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A deep learning-based integrated analytical system for tumor exosome on-chip isolation and automated image identification

Yunxing Lu, Haihui Wang, Zhou Zeng, Jianan Hui, Jiangliu Ji, Hongju Mao, Qiang Shi, Xiaoyue Yang

2025Talanta Open9 citationsDOIOpen Access PDF

Abstract

• We achieved the total integrated on-chip isolation of exosome and tumor marker analysis without off-chip sample pretreatment. • Quantum dots were used to obtain marker abundance with more sensitive limit, and deep learning model eliminated manual operations and facilitated detection processing within minutes. • This system demonstrated fast, highly-sensitive and automatic detection over a wide concentration range of 10 8 . Exosomes are nanoscale lipid-bound vesicles secreted by various types of parent cells into the extracellular environment. They carry a wide range of bioactive molecules and serve as a crucial role in intercellular communication and tumor progression. Here, we develop an integrated microfluidic system for on-chip exosome isolation and quantum dot-based tumor marker analysis. This system integrates exosome processing and marker abundance analysis within a centimeter-scaled microfluidic chip, eliminating the need for additional off-chip treatments. We also implement YOLO v8-based image identification for sensitive and automatic detection, reducing the limit of detection (LOD) to 8.65 per microliter while minimizing manual measurement errors. Using this system, two tumor markers among four cell lines were profiled in parallel, revealing unique tumor burdens and demonstrating strong consistency with approved serological marker testing. These results highlight the potential of this technique for sensitive, precise, and automatic exosome tumor detection, paving the way for early cancer diagnosis and analysis. Integrated analytical system for on-chip exosome isolation and automatic tumor marker analysis. Exosome samples were immuno-isolated and labeled with quantum dots, followed by monodispersed among the arrays and recognized by deep learning model to producing marker abundance readout automatically. The integrated system is suitable for sensitive, precise and automatic exosome tumor analysis.

Topics & Concepts

Identification (biology)Isolation (microbiology)ExosomeComputational biologyArtificial intelligenceComputer scienceDeep learningChipPattern recognition (psychology)BiologyMicrovesiclesmicroRNABioinformaticsGeneGeneticsBotanyTelecommunicationsExtracellular vesicles in diseaseMicrofluidic and Bio-sensing TechnologiesCell Image Analysis Techniques
A deep learning-based integrated analytical system for tumor exosome on-chip isolation and automated image identification | Litcius