Zhang Ya-Da, He Tai-Wen, Chen Yi-Ren, Xiong Bi-Dan, Zhe Zhe, Liu Ping, Tang Bin-Qing
Department of Pneumology, Shanghai Municipal Hospital of Traditional Chinese Medicine, Shanghai University of Traditional Chinese Medicine, Shanghai, 200071, People's Republic of China.
Department of Ophthalmology, Shanghai Public Health Clinical Center, Shanghai, 201500, People's Republic of China.
Infect Drug Resist. 2023 Sep 5;16:5799-5813. doi: 10.2147/IDR.S421938. eCollection 2023.
Clinical decision-making is enhanced by the development of a mathematical model for prognosis prediction. Screening criteria associated with viral shedding time and developing a prediction model facilitate clinical decision-making and are, thus, of great medical value.
This study comprised 631 patients who were hospitalized with mild COVID-19 from a single center and 30 independent variables included. The data set was randomly divided into the training set (80%) and the validation set (20%). The outcome variable included viral shedding time and whether the viral shedding time >14 days, LASSO was used to screen the influencing factors.
There were 321 males and 310 females among the 631 cases, with an average age of 62.1 years; the median viral shedding time was 12 days, and 68.8% of patients experienced viral shedding within 14 days, with fever (50.9%) and cough (44.2%) being the most common clinical manifestations. Using LASSO with viral shedding time as the outcome variable, the model with lambda as 0.1592 (λ = 0.1592) and 13 variables (eg the time from diagnosis to admission, constipation, cough, hs-CRP, IL-8, IL-1β, etc.) was more accurate. Factors were screened by LASSO and multivariable logistic regression with whether the viral shedding time >14 days as the outcome variable, five variables, including the time from diagnosis to admission, CD4 cell count, Ct value of ORF1ab, constipation, and IL-8, were included, and a nomogram was drawn; after model validation, the consistency index was 0.888, the AUC was 0.847, the sensitivity was 0.744, and the specificity was 0.830.
A clinical model developed after LASSO regression was used to identify the factors that influence the viral shedding time. The predicted performance of the model was good, and it was useful for the allocation of medical resources.
用于预后预测的数学模型的开发可增强临床决策。与病毒脱落时间相关的筛查标准以及建立预测模型有助于临床决策,因此具有重大医学价值。
本研究纳入了来自单一中心的631例轻度新型冠状病毒肺炎住院患者,并纳入了30个自变量。数据集被随机分为训练集(80%)和验证集(20%)。结局变量包括病毒脱落时间以及病毒脱落时间是否>14天,采用LASSO法筛选影响因素。
631例患者中男性321例,女性310例,平均年龄62.1岁;病毒脱落时间中位数为12天,68.8%的患者在14天内出现病毒脱落,发热(50.9%)和咳嗽(44.2%)是最常见的临床表现。以病毒脱落时间为结局变量使用LASSO法,λ为0.1592(λ = 0.1592)且包含13个变量(如从诊断到入院的时间、便秘、咳嗽、hs-CRP、IL-8、IL-1β等)的模型更为准确。以病毒脱落时间是否>14天为结局变量,通过LASSO法和多变量逻辑回归筛选因素,纳入了包括从诊断到入院的时间、CD4细胞计数、ORF1ab的Ct值、便秘和IL-8在内的5个变量,并绘制了列线图;模型验证后,一致性指数为0.888,AUC为0.847,灵敏度为0.744,特异度为0.830。
使用LASSO回归后开发的临床模型可识别影响病毒脱落时间的因素。该模型的预测性能良好,有助于医疗资源的分配。