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基于全血细胞计数参数的COVID-19疾病严重程度早期预测评分系统的开发与验证

Development and Validation of an Early Scoring System for Prediction of Disease Severity in COVID-19 Using Complete Blood Count Parameters.

作者信息

Rahman Tawsifur, Khandakar Amith, Hoque Md Enamul, Ibtehaz Nabil, Kashem Saad Bin, Masud Reehum, Shampa Lutfunnahar, Hasan Mohammad Mehedi, Islam Mohammad Tariqul, Al-Maadeed Somaya, Zughaier Susu M, Badran Saif, Doi Suhail A R, Chowdhury Muhammad E H

机构信息

Department of Electrical EngineeringQatar University Doha Qatar.

Department of Biomedical EngineeringMilitary Institute of Science and Technology Dhaka 1216 Bangladesh.

出版信息

IEEE Access. 2021 Aug 16;9:120422-120441. doi: 10.1109/ACCESS.2021.3105321. eCollection 2021.

Abstract

The coronavirus disease 2019 (COVID-19) after outbreaking in Wuhan increasingly spread throughout the world. Fast, reliable, and easily accessible clinical assessment of the severity of the disease can help in allocating and prioritizing resources to reduce mortality. The objective of the study was to develop and validate an early scoring tool to stratify the risk of death using readily available complete blood count (CBC) biomarkers. A retrospective study was conducted on twenty-three CBC blood biomarkers for predicting disease mortality for 375 COVID-19 patients admitted to Tongji Hospital, China from January 10 to February 18, 2020. Machine learning based key biomarkers among the CBC parameters as the mortality predictors were identified. A multivariate logistic regression-based nomogram and a scoring system was developed to categorize the patients in three risk groups (low, moderate, and high) for predicting the mortality risk among COVID-19 patients. Lymphocyte count, neutrophils count, age, white blood cell count, monocytes (%), platelet count, red blood cell distribution width parameters collected at hospital admission were selected as important biomarkers for death prediction using random forest feature selection technique. A CBC score was devised for calculating the death probability of the patients and was used to categorize the patients into three sub-risk groups: low (<=5%), moderate (>5% and <=50%), and high (>50%), respectively. The area under the curve (AUC) of the model for the development and internal validation cohort were 0.961 and 0.88, respectively. The proposed model was further validated with an external cohort of 103 patients of Dhaka Medical College, Bangladesh, which exhibits in an AUC of 0.963. The proposed CBC parameter-based prognostic model and the associated web-application, can help the medical doctors to improve the management by early prediction of mortality risk of the COVID-19 patients in the low-resource countries.

摘要

2019年冠状病毒病(COVID-19)在武汉爆发后,迅速在全球蔓延。对该疾病严重程度进行快速、可靠且易于获取的临床评估,有助于合理分配资源并确定优先顺序,以降低死亡率。本研究的目的是开发并验证一种早期评分工具,利用现成的全血细胞计数(CBC)生物标志物对死亡风险进行分层。对2020年1月10日至2月18日在中国同济医院收治的375例COVID-19患者的23种CBC血液生物标志物进行回顾性研究,以预测疾病死亡率。确定了基于机器学习的CBC参数中的关键生物标志物作为死亡率预测指标。开发了基于多变量逻辑回归的列线图和评分系统,将患者分为三个风险组(低、中、高),以预测COVID-19患者的死亡风险。利用随机森林特征选择技术,将入院时收集的淋巴细胞计数、中性粒细胞计数、年龄、白细胞计数、单核细胞(%)、血小板计数、红细胞分布宽度参数作为死亡预测的重要生物标志物。设计了一个CBC评分来计算患者的死亡概率,并将患者分为三个亚风险组:低(<=5%)、中(>5%且<=50%)、高(>50%)。该模型在开发队列和内部验证队列中的曲线下面积(AUC)分别为0.961和0.88。该模型在孟加拉国达卡医学院103例患者的外部队列中进一步验证,AUC为0.963。所提出的基于CBC参数的预后模型及相关网络应用程序,可帮助低资源国家的医生通过早期预测COVID-19患者的死亡风险来改善管理。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/af8b/8545188/7de1152f72e0/chowd1-3105321.jpg

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