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Applications of Artificial Intelligence and Machine Learning in Spine MRI

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Date 2024 Sep 27
PMID 39329636
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Abstract

Diagnostic imaging, particularly MRI, plays a key role in the evaluation of many spine pathologies. Recent progress in artificial intelligence and its subset, machine learning, has led to many applications within spine MRI, which we sought to examine in this review. A literature search of the major databases (PubMed, MEDLINE, Web of Science, ClinicalTrials.gov) was conducted according to the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines. The search yielded 1226 results, of which 50 studies were selected for inclusion. Key data from these studies were extracted. Studies were categorized thematically into the following: Image Acquisition and Processing, Segmentation, Diagnosis and Treatment Planning, and Patient Selection and Prognostication. Gaps in the literature and the proposed areas of future research are discussed. Current research demonstrates the ability of artificial intelligence to improve various aspects of this field, from image acquisition to analysis and clinical care. We also acknowledge the limitations of current technology. Future work will require collaborative efforts in order to fully exploit new technologies while addressing the practical challenges of generalizability and implementation. In particular, the use of foundation models and large-language models in spine MRI is a promising area, warranting further research. Studies assessing model performance in real-world clinical settings will also help uncover unintended consequences and maximize the benefits for patient care.

References
1.
Leone A, Guglielmi G, Cassar-Pullicino V, Bonomo L . Lumbar intervertebral instability: a review. Radiology. 2007; 245(1):62-77. DOI: 10.1148/radiol.2451051359. View

2.
Mohanty R, Allabun S, Solanki S, Pani S, AlQahtani M, Abbas M . NAMSTCD: A Novel Augmented Model for Spinal Cord Segmentation and Tumor Classification Using Deep Nets. Diagnostics (Basel). 2023; 13(8). PMC: 10137872. DOI: 10.3390/diagnostics13081417. View

3.
Kim K, Kim S, Han Lee Y, Lee S, Lee H, Kim S . Performance of the deep convolutional neural network based magnetic resonance image scoring algorithm for differentiating between tuberculous and pyogenic spondylitis. Sci Rep. 2018; 8(1):13124. PMC: 6120953. DOI: 10.1038/s41598-018-31486-3. View

4.
Kashiwagi N, Sakai M, Tsukabe A, Yamashita Y, Fujiwara M, Yamagata K . Ultrafast cervcial spine MRI protocol using deep learning-based reconstruction: Diagnostic equivalence to a conventional protocol. Eur J Radiol. 2022; 156:110531. DOI: 10.1016/j.ejrad.2022.110531. View

5.
Brima Y, Atemkeng M . Saliency-driven explainable deep learning in medical imaging: bridging visual explainability and statistical quantitative analysis. BioData Min. 2024; 17(1):18. PMC: 11193223. DOI: 10.1186/s13040-024-00370-4. View