NMJ-Analyser identifies subtle early changes in mouse models of neuromuscular disease

Author:

Mejia Maza Alan,Jarvis Seth,Lee Weaverly Colleen,Cunningham Thomas J.,Schiavo Giampietro,Secrier Maria,Fratta Pietro,Sleigh James N.,Fisher Elizabeth M. C.,Sudre Carole H.

Abstract

AbstractThe neuromuscular junction (NMJ) is the peripheral synapse formed between a motor neuron axon terminal and a muscle fibre. NMJs are thought to be the primary site of peripheral pathology in many neuromuscular diseases, but innervation/denervation status is often assessed qualitatively with poor systematic criteria across studies, and separately from 3D morphological structure. Here, we describe the development of ‘NMJ-Analyser’, to comprehensively screen the morphology of NMJs and their corresponding innervation status automatically. NMJ-Analyser generates 29 biologically relevant features to quantitatively define healthy and aberrant neuromuscular synapses and applies machine learning to diagnose NMJ degeneration. We validated this framework in longitudinal analyses of wildtype mice, as well as in four different neuromuscular disease models: three for amyotrophic lateral sclerosis (ALS) and one for peripheral neuropathy. We showed that structural changes at the NMJ initially occur in the nerve terminal of mutant TDP43 and FUS ALS models. Using a machine learning algorithm, healthy and aberrant neuromuscular synapses are identified with 95% accuracy, with 88% sensitivity and 97% specificity. Our results validate NMJ-Analyser as a robust platform for systematic and structural screening of NMJs, and pave the way for transferrable, and cross-comparison and high-throughput studies in neuromuscular diseases.

Funder

FONDECYT-CONCYTEC

UK Motor Neurone Disease Association

Massachusetts General Hospital Collaborative Centre for X-linked Dystonia-Parkinsonism

UK Medical Research Council

Wellcome Trust

UK Dementia Research Institute Foundation Award

Medical Research Council

Alzheimer Society Junior Fellowship

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

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