This dataverse hosts all data aquired within the resreach project "qMOTION - Simulation-enhanced Highdensity Magneto-myographic Quantum Sensor Systems for Decoding Neuromuscular Control During Motion" funded by the European Reserach Council through ERC-AdG 2021 #101055186.

Abstract:
Being able to decode neural signals that control skeletal muscles with high accuracy will enable scientific breakthroughs in diagnostics and treatment, including early detection of neurodegenerative diseases, optimising personalised treatment or gene therapy, and assistive technologies like neuroprostheses. This breakthrough will require technology that is able to record signals from skeletal muscles in sufficient detail to allow the morpho-functional state of the neuromuscular system to be extracted. No existing technology can do this. Measuring the magnetic field induced by the flow of electrical charges in skeletal muscles, known as Magneto-myography (MMG), is expected to be the game-changing technology because magnetic fields are not attenuated by biological tissue. However, the extremely small magnetic fields involved require extremely sensitive magnetometers. The only promising option is novel quantum sensors, such as optically pumped magnetometers (OPMs), because they are small, modular, and can operate outside of specialised rooms. Our vision is to use this technology and our expertise in computational neuromechanics to decode, for the first time, neuromuscular control of skeletal muscles based on in vivo, high-density MMG data. For this purpose, we will design the first high-density MMG prototypes with up to 96 OPMs and develop custom calibration techniques. We will record magnetic fields induced by contracting skeletal muscles at the highest resolution ever measured. Such data, combined with the advanced computational musculoskeletal system models, will allow us to derive robust and reliable source localisation and separation algorithms. This will provide us with unique input for subject-specific neuromuscular models. We will demonstrate the superiority of the data over existing techniques with two applications; signs of ageing and neuromuscular disorders and show that it is possible to transfer these methodologies to clinical applications.
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81 to 88 of 88 Results
MATLAB Data - 36.8 MB - MD5: 0dd95db8437b4536f327db6151564a7f
Simulated motor unit electric potentials (MUEPs) and motor unit magnetic fields (MUMFs) measured from a virtual high-density EMG or MMG array (70 sampling points).
MATLAB Data - 123.5 MB - MD5: 18612421180ad8f261e8547d71adfa07
Simulated high-density EMG and high-density MMG singal for a 30 second long voluntary isometric contraction.
MATLAB Data - 69.2 KB - MD5: aa1abe3cfb63ec2b94279428ad2759e0
Motor unit territories for the simulated motor unit pools (Dim 1: y-coordinate, Dim 2: z-coordinate, Dim 3: Motor unit index).
MATLAB Data - 1.2 MB - MD5: 59fcec0ebf340e6ca397ae3ad9e9fad0
Simulated motor unit electric potentials (MUEPs) and motor unit magnetic fields (MUMFs) measured from a virtual high-density EMG or MMG array (70 sampling points). Specifically, this data shocases the influecne of the MU depth. All MU territories are identical, however, shifted in depth.
MATLAB Source Code - 7.7 KB - MD5: 2acbb8a9811ebacc2169b0d653b577c6
Input file to simulate the motor unit response libraries with the multi-domain simulation framework. Executing this script requires to download a freely available software package: https://bitbucket.org/klotz_t/multi_domain_fd_code/
MATLAB Data - 174.4 KB - MD5: 840f717e3ae15bd67577eb3124db03f0
Binary spike train that is used as input for generating interference signals (Dim 1: Motor unit index, Dim 2: Time Sample).
MATLAB Data - 59.2 KB - MD5: e505c7a453471ecd3bafe1fd38e25293
Binary spike train that is used as input for generating interference signals (Dim 1: Motor unit index, Dim 2: Time Sample).
MATLAB Data - 107.2 KB - MD5: eb865075da56043cae599f0db757d372
Binary spike train that is used as input for generating interference signals (Dim 1: Motor unit index, Dim 2: Time Sample).
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