomes gained in this domain. The reviewed papers show that the best score for predicting pneumonia using DL from CXR was 99.4% accuracy. The exceptional techniques and results from the reviewed papers served as great references for future research.
利用各种卷积神经网络从胸部x线图像中检测肺炎:系统的文献综述
肺炎是世界上最主要的死亡原因之一,尤其是儿童。胸部x光由于其成本效益和技术的快速发展,在诊断肺炎方面发挥着重要作用。通过胸部x光(CXR)检测肺炎是一个具有挑战性和耗时的过程,需要训练有素的专业人员。自动化技术即机器学习的发展已经解决了这个问题。此外,深度学习(DL)是一种机器学习规范,它使用类似于人类大脑的算法,可以更准确地预测,现在已经足够可靠,可以预测肺炎。随着时间的推移,另一种深度学习的改进产生了一种称为迁移学习的新方法,该方法通过从一些预训练的网络中提取特定层来用于其他数据集,从而减少了训练时间并提高了模型性能。虽然已经有许多算法可用于肺炎识别,但全面的文献评估和临床推荐数量仍然很少。这项研究将帮助从业者从最近的研究中选择一些最好的程序,回顾可用的数据集,并理解在该领域获得的结果。回顾的论文显示,利用CXR的DL预测肺炎的准确率最高为99.4%。这些论文的特殊技术和结果为今后的研究提供了很好的参考。
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
JOIV International Journal on Informatics Visualization
JOIV International Journal on Informatics Visualization Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
100
审稿时长
16 weeks
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