Literature DB >> 33973835

Deep Learning Model for Automated Detection and Classification of Central Canal, Lateral Recess, and Neural Foraminal Stenosis at Lumbar Spine MRI.

James Thomas Patrick Decourcy Hallinan1, Lei Zhu1, Kaiyuan Yang1, Andrew Makmur1, Diyaa Abdul Rauf Algazwi1, Yee Liang Thian1, Samuel Lau1, Yun Song Choo1, Sterling Ellis Eide1, Qai Ven Yap1, Yiong Huak Chan1, Jiong Hao Tan1, Naresh Kumar1, Beng Chin Ooi1, Hiroshi Yoshioka1, Swee Tian Quek1.   

Abstract

Background Assessment of lumbar spinal stenosis at MRI is repetitive and time consuming. Deep learning (DL) could improve -productivity and the consistency of reporting. Purpose To develop a DL model for automated detection and classification of lumbar central canal, lateral recess, and neural -foraminal stenosis. Materials and Methods In this retrospective study, lumbar spine MRI scans obtained from September 2015 to September 2018 were included. Studies of patients with spinal instrumentation or studies with suboptimal image quality, as well as postgadolinium studies and studies of patients with scoliosis, were excluded. Axial T2-weighted and sagittal T1-weighted images were used. Studies were split into an internal training set (80%), validation set (9%), and test set (11%). Training data were labeled by four radiologists using predefined gradings (normal, mild, moderate, and severe). A two-component DL model was developed. First, a convolutional neural network (CNN) was trained to detect the region of interest (ROI), with a second CNN for classification. An internal test set was labeled by a musculoskeletal radiologist with 31 years of experience (reference standard) and two subspecialist radiologists (radiologist 1: A.M., 5 years of experience; radiologist 2: J.T.P.D.H., 9 years of experience). DL model performance on an external test set was evaluated. Detection recall (in percentage), interrater agreement (Gwet κ), sensitivity, and specificity were calculated. Results Overall, 446 MRI lumbar spine studies were analyzed (446 patients; mean age ± standard deviation, 52 years ± 19; 240 women), with 396 patients in the training (80%) and validation (9%) sets and 50 (11%) in the internal test set. For internal testing, DL model and radiologist central canal recall were greater than 99%, with reduced neural foramina recall for the DL model (84.5%) and radiologist 1 (83.9%) compared with radiologist 2 (97.1%) (P < .001). For internal testing, dichotomous classification (normal or mild vs moderate or severe) showed almost-perfect agreement for both radiologists and the DL model, with respective κ values of 0.98, 0.98, and 0.96 for the central canal; 0.92, 0.95, and 0.92 for lateral recesses; and 0.94, 0.95, and 0.89 for neural foramina (P < .001). External testing with 100 MRI scans of lumbar spines showed almost perfect agreement for the DL model for dichotomous classification of all ROIs (κ, 0.95-0.96; P < .001). Conclusion A deep learning model showed comparable agreement with subspecialist radiologists for detection and classification of central canal and lateral recess stenosis, with slightly lower agreement for neural foraminal stenosis at lumbar spine MRI. © RSNA, 2021 Online supplemental material is available for this article. See also the editorial by Hayashi in this issue.

Entities:  

Year:  2021        PMID: 33973835     DOI: 10.1148/radiol.2021204289

Source DB:  PubMed          Journal:  Radiology        ISSN: 0033-8419            Impact factor:   11.105


  9 in total

1.  Clinical Application of Large Channel Endoscopic Systems with Full Endoscopic Visualization Technique in Lumbar Central Spinal Stenosis: A Retrospective Cohort Study.

Authors:  Shuo Han; Xiangxu Zeng; Kai Zhu; Xiaoqi Wu; Yanqing Shen; Jialuo Han; Antao Lin; Shengwei Meng; Hao Zhang; Guanghui Li; Xiaojie Liu; Hao Tao; Xuexiao Ma; Chuanli Zhou
Journal:  Pain Ther       Date:  2022-09-03

2.  Automatic Grading of Disc Herniation, Central Canal Stenosis and Nerve Roots Compression in Lumbar Magnetic Resonance Image Diagnosis.

Authors:  Zhi-Hai Su; Jin Liu; Min-Sheng Yang; Zi-Yang Chen; Ke You; Jun Shen; Cheng-Jie Huang; Qing-Hao Zhao; En-Qing Liu; Lei Zhao; Qian-Jin Feng; Shu-Mao Pang; Shao-Lin Li; Hai Lu
Journal:  Front Endocrinol (Lausanne)       Date:  2022-06-06       Impact factor: 6.055

3.  Automatic detection and voxel-wise mapping of lumbar spine Modic changes with deep learning.

Authors:  Kenneth T Gao; Radhika Tibrewala; Madeline Hess; Upasana U Bharadwaj; Gaurav Inamdar; Thomas M Link; Cynthia T Chin; Valentina Pedoia; Sharmila Majumdar
Journal:  JOR Spine       Date:  2022-06-08

Review 4.  Best Practices for Minimally Invasive Lumbar Spinal Stenosis Treatment 2.0 (MIST): Consensus Guidance from the American Society of Pain and Neuroscience (ASPN).

Authors:  Timothy R Deer; Jay S Grider; Jason E Pope; Tim J Lamer; Sayed E Wahezi; Jonathan M Hagedorn; Steven Falowski; Reda Tolba; Jay M Shah; Natalie Strand; Alex Escobar; Mark Malinowski; Anjum Bux; Navdeep Jassal; Jennifer Hah; Jacqueline Weisbein; Nestor D Tomycz; Jessica Jameson; Erika A Petersen; Dawood Sayed
Journal:  J Pain Res       Date:  2022-05-05       Impact factor: 2.832

Review 5.  Artificial Intelligence and Computer Aided Diagnosis in Chronic Low Back Pain: A Systematic Review.

Authors:  Federico D'Antoni; Fabrizio Russo; Luca Ambrosio; Luca Bacco; Luca Vollero; Gianluca Vadalà; Mario Merone; Rocco Papalia; Vincenzo Denaro
Journal:  Int J Environ Res Public Health       Date:  2022-05-14       Impact factor: 4.614

6.  Deep Learning Model for Classifying Metastatic Epidural Spinal Cord Compression on MRI.

Authors:  James Thomas Patrick Decourcy Hallinan; Lei Zhu; Wenqiao Zhang; Desmond Shi Wei Lim; Sangeetha Baskar; Xi Zhen Low; Kuan Yuen Yeong; Ee Chin Teo; Nesaretnam Barr Kumarakulasinghe; Qai Ven Yap; Yiong Huak Chan; Shuxun Lin; Jiong Hao Tan; Naresh Kumar; Balamurugan A Vellayappan; Beng Chin Ooi; Swee Tian Quek; Andrew Makmur
Journal:  Front Oncol       Date:  2022-05-04       Impact factor: 5.738

7.  Deep Learning Model for Grading Metastatic Epidural Spinal Cord Compression on Staging CT.

Authors:  James Thomas Patrick Decourcy Hallinan; Lei Zhu; Wenqiao Zhang; Tricia Kuah; Desmond Shi Wei Lim; Xi Zhen Low; Amanda J L Cheng; Sterling Ellis Eide; Han Yang Ong; Faimee Erwan Muhamat Nor; Ahmed Mohamed Alsooreti; Mona I AlMuhaish; Kuan Yuen Yeong; Ee Chin Teo; Nesaretnam Barr Kumarakulasinghe; Qai Ven Yap; Yiong Huak Chan; Shuxun Lin; Jiong Hao Tan; Naresh Kumar; Balamurugan A Vellayappan; Beng Chin Ooi; Swee Tian Quek; Andrew Makmur
Journal:  Cancers (Basel)       Date:  2022-06-30       Impact factor: 6.575

8.  Evaluation of Deep Learning-Based Automated Detection of Primary Spine Tumors on MRI Using the Turing Test.

Authors:  Hanqiang Ouyang; Fanyu Meng; Jianfang Liu; Xinhang Song; Yuan Li; Yuan Yuan; Chunjie Wang; Ning Lang; Shuai Tian; Meiyi Yao; Xiaoguang Liu; Huishu Yuan; Shuqiang Jiang; Liang Jiang
Journal:  Front Oncol       Date:  2022-03-11       Impact factor: 6.244

9.  A Pipeline for the Implementation and Visualization of Explainable Machine Learning for Medical Imaging Using Radiomics Features.

Authors:  Cameron Severn; Krithika Suresh; Carsten Görg; Yoon Seong Choi; Rajan Jain; Debashis Ghosh
Journal:  Sensors (Basel)       Date:  2022-07-12       Impact factor: 3.847

  9 in total

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