Periodic Reporting for period 1 - AXO-MATH (Imaging and analyzing dynamics of reward-related long-range axons during decision-making in behaving mice)
Okres sprawozdawczy: 2018-05-01 do 2020-04-30
WP#2: Two-photon laser scanning microscopy (2PLSM) in vivo is emerging as a prime method for the detailed investigation of cognitive processes since it can record the activity of micrometer-scale objects, genetically target specific cell groups, and monitor the same features over extended periods of time. However, the few methods which could automatically analyze 2PLSM Ca2+ images when the project started were not fit to the low level of light and the complex shapes that are typical of studies of neural sub-compartments (such as axons in WP#1). To solve this problem, we focused our efforts in on two main aspects: 1) extracting faint signals from noisy 2PLSM images, 2) avoiding morphological constraints in order to handle complex shapes, in particular those of axonal and dendritic trees. Thanks to the design of new mathematical methods for those two steps, we were able to build a combined, fully-automated, analysis pipeline which proved accurate and versatile. It allowed to process varied images, from oval-shaped neuronal cell bodies to complex, disjointed axonal and dendritic trees.
For dissemination purpose, preliminary results were communicated to the Neuroscience community at the NeuroFrance conference in 2019. A poster presentation of latest results was scheduled at the Federation of European Neuroscience Societies (FENS) meeting 2020, but was cancelled due to the COVID-19 outbreak. Two manuscripts summarizing our results for WP#1 and WP#2, respectively, are being prepared for publication in peer-reviewed journals. The software programs resulting from WP#2 will be openly accessible to all via a web platform (eg github.com) at the time of publication.
The new methods designed in WP#2 were instrumental to the implementation of WP#1. Moreover, they could be useful to the wider imaging community in Neuroscience for analyzing results from cutting-edge sub-compartmental studies with great accuracy, hence participating in uncovering new neural mechanisms.