Machine learning-assisted dual-mode intelligent biosensor for sarcosine detection based on fluorescent nanozymes
Artikel i vetenskaplig tidskrift, 2026

The development of sensitive, cost-effective, and reliable biosensors for early prostate cancer screening remains a pressing challenge. Here, we report a machine learning-assisted dual-mode biosensing platform based on iron-doped carbon quantum dots (Fe0.45-CDs) coupled with sarcosine oxidase (SOX) for the ultrasensitive detection of sarcosine (Sar), an emerging biomarker for prostate cancer. The Fe0.45-CDs synthesized via a rapid microwave-assisted strategy possess unique structural and optical advantages, including abundant surface functional groups, strong blue fluorescence, and robust peroxidase-like catalytic activity. These merits facilitate the construction of a cascade reaction-based sensor integrating colorimetric and ratiometric fluorescent readouts, which mitigates environmental interference and improves detection sensitivity. The proposed dual-mode platform delivers limits of detection 0.922 μM (colorimetry) and 2.34 μM (fluorometry), outperforming conventional single-mode nanozyme biosensors. Furthermore, RGB features extracted from smartphone-captured images were analyzed using multiple machine learning algorithms, among which the k-nearest neighbors (KNN) model achieves optimal prediction accuracy toward Sar concentration. Importantly, favorable anti-interference capability and satisfactory spike recoveries are verified in urine samples, demonstrating promising clinical practicability. This work demonstrates the rational design of doped carbon dot nanozymes as versatile sensing elements and validates the synergistic combination of nanozyme-bioenzyme cascade catalysis and artificial intelligence to advance noninvasive cancer diagnosis and biomarker quantification.

Dual-mode biosensor

Machine learning

Sarcosine detection

Doped carbon quantum dots

Nanozyme-enzyme cascade

Fluorescence nanozymes

Författare

Yawen Wang

Jinan University

Hongbo Zhao

Chinese Academy of Sciences

Jian Zhang

Chalmers, Life sciences, Systembiologi

Aizhu Wang

Jinan University

Lihai Cai

Jinan University

Longwei Wang

Binzhou Medical University

Xin Yu

Jinan University

Long Hua Ding

Nankai University

Jinan University

Talanta

0039-9140 (ISSN) 18733573 (eISSN)

Vol. 310 130151

Ämneskategorier (SSIF 2025)

Analytisk kemi

DOI

10.1016/j.talanta.2026.130151

Mer information

Senast uppdaterat

2026-07-09