使用临床标志物和可解释的人工智能预测COVID-19患者的严重程度:堆叠集成机器学习方法

Pub Date : 2023-10-21 DOI:10.3233/idt-230320
Krishnaraj Chadaga, Srikanth Prabhu, Niranjana Sampathila, Rajagopala Chadaga
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引用次数: 0

摘要

最近的COVID-19大流行在全球范围内造成了严重破坏,给本已陷入困境的医疗基础设施造成了巨大压力。疫苗已经推出,似乎对预防不良预后有效。然而,一小部分人口(老年人和有合并症的人)继续死于这种致命病毒。由于缺乏可用资源,适当的分诊和治疗计划对于改善COVID-19患者的预后至关重要。评估病人是否需要医院的重症监护病房(ICU)是非常重要的,因为这些病房并不是对每个病人都可用。在这项研究中,我们使用堆叠集成机器学习模型自动进行评估,该模型基于一般患者实验室数据预测ICU入院情况。我们建立了一个可解释的决策支持模型,该模型可以自动对个体患者的COVID-19严重程度进行评分。该模型的设计使用了来自巴西三家顶级医院的1925名COVID-19阳性患者的数据。利用Pearson的相关性和互信息进行特征选择,选择前24个特征作为模型的输入。最终的堆叠模型可以为入院的COVID-19患者是否需要ICU提供决策支持,准确率为88%。使用可解释人工智能(EAI)进行系统级洞察发现,并调查各种临床变量对决策的影响。发现呼吸频率、体温、血压、乳酸脱氢酶、血红蛋白和年龄是最关键的因素。医疗机构可以使用拟议的方法对COVID-19患者进行分类并预防COVID-19死亡。
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Severity prediction in COVID-19 patients using clinical markers and explainable artificial intelligence: A stacked ensemble machine learning approach
The recent COVID-19 pandemic had wreaked havoc worldwide, causing a massive strain on already-struggling healthcare infrastructure. Vaccines have been rolled out and seem effective in preventing a bad prognosis. However, a small part of the population (elderly and people with comorbidities) continues to succumb to this deadly virus. Due to a lack of available resources, appropriate triaging and treatment planning are vital to improving outcomes for patients with COVID-19. Assessing whether a patient requires the hospital’s Intensive Care Unit (ICU) is very important since these units are not available for every patient. In this research, we automate this assessment with stacked ensemble machine learning models that predict ICU admission based on general patient laboratory data. We have built an explainable decision support model which automatically scores the COVID-19 severity for individual patients. Data from 1925 COVID-19 positive patients, sourced from three top-tier Brazilian hospitals, were used to design the model. Pearson’s correlation and mutual information were utilized for feature selection, and the top 24 features were chosen as input for the model. The final stacked model could provide decision support on whether an admitted COVID-19 patient would require the ICU or not, with an accuracy of 88%. Explainable Artificial Intelligence (EAI) was used to undertake system-level insight discovery and investigate various clinical variables’ impact on decision-making. It was found that the most critical factors were respiratory rate, temperature, blood pressure, lactate dehydrogenase, hemoglobin, and age. Healthcare facilities can use the proposed approach to categorize COVID-19 patients and prevent COVID-19 fatalities.
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