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Contributing Clinical Attributes to COVID-19 Mortality in Jakarta: Machine Learning Study

机译:雅加达2019冠状病毒疾病临床表现的贡献:机器学习研究

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Since December 2019, we have lived in a pandemic era of severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2). Medical records of COVID-19 patients have been reported and analyzed worldwide. The Health Agency of Jakarta, Indonesia, collected clinical symptoms, demographics, travel history, and mortality information from March 2020 up to now. Despite massive research on COVID-19 patients’ data, the significant clinical symptoms that lead to COVID-19 mortality in Jakarta have not been well described to the best of the authors’ knowledge. We extracted the COVID-19 records in Jakarta and compared them between patients who were discharged and deceased. This paper examines each clinical symptom’s importance to mortality using machine learning techniques, namely weighted Artificial Neural Network, Decision Tree, and Random Forest. We observed that Pneumonia, Shortness of Breath, Malaise, Hypertension, Fever, and Runny Nose are the top six significant clinical symptoms that lead to deaths in Jakarta. We suggest medical experts become more cautious with these symptoms. Also, in medical facilities, these symptoms can be used as prescreening before entering the facilities.
机译:自2019年12月以来,我们一直生活在严重急性呼吸综合征冠状病毒2(SARS-CoV-2)的大流行时代。COVID2019冠状病毒疾病的病例记录已在世界范围内进行了报道和分析。印度尼西亚雅加达卫生署收集了2020年3月至今的临床症状、人口统计、旅行史和死亡率信息。尽管对COVID-19患者的数据进行了大量的研究,但在雅加达,导致COVID-19死亡率的重要临床症状还没有得到作者的充分了解。我们提取了COVID-19在雅加达的记录,并比较他们之间的病人出院和死亡。本文使用机器学习技术,即加权人工神经网络、决策树和随机森林,研究了每种临床症状对死亡率的重要性。我们观察到,肺炎、气短、不适、高血压、发烧和流鼻涕是雅加达导致死亡的六大主要临床症状。我们建议医学专家对这些症状更加谨慎。此外,在医疗设施中,这些症状可以在进入设施前作为预筛选。

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