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Carbon dots meet artificial intelligence: applications in biomedical engineering

Yalei Guo, Yige Liu, Jiajin Yang, Yulu Wu, Haosen Lian, Xiufa Tang, Chunjie Li, Weitong Cui, Zhiyong Guo

2025Journal of Materials Chemistry B10 citationsDOI

Abstract

Carbon dots (CDs) are fluorescent carbon nanomaterials typically less than 10 nm in size with excellent water solubility, low toxicity, high biocompatibility, favorable optical properties, and modifiable surface. CDs have great promise in various fields, including bioimaging, sensing, and drug delivery. With the emergence of artificial intelligence (AI) technologies, particularly machine learning (ML) and deep learning (DL) algorithms, new avenues for synthesis optimization, performance improvement, and accurate detection and diagnosis using CDs in biomedical engineering have been opened up. This article aims to present a comprehensive review of the applications of AI in CD research, from material design and performance optimization to material characterization and data analysis. It also addresses the possible areas of application for AI-assisted CDs in biomedical engineering, highlighting the importance and future directions of this interdisciplinary area of research. In addition, the potential role of CDs in advancing AI technologies such as optoelectronic storage devices and neuromorphic computing is explored, as well as the lasting impact of the convergence of CDs and AI on the future course of technological advancement.

Topics & Concepts

NanotechnologyNeuromorphic engineeringMaterials scienceNanomaterialsCarbon fibersComputer scienceApplications of artificial intelligenceDeep learningCharacterization (materials science)Artificial intelligenceBiomedical technologyMaterials informaticsConvergence (economics)Graphene and Nanomaterials Applications
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