利用深度学习和物联网预测 COVID-19 患者感染情况的软件系统。

IF 2.6 4区 计算机科学 Q2 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Software-Practice & Experience Pub Date : 2022-04-01 Epub Date: 2021-06-24 DOI:10.1002/spe.3011
Ashima Singh, Amrita Kaur, Arwinder Dhillon, Sahil Ahuja, Harpreet Vohra
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引用次数: 0

摘要

自 2019 年底以来,计算机断层扫描(CT)图像已被用作耗时的逆转录酶聚合酶链反应(RT-PCR)检测的重要替代品;一种新的冠状病毒 2019(COVID-19)疾病已被检测出来,并迅速在全球许多国家蔓延。由于人们越来越怀疑 RT-PCR 作为筛查工具的灵敏度,计算机断层扫描等医学成像技术提供了巨大的潜力。为此,临床辅助决策和疾病监测非常需要自动图像分割。然而,可公开获取的 COVID-19 图像知识有限,导致传统方法过度拟合。为解决这一问题,本文重点研究了创建合成数据的数据增强技术。此外,本文还提出了一个使用 WoT 和传统 U-Net 与 EfficientNet B0 的框架,用于自动分割 COVID Radiopedia 和 Medseg 数据集。该框架的 F 分数为 0.96,在最先进的方法中名列前茅。在灵敏度、特异度和骰子系数方面,拟议框架的性能也分别达到了 84.5%、93.9% 和 65.0%。最后,利用服务器延迟、响应时间和网络延迟等三个服务质量(QoS)参数对所提出的工作进行了验证,结果显示性能分别提高了 8%、7% 和 10%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Software system to predict the infection in COVID-19 patients using deep learning and web of things.

Software system to predict the infection in COVID-19 patients using deep learning and web of things.

Software system to predict the infection in COVID-19 patients using deep learning and web of things.

Since the end of 2019, computed tomography (CT) images have been used as an important substitute for the time-consuming Reverse Transcriptase polymerase chain reaction (RT-PCR) test; a new coronavirus 2019 (COVID-19) disease has been detected and has quickly spread through many countries across the world. Medical imaging such as computed tomography provides great potential due to growing skepticism toward the sensitivity of RT-PCR as a screening tool. For this purpose, automated image segmentation is highly desired for a clinical decision aid and disease monitoring. However, there is limited publicly accessible COVID-19 image knowledge, leading to the overfitting of conventional approaches. To address this issue, the present paper focuses on data augmentation techniques to create synthetic data. Further, a framework has been proposed using WoT and traditional U-Net with EfficientNet B0 to segment the COVID Radiopedia and Medseg datasets automatically. The framework achieves an F-score of 0.96, which is best among state-of-the-art methods. The performance of the proposed framework also computed using Sensitivity, Specificity, and Dice-coefficient, achieves 84.5%, 93.9%, and 65.0%, respectively. Finally, the proposed work is validated using three quality of service (QoS) parameters such as server latency, response time, and network latency which improves the performance by 8%, 7%, and 10%, respectively.

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来源期刊
Software-Practice & Experience
Software-Practice & Experience 工程技术-计算机:软件工程
CiteScore
8.00
自引率
8.60%
发文量
107
审稿时长
6 months
期刊介绍: Software: Practice and Experience is an internationally respected and rigorously refereed vehicle for the dissemination and discussion of practical experience with new and established software for both systems and applications. Articles published in the journal must be directly relevant to the design and implementation of software at all levels, from a useful programming technique all the way up to a large scale software system. As the journal’s name suggests, the focus is on practice and experience with software itself. The journal cannot and does not attempt to cover all aspects of software engineering. The key criterion for publication of a paper is that it makes a contribution from which other persons engaged in software design and implementation might benefit. Originality is also important. Exceptions can be made, however, for cases where apparently well-known techniques do not appear in the readily available literature. Contributions regularly: Provide detailed accounts of completed software-system projects which can serve as ‘how-to-do-it’ models for future work in the same field; Present short reports on programming techniques that can be used in a wide variety of areas; Document new techniques and tools that aid in solving software construction problems; Explain methods/techniques that cope with the special demands of large-scale software projects. However, software process and management of software projects are topics deemed to be outside the journal’s scope. The emphasis is always on practical experience; articles with theoretical or mathematical content are included only in cases where an understanding of the theory will lead to better practical systems. If it is unclear whether a manuscript is appropriate for publication in this journal, the list of referenced publications will usually provide a strong indication. When there are no references to Software: Practice and Experience papers (or to papers in a journal with a similar scope such as JSS), it is quite likely that the manuscript is not suited for this journal. Additionally, one of the journal’s editors can be contacted for advice on the suitability of a particular topic.
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