基于XGBoost模型的COVID-19血液检测年龄预测

N. N. Qomariyah, A. A. Purwita, M. S. Astriani, S. Asri, D. Kazakov
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引用次数: 1

摘要

2020年1月,世界卫生组织(世卫组织)宣布COVID-19为大流行。许多研究发现,某些特定年龄组的人感染这种疾病的风险更高。该疾病的金标准检测是一种基于逆转录酶聚合酶链式反应(RT-PCR)的疾病特异性检测。我们之前已经证明,一套标准的非特异性血液检查的结果可以用来表明存在COVID-19感染的可能性很高。我们继续在这一领域的研究,研究患者的常规血液检查结果与他们的年龄之间的联系。从血液化学来预测一个人的年龄在健康科学中并不新鲜。大多数情况下,这些结果被用来检测与衰老有关的疾病的迹象,并开发新的药物。这里描述的实验表明,XGBoost算法可以通过患者的常规血液检查来预测患者的年龄。性能评价非常令人满意,$R^{2} > 0.80$,归一化RMSE低于0.1。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An XGBoost Model for Age Prediction from COVID-19 Blood Test
COVID-19 was declared a pandemic by the World Health Organization (WHO) in January 2020. Many studies found that some specific age groups of people have a higher risk of contracting the disease. The gold standard test for the disease is a condition-specific test based on Reverse-Transcriptase Polymerase Chain Reaction (RT-PCR). We have previously shown that the results of a standard suite of non-specific blood tests can be used to indicate the presence of a COVID-19 infection with a high likelihood. We continue our research in this area with a study of the connection between the patients' routine blood test results and their age. Predicting a person's age from blood chemistry is not new in health science. Most often, such results are used to detect the signs of diseases associated with aging and develop new medications. The experiment described here shows that the XGBoost algorithm can be used to predict the patients' age from their routine blood tests. The performance evaluation is very satisfactory, with $R^{2} > 0.80$ and a normalized RMSE below 0.1.
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