Paper Microfluidics with Deep Learning for Portable Intelligent Nucleic Acid Amplification Tests

15 Pages Posted: 2 Feb 2023

See all articles by Hao Sun

Hao Sun

Fuzhou University

Wantao Xie

Fuzhou University

Yi Huang

Fujian Medical University - Fujian Provincial Hospital

Jin Mo

Fuzhou University

Hui Dong

Fuzhou University

Xinkai Chen

Star-Net Ruijie Science & Technology Co., Ltd.

Zhixing Zhang

Shenzhen Technology University

Junyi Shang

Beijing Institute of Technology

Abstract

During global outbreaks such as COVID-19, regular nucleic acid amplification tests (NAATs) have posed unprecedented burden on hospital resources. Data of traditional NAATs are manually analyzed post assay. Integration of artificial intelligence (AI) with on-chip assays give rise to novel analytical platforms via data-driven models. Here, we combined paper microfluidics, portable optoelectronic system with deep learning for SARS-CoV-2 detection. The system was quite streamlined with low power dissipation. Pixel by pixel signals reflecting amplification of synthesized SARS-CoV-2 templates (containing ORF1ab, N and E genes) can be real-time processed. Then, the data were synchronously fed to the neural networks for early prediction analysis. Instead of the quantification cycle (Cq) based analytics, reaction dynamics hidden at the early stage of amplification curve were utilized by neural networks for predicting subsequent data. Qualitative and quantitative analysis of the 40-cycle NAATs can be achieved at the end of 22nd cycle, reducing time cost by 45%. In particular, the attention mechanism based deep learning model trained by microfluidics-generated data can be seamlessly adapted to multiple clinical datasets including readouts of SARS-CoV-2 detection. Accuracy, sensitivity and specificity of the prediction can reach up to 98.1%, 97.6% and 98.6%, respectively. The approach can be compatible with the most advanced sensing technologies and AI algorithms to inspire ample innovations in fields of fundamental research and clinical settings.

Keywords: Paper microfluidics, NAAT, Deep learning, COVID-19 diagnosis

Suggested Citation

Sun, Hao and Xie, Wantao and Huang, Yi and Mo, Jin and Dong, Hui and Chen, Xinkai and Zhang, Zhixing and Shang, Junyi, Paper Microfluidics with Deep Learning for Portable Intelligent Nucleic Acid Amplification Tests. Available at SSRN: https://ssrn.com/abstract=4343429 or http://dx.doi.org/10.2139/ssrn.4343429

Hao Sun (Contact Author)

Fuzhou University ( email )

fuzhou, 350000
China

Wantao Xie

Fuzhou University ( email )

fuzhou, 350000
China

Yi Huang

Fujian Medical University - Fujian Provincial Hospital ( email )

Fuzhou
China

Jin Mo

Fuzhou University ( email )

fuzhou, 350000
China

Hui Dong

Fuzhou University ( email )

fuzhou, 350000
China

Xinkai Chen

Star-Net Ruijie Science & Technology Co., Ltd. ( email )

Zhixing Zhang

Shenzhen Technology University ( email )

Shenzhen
China

Junyi Shang

Beijing Institute of Technology ( email )

5 South Zhongguancun street
Center for Energy and Environmental Policy Researc
Beijing, 100081
China

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