光漂白
化学
化学计量学
荧光
生物系统
光漂白后的荧光恢复
卷积神经网络
分子
人工智能
计算机科学
光学
物理
物理化学
生物
有机化学
作者
Jiachao Xu,Gege Qin,Fang Luo,Lina Wang,Rong Zhao,Nan Li,Jinghe Yuan,Xiaohong Fang
摘要
The stoichiometry of protein complexes is precisely regulated in cells and is fundamental to protein function. Singe-molecule fluorescence imaging based photobleaching event counting is a new approach for protein stoichiometry determination under physiological conditions. Due to the interference of the high noise level and photoblinking events, accurately extracting real bleaching steps from single-molecule fluorescence traces is still a challenging task. Here, we develop a novel method of using convolutional and long-short-term memory deep learning neural network (CLDNN) for photobleaching event counting. We design the convolutional layers to accurately extract features of steplike photobleaching drops and long-short-term memory (LSTM) recurrent layers to distinguish between photobleaching and photoblinking events. Compared with traditional algorithms, CLDNN shows higher accuracy with at least 2 orders of magnitude improvement of efficiency, and it does not require user-specified parameters. We have verified our CLDNN method using experimental data from imaging of single dye-labeled molecules in vitro and epidermal growth factor receptors (EGFR) on cells. Our CLDNN method is expected to provide a new strategy to stoichiometry study and time series analysis in chemistry.
科研通智能强力驱动
Strongly Powered by AbleSci AI