Papers
Topics
Authors
Recent
Gemini 2.5 Flash
Gemini 2.5 Flash
133 tokens/sec
GPT-4o
7 tokens/sec
Gemini 2.5 Pro Pro
46 tokens/sec
o3 Pro
4 tokens/sec
GPT-4.1 Pro
38 tokens/sec
DeepSeek R1 via Azure Pro
28 tokens/sec
2000 character limit reached

Accelerated, physics-inspired inference of skeletal muscle microstructure from diffusion-weighted MRI (2306.11125v1)

Published 19 Jun 2023 in physics.med-ph and cs.LG

Abstract: Muscle health is a critical component of overall health and quality of life. However, current measures of skeletal muscle health take limited account of microstructural variations within muscle, which play a crucial role in mediating muscle function. To address this, we present a physics-inspired, machine learning-based framework for the non-invasive and in vivo estimation of microstructural organization in skeletal muscle from diffusion-weighted MRI (dMRI). To reduce the computational expense associated with direct numerical simulations of dMRI physics, a polynomial meta-model is developed that accurately represents the input/output relationships of a high-fidelity numerical model. This meta-model is used to develop a Gaussian process (GP) model to provide voxel-wise estimates and confidence intervals of microstructure organization in skeletal muscle. Given noise-free data, the GP model accurately estimates microstructural parameters. In the presence of noise, the diameter, intracellular diffusion coefficient, and membrane permeability are accurately estimated with narrow confidence intervals, while volume fraction and extracellular diffusion coefficient are poorly estimated and exhibit wide confidence intervals. A reduced-acquisition GP model, consisting of one-third the diffusion-encoding measurements, is shown to predict parameters with similar accuracy to the original model. The fiber diameter and volume fraction estimated by the reduced GP model is validated via histology, with both parameters within their associated confidence intervals, demonstrating the capability of the proposed framework as a promising non-invasive tool for assessing skeletal muscle health and function.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (57)
  1. Robert T Kell, Gordon Bell and Art Quinney “Musculoskeletal fitness, health outcomes and quality of life” In Sports Medicine 31.12 Springer, 2001, pp. 863–873
  2. “The relationships between muscle strength, biomechanical functional moments and health-related quality of life in non-elite older adults” In Age and Ageing 41.2 Oxford University Press, 2011, pp. 224–230
  3. Ronenn Roubenoff “Origins and clinical relevance of sarcopenia” In Canadian Journal of Applied Physiology 26.1, 2001, pp. 78–89
  4. “Physical frailty and body composition in obese elderly men and women” In Obesity Research 12.6 Wiley-Blackwell, 2004, pp. 913–920
  5. Peter P Purslow “The structure and functional significance of variations in the connective tissue within muscle” In Comparative Biochemistry and Physiology Part A: Molecular & Integrative Physiology 133.4 Elsevier, 2002, pp. 947–966
  6. “The Need for Standardized Assessment of Muscle Quality in Skeletal Muscle Function Deficit and Other Aging-Related Muscle Dysfunctions: A Symposium Report” In Frontiers in Physiology 8 Frontiers, 2017, pp. 87
  7. “Skeletal muscle mass and quality: Evolution of modern measurement concepts in the context of sarcopenia” In Proceedings of the Nutrition Society 74.4 Cambridge University Press, 2015, pp. 355–366
  8. “Quantitative MRI and strength measurements in the assessment of muscle quality in Duchenne muscular dystrophy” In Neuromuscular Disorders 24.5 Elsevier, 2014, pp. 409–416
  9. Noel M Naughton and John G Georgiadis “Global sensitivity analysis of skeletal muscle dMRI metrics: Effects of microstructural and pulse parameters” In Magnetic Resonance in Medicine 83.4 Wiley Online Library, 2020, pp. 1458–1470
  10. “Relationships between tissue microstructure and the diffusion tensor in simulated skeletal muscle” In Magnetic Resonance in Medicine 80.1 Wiley-Blackwell, 2018, pp. 317–329
  11. “Varying diffusion time to discriminate between simulated skeletal muscle injury models using stimulated echo diffusion tensor imaging” In Magnetic resonance in medicine 85.5 Wiley Online Library, 2021, pp. 2524–2536
  12. “Monte Carlo Simulations of Diffusion Weighted MRI in Myocardium: Validation and Sensitivity Analysis” In IEEE Transactions on Medical Imaging 36.6, 2017, pp. 1316–1325
  13. “An image-based finite difference model for simulating restricted diffusion” In Magnetic Resonance in Medicine 50.2 Wiley Online Library, 2003, pp. 373–382
  14. Junzhong Xu, Mark D. Does and John C. Gore “Quantitative characterization of tissue microstructure with temporal diffusion spectroscopy” In Journal of Magnetic Resonance 200.2 Elsevier Inc., 2009, pp. 189–197
  15. Leandro Beltrachini, Zeike A Taylor and Alejandro F Frangi “A parametric finite element solution of the generalised Bloch-Torrey equation for arbitrary domains” In Journal of Magnetic Resonance 259 Elsevier, 2015, pp. 126–134
  16. “A partition of unity finite element method for computational diffusion MRI” In Journal of Computational Physics 375 Elsevier, 2018, pp. 271–290
  17. Matt G. Hall and Chris A. Clark “Diffusion in hierarchical systems: A simulation study in models of healthy and diseased muscle tissue” In Magnetic Resonance in Medicine 78.3 Wiley-Blackwell, 2017, pp. 1187–1198
  18. Noel M Naughton, Caroline G Tennyson and John G Georgiadis “Lattice Boltzmann method for simulation of diffusion magnetic resonance imaging physics in multiphase tissue models” In Physical Review E 102.4 APS, 2020, pp. 043305
  19. “Evaluation of diffusional anisotropy and microscopic structure in skeletal muscles using magnetic resonance” In Magnetic Resonance Imaging 24.1 Elsevier, 2006, pp. 19–25
  20. “Water diffusion to assess meat microstructure” In Food Chemistry 236 Elsevier, 2017, pp. 15–20
  21. “Myofiber ellipticity as an explanation for transverse asymmetry of skeletal muscle diffusion MRI in vivo signal” In Annals of Biomedical Engineering 37.12 Springer US, 2009, pp. 2532–2546
  22. “A diffusion tensor imaging analysis of gender differences in water diffusivity within human skeletal muscle” In NMR in Biomedicine 18.8 Wiley-Blackwell, 2005, pp. 489–498
  23. “Dependence on diffusion time of apparent diffusion tensor of ex vivo calf tongue and heart” In Magnetic Resonance in Medicine 54.6, 2005, pp. 1387–1396
  24. “Comparison of two-compartment exchange and continuum models of dMRI in skeletal muscle” In Physics in Medicine & Biology 64.15 IOP Publishing, 2019, pp. 155004
  25. “In vivo measurement of membrane permeability and myofiber size in human muscle using time-dependent diffusion tensor imaging and the random permeable barrier model” In NMR in Biomedicine 30.3, 2017, pp. e3612
  26. “Quantifying myofiber integrity using diffusion MRI and random permeable barrier modeling in skeletal muscle growth and Duchenne muscular dystrophy model in mice” In Magnetic Resonance in Medicine Wiley-Blackwell, 2018
  27. Henry C Torrey “Bloch equations with diffusion terms” In Physical Review 104.3 APS, 1956, pp. 563
  28. Ivana Drobnjak, Bernard Siow and Daniel C Alexander “Optimizing gradient waveforms for microstructure sensitivity in diffusion-weighted MR” In Journal of Magnetic Resonance 206.1 Elsevier, 2010, pp. 41–51
  29. Edward O Stejskal and John E Tanner “Spin diffusion measurements: spin echoes in the presence of a time-dependent field gradient” In The Journal of Chemical Physics 42.1 AIP Publishing, 1965, pp. 288–292
  30. John E Tanner “Use of the stimulated echo in NMR diffusion studies” In The Journal of Chemical Physics 52.5 AIP, 1970, pp. 2523–2526
  31. “Novel insights into in-vivo diffusion tensor cardiovascular magnetic resonance using computational modeling and a histology-based virtual microstructure” In Magnetic Resonance in Medicine 81.4 Wiley Online Library, 2019, pp. 2759–2773
  32. Angelos Barmpoutis and Baba C Vemuri “A unified framework for estimating diffusion tensors of any order with symmetric positive-definite constraints” In Biomedical Imaging: From Nano to Macro, 2010 IEEE International Symposium on, 2010, pp. 1385–1388 IEEE
  33. “Connecting Diffusion MRI to Skeletal Muscle Microstructure: Leveraging Meta-Models and GPU-acceleration” In Proceedings of the Practice and Experience in Advanced Research Computing on Rise of the Machines (learning), 2019, pp. 7 ACM
  34. Russell R Barton and Martin Meckesheimer “Metamodel-based simulation optimization” In Handbooks in operations research and management science 13 Elsevier, 2006, pp. 535–574
  35. “Physics-informed machine learning” In Nature Reviews Physics 3.6 Nature Publishing Group UK London, 2021, pp. 422–440
  36. “Metamodeling of constitutive model using Gaussian process machine learning” In Journal of the Mechanics and Physics of Solids 154 Elsevier, 2021, pp. 104532
  37. Michael Eldred “Recent Advances in Non-Intrusive Polynomial Chaos and Stochastic Collocation Methods for Uncertainty Analysis and Design” In 50th AIAA/ASME/ASCE/AHS/ASC Structures, Structural Dynamics, and Materials Conference, 2009
  38. Arun Kaintura, Tom Dhaene and Domenico Spina “Review of polynomial chaos-based methods for uncertainty quantification in modern integrated circuits” In Electronics 7.3 Multidisciplinary Digital Publishing Institute, 2018, pp. 30
  39. Dongbin Xiu and George Em Karniadakis “The Wiener–Askey polynomial chaos for stochastic differential equations” In SIAM Journal on Scientific Computing 24.2 SIAM, 2002, pp. 619–644
  40. Jonathan Feinberg and Hans Petter Langtangen “Chaospy: An open source tool for designing methods of uncertainty quantification” In Journal of Computational Science 11 Elsevier, 2015, pp. 46–57
  41. Ilya M Sobol “On the distribution of points in a cube and the approximate evaluation of integrals” In Zhurnal Vychislitel’noi Matematiki i Matematicheskoi Fiziki 7.4 Russian Academy of Sciences, Branch of Mathematical Sciences, 1967, pp. 784–802
  42. “Solving inverse problems using data-driven models” In Acta Numerica 28 Cambridge University Press, 2019, pp. 1–174
  43. “Deep learning techniques for inverse problems in imaging” In IEEE Journal on Selected Areas in Information Theory 1.1 IEEE, 2020, pp. 39–56
  44. Olivier Bousquet, Ulrike Luxburg and Gunnar Rätsch “Advanced Lectures on Machine Learning: ML Summer Schools 2003, Canberra, Australia, February 2-14, 2003, Tübingen, Germany, August 4-16, 2003, Revised Lectures” Springer, 2011
  45. Christopher KI Williams and Carl Edward Rasmussen “Gaussian processes for machine learning” MIT press Cambridge, MA, 2006
  46. “Structure discovery in nonparametric regression through compositional kernel search” In International Conference on Machine Learning, 2013, pp. 1166–1174 PMLR
  47. Denis S Grebenkov “Use, misuse, and abuse of apparent diffusion coefficients” In Concepts in Magnetic Resonance Part A: An Educational Journal 36.1 Wiley Online Library, 2010, pp. 24–35
  48. “The effects of ageing on mouse muscle microstructure: a comparative study of time-dependent diffusion MRI and histological assessment” In NMR in Biomedicine 31.3 Wiley-Blackwell, 2018, pp. e3881
  49. “Time-dependent diffusion MRI as a probe of microstructural changes in a mouse model of Duchenne muscular dystrophy” In NMR in Biomedicine 33.5 Wiley Online Library, 2020, pp. e4276
  50. Bruce M. Damon “Effects of image noise in muscle diffusion tensor (DT)-MRI assessed using numerical simulations” In Magnetic Resonance in Medicine 60.4 Wiley-Blackwell, 2008, pp. 934–944
  51. GPy “GPy: A Gaussian process framework in python”, http://github.com/SheffieldML/GPy, since 2012
  52. N. Hansen, S.D. Muller and P. Koumoutsakos “Reducing the time complexity of the derandomized evolution strategy with covariance matrix adaptation (CMA-ES).” In Evolutionary Computation 11.1 MIT Press, 2003, pp. 1–18
  53. “FSL” In Neuroimage 62.2 Elsevier, 2012, pp. 782–790
  54. “Diffusive sensitivity to muscle architecture: a magnetic resonance diffusion tensor imaging study of the human calf” In European Journal of Applied Physiology 93.3 Springer-Verlag, 2004, pp. 253–262
  55. Noel Naughton, Anthony Wang and John Georgiadis “Fascicle Ellipticity as an Explanation of Transverse Anisotropy in Diffusion MRI Measurements of Skeletal Muscle” Abstract 1276 In Proceedings of the 27th Annual Meeting of the International Society for Magnetic Resonance in Medicine, 2019
  56. Caroline A Schneider, Wayne S Rasband and Kevin W Eliceiri “NIH Image to ImageJ: 25 years of image analysis” In Nature Methods 9.7 Nature Publishing Group, 2012, pp. 671
  57. Mark D Does, Edward C Parsons and John C Gore “Oscillating gradient measurements of water diffusion in normal and globally ischemic rat brain” In Magnetic Resonance in Medicine 49.2 Wiley Online Library, 2003, pp. 206–215
Citations (1)

Summary

We haven't generated a summary for this paper yet.