ISSN: 2332-0877

感染症と治療ジャーナル

オープンアクセス

当社グループは 3,000 以上の世界的なカンファレンスシリーズ 米国、ヨーロッパ、世界中で毎年イベントが開催されます。 1,000 のより科学的な学会からの支援を受けたアジア および 700 以上の オープン アクセスを発行ジャーナルには 50,000 人以上の著名人が掲載されており、科学者が編集委員として名高い

オープンアクセスジャーナルはより多くの読者と引用を獲得
700 ジャーナル 15,000,000 人の読者 各ジャーナルは 25,000 人以上の読者を獲得

抽象的な

COVID-19 Patients Analysis using Super Heat Map and Bayesian Network to Identify Comorbidities Correlations under Different Scenarios

O Nolasco Jauregui*, LA Quezada-Tellez, EE Rodriguez-Torres and M Tetlalmatzi-Montiel

Background: Given the exposure risk of comorbidities in Mexican society, the new pandemic involves the highest risk for the population in history. Objective: This article presents an analysis of the COVID-19 risk for the regions of Mexico. Method: The study period runs from April 12 to June 29, 2020 (220,667 patients). The method has an applied nature and according to its level of deepening in the object of study it is framed in a descriptive and explanatory analysis type. The data used here has a quantitative and semi-quantitative characteristic because they are the result of a questionnaire instrument made up of 34 fields and the virus test. The instrument is of a deliberate type. According to the manipulation of the variables, this research is a secondary type of practice, and it has a factual inference from an inductive method because it is emphasizing the concomitant variations for each region of the country. Results: Region 1 and Region 4 have a higher percentage of hospitalized patients, while Region 2 has a minimum of them. The average age of non-hospitalized patients is around 40 years old, while the hospitalized patients’ age is close to 55 years old. The most sensitive comorbidities in hospitalized patients are: obesity, diabetes mellitus and hypertension. The patients whose needed the mechanical respirator were in ranged from 7.45% to 10.79%. Conclusions: There is a higher risk of people losing their lives in the Region 1 and Region 4 territories than in Region 2, this information was dictated by the statistical analysis.