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Development and Validation of a Machine Learning Approach for Automated Severity Assessment of COVID-19 Based on Clinical and Imaging Data: Retrospective Study

机译:基于临床和成像数据的Covid-19自动严重性评估机器学习方法的开发与验证:回顾性研究

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Background COVID-19 has overwhelmed health systems worldwide. It is important to identify severe cases as early as possible, such that resources can be mobilized and treatment can be escalated. Objective This study aims to develop a machine learning approach for automated severity assessment of COVID-19 based on clinical and imaging data. Methods Clinical data—including demographics, signs, symptoms, comorbidities, and blood test results—and chest computed tomography scans of 346 patients from 2 hospitals in the Hubei Province, China, were used to develop machine learning models for automated severity assessment in diagnosed COVID-19 cases. We compared the predictive power of the clinical and imaging data from multiple machine learning models and further explored the use of four oversampling methods to address the imbalanced classification issue. Features with the highest predictive power were identified using the Shapley Additive Explanations framework. Results Imaging features had the strongest impact on the model output, while a combination of clinical and imaging features yielded the best performance overall. The identified predictive features were consistent with those reported previously. Although oversampling yielded mixed results, it achieved the best model performance in our study. Logistic regression models differentiating between mild and severe cases achieved the best performance for clinical features (area under the curve [AUC] 0.848; sensitivity 0.455; specificity 0.906), imaging features (AUC 0.926; sensitivity 0.818; specificity 0.901), and a combination of clinical and imaging features (AUC 0.950; sensitivity 0.764; specificity 0.919). The synthetic minority oversampling method further improved the performance of the model using combined features (AUC 0.960; sensitivity 0.845; specificity 0.929). Conclusions Clinical and imaging features can be used for automated severity assessment of COVID-19 and can potentially help triage patients with COVID-19 and prioritize care delivery to those at a higher risk of severe disease.
机译:背景Covid-19在全球范围内拥有不堪重负的健康系统。尽早识别严重案例非常重要,这样可以动员资源,并且可以升级处理。目的本研究旨在为基于临床和成像数据的Covid-19自动严重性评估制定机器学习方法。方法临床数据 - 包括人口统计学,症状,症状,血液测试结果和胸部计算机断层扫描率为346名中国湖北省的医院患者,用于开发机器学习模型,用于在诊断的Covid中进行自动严重性评估-19例。我们将临床和成像数据的预测力与多机器学习模型进行了比较,进一步探索了使用四种过采样方法来解决不平衡的分类问题。使用Shapley添加剂解释框架确定了预测力最高的功能。结果成像功能对模型输出产生最强的影响,而临床和成像功能的组合总体上产生了最佳性能。所确定的预测特征与先前报告的那些符合。虽然过采样产生了混合结果,但它在我们的研究中取得了最佳的模型表现。逻辑回归模型区分轻度和严重病例之间的临床特征的最佳性能(曲线下的区域[AUC] 0.848;敏感性0.455;特异性0.906),成像特征(AUC 0.926;灵敏度0.818;特异性0.901),以及组合临床和成像特征(AUC 0.950;灵敏度0.764;特异性0.919)。合成少数群体过采样方法使用组合特征进一步改善了模型的性能(AUC 0.960;灵敏度0.845;特异性0.929)。结论临床和成像特征可用于Covid-19的自动严重性评估,可以帮助Covid-19的患者进行分类,并优先考虑严重疾病风险较高风险的护理递送。

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