Gao Yunqiu, Liu Min
Department of Dermatology, The First Hospital of China Medical University, Shenyang, China.
Key Laboratory of Immunodermatology, Ministry of Education and NHC, National Joint Engineering Research Center for Theranostics of Immunological Skin Diseases, Shenyang, China.
Front Microbiol. 2024 Oct 2;15:1474078. doi: 10.3389/fmicb.2024.1474078. eCollection 2024.
Infectious diseases caused by pathogenic microorganisms pose a serious threat to human health. Despite advances in molecular biology, genetics, computation, and medicinal chemistry, infectious diseases remain a significant public health concern. Addressing the challenges posed by pathogen outbreaks, pandemics, and antimicrobial resistance requires concerted interdisciplinary efforts. With the development of computer technology and the continuous exploration of artificial intelligence(AI)applications in the biomedical field, the automatic morphological recognition and image processing of microbial images under microscopes have advanced rapidly. The research team of Institute of Microbiology, Chinese Academy of Sciences has developed a single cell microbial identification technology combining Raman spectroscopy and artificial intelligence. Through laser Raman acquisition system and convolutional neural network analysis, the average accuracy rate of 95.64% has been achieved, and the identification can be completed in only 5 min. These technologies have shown substantial advantages in the visible morphological detection of pathogenic microorganisms, expanding anti-infective drug discovery, enhancing our understanding of infection biology, and accelerating the development of diagnostics. In this review, we discuss the application of AI-based machine learning in image analysis, genome sequencing data analysis, and natural language processing (NLP) for pathogen identification, highlighting the significant role of artificial intelligence in pathogen diagnosis. AI can improve the accuracy and efficiency of diagnosis, promote early detection and personalized treatment, and enhance public health safety.
病原微生物引起的传染病对人类健康构成严重威胁。尽管分子生物学、遗传学、计算科学和药物化学取得了进展,但传染病仍然是一个重大的公共卫生问题。应对病原体爆发、大流行和抗菌素耐药性带来的挑战需要跨学科的协同努力。随着计算机技术的发展以及人工智能(AI)在生物医学领域应用的不断探索,显微镜下微生物图像的自动形态识别和图像处理取得了迅速进展。中国科学院微生物研究所的研究团队开发了一种结合拉曼光谱和人工智能的单细胞微生物鉴定技术。通过激光拉曼采集系统和卷积神经网络分析,实现了95.64%的平均准确率,并且仅需5分钟即可完成鉴定。这些技术在病原微生物的可见形态检测、拓展抗感染药物发现、增进我们对感染生物学的理解以及加速诊断方法的开发等方面显示出显著优势。在这篇综述中,我们讨论了基于AI的机器学习在图像分析、基因组测序数据分析和自然语言处理(NLP)中用于病原体鉴定的应用,强调了人工智能在病原体诊断中的重要作用。人工智能可以提高诊断的准确性和效率,促进早期检测和个性化治疗,并增强公共卫生安全。