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Preliminary Exploration of the Initial Diagnostic Prediction Model of Moderate Coronavirus Disease 2019 (2019-nCoV) Based on Clinical Data

机译:基于临床资料的中度冠状病毒疾病初步诊断预测模型初步探索探讨2019(2019年NCOV)

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Objective: To explore those differences and relationships of the initial diagnostic clinical data between confirmed cases of 2019-nCoV and suspected cases of COVID-19, and then to establish prediction models for predicting the probability of the first diagnosis of 2019-nCoV. Methods: A total of 81 suspected cases and 87 confirmed cases of moderate 2019-nCoV diagnosed initially in the isolation wards of the First People’s Hospital of Wuhu and the People’s Hospital of Wuwei and Wuhan Caidian Module Hospital with the help of our hospital doctors were gathered, and retrospectively analyzed. Results: The most common symptoms were fever (76.79%) and cough (64.29%) in the total of 168 cases. The median age was 45 (35 - 56) years old in the 87 confirmed cases of moderate 2019-nCoV, older than the median age 36 (29 - 50) in the 81 suspected cases. There were significant more in the former than in the latter in the incidence of myalgia, ground-glass opacity (GGO), invasions of lesion in the peripheral lobes, vascular thickening and bronchial wall thickening, interlobular septal thicking, and small pulmonary nodules. On the contrary, there were less in the former than in the latter in the total number of leukocytes and neutrophils in blood routine examination and the levels of procalcitonin (PCT). Two groups were statistically significantly different ( P < 0.05). Multivariate logistic regression analysis showed that age, fever, myalgia, GGO, vascular thickening and bronchial wall thickening, invasions of lesion in the peripheral lobes were independent factors for identification of 2019-nCoV, and the total number of leukocytes, cough, pharyngalgia and headache were negatively related. The established mathematical equation for predicting model for predicting the probability of the first diagnosis of 2019-nCoV is: P = e~( x )/(1 + e~( x )), x = &minus; 6.226 + (0.071 × ages) + (1.720 × fever) + (2.858 × myalgia) + (2.131 × GGO) + (3.000 × vascular thickening and bron-chial wall thickening) + (3.438 × invasions of lesion in the peripheral lobes) + ( &minus; 0.304 × the number of leukocytes) + ( &minus; 1.478 × cough) + ( &minus; 1.830 × pharyngalgia) + ( &minus; 2.413 × headache), where e is a natural logarithm. The area under the ROC curve (AUC) of this model was calculated to be 0.945 (0.915 - 0.976). The sensitivity is 0.920 and the specificity is 0.827 when the appropriate critical point is 0.360. Conclusions: A mathematical equation prediction model for predicting the probability of the first diagnosis of 2019-nCoV can be established based on the initial diagnostic clinical data of moderate 2019-nCoV. The prediction model is a good assistant diagnostic method for its high accurateness.
机译:目的:探讨经确诊病例初期诊断临床数据的差异及关系,涉及Covid-19的疑似病例,建立预测2019-NCOV第一次诊断概率的预测模型。方法:总共81例疑似病例,87例确诊的2019年 - NCOV,最初诊断出在芜湖第一人民医院的隔离病房和武威和武汉川美模块医院的帮助下,收集了我们医院的帮助,并回顾性分析。结果:最常见的症状是发烧(76.79%),咳嗽(64.29%),共168例。在87岁的2019年 - NCOV中位数年龄在87岁时,中位年龄为45岁(35-56)岁,比在81例疑似病例中的中位数36(29-50)大。前者比后者在肌痛发病率,地玻璃不透明度(GGO),血管增稠和支气管壁增厚,间隔子间厚度和小肺结核中的病变侵扰症,血管增稠和支气管壁和小肺结节中的侵蚀入侵。相反,前者比后者在血液常规检查中的白细胞和中性粒细胞总数和proCalcitonin(PCT)的水平中,前者少。两组统计学上有统计学显着差异(P <0.05)。多变量逻辑回归分析显示,年龄,发热,肌痛,GGO,血管增稠和支气管壁增厚,外周叶中的病变入侵是鉴定2019-NCOV的独立因素,以及白细胞,咳嗽,咽喉和头痛的总数与否定相关。预测模型的建立数学方程预测2019-NCOV的第一诊断概率是:P = E〜(x)/(1 + e〜(x)),x =&minus; 6.226 +(0.071×ages)+(1.720×发烧)+(2.858×Myalgia)+(2.131×ggo)+(3.000×血管增稠和支架圆形墙增厚)+(周边叶片中的病变3.438×缺陷) +(&减去;白细胞的数量0.304倍)+(&减去; 1.478×咳嗽)+(&减去; 1.830×咽部)+(&minus; 2.413×头痛),其中e是一种自然对数。该模型的ROC曲线(AUC)下的区域计算为0.945(0.915 - 0.976)。灵敏度为0.920,当适当的临界点为0.360时,特异性为0.827。结论:基于2019-NCOV的初始诊断临床数据,建立了一种数学方程预测模型,可以建立2019年 - NCOV的第一次诊断的概率。预测模型是其高精度的良好辅助诊断方法。

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