《MedRxiv,4月14日,A novel high specificity COVID-19 screening method based on simple blood exams and artificial intelligence》

  • 来源专题:COVID-19科研动态监测
  • 编译者: xuwenwhlib
  • 发布时间:2020-04-15
  • A novel high specificity COVID-19 screening method based on simple blood exams and artificial intelligence

    View ORCID ProfileFelipe Soares, View ORCID ProfileAline Villavicencio, View ORCID ProfileMichel Jose Anzanello, View ORCID ProfileFlavio Sanson Fogliatto, View ORCID ProfileMarco Idiart, Mark Stevenson

    doi: https://doi.org/10.1101/2020.04.10.20061036

    Abstract

    Background: The SARS-CoV-2 virus responsible for COVID-19 poses a significant challenge to healthcare systems worldwide. Despite governmental initiatives aimed at containing the spread of the disease, several countries are experiencing unmanageable increases in the demand for ICU beds, medical equipment, and larger testing capacity. Efficient COVID-19 diagnosis enables healthcare systems to provide better care for patients while protecting caregivers from the disease. However, many countries are constrained by the limited amount of test kits available, the lack of equipment and trained professionals. In the case of patients visiting emergency rooms (ERs) with a suspect of COVID-19, a prompt diagnosis can improve the outcome and even provide information for efficient hospital management. In this context, a quick, inexpensive and readily available test to perform an initial triage at ER could help to smooth patient flow, provide better patient care, and reduce the backlog of exams. Methods: In this Case-control quantitative study, we developed a strategy backed by artificial intelligence to perform an initial screening of suspect COVID-19 cases. We developed a machine learning classifier that takes widely available simple blood exams as input and predicts if that suspect case is likely to be positive (having SARS-CoV-2) or negative(not having SARS-CoV-2). Based on this initial classification, positive cases can be referred for further highly sensitive testing (e.g. CT scan, or specific antibodies). We used publicly available data from the Albert Einstein Hospital in Brazil from 5,644 patients. Focussing on using simple blood exams, a sample of 599 subjects that had the fewest missing values for 16 common exams were selected. From these 599 patients, only 81 were positive for SARS-CoV-2 (determined by RT-PCR). Based on this data, we built an artificial intelligence classification framework, ER-CoV, aiming at determining which patients were more likely to be negative for SARS-CoV-2 when visiting an ER and that were categorized as a suspect case by medical professionals. The primary goal of this investigation is to develop a classifier with high specificity and high negative predictive values, with reasonable sensitivity. Findings: We identified that our framework achieved an average specificity of 92.16% [95% CI 91.73 - 92.59] and negative predictive value (NPV) of 95.29% [95% CI 94.65% - 95.90%]. Those values are completely aligned with our goal of providing an effective low-cost system to triage suspected patients at ERs. As for sensitivity, our model achieved an average of 63.98% [95% CI 59.82% - 67.50%] and positive predictive value (PPV) of 48.00% [95% CI 44.88% - 51.56%]. An error analysis identified that, on average, 45% of the false negative results would have been hospitalized anyway, thus the model is making mistakes for severe cases that would not be overlooked, partially mitigating the fact that the test is not high-sensitive. All code for our AI model, called ER-CoV is publicly available at https://github.com/soares-f/ER-CoV. Interpretation: Based on the capacity of our model to accurately predict which cases are negative from suspected patients arriving at emergency rooms, we envision that this framework can play an important role in patient triage. Probably the most important outcome is related to testing availability, which at this point is extremely low in many countries. Considering the achieved specificity, we would reduce by at least 90% the number of SARS-CoV-2 tests performed at emergency rooms, with the chance of getting a false negative at around 5%. The second important outcome is related to patient management in hospitals. Patients predicted as positive by our framework could be immediately separated from the other patients while waiting for the results of confirmatory tests. This could reduce the spread rate inside hospitals since in many hospitals all suspected cases are kept in the same ward. In Brazil, where the data was collected, rate infection is starting to quickly spread, the lead time of a SARS-CoV-2 can be up to 2 weeks. Funding: University of Sheffield provided financial support for the Ph.D scholarship for Felipe Soares.

    *注,本文为预印本论文手稿,是未经同行评审的初步报告,其观点仅供科研同行交流,并不是结论性内容,请使用者谨慎使用.

  • 原文来源:https://www.medrxiv.org/content/10.1101/2020.04.10.20061036v1
相关报告
  • 《MedRxiv,4月19日,(第2版更新)A novel specific artificial intelligence-based method to identify COVID-19 cases using simple blood exams》

    • 来源专题:COVID-19科研动态监测
    • 编译者:zhangmin
    • 发布时间:2020-04-21
    • A novel specific artificial intelligence-based method to identify COVID-19 cases using simple blood exams View ORCID ProfileFelipe Soares, View ORCID ProfileAline Villavicencio, View ORCID ProfileFlavio Sanson Fogliatto, View ORCID ProfileMaria Helena Pitombeira Rigatto, View ORCID ProfileMichel Jose Anzanello, View ORCID ProfileMarco Idiart, Mark Stevenson doi: https://doi.org/10.1101/2020.04.10.20061036 Abstract Background: The SARS-CoV-2 virus responsible for COVID-19 poses a significant challenge to healthcare systems worldwide. Despite governmental initiatives aimed at containing the spread of the disease, several countries are experiencing unmanageable increases in the demand for ICU beds, medical equipment, and larger testing capacity. Efficient COVID-19 diagnosis enables healthcare systems to provide better care for patients while protecting caregivers from the disease. However, many countries are constrained by the limited amount of test kits available, the lack of equipment and trained professionals. In the case of patients visiting emergency rooms (ERs) with a suspect of COVID-19, a prompt diagnosis can improve the outcome and even provide information for efficient hospital management. *注,本文为预印本论文手稿,是未经同行评审的初步报告,其观点仅供科研同行交流,并不是结论性内容,请使用者谨慎使用.
  • 《4月14日_基于简单血液检查和人工智能的新型高特异性COVID-19筛查方法》

    • 来源专题:COVID-19科研动态监测
    • 编译者:zhangmin
    • 发布时间:2020-04-16
    • 1.时间:2020年4月14日 2.机构或团队:英国谢菲尔德大学、巴西南里奥格兰德州联邦大学 3.事件概要: medRxiv预印平台于4月14日发布了英国谢菲尔德大学等的文章“A novel high specificity COVID-19 screening method based on simple blood exams and artificial intelligence”,研究人员开发了一种由人工智能支持的策略,以对COVID-19疑似病例进行初步筛查。 文章指出,高效的COVID-19诊断使医疗保健系统能够为患者提供更好的护理,同时保护医护人员免受疾病侵害。然而,许多国家受制于可用的检测试剂盒数量有限,设备和训练有素的专业人员缺乏。对于疑似COVID-19前往急诊室(ER)就诊的患者,及时诊断可以改善结果,甚至为医院的高效管理提供信息。在这种情况下,在ER进行初诊时进行快速、廉价且现成的检测有助于患者分流顺畅,提供更好的患者护理并减少检查的积压。 研究人员开发了一种机器学习分类器,它将广泛可用的简单血液检查作为输入,并预测该可疑病例是阳性(SARS-CoV-2感染)还是阴性(没有SARS-CoV-2感染)。基于此初始分类,可以将阳性病例转诊以进行进一步的高灵敏的检测(例如CT扫描或特异性抗体)。研究人员使用了来自巴西阿尔伯特·爱因斯坦医院的5644名患者的公开数据。着重于使用简单的血液检查,选择了16项常见检查中缺失值最少的599名受试者作为样本。在这599名患者中,只有81名患者的SARS-CoV-2(通过RT-PCR检测)呈阳性。基于此数据,研究人员建立了一个人工智能分类框架ER-CoV,旨在确定哪些患者到ER就诊时对SARS-CoV-2呈阴性的可能性比较大,哪些患者被医疗专业人员归类为疑似病例。文章指出其研究的主要目的是开发一种具有高特异性和高阴性预测值且具有合理灵敏度的分类器。 研究人员确定其构建的框架的平均特异性为92.16% [95%CI 91.73-92.59],阴性预测值(NPV)为95.29% [95%CI 94.65%-95.90%]。文章表示,这些数值与其目标完全一致,即提供一个有效的低成本系统对急诊室中疑似患者进行分流。研究人员指出,该模型达到的平均灵敏度为63.98% [95%CI 59.82%-67.50%],阳性预测值(PPV)为48.00% [95%CI 44.88%-51.56%]。研究人员通过误差分析发现,平均而言,45%的假阴性结果无论如何还是会住院的,因此,该模型对严重病例的错误预测是不会被忽略的,这部分缓解了该测试不高的灵敏度。该研究的人工智能模型的所有代码,称为ER-CoV,可在https://github.com/soares-f/ER-CoV公开查阅。 文章解释称,基于其模型,可以准确预测到达急诊室的疑似患者中哪些病例为COVID-19阴性,研究人员设想该框架可以在患者分流中发挥重要作用。可能最重要的结果与检测的可用性有关,而目前这在许多国家中极低。考虑到已达到的特异性,研究人员将在急诊室进行的SARS-CoV-2检测数量至少减少90%,假阴性率大约为5%。第二个重要结果与医院的患者管理有关。文章指出,其框架预测为阳性的患者可以在等待确诊结果时,立即与其他患者区分开,这可能会降低医院内部的传播率,因为在许多医院中,所有疑似病例都在同一病房中。 *注,本文为预印本论文手稿,是未经同行评审的初步报告,其观点仅供科研同行交流,并不是结论性内容,请使用者谨慎使用。 4.附件: 原文链接:https://www.medrxiv.org/content/10.1101/2020.04.10.20061036v1