The application of key feature extraction algorithm based on Gabor wavelet transformation in the diagnosis of lumbar intervertebral disc degenerative changes

Objective Based on the theoretical basis of Gabor wavelet transformation, the application effects of feature extraction algorithm in Magnetic Resonance Imaging (MRI) and the role of feature extraction algorithm in the diagnosis of lumbar vertebra degenerative diseases were explored. Method The structure of lumbar vertebra and degenerative changes were respectively introduced to clarify the onset mechanism and pathological changes of lumbar vertebra degenerative changes. Most importantly, the theoretical basis of Gabor wavelet transformation and the extraction effect of feature information in lumbar vertebra MRI images were introduced. The differentiation effects of feature information extraction algorithm on annulus fibrosus and nucleus pulposus were analyzed. In this study, the data of lumbar spine MRI was randomly selected from the Wenzhou Lumbar Spine Research Database as research objects. A total of 130 discs were successfully fitted, and 109 images were graded by a doctor after observation, which was compared with the results of the artificial diagnosis. Through the comparison with the results of observation and diagnosis by professional doctors, the accuracy of feature extraction algorithm based on Gabor wavelet transformation in the diagnosis of lumbar vertebra degenerative changes was analyzed. Results 1. Compared with the results of the manual diagnosis, the accuracy of the classification method was 88.3%. In addition, the specificity (SPE), accuracy (ACC), and sensitivity (SEN) of the classification method were respectively 89.5%, 92.4%, and 87.6%. 2. The mutual information method and the KLT algorithm were utilized for vertebral body tracking. The maximum mutual information method was more effective in the case of fewer image sequences; however, with the increase of image frames, the accumulation of errors would make the tracking effects of images get worse. Based on the KLT algorithm, the enhanced vertebral boundary information was selected; the soft tissues showed in the obtained images were smooth, the boundary information of vertebral body was enhanced, and the results were more accurate. Conclusion The feature extraction algorithm based on Gabor wavelet transformation could easily and quickly realize the localization of the lumbar intervertebral disc, and the accuracy of the results was ensured. In addition, from the aspect of vertebral body tracking, the tracking effects based on the KLT algorithm were better and faster than those based on the maximum mutual information method.

[1]  Jeffrey C. Wang,et al.  Do modic changes, disc degeneration, translation and angular motion affect facet osteoarthritis of the lumbar spine. , 2018, European journal of radiology.

[2]  Zhenjie Hou,et al.  Supervised bilateral two-dimensional locality preserving projection algorithm based on Gabor wavelet , 2016, Signal Image Video Process..

[3]  C. Aubin,et al.  Implant Density at the Apex Is More Important Than Overall Implant Density for 3D Correction in Thoracic Adolescent Idiopathic Scoliosis Using Rod Derotation and En Bloc Vertebral Derotation Technique , 2017, Spine.

[4]  Chun Yang,et al.  Oil species identification technique developed by Gabor wavelet analysis and support vector machine based on concentration-synchronous-matrix-fluorescence spectroscopy. , 2016, Marine pollution bulletin.

[5]  H. Hatipoğlu,et al.  Magnetic Resonance Imaging / Formation image de r esonance magn etique Association Between Measures of Vertebral Endplate Morphology and Lumbar Intervertebral Disc Degeneration , 2017 .

[6]  J. Fallowfield,et al.  Influence of a 12.8-km military load carriage activity on lower limb gait mechanics and muscle activity , 2017, Ergonomics.

[7]  Joon-Shik Shin,et al.  Long-Term Course to Lumbar Disc Resorption Patients and Predictive Factors Associated with Disc Resorption , 2017, Evidence-based complementary and alternative medicine : eCAM.

[8]  Qiang Zhou,et al.  On the distribution of the modulus of Gabor wavelet coefficients and the upper bound of the dimensionless smoothness index in the case of additive Gaussian noises: Revisited , 2017 .

[9]  Ping Chung Leung,et al.  Modified Pfirrmann Grading System for Lumbar Intervertebral Disc Degeneration , 2007, Spine.

[10]  Z. Sun,et al.  [Association of FasL-844T/C gene polymorphism with FasL expression in the nucleus pulposus of degenerative lumbar intervertebral discs]. , 2017, Nan fang yi ke da xue xue bao = Journal of Southern Medical University.

[11]  Wei Chen,et al.  Multi-parameter evaluation of lumbar intervertebral disc degeneration using quantitative magnetic resonance imaging techniques. , 2018, American journal of translational research.

[12]  Ovidio Salvetti,et al.  3D image reconstruction using Radon transform , 2014, Signal, Image and Video Processing.

[13]  Evaluation of Lumbar Intervertebral Disc Degeneration Using T1ρ and T2 Magnetic Resonance Imaging in a Rabbit Disc Injury Model , 2018, Asian spine journal.

[14]  W. Löscher,et al.  Preoperative sport improves the outcome of lumbar disc surgery: a prospective monocentric cohort study , 2017, Neurosurgical Review.

[15]  I. S. Bozchalooi,et al.  Rebuttal to “On the distribution of the modulus of Gabor wavelet coefficients and the upper bound of the dimensionless smoothness index in the case of additive Gaussian noises: Revisited” by Dong Wang, Qiang Zhou, and Kwok-Leung Tsui , 2017 .

[16]  Xinqing Jiang,et al.  Multimodal quantitative magnetic resonance imaging for lumbar intervertebral disc degeneration , 2017, Experimental and therapeutic medicine.

[17]  William J Feuer,et al.  Relationship between the morphology of the foveal avascular zone, retinal structure, and macular circulation in patients with diabetes mellitus , 2018, Scientific Reports.

[18]  A. Sudo,et al.  Morphology of intervertebral disc ruptures evaluated by vacuum phenomenon using multi-detector computed tomography: association with lumbar disc degeneration and canal stenosis , 2018, BMC Musculoskeletal Disorders.

[19]  Y. X. Wáng,et al.  Thoracolumbar intervertebral disc area morphometry in elderly Chinese men and women: radiographic quantifications at baseline and changes at year-4 follow-up , 2017, bioRxiv.

[20]  Zhirong Wang,et al.  Analysis of Correlation Between Vertebral Endplate Change and Lumbar Disc Degeneration , 2017, Medical science monitor : international medical journal of experimental and clinical research.

[21]  S. Ward,et al.  The effect of training on lumbar spine posture and intervertebral disc degeneration in active-duty Marines , 2017, Ergonomics.

[22]  B. Wu,et al.  Clinical Efficacy and Safety of Total Glucosides of Paeony for Primary Sjögren's Syndrome: A Systematic Review , 2017, Evidence-based complementary and alternative medicine : eCAM.

[23]  X Ou,et al.  Skin image retrieval using Gabor wavelet texture feature , 2016, International journal of cosmetic science.

[24]  Deli Wang,et al.  Human bone morphogenetic protein 7 transfected nucleus pulposus cells delay the degeneration of intervertebral disc in dogs , 2017, Journal of orthopaedic research : official publication of the Orthopaedic Research Society.

[25]  Takuya Tabata,et al.  3D Gabor wavelet based vessel filtering of photoacoustic images , 2016, 2016 38th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC).

[26]  Aida Valls,et al.  Computer-aided diagnosis of breast cancer via Gabor wavelet bank and binary-class SVM in mammographic images , 2016, J. Exp. Theor. Artif. Intell..

[27]  F. Kamali,et al.  Spinal manipulation in the treatment of patients with MRI-confirmed lumbar disc herniation and sacroiliac joint hypomobility: a quasi-experimental study , 2018, Chiropractic & Manual Therapies.