Artificial Intelligence in Predicting Clinical Outcome in COVID-19 Patients from Clinical, Biochemical and a Qualitative Chest X-Ray Scoring System

Q3 Medicine Reports in Medical Imaging Pub Date : 2021-03-12 DOI:10.2147/RMI.S292314
Andrea Esposito, E. Casiraghi, F. Chiaraviglio, A. Scarabelli, Elvira Stellato, G. Plensich, Giulia Lastella, Letizia Di Meglio, Stefano Fusco, E. Avola, A. Jachetti, C. Giannitto, D. Malchiodi, Marco Frasca, Afshin Beheshti, Peter N Robinson, Giorgio Valentini, Laura Forzenigo, G. Carrafiello
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Abstract

Purpose: To determine the performance of a chest radiograph (CXR) severity scoring system combined with clinical and laboratory data in predicting the outcome of COVID-19 patients Materials and Methods: We retrospectively enrolled 301 patients who had reverse transcriptase-polymerase chain reaction (RT-PCR) positive results for COVID-19 CXRs, clinical and laboratory data were collected A CXR severity scoring system based on a qualitative evaluation by two expert thoracic radiologists was defined Based on the clinical outcome, the patients were divided into two classes: moderate/mild (patients who did not die or were not intubated) and severe (patients who were intubated and/or died) ROC curve analysis was applied to identify the cut-off point maximizing the Youden index in the prediction of the outcome Clinical and laboratory data were analyzed through Boruta and Random Forest classifiers Results: The agreement between the two radiologist scores was substantial (kappa = 0 76) A radiological score ≥ 9 predicted a severe class: sensitivity = 0 67, specificity = 0 58, accuracy = 0 61, PPV = 0 40, NPV = 0 81, F1 score = 0 50, AUC = 0 65 Such performance was improved to sensitivity = 0 80, specificity = 0 86, accuracy = 0 84, PPV = 0 73, NPV = 0 90, F1 score = 0 76, AUC= 0 82, combining two clinical variables (oxygen saturation [SpO2]), the ratio of arterial oxygen partial pressure to fractional inspired oxygen [P/F ratio] and three laboratory test results (C-reactive protein, lymphocytes [%], hemoglobin) Conclusion: Our CXR severity score assigned by the two radiologists, who read the CXRs combined with some specific clinical data and laboratory results, has the potential role in predicting the outcome of COVID-19 patients
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从临床、生化和定性胸片评分系统预测COVID-19患者临床结局的人工智能研究
目的:探讨结合临床和实验室数据的胸片(CXR)严重程度评分系统在预测COVID-19患者预后中的作用。我们回顾性纳入301例逆转录聚合酶链反应(RT-PCR)阳性的COVID-19 CXR患者,收集临床和实验室资料,并根据两名胸科放射科专家的定性评估,定义了CXR严重程度评分体系。中度/轻度(未死亡或未插管的患者)和重度(插管和/或死亡的患者)应用ROC曲线分析来确定在预测结果中最大化约登指数的分界点。临床和实验室数据通过Boruta和Random Forest分类器进行分析。结果:两种放射科评分之间的一致性是显著的(kappa = 0.76)。敏感性= 0 67,特异性= 0 58岁的精度= 0 61 PPV 40 = 0,净现值= 0 81年F1分数= 0 50,AUC = 0 65个这样的性能改进的敏感性= 0 80,特异性= 0 86,精度= 0 84 PPV = 0 73,净现值= 0 90年F1分数= 0 76,AUC = 0 82,结合两个临床变量(血氧饱和度(动脉血氧饱和度))、动脉氧分压的比例分数启发氧气(P / F值)和三个实验室测试结果(c反应蛋白、淋巴细胞(%)、血红蛋白)结论:我们的两位放射科医生阅读了CXR,并结合一些特定的临床数据和实验室结果,给出了我们的CXR严重程度评分,这对预测COVID-19患者的预后有潜在的作用
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来源期刊
Reports in Medical Imaging
Reports in Medical Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
1.90
自引率
0.00%
发文量
5
审稿时长
16 weeks
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