生物人工智能分子:合成设计和人工智能驱动发现的创新。

IF 3.2 3区 生物学 Q3 MATERIALS SCIENCE, BIOMATERIALS
Raj Dave, Kshipra Pandey, Viral Khatri, Ritu Patel, Nidhi Gour, Dhiraj Bhatia
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引用次数: 0

摘要

与合成有机荧光团相比,生物聚集诱导发射(AIE)分子具有显著的优势,特别是在生物相容性、环境可持续性和生物系统中的发射特性方面。生物AIE分子来源于多肽、蛋白质和核酸等生物分子,在生物传感、生物成像和靶向药物递送等领域有着巨大的应用前景。本文探讨了生物AIE分子的设计原理、机制见解和功能特性,同时强调了人工智能(AI)在加速其发现和优化中的作用。人工智能驱动的方法,包括机器学习和计算建模,通过实现精确的结构修饰和增强的荧光效率,正在改变AIE分子的识别和合成。这些进步为AIE分子在下一代智能生物医学设备、个性化医疗和可持续技术应用中的整合铺平了道路。包括混合生物材料、人工智能引导的分子工程和先进成像技术在内的新兴趋势正在扩大生物人工智能分子在医疗保健和环境监测中的应用范围。人工智能和生物AIE分子之间的协同作用正在开启生物医学技术的新领域,实现材料科学和医疗保健应用的变革性进步,并塑造基于荧光的诊断和治疗的未来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Biological AIE Molecules: Innovations in Synthetic Design and AI-Driven Discovery.

Biological aggregation -induced emission (AIE) molecules offer significant advantages over synthetic organic fluorophores, particularly in biocompatibility, environmental sustainability, and emission properties in biological systems. Derived from biomolecules such as peptides, proteins, and nucleic acids, biological AIE molecules hold great promise for applications in biosensing, bioimaging, and target drug delivery. This review explores the design principles, mechanistic insights, and functional properties of biological AIE molecules whiles highlighting the role of artificial intelligence (AI) in accelerating their discovery and optimization. AI-driven approaches, including machine learning and computational modeling, are transforming the identification and synthesis of AIE molecules by enabling precise structural modifications and enhanced fluorescence efficiency. These advancements are paving the way for the integration of AIE molecules in next-generation smart biomedical devices, personalized medicine and sustainable technological applications. Emerging trends, including hybrid biomaterials, Ai-guided molecular engineering, and advanced imaging techniques, are expanding the scope of biological AIE molecules in healthcare and environmental monitoring. The synergy between AI and biological AIE molecules is unlocking new frontiers in biomedical technology, enabling transformative advancements in material science and healthcare applications, and shaping the future of fluorescence- based diagnostics and therapeutics.

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来源期刊
Advanced biology
Advanced biology Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (all)
CiteScore
6.60
自引率
0.00%
发文量
130
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