Deep learning‐enhanced microwell array biochip for rapid and precise quantification of Cryptococcus subtypes

Author:

Tong Yihang12,Zeng Yu2,Lu Yinuo23,Huang Yemei3,Jin Zhiyuan2,Wang Zhiying2,Wang Yusen2,Zang Xuelei3,Chang Lingqian2ORCID,Mu Wei13,Xue Xinying45,Dong Zaizai12

Affiliation:

1. School of Engineering Medicine Beihang University Beijing China

2. Key Laboratory of Biomechanics and Mechanobiology (Ministry of Education), Beijing Advanced Innovation Center for Biomedical Engineering, School of Biological Science and Medical Engineering Beihang University Beijing China

3. Key Laboratory of Big Data‐Based Precision Medicine (Beihang University) Ministry of Industry and Information Technology of the People's Republic of China Beijing China

4. Department of Respiratory and Critical Care,Emergency and Critical Care Medical Center Beijing Shijitan Hospital Capital Medical University Beijing China

5. Department of Respiratory and Critical Care Shandong Second Medical University Weifang China

Abstract

AbstractCryptococcus is a family of strongly infectious pathogens that results in a wide variety of symptoms, particularly threatening the patients undergoing the immune‐deficiency or medical treatment. Rapidly identifying Cryptococcus subtypes and accurately quantifying their contents remain urgent needs for infection control and timely therapy. However, traditional detection techniques heavily rely on expensive, specialized instruments, significantly compromising their applicability for large‐scale population screening. In this work, we report a portable microwell array chip platform integrated with a deep learning‐based image recognition program, which enables rapid, precise quantification of the specific subtypes of Cryptococcus. The platform features four zones of microwell arrays preloaded with the subtype‐targeted CRISPR–Cas12a system that avoid dependence on slow, instrumental‐mediated target amplification, achieving rapid (10 min), high specificity for identifying the sequence of Cryptococcus. The deep learning‐based image recognition program utilizing segment anything model (SAM) significantly enhances automation and accuracy in identifying target concentrations, which eventually achieves ultra‐low limit of detection (0.5 pM) by personal smartphones. This platform can be further customized to adapt to various scenarios in clinical settings.

Funder

National Key Research and Development Program of China

Natural Science Foundation of Beijing Municipality

National Natural Science Foundation of China

Publisher

Wiley

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