Litcius/Paper detail

The Convergence of Artificial Intelligence and Microfluidics in Drug Research and Development

Du Qiao, Hongxia Li, Xue Zhang, Xuhui Chen, Zhang Jiang, Jianan Zou, Danyang Zhao, Weiping Zhu, Xuhong Qian, Honglin Li

2025Engineering10 citationsDOIOpen Access PDF

Abstract

Drug research and development (R&D) plays a crucial role in supporting public health. However, the traditional drug-discovery paradigm is hindered by significant drawbacks, including high costs, lengthy development timelines, high failure rates, and limited output of new drugs. Recent advances in micro/nanotechnology, along with progress in computer science, have positioned microfluidics and artificial intelligence (AI) as promising transformative tools for drug development. Microfluidics offers miniaturized, multiplexed, and versatile platforms for high-dimensional data acquisition, while AI enables the rapid processing of complex, large-scale microfluidic data; together, they are accelerating a paradigm shift in the drug-discovery process. This paper first outlines the mainstream microfluidic strategies and AI models used in drug R&D. It then summarizes and discusses real-world applications of the integrated use of these technologies across various stages of drug discovery, including early drug discovery, drug screening, drug evaluation, drug manufacturing, and drug delivery systems. Finally, the paper examines the main limitations of microfluidics and AI in drug R&D and offers an outlook on the future convergence of these technologies.

Topics & Concepts

Convergence (economics)MicrofluidicsArtificial intelligenceDrug developmentComputer scienceEngineeringDrugNanotechnologyBiologyMaterials sciencePharmacologyEconomicsEconomic growth3D Printing in Biomedical ResearchInnovative Microfluidic and Catalytic Techniques InnovationCell Image Analysis Techniques