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首页> 外文期刊>Frontiers in Medicine >Can Clinical Symptoms and Laboratory Results Predict CT Abnormality? Initial Findings Using Novel Machine Learning Techniques in Children With COVID-19 Infections
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Can Clinical Symptoms and Laboratory Results Predict CT Abnormality? Initial Findings Using Novel Machine Learning Techniques in Children With COVID-19 Infections

机译:可以临床症状和实验室结果预测CT异常吗? 利用Covid-19感染儿童使用小型机器学习技术的初始发现

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The rapid spread of coronavirus 2019 disease (COVID-19) has manifested a global public health crisis, and chest CT has been proven to be a powerful tool for screening, triage, evaluation and prognosis in COVID-19 patients. However, CT is not only costly but also associated with an increased incidence of cancer, in particular for children. This study will question whether clinical symptoms and laboratory results can predict the CT outcomes for the pediatric patients with positive RT-PCR testing results in order to determine the necessity of CT for such a vulnerable group. Clinical data were collected from 244 consecutive pediatric patients (16 years of age and under) treated at Wuhan Children's Hospital with positive RT-PCR testing, and the chest CT were performed within 3 days of clinical data collection, from January 21 to March 8, 2020. This study was approved by the local ethics committee of Wuhan Children's Hospital. Advanced decision tree based machine learning models were developed for the prediction of CT outcomes. Results have shown that age, lymphocyte, neutrophils, ferritin and C-reactive protein are the most related clinical indicators for predicting CT outcomes for pediatric patients with positive RT-PCR testing. Our decision support system has managed to achieve an AUC of 0.84 with 0.82 accuracy and 0.84 sensitivity for predicting CT outcomes. Our model can effectively predict CT outcomes, and our findings have indicated that the use of CT should be reconsidered for pediatric patients, as it may not be indispensable.
机译:Coronavirus 2019疾病的快速传播(Covid-19)表现出全球公共卫生危机,并且已被证明是Covid-19患者中筛选,分类,评估和预后的强大工具。然而,CT不仅是昂贵的,而且与癌症的发病率增加,特别是儿童。本研究会质疑临床症状和实验室结果是否可以预测阳性RT-PCR测试结果的儿科患者的CT结果,以便确定这种脆弱群体的CT的必要性。从武汉儿童医院治疗的244名连续儿科患者(16岁及以下)收集临床数据,患有阳性RT-PCR试验,胸部CT在临床数据收集3天内进行,1月21日至3月8日, 2020年。本研究经武汉儿童医院当地伦理委员会批准。基于先进的决策树的机器学习模型是为了预测CT结果而开发。结果表明,年龄,淋巴细胞,中性粒细胞,铁蛋白和C反应蛋白是最相关的临床指标,用于预测阳性RT-PCR测试的儿科患者的CT结果。我们的决策支持系统已经设法实现了0.84的AUC,精度为0.82和0.84个灵敏度,以预测CT结果。我们的模型可以有效地预测CT结果,我们的研究结果表明,应为儿科患者进行重新考虑CT,因为它可能不可分行。

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