Artificial Intelligence Framework for COVID19 Patients Monitoring

S. Rihana, Christelle Bou Rjeily
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引用次数: 1

Abstract

The current global spread of COVID-19, a highly contagious disease, has challenged healthcare systems and placed immense burdens on medical staff globally. Almost 5% to 10% among hospitalized patients will require ICU admission. Predicting ICU admission can help in managing better the patient and the healthcare system. This study aims to develop a model that can predict whether a COVID-19 patient, who has already been admitted to the hospital, will enter the ICU or not. This could be accomplished by monitoring his vital signs, and blood tests, and inquiring about his demographic records, during his stay in the hospital. Multiple models, including Artificial Neural Networks, Logistic Regression, Decision Tree, Random Forest, Gaussian Naïve Bayes, Gradient Boosting, and Support Vector Machines, were designed and implemented using MATLAB and Python. Random Forest, Decision Tree, and Gradient Boosting, are examples of decision tree-based algorithms that outperformed the others. The Random Forest (Accuracy: 99.12%, Cross-Validation Accuracy 86.34%) and Decision Tree (Accuracy: 99.12%, Cross-Validation Accuracy 79.48%) and Gradient Boosting (Accuracy: 93.77%, Cross-Validation Accuracy: 86.96%) had the highest accuracy scores as compared to other models such as the Support Vector Machines (Accuracy: 87.74%, Cross-Validation Accuracy 72.42%). In future work, the aim will be to predict whether a patient will join ICU or not, based on monitoring for multiple windows. As a result, high accuracy scores will be reached, since the model will analyze the vital signs and laboratory data at multiple stages and timings. In this way, anticipating the requirement for ICU admission well ahead of time.
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covid - 19患者监测人工智能框架
COVID-19是一种高度传染性疾病,目前在全球蔓延,给医疗保健系统带来了挑战,给全球医务人员带来了巨大负担。近5%至10%的住院患者需要进入ICU。预测ICU住院可以帮助更好地管理患者和医疗保健系统。该研究旨在开发一种模型,可以预测已经入院的新冠肺炎患者是否会进入ICU。这可以通过在他住院期间监测他的生命体征、血液检查和询问他的人口统计记录来完成。利用MATLAB和Python设计并实现了人工神经网络、逻辑回归、决策树、随机森林、高斯Naïve贝叶斯、梯度增强和支持向量机等多个模型。随机森林、决策树和梯度增强都是基于决策树的算法的例子,它们的表现优于其他算法。随机森林(准确率:99.12%,交叉验证准确率:86.34%)、决策树(准确率:99.12%,交叉验证准确率:79.48%)和梯度增强(准确率:93.77%,交叉验证准确率:86.96%)与支持向量机(准确率:87.74%,交叉验证准确率:72.42%)等其他模型相比,准确率得分最高。在未来的工作中,目标将是根据多个窗口的监测来预测患者是否会加入ICU。因此,由于该模型将在多个阶段和时间分析生命体征和实验室数据,因此将达到较高的准确性分数。通过这种方式,可以提前预测ICU住院的需求。
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