Biofilm-mediated infections; novel therapeutic approaches and harnessing artificial intelligence for early detection and treatment of biofilm-associated infections

IF 3.5 3区 医学 Q3 IMMUNOLOGY Microbial pathogenesis Pub Date : 2025-03-19 DOI:10.1016/j.micpath.2025.107497
Muhammad Bilal Habib , Ghanwa Batool , Naseer Ali Shah , Taseer Muhammad , Noreen Sher Akbar , Ameera Shahid
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Abstract

A biofilm is a group of bacteria that have self-produced a matrix and are grouped together in a dense population. By resisting the host's immune system's phagocytosis process and attacking with anti-microbial chemicals such as reactive oxygen and nitrogen species, a biofilm enables pathogenic bacteria to evade elimination. One of the major problems in managing chronic injuries is treating wounds colonized by biofilms. These days, a major issue is the biofilms, which exacerbate infection pathogenesis and severity. Numerous investigators have already discovered cutting-edge methods for biofilm manipulation. Using phytochemicals is a practical tactic to control and prevent the production of biofilms. Numerous studies conducted in the last few years have demonstrated the antibacterial and antibiofilm qualities of nanoparticles (NPs) against bacteria, fungi, and protozoa. Because hydrogel has antibiofilm properties, it has been employed extensively in wound care recently. It may be removed with ease and without causing trauma. Today, artificial intelligence (AI) is being used to improve these tactics by providing customized treatment alternatives and predictive analytics. Artificial intelligence (AI) algorithms have the capability to examine extensive datasets and detect trends in biofilm formation and resistance mechanisms. This can aid in the creation of more potent antimicrobial drugs. AI models analyze complex datasets, predict biofilm formation, and guide the design of personalized treatment strategies by identifying resistance mechanisms and therapeutic targets with exceptional precision. This review provides an integrative perspective on biofilm formation mechanisms and their role in infections, highlighting the innovative applications of AI in this domain. By integrating data from diverse biological systems, AI accelerates drug discovery, optimizes treatment regimens, and enables real-time monitoring of biofilm dynamics. From predictive analytics to personalized care, we explore how AI enhances biofilm diagnostics and introduces precision medicine in biofilm-associated infections. This approach not only addresses the limitations of traditional methods but also paves the way for revolutionary advancements in infection control, antimicrobial resistance management, and improved patient outcomes.
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Biofilm-Mediated感染;新的治疗方法和利用人工智能早期检测和治疗生物膜相关感染。
生物膜是一群自我产生基质并密集聚集在一起的细菌。生物膜可以抵御宿主免疫系统的吞噬过程,并利用活性氧和氮物种等抗微生物化学物质进行攻击,从而使致病细菌逃避被消灭。治疗慢性损伤的主要问题之一就是治疗被生物膜定殖的伤口。如今,一个主要问题是生物膜会加剧感染的发病机制和严重程度。许多研究人员已经发现了操纵生物膜的尖端方法。使用植物化学物质是控制和防止生物膜产生的一种实用方法。过去几年进行的大量研究表明,纳米粒子(NPs)对细菌、真菌和原生动物具有抗菌和抗生物膜的特性。由于水凝胶具有抗生物膜特性,最近已被广泛用于伤口护理。它可以在不造成创伤的情况下轻松移除。如今,人工智能(AI)正通过提供定制化治疗方案和预测分析来改进这些策略。人工智能 (AI) 算法能够检查大量数据集,并检测生物膜形成和抗性机制的趋势。这有助于开发更有效的抗菌药物。人工智能模型可以分析复杂的数据集,预测生物膜的形成,并通过精确识别抗药性机制和治疗目标来指导个性化治疗策略的设计。这篇综述从综合的角度探讨了生物膜的形成机制及其在感染中的作用,重点介绍了人工智能在这一领域的创新应用。通过整合来自不同生物系统的数据,人工智能加速了药物发现、优化了治疗方案,并实现了对生物膜动态的实时监控。从预测分析到个性化护理,我们探讨了人工智能如何增强生物膜诊断并在生物膜相关感染中引入精准医疗。这种方法不仅解决了传统方法的局限性,还为感染控制、抗菌药耐药性管理和改善患者预后方面的革命性进步铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Microbial pathogenesis
Microbial pathogenesis 医学-免疫学
CiteScore
7.40
自引率
2.60%
发文量
472
审稿时长
56 days
期刊介绍: Microbial Pathogenesis publishes original contributions and reviews about the molecular and cellular mechanisms of infectious diseases. It covers microbiology, host-pathogen interaction and immunology related to infectious agents, including bacteria, fungi, viruses and protozoa. It also accepts papers in the field of clinical microbiology, with the exception of case reports. Research Areas Include: -Pathogenesis -Virulence factors -Host susceptibility or resistance -Immune mechanisms -Identification, cloning and sequencing of relevant genes -Genetic studies -Viruses, prokaryotic organisms and protozoa -Microbiota -Systems biology related to infectious diseases -Targets for vaccine design (pre-clinical studies)
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