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A Tree-based Mortality Prediction Model of COVID-19 from Routine Blood Samples

机译:一种基于树的COVID-19死亡预测模型

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COVID-19 has been declared by The World Health Organization (WHO) a global pandemic in January, 2020. Researchers have been working on formulating the best approach and solutions to cure the disease and help to prevent such pandemics in the future. A lot of efforts have been made to develop a fast and accurate early clinical assessment of the disease. Machine Learning (ML) has proven helpful for research and applications in the health domain as a way to understand real-world phenomena through data analysis. In our experiment, we collected the retrospective blood samples data set from 1,000 COVID-19 patients in Jakarta, Indonesia for the period of March to December 2020. We report our preliminary findings on the use of common blood test biomarkers in predicting COVID-19 patient mortality. This study took advantage of explainable machine learning to examine the data set. The contribution of this paper is to explain our findings on predicting COVID-19 mortality, including the role of the top 11 biomarkers found in our dataset. These findings can be generalized, especially in Indonesia, which is now at its highest peak of the epidemic. We show that tree-based AI models performed well on predicting COVID-19 mortality, while also making it easy to interpret the findings, as they lend themselves to human scrutiny and allow clinicians to interpret them and comment on their viability.
机译:2019冠状病毒疾病由世界卫生组织(WHO)在2020年1月宣布为全球流行病。研究人员一直在努力制定最佳方法和解决方案,以治愈该疾病,并帮助预防未来的此类流行病。人们已经做出了很多努力来发展一种快速、准确的早期临床评估。机器学习(ML)已被证明有助于健康领域的研究和应用,作为一种通过数据分析了解现实世界现象的方法。在我们的实验中,我们收集了1000个COVID-19患者在印度尼西亚雅加达的3月至2020年12月的回顾性血样数据集。我们报告2019冠状病毒疾病生物标志物在预测COVID-19患者死亡率方面的初步发现。本研究利用可解释机器学习来检验数据集。本文的贡献是解释我们的预测COVID-19死亡率,包括在我们的数据集中发现的前11个生物标志物的作用。这些发现可以推广,尤其是在印度尼西亚,该国目前正处于疫情的最高峰。2019冠状病毒疾病模型的预测结果表明,基于树的人工智能模型能很好地解释研究结果,同时也能帮助医生进行解释,并对其生存能力进行评价。

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