Assess the Modified Early Warning Score (MEWS) in Predicting Critical Care Unit Admission Among Patient in Emergency Department at Saveetha Medical College and Hospital, Thandalam

U. Govindaraj, K. Karpagam, S. Kalabarathi
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引用次数: 0

Abstract

Background: In the hospital, sickness severity and worsening were predicted using the Modified Early Warning Score (MEWS). The MEWS makes it possible to detect patient deterioration early, take prompt treatment, and consistently gauge the seriousness of a disease. Objectives: To assess the Modified Early Warning Score (MEWS) in predicting critical care unit admission among emergency department patients. Methodology: Research approach: quantitative approach, descriptive research design was used for 60 samples by convenience sampling techniques. Modified Early Warning Score (MEWS) tool was used to predict critical care admission in emergency department. Result: out of 60 samples, 30(50%) had medium score which infers that key threshold urgent response in critical care unit admission, 16(26.7%) had low score which interprets ward based admission and 14(23.3%) had high score which interprets urgent (or) emergency response admission. Regarding critical care admission in emergency department patients the demographic variables age, education and clinical variable in mechanical ventilator support had shown statistically significant association with Modified Early Warning Score in predicting critical care unit admission among patients in emergency department at p
评估改良预警评分(MEWS)在预测Thandalam Saveetha医学院和医院急诊科患者重症监护病房入院中的作用
背景:在医院,使用改良早期预警评分(MEWS)预测疾病的严重程度和恶化。MEWS可以早期发现患者病情恶化,及时治疗,并持续评估疾病的严重性。目的:评估改良早期预警评分(MEWS)在预测急诊科患者重症监护室入院中的作用。方法:研究方法:采用定量方法,采用方便抽样技术对60个样本进行描述性研究设计。采用改进的早期预警评分(MEWS)工具预测急诊科的重症监护入院情况。结果:在60个样本中,30个(50%)的中分推断出重症监护室入院的关键阈值紧急反应,16个(26.7%)的低分推断出基于病房的入院,14个(23.3%)的高分推断出紧急(或)紧急反应入院。关于急诊科患者的重症监护入院,人口统计学变量年龄、教育程度和机械呼吸机支持的临床变量在预测急诊科患者在p
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来源期刊
Cardiometry
Cardiometry MEDICAL LABORATORY TECHNOLOGY-
自引率
0.00%
发文量
0
审稿时长
6 weeks
期刊介绍: Cardiometry is an open access biannual electronic journal founded in 2012. It refers to medicine, particularly to cardiology, as well as oncocardiology and allied science of biophysics and medical equipment engineering. We publish mainly high quality original articles, reports, case reports, reviews and lectures in the field of the theory of cardiovascular system functioning, principles of cardiometry, its diagnostic methods, cardiovascular system therapy from the aspect of cardiometry, system and particular approaches to maintaining health, engineering peculiarities in cardiometry developing. The interdisciplinary areas of the journal are: hemodynamics, biophysics, biochemistry, metrology. The target audience of our Journal covers healthcare providers including cardiologists and general practitioners, bioengineers, biophysics, medical equipment, especially cardiology diagnostics device, developers, educators, nurses, healthcare decision-makers, people with cardiovascular diseases, cardiology and engineering universities and schools, state and private clinics. Cardiometry is aimed to provide a wide forum for exchange of information and public discussion on above scientific issues for the mentioned experts.
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