Automated deep-phenotyping of the vertebrate brain.
Amin AllalouYuelong WuMostafa Ghannad-RezaiePeter M EimonMehmet Fatih YanikPublished in: eLife (2017)
Here, we describe an automated platform suitable for large-scale deep-phenotyping of zebrafish mutant lines, which uses optical projection tomography to rapidly image brain-specific gene expression patterns in 3D at cellular resolution. Registration algorithms and correlation analysis are then used to compare 3D expression patterns, to automatically detect all statistically significant alterations in mutants, and to map them onto a brain atlas. Automated deep-phenotyping of a mutation in the master transcriptional regulator fezf2 not only detects all known phenotypes but also uncovers important novel neural deficits that were overlooked in previous studies. In the telencephalon, we show for the first time that fezf2 mutant zebrafish have significant patterning deficits, particularly in glutamatergic populations. Our findings reveal unexpected parallels between fezf2 function in zebrafish and mice, where mutations cause deficits in glutamatergic neurons of the telencephalon-derived neocortex.
Keyphrases
- high throughput
- gene expression
- deep learning
- resting state
- machine learning
- traumatic brain injury
- single cell
- white matter
- wild type
- functional connectivity
- transcription factor
- cerebral ischemia
- poor prognosis
- computed tomography
- magnetic resonance imaging
- genome wide
- type diabetes
- magnetic resonance
- spinal cord injury
- single molecule
- subarachnoid hemorrhage
- high fat diet induced
- insulin resistance
- blood brain barrier
- case control
- electron microscopy