Co-infection prevalence of Covid-19 underlying tuberculosis disease using a susceptible infect clustering Bayes Network

B. Malasowe, D. Ojie, A. Ojugo, M. D. Okpor
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引用次数: 1

Abstract

The adoption of data mining processes is urgently needed due to the everyday generation of large amounts of data at an accelerated rate. The current advancement in the area of data analytics and data science has ushered in a new paradigm shift in the use of machine learning and softcomputing approaches to a new paradigm to render a more beneficial approach in constructing algorithms that can effectively and efficiently assist expert systems to yield new insight to practitioners – to ensure comprehensive decisions on the underlying tuberculosis disease to potential problematic cases. This study explored spatial medical data in disease diagnosis to effectivevly and efficiently handle problematic cases of Tuberclulosisin Nigeria. Bayesian Network algorithm was used to predict potential cases in patients with covid-19 (and other underlying health issues) vis-à-vis its co-prevalence rate with Tuberculosis with data retrieved from the epidemiology laboratoryof the Asaba Federal Medical Centre, Delta State. Training and test versions of the data set were separated. Constructed model yields high prediction compared to previous studies in forecast of the prevalence co-infection rate. Results generated show that the confusion matrix model had sensitivity of 0.81, specificity 0.08, and prediction accuracy of 0.937 for data not originally used to train.
利用易感感染聚类贝叶斯网络计算 Covid-19 基础结核病的合并感染率
由于每天都在加速产生大量数据,因此迫切需要采用数据挖掘流程。目前,数据分析和数据科学领域的进步为机器学习和软计算方法的使用带来了新的范式转变,这种新范式能提供一种更有益的方法来构建算法,从而有效和高效地协助专家系统为从业人员提供新的见解--以确保对潜在问题病例的潜在结核病做出全面决策。本研究探索了疾病诊断中的空间医疗数据,以有效、高效地处理尼日利亚的结核病疑难病例。贝叶斯网络算法被用于预测患有 covid-19(及其他潜在健康问题)的患者的潜在病例,并根据其与肺结核的共患病率,利用从三角洲州阿萨巴联邦医疗中心流行病学实验室获取的数据进行预测。数据集的训练版和测试版是分开的。与以往预测共同感染率的研究相比,所构建的模型具有较高的预测能力。生成的结果显示,混淆矩阵模型的灵敏度为 0.81,特异性为 0.08,对非原始训练数据的预测准确率为 0.937。
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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