| Literature DB >> 35769720 |
Taher Dehkharghanian1, Arsalan Hashemiaghdam2, Ghazaleh Ashrafi2.
Abstract
Significance: The firefly enzyme luciferase has been used in a wide range of biological assays, including bioluminescence imaging of adenosine triphosphate (ATP). The biosensor Syn-ATP utilizes subcellular targeting of luciferase to nerve terminals for optical measurement of ATP in this compartment. Manual analysis of Syn-ATP signals is challenging due to signal heterogeneity and cellular motion in long imaging sessions. Here, we have leveraged machine learning tools to develop a method for analysis of bioluminescence images. Aim: Our goal was to create a semiautomated pipeline for analysis of bioluminescence imaging to improve measurements of ATP content in nerve terminals. Approach: We developed an image analysis pipeline that applies machine learning toolkits to distinguish neurons from background signals and excludes neural cell bodies, while also incorporating user input.Entities:
Keywords: ATP; bioluminescence; image analysis; machine learning; nerve terminals
Year: 2022 PMID: 35769720 PMCID: PMC9234513 DOI: 10.1117/1.NPh.9.4.041410
Source DB: PubMed Journal: Neurophotonics ISSN: 2329-423X Impact factor: 4.212
Fig. 1Bioluminescence imaging of cytosolic ATP in nerve terminals. (a) The bioluminescence chemical reaction in which the enzyme luciferase uses luciferin and ATP to produce light denoted as . (b) Schematic of a hippocampal nerve terminal expressing Syn-ATP in which luciferase is anchored to synaptic vesicles with synaptophysin (physin) and mCherry is used as an inert fluorophore. (c) An optimized dual fluorescence and luminescence microscopy setup (bottom) where a long-pass 590-nm filter replaces an emission filter to maximize luminescence photon collection (top). (d) Representative luminescence and mCherry fluorescence images of a hippocampal neuron (top) and an axon bearing several nerve terminals (bottom). Scale bar, .
Fig. 2An image analysis pipeline for background signal determination and cell body removal. (a) The luminescence image of a neuron was downsampled from to . K-means clustering algorithm was implemented on pixel values to produce two complementary clusters of background and desired signals. A background mask was applied to remove background signals from the image (black and white panel). Next, the region with the highest total signal intensity was detected and deemed as the cell body. Both background and cell body were removed from further analysis. (b) Background and cell body masks generated from the luminescence image were applied to the fluorescence image.
Fig. 3Quantitative comparison of Syn-ATP image analysis by manual and semiautomated methods. Hippocampal neurons expressing Syn-ATP () were imaged for 8 min and were electrically stimulated for 1 min at 10 Hz frequency (crimson bar). (a) Average traces of Syn-ATP luminescence normalized by fluorescence intensity () analyzed by manual and semiautomated methods ( neurons). (b) traces were corrected for cytosolic pH changes that occur during electrical stimulation. (c) Baseline prestimulation values obtained from semiautomated analysis were significantly higher than manual analysis (paired -test: ). (d) Semiautomated analysis yielded higher background fluorescence values than manual analysis (paired Wilcoxon test: , neurons) while not affecting luminescence background determination (paired Wilcoxon test: , neurons). (e) Measurement variability of prestimulus values was determined as % deviation from the mean of each neuron (), indicating lower variability with semiautomated analysis (paired t-test: , data points). (f) Measurement validity of the semiautomated method was assessed by comparing -scores of two population of control and mutant neurons with different baseline values, indicating significantly lower -scores for the mutant (unpaired t-test, , neurons, mutant = 10 neurons).