Literature DB >> 31697595

Automated CT-derived skeletal muscle mass determination in lower hind limbs of mice using a 3D U-Net deep learning network.

Brent van der Heyden1, Wouter R P H van de Worp2, Ardy van Helvoort2,3, Jan Theys4, Annemie M W J Schols2, Ramon C J Langen2, Frank Verhaegen1.   

Abstract

The loss of skeletal muscle mass is recognized as a complication of several chronic diseases and is associated with increased mortality and a decreased quality of life. Relevant and reliable animal models in which muscle wasting can be monitored noninvasively over time are instrumental to investigate and develop new therapies. In this work, we developed a fully automatic deep learning algorithm for segmentation of micro cone beam computed tomography images of the lower limb muscle complex in mice and subsequent muscle mass calculation. A deep learning algorithm was trained on manually segmented data from 32 mice. Muscle wet mass measurements were obtained from 47 mice and served as a data set for model validation and reverse model validation. The automatic algorithm performance was ~150 times faster than manual segmentation. Reverse validation of the algorithm showed high quantitative metrics (i.e., a Dice similarity coefficient of 0.93, a Hausdorff distance of 0.4 mm, and a center of mass displacement of 0.1 mm), substantiating the robustness and accuracy of the model. A high correlation (R2 = 0.92) was obtained between the computed tomography-derived muscle mass measurements and the muscle wet masses. Longitudinal follow-up revealed time-dependent changes in muscle mass that separated control from lung tumor-bearing mice, which was confirmed as cachexia. In conclusion, this deep learning model for automated assessment of the lower limb muscle complex provides highly accurate noninvasive longitudinal evaluation of skeletal muscle mass. Furthermore, it facilitates the workflow and increases the amount of data derived from mouse studies while reducing the animal numbers.NEW & NOTEWORTHY This deep learning application enables highly accurate noninvasive longitudinal evaluation of skeletal muscle mass changes in mice with minimal requirement for operator involvement in the data analysis. It provides a unique opportunity to increase and analyze the amount of data derived from animal studies automatically while reducing animal numbers and analytical workload.

Entities:  

Keywords:  artificial intelligence; muscle segmentation; μCBCT

Mesh:

Year:  2019        PMID: 31697595     DOI: 10.1152/japplphysiol.00465.2019

Source DB:  PubMed          Journal:  J Appl Physiol (1985)        ISSN: 0161-7567


  4 in total

Review 1.  Nutritional Interventions in Cancer Cachexia: Evidence and Perspectives From Experimental Models.

Authors:  Wouter R P H van de Worp; Annemie M W J Schols; Jan Theys; Ardy van Helvoort; Ramon C J Langen
Journal:  Front Nutr       Date:  2020-12-22

2.  Virtual monoenergetic micro-CT imaging in mice with artificial intelligence.

Authors:  Brent van der Heyden; Stijn Roden; Rüveyda Dok; Sandra Nuyts; Edmond Sterpin
Journal:  Sci Rep       Date:  2022-02-11       Impact factor: 4.379

3.  Inter-observer variability of organ contouring for preclinical studies with cone beam Computed Tomography imaging.

Authors:  Georgios Lappas; Nick Staut; Natasja G Lieuwes; Rianne Biemans; Cecile J A Wolfs; Stefan J van Hoof; Ludwig J Dubois; Frank Verhaegen
Journal:  Phys Imaging Radiat Oncol       Date:  2022-01-24

4.  Deep learning-based segmentation of the thorax in mouse micro-CT scans.

Authors:  Sytze Brandenburg; Marius Staring; Justin Malimban; Danny Lathouwers; Haibin Qian; Frank Verhaegen; Julia Wiedemann
Journal:  Sci Rep       Date:  2022-02-02       Impact factor: 4.379

  4 in total

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