Yao Haochen, Zhang Nan, Zhang Ruochi, Duan Meiyu, Xie Tianqi, Pan Jiahui, Peng Ejun, Huang Juanjuan, Zhang Yingli, Xu Xiaoming, Xu Hong, Zhou Fengfeng, Wang Guoqing
Department of Pathogenobiology, The Key Laboratory of Zoonosis, Chinese Ministry of Education, College of Basic Medical Science, Jilin University, Changchun, China.
The First Hospital of Jilin University, Jilin University, Changchun, China.
Front Cell Dev Biol. 2020 Jul 31;8:683. doi: 10.3389/fcell.2020.00683. eCollection 2020.
The recent outbreak of the coronavirus disease-2019 (COVID-19) caused serious challenges to the human society in China and across the world. COVID-19 induced pneumonia in human hosts and carried a highly inter-person contagiousness. The COVID-19 patients may carry severe symptoms, and some of them may even die of major organ failures. This study utilized the machine learning algorithms to build the COVID-19 severeness detection model. Support vector machine (SVM) demonstrated a promising detection accuracy after 32 features were detected to be significantly associated with the COVID-19 severeness. These 32 features were further screened for inter-feature redundancies. The final SVM model was trained using 28 features and achieved the overall accuracy 0.8148. This work may facilitate the risk estimation of whether the COVID-19 patients would develop the severe symptoms. The 28 COVID-19 severeness associated biomarkers may also be investigated for their underlining mechanisms how they were involved in the COVID-19 infections.
近期爆发的2019冠状病毒病(COVID-19)给中国乃至全球人类社会带来了严峻挑战。COVID-19可导致人类宿主发生肺炎,且具有高度人际传染性。COVID-19患者可能出现严重症状,部分患者甚至可能死于主要器官衰竭。本研究利用机器学习算法构建了COVID-19严重程度检测模型。在检测到32个特征与COVID-19严重程度显著相关后,支持向量机(SVM)显示出了良好的检测准确性。对这32个特征进一步筛选以去除特征间冗余。最终的SVM模型使用28个特征进行训练,总体准确率达到0.8148。这项工作可能有助于对COVID-19患者是否会出现严重症状进行风险评估。这28个与COVID-19严重程度相关的生物标志物的潜在机制,即它们如何参与COVID-19感染,也有待研究。