Elsevier

The Spine Journal

Volume 21, Issue 10, October 2021, Pages 1626-1634
The Spine Journal

Narrative Review
Focus: Artificial Intelligence and Machine Learning
Artificial intelligence for adult spinal deformity: current state and future directions

https://doi.org/10.1016/j.spinee.2021.04.019Get rights and content
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open access

Abstract

As we experience a technological revolution unlike any other time in history, spinal surgery as a discipline is poised to undergo a dramatic transformation. As enormous amounts of data become digitized and more readily available, medical professionals approach a critical juncture with respect to how advanced computational techniques may be incorporated into clinical practices. Within neurosurgery, spinal disorders in particular, represent a complex and heterogeneous disease entity that can vary dramatically in its clinical presentation and how it may impact patients’ lives. The spectrum of pathologies is extremely diverse, including many different etiologies such as trauma, oncology, spinal deformity, infection, inflammatory conditions, and degenerative disease among others. The decision to perform spine surgery, especially complex spine surgery, involves several nuances due to the interplay of biomechanical forces, bony composition, neurologic deficits, and the patient's desired goals. Adult spinal deformity as an example is one of the most complex, given its involvement of not only the spine, but rather the entirety of the skeleton in order to appreciate radiographic completeness. With the vast array of variables contributing to spinal disorders, treatment algorithms can vary significantly, and it is very difficult for surgeons to predict how patients will respond to surgery. As such, it will become imperative for spine surgeons to utilize the burgeoning availability of advanced computational tools to process unprecedented amounts of data and provide novel insights into spinal disease. These tools range from predictive models built using machine learning algorithms, to deep learning methods for imaging analysis, to natural language processing that can mine text from electronic medical records or transcribed patient visits – all to better treat the intricacies of spinal disorders. The adoption of such techniques will empower patients and propel spine surgeons into the era of personalized medicine, by allowing clinical plans to be tailored to address individual patients’ needs. This paper, which exists in the context of a larger body of literatutre, provides a comprehensive review of the current state and future of artificial intelligence and machine learning with a particular emphasis on Adult spinal deformity surgery.

Keywords

Adult spinal deformity
Artificial intelligence
Machine learning
Predictive analytics
Predictive models
Spine

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FDA device/drug status: Not applicable

Author disclosures: RSJ: Nothing to disclose. DL: Nothing to disclose. CPA: Royalties: Stryker (F), Biomet Zimmer Spine (C), DePuy Synthes (F), Nuvasive (B), Next Orthosurgical (F), K2M (None), Medicrea (B); Consulting: DePuy Synthes (B), Medtronic (B), Medicrea (B), K2M (B); Research Support (Investigator Salary, Staff/Materials)^: Titan Spine (E), DePuy Synthes (None), ISSG (C); Grants: SRS.