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使用基于机器学习的模型来揭示新冠病毒疾病(COVID-19)风险因素之间的复杂关系,以预测住院患者的死亡率并识别高危人群:一项大型回顾性研究

Unraveling complex relationships between COVID-19 risk factors using machine learning based models for predicting mortality of hospitalized patients and identification of high-risk group: a large retrospective study.

作者信息

Banoei Mohammad Mehdi, Rafiepoor Haniyeh, Zendehdel Kazem, Seyyedsalehi Monireh Sadat, Nahvijou Azin, Allameh Farshad, Amanpour Saeid

机构信息

Department of Biological Sciences, University of Calgary, Calgary, AB, Canada.

Cancer Biology Research Center, Cancer Institute, Tehran University of Medical Sciences, Tehran, Iran.

出版信息

Front Med (Lausanne). 2023 May 4;10:1170331. doi: 10.3389/fmed.2023.1170331. eCollection 2023.

Abstract

BACKGROUND

At the end of 2019, the coronavirus disease 2019 (COVID-19) pandemic increased the hospital burden of COVID-19 caused by the SARS-Cov-2 and became the most significant health challenge for nations worldwide. The severity and high mortality of COVID-19 have been correlated with various demographic characteristics and clinical manifestations. Prediction of mortality rate, identification of risk factors, and classification of patients played a crucial role in managing COVID-19 patients. Our purpose was to develop machine learning (ML)-based models for the prediction of mortality and severity among patients with COVID-19. Identifying the most important predictors and unraveling their relationships by classification of patients to the low-, moderate- and high-risk groups might guide prioritizing treatment decisions and a better understanding of interactions between factors. A detailed evaluation of patient data is believed to be important since COVID-19 resurgence is underway in many countries.

RESULTS

The findings of this study revealed that the ML-based statistically inspired modification of the partial least square (SIMPLS) method could predict the in-hospital mortality among COVID-19 patients. The prediction model was developed using 19 predictors including clinical variables, comorbidities, and blood markers with moderate predictability ( = 0.24) to separate survivors and non-survivors. Oxygen saturation level, loss of consciousness, and chronic kidney disease (CKD) were the top mortality predictors. Correlation analysis showed different correlation patterns among predictors for each non-survivor and survivor cohort separately. The main prediction model was verified using other ML-based analyses with a high area under the curve (AUC) (0.81-0.93) and specificity (0.94-0.99). The obtained data revealed that the mortality prediction model can be different for males and females with diverse predictors. Patients were classified into four clusters of mortality risk and identified the patients at the highest risk of mortality, which accentuated the most significant predictors correlating with mortality.

CONCLUSION

An ML model for predicting mortality among hospitalized COVID-19 patients was developed considering the interactions between factors that may reduce the complexity of clinical decision-making processes. The most predictive factors related to patient mortality were identified by assessing and classifying patients into different groups based on their sex and mortality risk (low-, moderate-, and high-risk groups).

摘要

背景

2019年底,2019冠状病毒病(COVID-19)大流行增加了由严重急性呼吸综合征冠状病毒2(SARS-CoV-2)引起的COVID-19的医院负担,并成为全球各国面临的最重大健康挑战。COVID-19的严重性和高死亡率与各种人口统计学特征和临床表现相关。死亡率预测、危险因素识别以及患者分类在COVID-19患者管理中发挥了关键作用。我们的目的是开发基于机器学习(ML)的模型,用于预测COVID-19患者的死亡率和严重程度。通过将患者分类为低、中、高风险组来识别最重要的预测因素并揭示它们之间的关系,可能会指导优先治疗决策,并更好地理解因素之间的相互作用。鉴于许多国家正在出现COVID-19疫情反弹,对患者数据进行详细评估被认为很重要。

结果

本研究结果表明,基于ML的偏最小二乘统计启发式修正(SIMPLS)方法可以预测COVID-19患者的院内死亡率。使用包括临床变量、合并症和血液标志物在内的19个预测因素开发了预测模型,其预测能力中等( = 0.24),用于区分幸存者和非幸存者。血氧饱和度水平、意识丧失和慢性肾脏病(CKD)是主要的死亡预测因素。相关性分析分别显示了每个非幸存者和幸存者队列中预测因素之间不同的相关模式。主要预测模型通过其他基于ML的分析进行了验证,曲线下面积(AUC)较高(0.81 - 0.93),特异性较高(0.94 - 0.99)。获得的数据表明,男性和女性的死亡率预测模型可能不同,且预测因素各异。患者被分为四个死亡风险类别,并识别出死亡率最高的患者,这突出了与死亡率相关的最重要预测因素。

结论

考虑到可能降低临床决策过程复杂性的因素之间的相互作用,开发了一种用于预测住院COVID-19患者死亡率的ML模型。通过根据患者的性别和死亡风险(低、中、高风险组)对患者进行评估和分类,确定了与患者死亡率最相关的预测因素。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4ec7/10192907/4d7be3e7a778/fmed-10-1170331-g001.jpg

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