Abstract:
Skeletal muscle has the remarkable ability to regenerate. However, with age and disease muscle strength and function decline.
Myofiber size, which is affected by injury and disease, is a critical measurement to assess muscle health. Here, we test and
apply Cellpose, a recently developed deep learning algorithm, to automatically segment myofibers within murine skeletal muscle.
We first show that tissue fixation is necessary to preserve cellular structures such as primary cilia, small cellular antennae,
and adipocyte lipid droplets. However, fixation generates heterogeneous myofiber labeling, which impedes intensity-based
segmentation. We demonstrate that Cellpose efficiently delineates thousands of individual myofibers outlined by a variety
of markers, even within fixed tissue with highly uneven myofiber staining. We created a novel ImageJ plugin (LabelsToRois)
that allows processing multiple Cellpose segmentation images in batch. The plugin also contains a semi-automatic erosion
function to correct for the area bias introduced by the different stainings, identifying myofibers as accurately as human experts.
We successfully applied our segmentation pipeline to uncover myofiber size differences between two different muscle injury
models, cardiotoxin and glycerol. Thus, Cellpose combined with LabelsToRois allows for fast, unbiased, and reproducible
myofiber quantification for a variety of staining and fixation conditions.