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首页> 外文期刊>Frontiers in Public Health >COVID-19 Patient Health Prediction Using Boosted Random Forest Algorithm
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COVID-19 Patient Health Prediction Using Boosted Random Forest Algorithm

机译:Covid-19使用提升随机林算法的患者健康预测

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Integration of artificial intelligence (AI) techniques in wireless infrastructure, real-time collection, and processing of end-user devices is now in high demand. It is now superlative to use AI to detect and predict pandemics of a colossal nature. The Coronavirus disease 2019 (COVID-19) pandemic, which originated in Wuhan China, has had disastrous effects on the global community and has overburdened advanced healthcare systems throughout the world. Globally; over 4,063,525 confirmed cases and 282,244 deaths have been recorded as of 11th May 2020, according to the European Centre for Disease Prevention and Control agency. However, the current rapid and exponential rise in the number of patients has necessitated efficient and quick prediction of the possible outcome of an infected patient for appropriate treatment using AI techniques. This paper proposes a fine-tuned Random Forest model boosted by the AdaBoost algorithm. The model uses the COVID-19 patient's geographical, travel, health, and demographic data to predict the severity of the case and the possible outcome, recovery, or death. The model has an accuracy of 94% and a F1 Score of 0.86 on the dataset used. The data analysis reveals a positive correlation between patients' gender and deaths, and also indicates that the majority of patients are aged between 20 and 70 years.
机译:人工智能(AI)技术在无线基础设施中的整合,实时收集和最终用户设备的处理现在处于高需求。它现在是最高级的,使用AI检测和预测巨大性质的流行病。 2019年冠状病毒疾病2019(Covid-19)发病,它起源于武汉中国,对全球社区产生了灾难性影响,并在全球范围内负担过高的先进医疗保健系统。在全球;据欧洲疾病预防和控制机构中心称,截至2020年5月11日,已确认案件超过4,063,525个已确认的案件和282,244人死亡。然而,当前患者数量的快速和指数上升已经需要使用AI技术进行适当治疗的受感染患者的可能结果的有效和快速预测。本文提出了由Adaboost算法提升的微调随机林模型。该模型使用Covid-19患者的地理,旅行,健康和人口统计数据来预测案件的严重程度以及可能的结果,恢复或死亡。该模型的准确性为94%,在使用的数据集中的F1分数为0.86。数据分析揭示了患者性别和死亡之间的正相关性,也表明大多数患者在20到70年之间岁。

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