An Empirical Study of Bugs in COVID-19 Software Projects

A. Rahman, Effat Farhana
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引用次数: 4

Abstract

The dire consequences of the COVID-19 pandemic have influenced development of COVID-19 software i.e., software used for analysis and mitigation of COVID-19. Bugs in COVID-19 software can be consequential, as COVID-19 software projects can impact public health policy and user data privacy. The goal of this paper is to help practitioners and researchers improve the quality of COVID-19 software through an empirical study of open source software projects related to COVID-19. We use 129 open source COVID-19 software projects hosted on GitHub to conduct our empirical study. Next, we apply qualitative analysis on 550 bug reports from the collected projects to identify bug categories.  We identify 8 bug categories, which include data bugs i.e., bugs that occur during mining and storage of COVID-19 data. The identified bug categories appear for 7 categories of software projects including (i) projects that use statistical modeling to perform predictions related to COVID-19, and (ii) medical equipment software that are used to design and implement medical equipment, such as ventilators. Based on our findings, we advocate for robust statistical model construction through better synergies between data science practitioners and public health experts. Existence of security bugs in user tracking software necessitates development of tools that will detect data privacy violations and security weaknesses.
COVID-19软件项目中bug的实证研究
COVID-19大流行的可怕后果影响了COVID-19软件的开发,即用于分析和缓解COVID-19的软件。COVID-19软件中的漏洞可能会产生重大影响,因为COVID-19软件项目可能会影响公共卫生政策和用户数据隐私。本文旨在通过对COVID-19相关开源软件项目的实证研究,帮助从业者和研究人员提高COVID-19软件的质量。我们使用托管在GitHub上的129个开源COVID-19软件项目进行实证研究。接下来,我们对收集到的项目中的550个bug报告进行定性分析,以确定bug的类别。我们确定了8个bug类别,其中包括数据bug,即在COVID-19数据挖掘和存储过程中出现的bug。确定的漏洞类别出现在7类软件项目中,包括(i)使用统计建模来执行与COVID-19相关的预测的项目,以及(ii)用于设计和实施医疗设备(如呼吸机)的医疗设备软件。基于我们的发现,我们提倡通过数据科学从业者和公共卫生专家之间更好的协同作用来构建稳健的统计模型。用户跟踪软件中存在安全漏洞,需要开发工具来检测数据隐私侵犯和安全漏洞。
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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