材料科学
Mercury(编程语言)
检出限
软件可移植性
钙钛矿(结构)
纳米技术
卤化物
光电子学
动态范围
猝灭(荧光)
离子
线性范围
荧光
水溶液中的金属离子
宽动态范围
每个符号的零件数
深度学习
非阻塞I/O
灵敏度(控制系统)
分析化学(期刊)
辨别力
作者
Jialong Xu,Yubiao Yue,Zhishan Chen,Hongqiang Zhu,Shaoan Zhang,Yiqin Chen,Huiwang Lian,Y. R. Wang,Jia Xu,Linhai Li,Yang Li
标识
DOI:10.1002/adom.202503205
摘要
Abstract Rapid, instrument‐free detection of mercury ions (Hg 2+ ) is critical for addressing environmental emergencies, yet current methods face limitations in poor portability and sensitivity. Herein, a deep learning‐optimized paper‐based kit that incorporates controllable turn‐off fluorescence of metal halide perovskite for instrument‐free time‐critical Hg 2+ detection by the dynamic quenching mechanism and ensures visual discernment at 2 ppb, achieving a 1000‐fold sensitivity improvement over commercial strips is presented. Furthermore, a smartphone app powered by the deep learning model (MobileViT) further optimizes sensitivity, achieving ultrasensitive quantification (0.11 ppb limit of detection) across a 0.2–200 ppb linear range (R 2 = 0.987) with 98% overall accuracy, and the whole detection is completed only within 5 min. This approach of instrument‐free time‐critical Hg 2+ detection anticipates a new paradigm for rapid and on‐site Hg 2+ monitoring in environmental and industrial settings.
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