Yan Li, Xiaoyan Cui, Xiaoyan Yang, Guangqia Liu, Juan Zhang
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引用次数: 0
Abstract
The issue of antimicrobial resistance (AMR) in pathogenic microorganisms has emerged as a global public health crisis, posing a significant threat to the modern healthcare system. The advent of Artificial Intelligence (AI) and Machine Learning (ML) technologies has brought about revolutionary changes in this field. These advanced computational methods are capable of processing and analyzing large-scale biomedical data, thereby uncovering complex patterns and mechanisms behind the development of resistance. AI technologies are increasingly applied to predict the resistance of pathogens to various antibiotics based on gene content and genomic composition. This article reviews the latest advancements in AI and ML for predicting antimicrobial resistance in pathogenic microorganisms. We begin with an overview of the biological foundations of microbial resistance and its epidemiological research. Subsequently, we highlight the main AI and ML models used in resistance prediction, including but not limited to Support Vector Machines, Random Forests, and Deep Learning networks. Furthermore, we explore the major challenges in the field, such as data availability, model interpretability, and cross-species resistance prediction. Finally, we discuss new perspectives and solutions for research into microbial resistance through algorithm optimization, dataset expansion, and interdisciplinary collaboration. With the continuous advancement of AI technology, we will have the most powerful weapon in the fight against pathogenic microbial resistance in the future.
病原微生物的抗菌药耐药性(AMR)问题已成为全球公共卫生危机,对现代医疗保健系统构成重大威胁。人工智能(AI)和机器学习(ML)技术的出现给这一领域带来了革命性的变化。这些先进的计算方法能够处理和分析大规模生物医学数据,从而揭示抗药性产生背后的复杂模式和机制。人工智能技术越来越多地应用于根据基因含量和基因组组成预测病原体对各种抗生素的耐药性。本文回顾了人工智能和 ML 在预测病原微生物抗药性方面的最新进展。我们首先概述了微生物耐药性的生物学基础及其流行病学研究。随后,我们重点介绍了用于耐药性预测的主要人工智能和 ML 模型,包括但不限于支持向量机、随机森林和深度学习网络。此外,我们还探讨了该领域的主要挑战,如数据可用性、模型可解释性和跨物种抗药性预测。最后,我们讨论了通过算法优化、数据集扩展和跨学科合作研究微生物抗药性的新视角和解决方案。随着人工智能技术的不断进步,未来我们将拥有对抗病原微生物抗药性的最强大武器。
期刊介绍:
Frontiers in Cellular and Infection Microbiology is a leading specialty journal, publishing rigorously peer-reviewed research across all pathogenic microorganisms and their interaction with their hosts. Chief Editor Yousef Abu Kwaik, University of Louisville is supported by an outstanding Editorial Board of international experts. This multidisciplinary open-access journal is at the forefront of disseminating and communicating scientific knowledge and impactful discoveries to researchers, academics, clinicians and the public worldwide.
Frontiers in Cellular and Infection Microbiology includes research on bacteria, fungi, parasites, viruses, endosymbionts, prions and all microbial pathogens as well as the microbiota and its effect on health and disease in various hosts. The research approaches include molecular microbiology, cellular microbiology, gene regulation, proteomics, signal transduction, pathogenic evolution, genomics, structural biology, and virulence factors as well as model hosts. Areas of research to counteract infectious agents by the host include the host innate and adaptive immune responses as well as metabolic restrictions to various pathogenic microorganisms, vaccine design and development against various pathogenic microorganisms, and the mechanisms of antibiotic resistance and its countermeasures.