A neural network model for detection and classification of central lumbosacral spinal stenosis on MRI scans
https://doi.org/10.24835/1607-0763-1436
Abstract
Objective: to develop a convolutional neural network (CNN) model to classify the presence and severity of central lumbar spinal stenosis (LSS) during MRI examination and to demonstrate its effectiveness as an accurate and consistent diagnostic tool.
Methods. Morphological classifications of LSS and quantitative measurements of key anatomical structures were combined using two CNNs. To classify central stenosis, models were trained on 1635 labeled lumbar spine MRI studies consisting of T2-weighted sagittal and axial planes at the level of each vertebra. The accuracy of the model was assessed using an external validation set of 150 MRI studies graded by a panel of 7 radiologists as: no stenosis, mild, moderate or severe spinal canal stenosis. The reference value for all types of stenosis was determined by majority vote, and in the event of disagreement, a decision was made by an external radiologist. The radiologists' interpretations were then compared with those of the trained model.
Results. The model demonstrated comparable performance to the average radiologist both in identifying the presence/absence of LSS and in classifying severity for all 3 types of stenosis. For central canal stenosis, the sensitivity and specificity of the CNN were (0.93; 0.85) for binary classification (presence/absence) compared to the average radiologist (0.86; 0.86). For lateral pocket stenosis, the sensitivity and specificity of CNN were (0.92; 0.80) compared to the radiologist's mean (0.83; 0.94). For foraminal stenosis, the sensitivity and specificity of CNN were (0.89; 0.86) compared to the radiologist's mean (0.81; 0.91). Multiclass classification of stenosis severity showed similar statistics.
Conclusions. CNNs showed comparable performance to radiologists in detecting and classifying LSS. The integration of neural network models in pathology detection could provide higher accuracy, efficiency, systematicity, and the possibility of subsequent interpretation in diagnostic practice.
About the Authors
A. S. RusakovRussian Federation
Andrey S. Rusakov – Founder and CEO of Remedy Logic, New York.
V. V. Tumko
Russian Federation
Vladislav V. Tumko – Chief Operating Officer of Remedy Logic, New York.
R. S. Sarbaev
Russian Federation
Ruslan S. Sarbaev – General Director of Decision Support Systems LLC, Cheboksary.
N. A. Uspenskaya
Russian Federation
Natalia A. Uspenskaya – Computer Vision Team Leader at Remedy Logic, New York.
N. V. Nudnov
Russian Federation
Nikolay V. Nudnov – Doct. of Sci. (Med.), Professor, Deputy Director for Scientific Work, Head of the Research Department for Complex Diagnostics of Diseases and Radiotherapy, Russian Scientific Center of Roentgenoradiology of the Ministry of Healthcare of the Russian Federation, Moscow.
https://orcid.org/0000-0001-5994-0468
G. G. Karmazanovsky
Russian Federation
Grigory G. Karmazanovsky – Russian Academy of Sciences (RAS) Full Member, Doct. of Sci. (Med.), Professor, Heаd of the Diagnostic Rаdiology Depаrtment at the А.V. Vishnevsky Nаtionаl Mediсаl Reseаrсh Сenter of Surgery;
Professor of radiology department, Pirogov Russian national research medical university, Moscow.
https://orcid.org/0000-0002-9357-0998
A. V. Korobov
Russian Federation
Andrey V. Korobov – Director of Autonomous non-profit organization of additional professional education “Expert Institute”, Voronezh.
L. A. Titova
Russian Federation
Lilia A. Titova – Doct. of Sci. (Med.), Head of the Department of Instrumental Diagnostics, Voronezh State Medical University named after N.N. Burdenko, Voronezh.
https://orcid.org/0000-0002-8421-3411
A. A. Skachkov
Russian Federation
Artur A. Skachkov – machine learning expert of LLC “United IT Space”, Lipetsk.
https://orcid.org/0009-0002-6072-8143
T. V. Kulneva
Russian Federation
Taisiya V. Kulneva – Deputy Director for Expertise in Medical Imaging of Autonomous non-profit organization of additional professional education “Expert Institute”, Voronezh.
D. V. Izmalkov
Russian Federation
Dmitry V. Izmalkov – Head of the Department of Radiologic Diagnostics of Autonomous non-profit organization of additional professional education “Expert Institute”, Voronezh.
E. A. Andrienko
Russian Federation
Elizaveta A. Andrienko – general specialist of Autonomous non-profit organization of additional professional education “Expert Institute”, Voronezh.
M. E. Ivannikov
Russian Federation
Mikhail E. Ivannikov – resident in the specialty of “radiology”, Russian Scientific Center of Roentgenoradiology of the Ministry of Healthcare of the Russian Federation, Moscow.
https://orcid.org/0009-0007-0407-0953
E-mail: ivannikovmichail@gmail.com
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Review
For citations:
Rusakov A.S., Tumko V.V., Sarbaev R.S., Uspenskaya N.A., Nudnov N.V., Karmazanovsky G.G., Korobov A.V., Titova L.A., Skachkov A.A., Kulneva T.V., Izmalkov D.V., Andrienko E.A., Ivannikov M.E. A neural network model for detection and classification of central lumbosacral spinal stenosis on MRI scans. Medical Visualization. 2025;29(1):102-112. (In Russ.) https://doi.org/10.24835/1607-0763-1436