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使用机器学习进行高性能的2019冠状病毒病筛查。

High performance COVID-19 screening using machine learning.

作者信息

Elhechmi Youssef Zied, Mrad Mehdi, Gdoura Mariem, Nouri Anissa, Ben Saad Helmi, Ghrairi Najla, Triki Henda

机构信息

Hope Horizon International.

Laboratory of viruses, vectors and hosts: LR20IPT10, Institut Pasteur de Tunis, University of Tunis El Manar, 13, Place Pasteur, 1002 Tunis Belvédère, Tunisia.

出版信息

Tunis Med. 2025 Jan 5;103(1):10-17. doi: 10.62438/tunismed.v103i1.5401.

Abstract

Since the World Health Organization declared the Coronavirus Disease 2019 (COVID-19) pandemic as an international concern of public health emergency in the early 2020, several strategies have been initiated in many countries to prevent healthcare services breakdown and collapse of healthcare structures. The most important strategy was the increased testing, diagnosis, isolation, contact tracing to identify, quarantine and test close contacts. In this context, finding a rapid, reliable and affordable tool for COVID-19 screening was the main challenge to address the pandemic. Molecular diagnosis by reverse transcriptase polymerase chain reaction (RT-PCR), even though considered as the gold standard in the diagnosis of COVID-19, was time consuming and therefore does not fit the objective of rapid screening. In addition, serological tests to detect anti-severe acute respiratory syndrome coronavirus 2 (SARS-COV-2) antibodies suffered from low sensitivity. Prediction models based on machine-learning (ML) that combined several clinical features to estimate the risk of COVID-19 have been developed. To address these screening challenges, we created a ML model (MLM) based on gradient boosting method. We included several clinical features and the daily geographic prevalence of COVID-19 cases in the MLM. The MLM was trained on 1554 cases (757 COVID-19), and tested on 547 cases (169 COVID-19). Our MLM successfully predicted RT-PCR positivity with an accuracy of 97.06%. Moreover, the variable sensitivity and specificity of our MLM depending on the disease geographic prevalence has introduced the concept of "dynamic" disease screening. In the context of future world pandemic emergencies, we believe that this MLM method can be very useful as a rapid, reliable and dynamic screening tool for contagious diseases, especially in the developing countries.

摘要

自世界卫生组织于2020年初宣布2019冠状病毒病(COVID-19)大流行构成国际关注的突发公共卫生事件以来,许多国家已启动多项策略,以防止医疗服务中断和医疗体系崩溃。最重要的策略是增加检测、诊断、隔离以及接触者追踪,以识别、检疫并检测密切接触者。在此背景下,找到一种快速、可靠且经济实惠的COVID-19筛查工具是应对这一疫情的主要挑战。逆转录聚合酶链反应(RT-PCR)进行分子诊断,尽管被视为COVID-19诊断的金标准,但耗时较长,因此不符合快速筛查的目标。此外,检测抗严重急性呼吸综合征冠状病毒2(SARS-CoV-2)抗体的血清学检测灵敏度较低。基于机器学习(ML)的预测模型已被开发出来,该模型结合多种临床特征来估计COVID-19的风险。为应对这些筛查挑战,我们基于梯度提升方法创建了一个机器学习模型(MLM)。我们在MLM中纳入了多种临床特征以及COVID-19病例的每日地理流行率。该MLM在1554例病例(757例COVID-19)上进行训练,并在547例病例(169例COVID-19)上进行测试。我们的MLM成功预测RT-PCR阳性的准确率为97.06%。此外,我们的MLM根据疾病地理流行率而具有的可变灵敏度和特异性引入了“动态”疾病筛查的概念。在未来世界大流行紧急情况的背景下,我们认为这种MLM方法作为一种快速、可靠且动态的传染病筛查工具可能非常有用,尤其是在发展中国家。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7d7e/11906240/be1b5b3323f8/capture9.jpg

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