# Estimation of Absolute States of Human Skeletal Muscle via Standard   B-Mode Ultrasound Imaging and Deep Convolutional Neural Networks

**Authors:** Ryan J. Cunningham, Ian D. Loram

arXiv: 1907.01649 · 2019-07-04

## TL;DR

This study demonstrates that deep learning applied to 2D ultrasound images can non-invasively estimate active and passive skeletal muscle states, providing a new approach for personalized muscle diagnosis.

## Contribution

The paper introduces a novel deep learning method that accurately estimates muscle activity, joint angle, and joint moment from ultrasound images, generalizing across individuals.

## Key findings

- Deep neural networks predict muscle states with ~55% accuracy.
- Ultrasound imaging combined with deep learning encodes muscle length-tension relationships.
- Method offers a non-invasive tool for muscle diagnosis in various conditions.

## Abstract

Objective: To test automated in vivo estimation of active and passive skeletal muscle states using ultrasonic imaging. Background: Current technology (electromyography, dynamometry, shear wave imaging) provides no general, non-invasive method for online estimation of skeletal intramuscular states. Ultrasound (US) allows non-invasive imaging of muscle, yet current computational approaches have never achieved simultaneous extraction nor generalisation of independently varying, active and passive states. We use deep learning to investigate the generalizable content of 2D US muscle images. Method: US data synchronized with electromyography of the calf muscles, with measures of joint moment/angle were recorded from 32 healthy participants (7 female, ages: 27.5, 19-65). We extracted a region of interest of medial gastrocnemius and soleus using our prior developed accurate segmentation algorithm. From the segmented images, a deep convolutional neural network was trained to predict three absolute, drift-free, components of the neurobiomechanical state (activity, joint angle, joint moment) during experimentally designed, simultaneous, independent variation of passive (joint angle) and active (electromyography) inputs. Results: For all 32 held-out participants (16-fold cross-validation) the ankle joint angle, electromyography, and joint moment were estimated to accuracy 55+-8%, 57+-11%, and 46+-9% respectively. Significance: With 2D US imaging, deep neural networks can encode in generalizable form, the activity-length-tension state relationship of muscle. Observation only, low power, 2D US imaging can provide a new category of technology for non-invasive estimation of neural output, length and tension in skeletal muscle. This proof of principle has value for personalised muscle diagnosis in pain, injury, neurological conditions, neuropathies, myopathies and ageing.

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Source: https://tomesphere.com/paper/1907.01649