Electro‐Optical Multi‐Classification Platform for Minimizing Occasional Inaccuracy in Point‐of‐Care Biomarker Detection

Author:

Dai Changhao12,Xiong Huiwen3,He Rui45,Zhu Chenxin6,Li Pintao3,Guo Mingquan7,Gou Jian8,Mei Miaomiao9,Kong Derong12,Li Qiang45,Wee Andrew Thye Shen8,Fang Xueen3,Kong Jilie3,Liu Yunqi2,Wei Dacheng12ORCID

Affiliation:

1. State Key Laboratory of Molecular Engineering of Polymers Department of Macromolecular Science Fudan University Shanghai 200433 China

2. Laboratory of Molecular Materials and Devices Fudan University Shanghai 200433 China

3. Department of Chemistry Fudan University Shanghai 200433 China

4. School of Nuclear Science and Technology Lanzhou University Lanzhou 73000 China

5. Institute of Modern Physics Chinese Academy of Sciences Lanzhou 730000 China

6. Institute of Biomedical Sciences Fudan University Shanghai 200032 China

7. Department of Laboratory Medicine Shanghai Public Health Clinical Center Fudan University Shanghai 201508 China

8. Department of Physics National University of Singapore Singapore 117542 Singapore

9. Yizheng Hospital of Traditional Chinese Medicine Yangzhou 211400 China

Abstract

AbstractOn‐site diagnostic tests that accurately identify disease biomarkers lay the foundation for self‐healthcare applications. However, these tests routinely rely on single‐mode signals and suffer from insufficient accuracy, especially for multiplexed point‐of‐care tests within a few minutes. Here, we develop a dual‐mode multi‐classification diagnostic platform that integrates an electrochemiluminescence sensor and a field‐effect transistor sensor in a microfluidic chip. The microfluidic channel guides the testing samples to flow across electro‐optical sensor units, which produce dual‐mode readouts by detecting infectious biomarkers of Mycobacterium tuberculosis, human rhinovirus, and group B streptococcus. Then, machine‐learning classifiers generate three‐dimensional hyperplanes to diagnose different diseases. Dual‐mode readouts derived from distinct mechanisms enhance the anti‐interference ability physically, and machine‐learning‐aided diagnosis in high‐dimensional space reduces the occasional inaccuracy mathematically. Clinical validation studies with 501 unprocessed samples indicate that the platform has an accuracy approaching 99%, higher than the 77%∼93% accuracy of rapid point‐of‐care testing technologies at 100% statistical power (> 150 clinical tests). Moreover, the diagnosis time is 5 minutes without a trade‐off of accuracy. This work solves the occasional inaccuracy issue of rapid on‐site diagnosis, endowing POCT systems with the same accuracy as laboratory tests and holding unique prospects for complicated scenes of personalized healthcare.This article is protected by copyright. All rights reserved

Publisher

Wiley

Subject

Mechanical Engineering,Mechanics of Materials,General Materials Science

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