4.7 Article

One-Dimensional Deep Learning Architecture for Fast Fluorescence Lifetime Imaging

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JSTQE.2021.3049349

关键词

Fluorescence; Training; Feature extraction; Signal to noise ratio; Computer architecture; Biological neural networks; Three-dimensional displays; Fluorescence; microscopy; machine learning; image analysis; fluorescence lifetime imaging

资金

  1. Medical Research Scotland under Photon Force, Ltd., Edinburgh [MRS-1179-2017]
  2. Biological Sciences Research Council [BB/K013416/1]
  3. BBSRC [BB/K013416/1, BB/S018700/1] Funding Source: UKRI

向作者/读者索取更多资源

A hardware-friendly deep learning architecture using 1D CNN for fast FLIM data analysis is presented. The study demonstrates the superior performance of 1D CNN in FLIM image reconstruction and lifetime parameter extraction.
We present a hardware-friendly deep learning architecture with one-dimensional convolutional neural networks (1D CNN) for fast analyzing fluorescence lifetime imaging (FLIM) data. A 1D CNN shows unparalleled advantages; they are more straightforward, quicker to train, and faster than high dimensional CNNs. 1D CNNs can be easily applied to multi-exponential fluorescence decay models. Compared with traditional least-square methods, superior performances of 1D CNNs on fluorescence lifetime image reconstruction have been validated using simulated data. We also employ the proposed 1D CNN to analyze two-photon FLIM images of functionalized gold nanoprobes in Hek293 and human prostate cancer cells. The results further demonstrate that 1D CNNs are fast and can accurately extract lifetime parameters from fluorescence signals. Our study shows that 1D CNNs have great potential in various real-time FLIM applications.

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