基于堆叠的MERS-CoV生存能力预测方法

Hadil Shaiba, Maya John
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摘要

沙特阿拉伯是全球中东呼吸综合征冠状病毒(MERS-CoV)感染率最高的国家。自2012年爆发以来,沙特阿拉伯已记录了近2000例病例,死亡率很高。该疾病的来源仍不清楚,但很明显,中东呼吸综合征冠状病毒可通过与人或动物的直接或间接交流传播。在我们的研究中,我们评估了不同的机器学习模型,这些模型可以准确预测患者从MERS-CoV中康复的可能性。这些数据来自沙特卫生部网站,对应的年份为2015年至2018年4月。为了提高单个模型的性能,构建了基于堆叠的集成学习。在我们的研究中,我们检查了以下单个分类器:naïve贝叶斯、支持向量机、逻辑回归、k近邻、贝叶斯网络、J48和随机森林以及提出的基于堆栈的模型。结果表明,在大多数情况下,简单的机器学习技术在预测恢复时表现良好,而不是预测死亡情况。提出的基于堆叠的集成学习方法在预测死亡病例的同时保持了对恢复病例的良好预测能力。该方法是一种集成学习方法,其平衡精度为0.751,G-Mean为0.750。预测患者的生存能力有助于制定预防和恢复MERS-CoV的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing the Prediction of MERS-CoV Survivability Using Stacking-Based Method
Saudi Arabia has recorded the highest Middle East Respiratory Syndrome Coronavirus (MERS-CoV) infections globally. Nearly 2,000 cases have been recorded in Saudi Arabia, with a high mortality rate, since the outbreak in 2012. The source of the disease remains unclear, and it has been evident that MERS-CoV can spread through communicating, directly or indirectly, with humans or animals. In our study, we evaluated different machine learning models that can accurately predict the probability of a patient's recovery from MERS-CoV. The data was from the Saudi Ministry of Health’s website corresponding to the years from 2015 to April 2018. A stacking-based ensemble learning has been built to increase the performance of individual models. In our study, we examined the following individual classifiers: naïve Bayes, support vector machine, logistic regression, k-nearest neighbour, Bayesian networks, J48, and random forest along with the proposed stacking-based model. The results show that, in most cases, simple machine learning techniques perform well when predicting recovery unlike predicting death cases. The proposed stacking-based ensemble learning method has shown improvement in the prediction of death cases while maintaining a good predictive power for recovery cases. The proposed technique, which is an ensemble learning method, performed best with 0.751 balanced accuracy and 0.750 G-Mean. Predicting the survivability of patients can help in decision-making on prevention and recovery of MERS-CoV.
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