Weijing Liang, Zhiyu Xiao, Lingmin Xie, Xingbang Xiong, Lei Liu, Min Hu, Zhengfei Zhuang
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AutoFRET: An Image Processing-Based ROI Automated Selection Method for Quantitative FRET Measurements.
The emission-based fluorescence resonance energy transfer (E-FRET), renowned for its rapid detection, noninvasiveness towards fluorophores, and compatibility with both wide-field and confocal microscopy, is extensively employed in dynamically monitoring intermolecular interactions within living cells. However, E-FRET requires manual screening of hundreds to thousands of images for regions meeting specific criteria, a labor-intensive process devoid of mature automation solutions. In this article, we introduce AutoFRET, the automated and efficient solution tailored for E-FRET experimentation. AutoFRET harnesses image processing algorithms to swiftly and precisely identify target regions amidst vast image datasets. Furthermore, to mitigate the impact of dead cells in images on experimental results, we devise a novel cell morphology-based approach for their identification and exclusion. AutoFRET significantly reduces the time commitment for E-FRET experimental data analysis, condensing the entire process to the minute level. Comprehensive experimental evaluations reveal an average accuracy exceeding 95% for AutoFRET. This research presents a highly automated and reliable platform that expeditiously quantifies molecular interactions in living cells leveraging FRET technology, poised to contribute to advancements in quantitative biological research.
期刊介绍:
Microscopy and Microanalysis publishes original research papers in the fields of microscopy, imaging, and compositional analysis. This distinguished international forum is intended for microscopists in both biology and materials science. The journal provides significant articles that describe new and existing techniques and instrumentation, as well as the applications of these to the imaging and analysis of microstructure. Microscopy and Microanalysis also includes review articles, letters to the editor, and book reviews.