Keyword search (4,163 papers available)

"Lumbar multifidus muscle" Keyword-tagged Publications:

Title Authors PubMed ID
1 Ultrasound and MRI-based evaluation of relationships between morphological and mechanical properties of the lower lumbar multifidus muscle in chronic low back pain Naghdi N; Masi S; Bertrand C; Rosenstein B; Cohen-Adad J; Rivaz H; Roy M; Fortin M; 40488869
HKAP
2 The effects of a 12-week combined motor control exercise and isolated lumbar extension intervention on lumbar multifidus muscle stiffness in individuals with chronic low back pain Tornblom A; Naghdi N; Rye M; Montpetit C; Fortin M; 39258113
SOH
3 Lumbar Multifidus Muscle Morphology Changes in Patient with Different Degrees of Lumbar Disc Herniation: An Ultrasonographic Study Naghdi N; Mohseni-Bandpei MA; Taghipour M; Rahmani N; 34356981
HKAP
4 LUMINOUS database: lumbar multifidus muscle segmentation from ultrasound images Belasso CJ; Behboodi B; Benali H; Boily M; Rivaz H; Fortin M; 33097024
PERFORM
5 The effect of low back pain and lower limb injury on lumbar multifidus muscle morphology and function in university soccer players. Nandlall N, Rivaz H, Rizk A, Frenette S, Boily M, Fortin M 32050966
PERFORM

 

Title:LUMINOUS database: lumbar multifidus muscle segmentation from ultrasound images
Authors:Belasso CJBehboodi BBenali HBoily MRivaz HFortin M
Link:pubmed.ncbi.nlm.nih.gov/33097024/
DOI:10.1186/s12891-020-03679-3
Publication:BMC musculoskeletal disorders
Keywords:Lumbar multifidus muscleParaspinal muscleSegmentationUltrasound imaging
PMID:33097024 Category: Date Added:2020-10-25
Dept Affiliation: PERFORM
1 Department of Electrical and Computer Engineering, Concordia University, Montreal, H3G 1M8, Canada.
2 PERFORM Centre, Concordia University, Montreal, H4B 1R6, Canada.
3 Department of Diagnostic Radiology, McGill University, Montreal, H3G 1A4, Canada.
4 PERFORM Centre, Concordia University, Montreal, H4B 1R6, Canada. maryse.fortin@concordia.ca.
5 Department of Health, Kinesiology & Applied Physiology, Concordia University, Montreal, H4B 1R6, Canada. maryse.fortin@concordia.ca.
6 Centre de recherche interdisciplinaire en réadaptation (CRIR), Constance Lethbridge Rehabilitation Centre, Montreal, H4B 1T3, Canada. maryse.fortin@concordia.ca.

Description:

Background: Among the paraspinal muscles, the structure and function of the lumbar multifidus (LM) has become of great interest to researchers and clinicians involved in lower back pain and muscle rehabilitation. Ultrasound (US) imaging of the LM muscle is a useful clinical tool which can be used in the assessment of muscle morphology and function. US is widely used due to its portability, cost-effectiveness, and ease-of-use. In order to assess muscle function, quantitative information of the LM must be extracted from the US image by means of manual segmentation. However, manual segmentation requires a higher level of training and experience and is characterized by a level of difficulty and subjectivity associated with image interpretation. Thus, the development of automated segmentation methods is warranted and would strongly benefit clinicians and researchers. The aim of this study is to provide a database which will contribute to the development of automated segmentation algorithms of the LM.

Construction and content: This database provides the US ground truth of the left and right LM muscles at the L5 level (in prone and standing positions) of 109 young athletic adults involved in Concordia University's varsity teams. The LUMINOUS database contains the US images with their corresponding manually segmented binary masks, serving as the ground truth. The purpose of the database is to enable development and validation of deep learning algorithms used for automatic segmentation tasks related to the assessment of the LM cross-sectional area (CSA) and echo intensity (EI). The LUMINOUS database is publicly available at http: data.sonography.ai .

Conclusion: The development of automated segmentation algorithms based on this database will promote the standardization of LM measurements and facilitate comparison among studies. Moreover, it can accelerate the clinical implementation of quantitative muscle assessment in clinical and research settings.




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