A modular framework for multi-scale tissue imaging and neuronal segmentation.
Simone CauzzoEster BrunoDavid BouletPaul NazacMiriam BasileAlejandro Luis CallaraFederico TozziArti AhluwaliaChiara MagliaroLydia DanglotNicola VanelloPublished in: Nature communications (2024)
The development of robust tools for segmenting cellular and sub-cellular neuronal structures lags behind the massive production of high-resolution 3D images of neurons in brain tissue. The challenges are principally related to high neuronal density and low signal-to-noise characteristics in thick samples, as well as the heterogeneity of data acquired with different imaging methods. To address this issue, we design a framework which includes sample preparation for high resolution imaging and image analysis. Specifically, we set up a method for labeling thick samples and develop SENPAI, a scalable algorithm for segmenting neurons at cellular and sub-cellular scales in conventional and super-resolution STimulated Emission Depletion (STED) microscopy images of brain tissues. Further, we propose a validation paradigm for testing segmentation performance when a manual ground-truth may not exhaustively describe neuronal arborization. We show that SENPAI provides accurate multi-scale segmentation, from entire neurons down to spines, outperforming state-of-the-art tools. The framework will empower image processing of complex neuronal circuitries.
Keyphrases
- high resolution
- deep learning
- convolutional neural network
- cerebral ischemia
- mass spectrometry
- spinal cord
- artificial intelligence
- high speed
- white matter
- machine learning
- subarachnoid hemorrhage
- tandem mass spectrometry
- brain injury
- blood brain barrier
- optical coherence tomography
- gene expression
- multiple sclerosis
- resting state
- high throughput
- spinal cord injury
- functional connectivity
- big data