深度学习
微流控
计算机科学
人工智能
数据科学
合成生物学
人工神经网络
纳米技术
计算生物学
生物
材料科学
作者
Jason Riordon,Dušan Sovilj,Scott Sanner,David Sinton,Edmond W. K. Young
标识
DOI:10.1016/j.tibtech.2018.08.005
摘要
Advances in high-throughput and multiplexed microfluidics have rewarded biotechnology researchers with vast amounts of data but not necessarily the ability to analyze complex data effectively. Over the past few years, deep artificial neural networks (ANNs) leveraging modern graphics processing units (GPUs) have enabled the rapid analysis of structured input data - sequences, images, videos - to predict complex outputs with unprecedented accuracy. While there have been early successes in flow cytometry, for example, the extensive potential of pairing microfluidics (to acquire data) and deep learning (to analyze data) to tackle biotechnology challenges remains largely untapped. Here we provide a roadmap to integrating deep learning and microfluidics in biotechnology laboratories that matches computational architectures to problem types, and provide an outlook on emerging opportunities.
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