Smart Fabrics with Integrated Pathogen Detection, Repellency, and Antimicrobial Properties for Healthcare Applications

IF 18.5 1区 材料科学 Q1 CHEMISTRY, MULTIDISCIPLINARY Advanced Functional Materials Pub Date : 2024-07-30 DOI:10.1002/adfm.202403157
Noor Abu Jarad, Akansha Prasad, Sara Rahmani, Fereshteh Bayat, Mathura Thirugnanasampanthar, Zeinab Hosseinidoust, Leyla Soleymani, Tohid F. Didar
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Abstract

Healthcare textiles serve as key reservoirs for pathogen proliferation, demanding an urgent call for innovative interventions. Here, a new class of Smart Fabrics (SF) is introduced with integrated “Repel, Kill, and Detect” functionalities, achieved through a blend of hierarchically structured microparticles, modified nanoparticles, and an acidity-responsive sensor. SF exhibit remarkable resilience against aerosol and droplet-based pathogen transmission, showcasing a reduction exceeding 99.90% compared to uncoated fabrics across various drug-resistant bacteria, Candida albicans, and Phi6 virus. Experiments involving bodily fluids from healthy and infected individuals reveal a significant reduction of 99.88% and 99.79% in clinical urine and feces samples, respectively, compared to uncoated fabrics. The SF's colorimetric detection capability coupled with machine learning (96.67% accuracy) ensures reliable pathogen identification, facilitating accurate differentiation between healthy and infected urine and fecal contaminated samples. SF holds promise for revolutionizing infection prevention and control in healthcare facilities, providing protection through early contamination detection.

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具有综合病原体检测、排斥和抗菌特性的智能织物,适用于医疗保健应用
医疗保健纺织品是病原体扩散的主要 "贮藏库",迫切需要创新的干预措施。这里介绍的新型智能织物(Smart Fabrics,SF)集成了 "排斥、杀灭和检测 "功能,通过混合分层结构的微粒子、改性纳米粒子和酸性反应传感器来实现。与无涂层织物相比,SF 对各种耐药细菌、白色念珠菌和 Phi6 病毒的气溶胶和飞沫病原体传播的抑制率超过 99.90%。对健康人和受感染者的体液进行的实验表明,与无涂层织物相比,临床尿液和粪便样本中的耐药性细菌和白色念珠菌的传播率分别显著降低了 99.88% 和 99.79%。SF 的比色检测能力与机器学习(96.67% 的准确率)相结合,确保了可靠的病原体识别,有助于准确区分健康和受感染的尿液和粪便污染样本。SF 有望彻底改变医疗机构的感染预防和控制,通过早期污染检测提供保护。
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来源期刊
Advanced Functional Materials
Advanced Functional Materials 工程技术-材料科学:综合
CiteScore
29.50
自引率
4.20%
发文量
2086
审稿时长
2.1 months
期刊介绍: Firmly established as a top-tier materials science journal, Advanced Functional Materials reports breakthrough research in all aspects of materials science, including nanotechnology, chemistry, physics, and biology every week. Advanced Functional Materials is known for its rapid and fair peer review, quality content, and high impact, making it the first choice of the international materials science community.
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