Gao Zhaolong, Li Yiwei
The Key Laboratory for Biomedical Photonics of MOE at Wuhan National Laboratory for Optoelectronics-Hubei Bioinformatics and Molecular Imaging Key Laboratory, Department of Biomedical Engineering, Systems Biology Theme, College of Life Science and Technology, Huazhong University of Science and Technology, Wuhan 430074, China.
Biomicrofluidics. 2023 Oct 3;17(5):051301. doi: 10.1063/5.0170050. eCollection 2023 Sep.
Microfluidic technology has largely benefited both fundamental biological research and translational clinical diagnosis with its advantages in high-throughput, single-cell resolution, high integrity, and wide-accessibility. Despite the merits we obtained from microfluidics in the last two decades, the current requirement of intelligence in biomedicine urges the microfluidic technology to process biological big data more efficiently and intelligently. Thus, the current readout technology based on the direct detection of the signals in either optics or electrics was not able to meet the requirement. The implementation of artificial intelligence (AI) in microfluidic technology matches up with the large-scale data usually obtained in the high-throughput assays of microfluidics. At the same time, AI is able to process the multimodal datasets obtained from versatile microfluidic devices, including images, videos, electric signals, and sequences. Moreover, AI provides the microfluidic technology with the capability to understand and decipher the obtained datasets rather than simply obtaining, which eventually facilitates fundamental and translational research in many areas, including cell type discovery, cell signaling, single-cell genetics, and diagnosis. In this Perspective, we will highlight the recent advances in employing AI for single-cell biology and present an outlook on the future direction with more advanced AI algorithms.
微流控技术凭借其在高通量、单细胞分辨率、高完整性和广泛可及性方面的优势,极大地推动了基础生物学研究和转化临床诊断的发展。尽管在过去二十年中我们从微流控技术中收获颇丰,但当前生物医学领域对智能化的需求促使微流控技术更高效、智能地处理生物大数据。因此,目前基于光学或电学信号直接检测的读出技术无法满足这一需求。人工智能(AI)在微流控技术中的应用与微流控高通量检测中通常获得的大规模数据相匹配。同时,AI能够处理从多功能微流控设备获得的多模态数据集,包括图像、视频、电信号和序列。此外,AI赋予微流控技术理解和解读所获数据集的能力,而非仅仅获取数据,这最终促进了许多领域的基础研究和转化研究,包括细胞类型发现、细胞信号传导、单细胞遗传学和诊断。在这篇观点文章中,我们将重点介绍在单细胞生物学中应用AI的最新进展,并对使用更先进AI算法的未来方向进行展望。