State-of-the-art reviews predictive modeling in adult spinal deformity: applications of advanced analytics

被引:0
|
作者
Rushikesh S. Joshi
Darryl Lau
Justin K. Scheer
Miquel Serra-Burriel
Alba Vila-Casademunt
Shay Bess
Justin S. Smith
Ferran Pellise
Christopher P. Ames
机构
[1] University of California,Department of Neurological Surgery
[2] Universitat Pompeu Fabra,Center for Research in Health and Economics
[3] Vall d’Hebron Institute of Research (VHIR),Denver International Spine Center
[4] Presbyterian St. Luke’s/Rocky Mountain Hospital for Children,Department of Neurosurgery
[5] University of Virginia Medical Center,Spine Surgery Unit
[6] Hospital Vall d’Hebron,undefined
来源
Spine Deformity | 2021年 / 9卷
关键词
Spinal deformity; Artificial intelligence; Machine learning; Technology; Predictive model;
D O I
暂无
中图分类号
学科分类号
摘要
Adult spinal deformity (ASD) is a complex and heterogeneous disease that can severely impact patients’ lives. While it is clear that surgical correction can achieve significant improvement of spinopelvic parameters and quality of life measures in adults with spinal deformity, there remains a high risk of complication associated with surgical approaches to adult deformity. Over the past decade, utilization of surgical correction for ASD has increased dramatically as deformity correction techniques have become more refined and widely adopted. Along with this increase in surgical utilization, there has been a massive undertaking by spine surgeons to develop more robust models to predict postoperative outcomes in an effort to mitigate the relatively high complication rates. A large part of this revolution within spine surgery has been the gradual adoption of predictive analytics harnessing artificial intelligence through the use of machine learning algorithms. The development of predictive models to accurately prognosticate patient outcomes following ASD surgery represents a dramatic improvement over prior statistical models which are better suited for finding associations between variables than for their predictive utility. Machine learning models, which offer the ability to make more accurate and reproducible predictions, provide surgeons with a wide array of practical applications from augmenting clinical decision making to more wide-spread public health implications. The inclusion of these advanced computational techniques in spine practices will be paramount for improving the care of patients, by empowering both patients and surgeons to more specifically tailor clinical decisions to address individual health profiles and needs.
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页码:1223 / 1239
页数:16
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