论文标题
机器学习和荟萃分析方法以识别患者合并症和症状,这些症状增加了Covid-19的死亡率
Machine Learning and Meta-Analysis Approach to Identify Patient Comorbidities and Symptoms that Increased Risk of Mortality in COVID-19
论文作者
论文摘要
背景:为患有Covid-19的患者提供适当的护理,由大流行SARS-COV-2病毒引起的疾病是一项重大的全球挑战。许多被感染的人患有现有的疾病,可能会与Covid-19相互作用,以增加症状严重程度和死亡率风险。 COVID-19患者合并症可能对个人患严重疾病和死亡的风险有用。因此,准确地确定合并症如何与严重症状相关,因此死亡率将大大有助于19 COVID-19-COVID CARE计划和提供。 方法:为了评估患者合并症与COVID-19的严重程度和死亡率的相互作用,我们对已发表的全球文献进行了荟萃分析,并使用汇总的Covid-19 Global DataSet进行了机器学习预测分析。 结果:我们的荟萃分析确定了慢性阻塞性肺疾病(COPD),脑血管疾病(CEVD),心血管疾病(CVD),2型糖尿病,恶性肿瘤和高血压与当前公开文学中的共同性-19严重程度有关。使用新型聚合队列数据的机器学习分类类似地发现了COPD,CVD,CKD,2型糖尿病,恶性肿瘤和高血压以及哮喘,这是将死者与在Covid-19中生存的人分类的最重要特征。尽管年龄和性别是死亡率的最重要的预测指标,但就症状 - 症状组合而言,据观察,肺炎 - 肺炎,肺炎糖尿病和急性呼吸窘迫综合征(ARDS) - hypertension-- hypertenimen-示出了对美联囊死亡率的最重要影响。 结论:这些结果突出了患者人群的最大风险,即与19日相关的严重发病率和死亡率,这对医院资源的优先次序有影响。
Background: Providing appropriate care for people suffering from COVID-19, the disease caused by the pandemic SARS-CoV-2 virus is a significant global challenge. Many individuals who become infected have pre-existing conditions that may interact with COVID-19 to increase symptom severity and mortality risk. COVID-19 patient comorbidities are likely to be informative about individual risk of severe illness and mortality. Accurately determining how comorbidities are associated with severe symptoms and mortality would thus greatly assist in COVID-19 care planning and provision. Methods: To assess the interaction of patient comorbidities with COVID-19 severity and mortality we performed a meta-analysis of the published global literature, and machine learning predictive analysis using an aggregated COVID-19 global dataset. Results: Our meta-analysis identified chronic obstructive pulmonary disease (COPD), cerebrovascular disease (CEVD), cardiovascular disease (CVD), type 2 diabetes, malignancy, and hypertension as most significantly associated with COVID-19 severity in the current published literature. Machine learning classification using novel aggregated cohort data similarly found COPD, CVD, CKD, type 2 diabetes, malignancy and hypertension, as well as asthma, as the most significant features for classifying those deceased versus those who survived COVID-19. While age and gender were the most significant predictor of mortality, in terms of symptom-comorbidity combinations, it was observed that Pneumonia-Hypertension, Pneumonia-Diabetes and Acute Respiratory Distress Syndrome (ARDS)-Hypertension showed the most significant effects on COVID-19 mortality. Conclusions: These results highlight patient cohorts most at risk of COVID-19 related severe morbidity and mortality which have implications for prioritization of hospital resources.