Prediction of pulmonary gas exchange disorders in patients with long-term COVID-19 using machine learning methods

O. Savushkina, P. Astanin, E. Kryukov, A. A. Zaicev
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Abstract

Introduction. Hospital discharge after COVID-19 does not mean a complete recovery.Aim. To predict lung gas-exchange impairment in patients after COVID-19-associated pneumonia.Materials and methods. An observational retrospective cross-sectional study was conducted. 316 patients (78% men) with long-term COVID-19 and postCOVID computed tomography (CT) changes, without lung diseases in history were enrolled. Spirometry, body plethysmography, diffusion test were performed.Results. In whole group the medians of ventilation parameters were within the normal ranges. However, 78 (25%) patients had a restrictive type of ventilation disorders, 23 (7%) had airway obstruction, and 174 (55%) had a decrease in diffusion capacity of the lungs (DLCO). The general group was divided into two subgroups depending on the DLCO value: subgroup 1 – DLCO is within the normal range and subgroup 2 – DLCO is reduced. The DLCO analysis between the subgroups showed statistically significant differences in duration from the COVID19 onset (lower in subgroup 2) and in the computer tomography abnormalities in the acute period of COVID-19 (CTmax) (more in subgroup 2) whereas there were no differences in gender, age, body mass index (BMI). Analyzing the odds ratio showed that the chance of a decrease in DLCO after COVID-19 increased 6.5 times with CTmax of more than 45%, 4 times with a duration from the COVID-19 onset less than 225 days, 1.9 times if the age is younger than 63 years while male gender and BMI did not have an impact on DLCO in the post-COVID period. The logistic regression model with identified predictors demonstrated the accuracy, sensitivity and specificity of 81%, 82%, 80%, respectively.Conclusion. According to our model CTmax of more than 45%, the duration from the COVID-19 onset less than 225 days, age younger than 63 years are important predictors for reducing DLCO after COVID-19.
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用机器学习方法预测长期COVID-19患者肺气体交换障碍
介绍。新冠肺炎患者出院不代表完全康复。预测covid -19相关性肺炎患者肺气体交换功能障碍。材料和方法。进行了一项观察性回顾性横断面研究。316例患者(78%为男性)长期患有COVID-19和COVID-19后计算机断层扫描(CT)改变,无肺部病史。进行肺活量测定、体体积脉搏图、弥散试验。全组通气参数中位数均在正常范围内。然而,78例(25%)患者有限制性通气障碍,23例(7%)患者有气道阻塞,174例(55%)患者有肺弥散能力下降(DLCO)。一般组根据DLCO值分为两个子组:子组1 - DLCO在正常范围内,子组2 - DLCO降低。亚组间DLCO分析显示,从COVID-19发病持续时间(亚组2较短)和COVID-19急性期计算机断层扫描异常(CTmax)(亚组2较多)差异有统计学意义,而性别、年龄、体重指数(BMI)差异无统计学意义。优势比分析显示,CTmax大于45%时DLCO下降的几率增加6.5倍,发病时间小于225天时增加4倍,年龄小于63岁时增加1.9倍,而男性性别和BMI对DLCO没有影响。logistic回归模型的预测准确度为81%,灵敏度为82%,特异度为80%。根据CTmax大于45%的模型,COVID-19发病时间小于225天,年龄小于63岁是COVID-19后DLCO降低的重要预测因子。
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