EPBAMC:细菌污染领域研究认可的防护口罩安全新入口和新模式

Navid Hashemi Taba, A. Khatavakhotan
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引用次数: 0

摘要

导语:在过去的几十年里,地球上数十亿人使用口罩来防止动物与人之间和人与人之间的病毒传播。最近的研究表明,COVID-19表面传播的风险很低,自2020年1月以来,COVID-19已经变成了一场大流行。保持社会距离和在室内佩戴口罩是打破其传播链的最重要因素。材料和方法:然而,使用被污染的口罩会导致危险的微生物和病毒疾病。通过增加“避免微生物污染”这一因素,提出的模型被称为“避免微生物污染的卓越性能(EPBAMC)”,改进了世界卫生组织的三因素呼吸器最佳性能模型。在本研究中,为了评估是否需要添加“避免污染”的因素,从几个国家收集了全新的口罩样本,并对其微生物污染进行了仔细研究。该研究方法以最高的准确率完成了研究步骤,没有造成双重感染。结果:通过无菌培养基培养,对口罩的细菌负荷进行了研究,并对结果进行了分析。通过进行不同的培养,在一半的口罩样品上鉴定出多种致病微生物。一些全新的口罩样本含有不止一种病原体。一个非常重要的问题是,在药店销售的新口罩中发现了细菌,这些细菌会引起医院感染并对抗生素产生耐药性。结论:本研究结果表明,有必要对防护口罩的生产和流通标准以及控制和检验程序进行审查。
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Excellent Performance by Avoiding Microbial Contamination (EPBAMC): A New Portal and Model for Safety of Respirator Masks Approved by Bacterial Contamination Field Research
Introduction: Over the past decades, billions of people on Earth have used respirator masks to prevent animal-to-human and human-to-human virus transmission. Recent research has shown the low risk of surface transmission of COVID-19, which turned into a pandemic since January 2020. Social distancing and the use of masks indoors are the most important factors in breaking its transmission chain.Material and Methods: However, the use of contaminated respirator masks can cause dangerous microbial and viral diseases. By adding the factor “avoiding microbial contamination”, the proposed model, called “Excellent Performance by Avoiding Microbial Contamination (EPBAMC)”, improves the WHO’s three-factor optimal-performance model of the respirator masks. In this study, to evaluate the need to add the factor of “avoiding contamination”, samples of brand-new respirator masks were collected from several countries and their microbial contamination was carefully studied. The research method was such that the research steps were performed with highest accuracy rate and no double infection was created.Results: By culturing in sterilized medium, the bacterial load of the respirator masks was studied and the results were analyzed. By performing different cultures, a variety of pathogenic microorganisms were identified on half of the respirator mask samples. Some brand-new respirator mask samples contained more than one pathogen. A very important issue was that bacteria were found in brand-new respirators distributed by pharmacies that cause nosocomial infections and are resistant to antibiotics. Conclusion: The results of this study made it necessary to review the standards of the production and distribution process and the procedures for controlling and inspecting respirator masks.
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