Visual Analytics of Tuberculosis Detection Rat Performance.

Online journal of public health informatics Pub Date : 2021-09-08 eCollection Date: 2021-01-01 DOI:10.5210/ojphi.v13i2.11465
Joan Jonathan, Camilius Sanga, Magesa Mwita, Georgies Mgode
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引用次数: 1

Abstract

The diagnosis of tuberculosis (TB) disease remains a global challenge, and the need for innovative diagnostic approaches is inevitable. Trained African giant pouched rats are the scent TB detection technology for operational research. The adoption of this technology is beneficial to countries with a high TB burden due to its cost-effectiveness and speed than microscopy. However, rats with some factors perform better. Thus, more insights on factors that may affect performance is important to increase rats' TB detection performance. This paper intends to provide understanding on the factors that influence rats TB detection performance using visual analytics approach. Visual analytics provide insight of data through the combination of computational predictive models and interactive visualizations. Three algorithms such as Decision tree, Random Forest and Naive Bayes were used to predict the factors that influence rats TB detection performance. Hence, our study found that age is the most significant factor, and rats of ages between 3.1 to 6 years portrayed potentiality. The algorithms were validated using the same test data to check their prediction accuracy. The accuracy check showed that the random forest outperforms with an accuracy of 78.82% than the two. However, their accuracies difference is small. The study findings may help rats TB trainers, researchers in rats TB and Information systems, and decision makers to improve detection performance. This study recommends further research that incorporates gender factors and a large sample size.

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肺结核检测大鼠性能的可视化分析。
结核病的诊断仍然是一项全球性挑战,对创新诊断方法的需求是不可避免的。训练有素的非洲巨鼠是用于运筹学研究的气味结核检测技术。采用这项技术对结核病负担高的国家有益,因为它比显微镜检查具有成本效益和速度。然而,有一些因素的大鼠表现更好。因此,更多地了解可能影响性能的因素对于提高大鼠的结核病检测性能非常重要。本文旨在利用可视化分析方法了解影响大鼠结核病检测性能的因素。可视化分析通过计算预测模型和交互式可视化的结合提供对数据的洞察。采用决策树、随机森林和朴素贝叶斯三种算法预测影响大鼠结核病检测性能的因素。因此,我们的研究发现年龄是最重要的因素,3.1 - 6岁的大鼠表现出潜力。使用相同的测试数据对算法进行验证,以检查其预测精度。准确率检验表明,随机森林的准确率为78.82%,优于两者。然而,它们的精度差异很小。这项研究的发现可能有助于大鼠结核病训练者、大鼠结核病和信息系统的研究人员以及决策者提高检测性能。这项研究建议进一步研究纳入性别因素和大样本量。
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