Literature DB >> 33208388

Artificial Intelligence Comparison of the Radiologist Report With Endoscopic Predictors of Successful Transforaminal Decompression for Painful Conditions of the Lumber Spine: Application of Deep Learning Algorithm Interpretation of Routine Lumbar Magnetic Resonance Imaging Scan.

Kai-Uwe Lewandrowski1, Narendran Muraleedharan2, Steven Allen Eddy3, Vikram Sobti4, Brian D Reece5, Jorge Felipe Ramírez León6, Sandeep Shah3.   

Abstract

BACKGROUND: Identifying pain generators in multilevel lumbar degenerative disc disease is not trivial but is crucial for lasting symptom relief with the targeted endoscopic spinal decompression surgery. Artificial intelligence (AI) applications of deep learning neural networks to the analysis of routine lumbar MRI scans could help the primary care and endoscopic specialist physician to compare the radiologist's report with a review of endoscopic clinical outcomes.
OBJECTIVE: To analyze and compare the probability of predicting successful outcome with lumbar spinal endoscopy by using the radiologist's MRI grading and interpretation of the radiologic image with a novel AI deep learning neural network (Multus Radbot™) as independent prognosticators.
METHODS: The location and severity of foraminal stenosis were analyzed using comparative ordinal grading by the radiologist, and a contiguous grading by the AI network in patients suffering from lateral recess and foraminal stenosis due to lumbar herniated disc. The compressive pathology definitions were extracted from the radiologist lumbar MRI reports from 65 patients with a total of 383 levels for the central canal - (0) no disc bulge/protrusion/canal stenosis, (1) disc bulge without canal stenosis, (2) disc bulge resulting in canal stenosis, and (3) disc herniation/protrusion/extrusion resulting in canal stenosis. Both neural foramina were assessed with either - (0) neural foraminal stenosis absent, or (1) neural foramina are stenosis present. Reporting criteria for the pathologies at each disc level and, when available, the grading of severity were extracted and assigned into two categories: "Normal," and "Stenosis." Clinical outcomes were graded using dichotomized modified Macnab criteria considering Excellent and Good results as "Improved," and Fair and Poor outcomes as "Not Improved." Binary logistic regression analysis was used to predict the probability of the AI- and radiologist grading of stenosis at the 88 foraminal decompression sites to result in "Improved" outcomes.
RESULTS: The average age of the 65 patients was 62.7 +/- 12.7 years. They consisted of 51 (54.3%) males and 43 (45.7%) females. At an average final follow-up of 57.4 +/- 12.57, Macnab outcome analysis showed that 86.4% of the 88 foraminal decompressions resulted in Excellent and Good (Improved) clinical outcomes. The stenosis grading by the radiologist showed an average severity score of 4.71 +/- 2.626, and the average AI severity grading was 5.65 +/- 3.73. Logit regression probability analysis of the two independent prognosticators showed that both the grading by the radiologist (86.2%; odds ratio 1.264) and the AI grading (86.4%; odds ratio 1.267) were nearly equally predictive of a successful outcome with the endoscopic decompression.
CONCLUSIONS: Deep learning algorithms are capable of identifying lumbar foraminal compression due to herniated disc. The treatment outcome was correlated to the decompression of the directly visualized corresponding pathology during the lumbar endoscopy. This research should be extended to other validated pain generators in the lumbar spine. LEVEL OF EVIDENCE: 3. CLINICAL RELEVANCE: Validity, clinical teaching, evaluation study. This manuscript is generously published free of charge by ISASS, the International Society for the Advancement of Spine Surgery.
Copyright © 2020 ISASS.

Entities:  

Keywords:  artificial intelligence; deep neural network learning; endoscopic decompression; herniated disc; magnetic resonance imaging

Year:  2020        PMID: 33208388      PMCID: PMC7735439          DOI: 10.14444/7130

Source DB:  PubMed          Journal:  Int J Spine Surg        ISSN: 2211-4599


  43 in total

1.  A practical MRI grading system for lumbar foraminal stenosis.

Authors:  Seunghun Lee; Joon Woo Lee; Jin Sup Yeom; Ki-Jeong Kim; Hyun-Jib Kim; Soo Kyo Chung; Heung Sik Kang
Journal:  AJR Am J Roentgenol       Date:  2010-04       Impact factor: 3.959

2.  Percutaneous endoscopic discectomy for extraforaminal lumbar disc herniations: extraforaminal targeted fragmentectomy technique using working channel endoscope.

Authors:  Gun Choi; Sang-Ho Lee; Arun Bhanot; Pradyumna Pai Raiturker; Yu Sik Chae
Journal:  Spine (Phila Pa 1976)       Date:  2007-01-15       Impact factor: 3.468

3.  Surface strain on human intervertebral discs.

Authors:  I A Stokes
Journal:  J Orthop Res       Date:  1987       Impact factor: 3.494

4.  Early and staged endoscopic management of common pain generators in the spine.

Authors:  Anthony Yeung; Kai-Uwe Lewandrowski
Journal:  J Spine Surg       Date:  2020-01

5.  In-vivo Endoscopic Visualization of Patho-anatomy in Symptomatic Degenerative Conditions of the Lumbar Spine II: Intradiscal, Foraminal, and Central Canal Decompression.

Authors:  Anthony T Yeung; Satishchandra Gore
Journal:  Surg Technol Int       Date:  2011-12

6.  Outcome of Transforaminal Epidural Steroid Injection According to the Severity of Lumbar Foraminal Spinal Stenosis.

Authors:  Min Cheol Chang; Dong Gyu Lee
Journal:  Pain Physician       Date:  2018-01       Impact factor: 4.965

7.  Transforaminal posterolateral endoscopic discectomy with or without the combination of a low-dose chymopapain: a prospective randomized study in 280 consecutive cases.

Authors:  Thomas Hoogland; Michael Schubert; Boris Miklitz; Agnes Ramirez
Journal:  Spine (Phila Pa 1976)       Date:  2006-11-15       Impact factor: 3.468

8.  "Outside-in" technique, clinical results, and indications with transforaminal lumbar endoscopic surgery: a retrospective study on 220 patients on applied radiographic classification of foraminal spinal stenosis.

Authors:  Kai-Uwe Lewandrowski
Journal:  Int J Spine Surg       Date:  2014-12-01

9.  Outcomes of discectomy by using full-endoscopic visualization technique via the interlaminar and transforaminal approaches in the treatment of L5-S1 disc herniation: An observational study.

Authors:  Wenbin Hua; Yukun Zhang; Xinghuo Wu; Yong Gao; Shuai Li; Kun Wang; Xianlin Zeng; Shuhua Yang; Cao Yang
Journal:  Medicine (Baltimore)       Date:  2018-11       Impact factor: 1.817

10.  Use of "Inside-Out" Technique for Direct Visualization of a Vacuum Vertically Unstable Intervertebral Disc During Routine Lumbar Endoscopic Transforaminal Decompression-A Correlative Study of Clinical Outcomes and the Prognostic Value of Lumbar Radiographs.

Authors:  Kai-Uwe Lewandrowski; Jorge Felipe Ramírez León; Anthony Yeung
Journal:  Int J Spine Surg       Date:  2019-10-31
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  2 in total

Review 1.  Novel Magnetic Resonance Imaging Tools for the Diagnosis of Degenerative Disc Disease: A Narrative Review.

Authors:  Carlo A Mallio; Gianluca Vadalà; Fabrizio Russo; Caterina Bernetti; Luca Ambrosio; Bruno Beomonte Zobel; Carlo C Quattrocchi; Rocco Papalia; Vincenzo Denaro
Journal:  Diagnostics (Basel)       Date:  2022-02-06

Review 2.  Artificial Intelligence-Driven Prediction Modeling and Decision Making in Spine Surgery Using Hybrid Machine Learning Models.

Authors:  Babak Saravi; Frank Hassel; Sara Ülkümen; Alisia Zink; Veronika Shavlokhova; Sebastien Couillard-Despres; Martin Boeker; Peter Obid; Gernot Michael Lang
Journal:  J Pers Med       Date:  2022-03-22
  2 in total

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