Suppr超能文献

利用机器学习模型预测在奥密克戎BA.2.2大流行期间方舱医院收治的新冠患者康复所需时长。

Using machine learning models to predict the duration of the recovery of COVID-19 patients hospitalized in Fangcang shelter hospital during the Omicron BA. 2.2 pandemic.

作者信息

Xu Yu, Ye Wei, Song Qiuyue, Shen Linlin, Liu Yu, Guo Yuhang, Liu Gang, Wu Hongmei, Wang Xia, Sun Xiaorong, Bai Li, Luo Chunmei, Liao Tongquan, Chen Hao, Song Caiping, Huang Chunji, Wu Yazhou, Xu Zhi

机构信息

Respiratory and Critical Care Medical Center, Xinqiao Hospital, Army Medical University, Chongqing, China.

Department of Health Statistics, Army Medical University, Chongqing, China.

出版信息

Front Med (Lausanne). 2022 Nov 2;9:1001801. doi: 10.3389/fmed.2022.1001801. eCollection 2022.

Abstract

BACKGROUND

Factors that may influence the recovery of patients with confirmed SARS-CoV-2 infection hospitalized in the Fangcang shelter were explored, and machine learning models were constructed to predict the duration of recovery during the Omicron BA. 2.2 pandemic.

METHODS

A retrospective study was conducted at Hongqiao National Exhibition and Convention Center Fangcang shelter (Shanghai, China) from April 9, 2022 to April 25, 2022. The demographics, clinical data, inoculation history, and recovery information of the 13,162 enrolled participants were collected. A multivariable logistic regression model was used to identify independent factors associated with 7-day recovery and 14-day recovery. Machine learning algorithms (DT, SVM, RF, DT/AdaBoost, AdaBoost, SMOTEENN/DT, SMOTEENN/SVM, SMOTEENN/RF, SMOTEENN+DT/AdaBoost, and SMOTEENN/AdaBoost) were used to build models for predicting 7-day and 14-day recovery.

RESULTS

Of the 13,162 patients in the study, the median duration of recovery was 8 days (interquartile range IQR, 6-10 d), 41.31% recovered within 7 days, and 94.83% recovered within 14 days. Univariate analysis showed that the administrative region, age, cough medicine, comorbidities, diabetes, coronary artery disease (CAD), hypertension, number of comorbidities, CT value of the ORF gene, CT value of the N gene, ratio of ORF/IC, and ratio of N/IC were associated with a duration of recovery within 7 days. Age, gender, vaccination dose, cough medicine, comorbidities, diabetes, CAD, hypertension, number of comorbidities, CT value of the ORF gene, CT value of the N gene, ratio of ORF/IC, and ratio of N/IC were related to a duration of recovery within 14 days. In the multivariable analysis, the receipt of two doses of the vaccination vs. unvaccinated (OR = 1.118, 95% CI = 1.003-1.248; = 0.045), receipt of three doses of the vaccination vs. unvaccinated (OR = 1.114, 95% CI = 1.004-1.236; = 0.043), diabetes (OR = 0.383, 95% CI = 0.194-0.749; = 0.005), CAD (OR = 0.107, 95% CI = 0.016-0.421; = 0.005), hypertension (OR = 0.371, 95% CI = 0.202-0.674; = 0.001), and ratio of N/IC (OR = 3.686, 95% CI = 2.939-4.629; < 0.001) were significantly and independently associated with a duration of recovery within 7 days. Gender (OR = 0.736, 95% CI = 0.63-0.861; < 0.001), age (30-70) (OR = 0.738, 95% CI = 0.594-0.911; < 0.001), age (>70) (OR = 0.38, 95% CI = 0292-0.494; < 0.001), receipt of three doses of the vaccination vs. unvaccinated (OR = 1.391, 95% CI = 1.12-1.719; = 0.0033), cough medicine (OR = 1.509, 95% CI = 1.075-2.19; = 0.023), and symptoms (OR = 1.619, 95% CI = 1.306-2.028; < 0.001) were significantly and independently associated with a duration of recovery within 14 days. The SMOTEEN/RF algorithm performed best, with an accuracy of 90.32%, sensitivity of 92.22%, specificity of 88.31%, F1 score of 90.71%, and AUC of 89.75% for the 7-day recovery prediction; and an accuracy of 93.81%, sensitivity of 93.40%, specificity of 93.81%, F1 score of 93.42%, and AUC of 93.53% for the 14-day recovery prediction.

CONCLUSION

Age and vaccination dose were factors robustly associated with accelerated recovery both on day 7 and day 14 from the onset of disease during the Omicron BA. 2.2 wave. The results suggest that the SMOTEEN/RF-based model could be used to predict the probability of 7-day and 14-day recovery from the Omicron variant of SARS-CoV-2 infection for COVID-19 prevention and control policy in other regions or countries. This may also help to generate external validation for the model.

摘要

背景

探讨了可能影响在方舱医院住院的新型冠状病毒肺炎确诊患者康复的因素,并构建机器学习模型以预测奥密克戎BA.2.2疫情期间的康复时长。

方法

于2022年4月9日至2022年4月25日在中国上海虹桥国家会展中心方舱医院开展一项回顾性研究。收集了13162名纳入研究参与者的人口统计学资料、临床数据、接种史及康复信息。采用多变量逻辑回归模型确定与7天康复和14天康复相关的独立因素。运用机器学习算法(决策树、支持向量机、随机森林、决策树/自适应增强算法、自适应增强算法、合成少数过采样技术/编辑最近邻法/决策树、合成少数过采样技术/编辑最近邻法/支持向量机、合成少数过采样技术/编辑最近邻法/随机森林、合成少数过采样技术+决策树/自适应增强算法、合成少数过采样技术/自适应增强算法)构建预测7天和14天康复的模型。

结果

研究中的13162例患者,康复时长中位数为8天(四分位数间距IQR,6 - 10天),41.31%的患者在7天内康复,94.83%的患者在14天内康复。单因素分析显示,行政区、年龄、止咳药、合并症、糖尿病、冠状动脉疾病(CAD)、高血压、合并症数量、开放阅读框(ORF)基因CT值、核衣壳(N)基因CT值、ORF/内对照(IC)比值及N/IC比值与7天内康复时长相关。年龄、性别、接种剂量、止咳药、合并症、糖尿病、CAD、高血压、合并症数量、ORF基因CT值、N基因CT值、ORF/IC比值及N/IC比值与14天内康复时长相关。多变量分析中,接种两剂疫苗与未接种相比(比值比[OR]=1.118,95%置信区间[CI]=1.003 - 1.248;P = 0.045),接种三剂疫苗与未接种相比(OR = 1.114,95% CI = 1.004 - 1.236;P = 0.043),糖尿病(OR = 0.383,95% CI = 0.194 - 0.749;P = 0.005),CAD(OR = 0.107,95% CI = 0.016 - 0.421;P = 0.005),高血压(OR = 0.371,95% CI = 0.202 - 0.674;P = 0.001)及N/IC比值(OR = 3.686,95% CI = 2.939 - 4.629;P < 0.001)与7天内康复时长显著且独立相关。性别(OR = 0.736,95% CI = 0.63 - 0.861;P < 0.001),年龄(30 - 70岁)(OR = 0.738,95% CI = 0.594 - 0.911;P < 0.001),年龄(>70岁)(OR = 0.38,95% CI = 0.292 - 0.494;P < 0.001),接种三剂疫苗与未接种相比(OR = 1.391,95% CI = 1.12 - 1.719;P = 0.0033),止咳药(OR = 1.509,95% CI = 1.075 - 2.19;P = 0.023)及症状(OR = 1.619,95% CI = 1.306 - 2.028;P < 0.001)与14天内康复时长显著且独立相关。合成少数过采样技术/编辑最近邻法/随机森林算法表现最佳,7天康复预测的准确率为90.32%,灵敏度为92.22%,特异度为88.31%,F1分数为90.71%,曲线下面积(AUC)为89.75%;14天康复预测的准确率为93.81%,灵敏度为93.40%,特异度为93.81%,F1分数为93.42%,AUC为93.53%。

结论

在奥密克戎BA.2.2疫情期间,年龄和接种剂量是与发病后第7天和第14天加速康复密切相关的因素。结果表明,基于合成少数过采样技术/编辑最近邻法/随机森林的模型可用于预测其他地区或国家新型冠状病毒奥密克戎变异株感染后7天和14天康复概率,以用于新冠疫情防控政策制定。这也可能有助于对该模型进行外部验证。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bcfa/9666500/67ce99c64946/fmed-09-1001801-g0001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验