不做PCR的新冠肺炎阳性病例回归客观回归模型

Melba Zayas González
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引用次数: 0

摘要

目前,生物医学领域的新技术进步使得创建多学科团队变得至关重要。这些小组可以由临床医生、流行病学家、数学家、统计学家、计算机科学家、生物学家等组成,他们可以共同实现对传染病的准确预测,从而由主管当局制定适当的战略。这项工作的基本目标是通过回归客观回归(ROR),对圣克拉拉市“Marta Abreu”垃圾综合诊所下一个未进行PCR的COVID-19阳性病例进行建模。在这项工作中,使用了古巴比利亚克拉拉省圣克拉拉市“Marta Abreu”教学综合诊所2021年1月至3月的每日数据,共3294例,其中58例阳性,其中根据他们在数据库中的登记方式在数据库中分配了一个订单号(No)。在短期建模中,对二分变量锯齿形和倒锯齿形的模型赋值为19.7%,误差为0.12,其中1.3例和12例风险回归,趋势为负且不显著。所获得的预测ROR模型为Marta Abreu教学综合诊所的COVID-19大流行研究提供了非常重要的结果。根据研究结果,当局获得了(事实上他们已经这样做了)有关非常感兴趣的变量的短期和中期行为的信息,以了解SARS-CoV2的扩展,这些信息可用于决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling of a Positive Case of Covid-19 Through Regressive Objective Regression Without Doing PCR
Currently, new technological advances in biomedicine make the creation of multidisciplinary teams of vital importance. These groups can be made up clinicians, epidemiologists, mathematicians, statisticians, computer scientists, biologists, among others, all together they can achieve an accurate prediction of infectious diseases and thus draw up the appropriate strategies by the competent authorities. The fundamental objective of this work is to obtain, through Regressive Objective Regession (ROR), the modeling of the next positive case that arrived with COVID-19 without performing PCR at the “Marta Abreu” Trashing Polyclinic in the city of Santa Clara. In this work, daily data were used from January to March corresponding to the year 2021 of the number of Covid-19 cases in the “Marta Abreu” Teaching Polyclinic in the city of Santa Clara, in the province of Villa Clara, Cuba, a total of 3294 cases of them 58 positive, of which they are assigned in the database an order number (No) according to how they were registered in the database. In the short-term modeling, the model was assigned to 19.7% with an error of0.12 the dichotomous variables, saw tooth and inverted saw tooth, and the risk returned in 1.3 and 12 cases, the trend is negative and not significant. The ROR modeling of predictions obtained give very significant results for the study of the COVID-19 pandemic at the Marta Abreu Teaching Polyclinic. With the results of the study, the authorities are provided, and in fact they are already doing so, with information on the short-and medium-term behavior of variables of great interest to understand the expansion of SARS-CoV2, which could be used for decision-marking.
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来源期刊
Bioscience Biotechnology Research Communications
Bioscience Biotechnology Research Communications BIOTECHNOLOGY & APPLIED MICROBIOLOGY-
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