2017
DOI: 10.3171/2017.9.focus17494
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Potential of predictive computer models for preoperative patient selection to enhance overall quality-adjusted life years gained at 2-year follow-up: a simulation in 234 patients with adult spinal deformity

Abstract: OBJECTIVEPatients with adult spinal deformity (ASD) experience significant quality of life improvements after surgery. Treatment, however, is expensive and complication rates are high. Predictive analytics has the potential to use many variables to make accurate predictions in large data sets. A validated minimum clinically important difference (MCID) model has the potential to assist in patient selection, thereby improving outcomes and, potentially, cost-effectivenes… Show more

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Cited by 28 publications
(28 citation statements)
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“…CARTs and random forests have been used for several applications in spine research. As a clinical decision support system, decision trees have been used for the management of low back pain, and for the preoperative selection of patients with adult spinal deformity . Other applications include the evaluation of the primary fixation strength of pedicle screws (Figure ), and the prediction of proximal junctional failure …”
Section: Methods Used In Supervised Learningmentioning
confidence: 99%
“…CARTs and random forests have been used for several applications in spine research. As a clinical decision support system, decision trees have been used for the management of low back pain, and for the preoperative selection of patients with adult spinal deformity . Other applications include the evaluation of the primary fixation strength of pedicle screws (Figure ), and the prediction of proximal junctional failure …”
Section: Methods Used In Supervised Learningmentioning
confidence: 99%
“…Predictive analytics has now been applied across a wide variety of topics within ASD surgery, including predicting intraoperative, 15 perioperative, 16,17 and postoperative complications and outcomes. [18][19][20][21][22][23][24][25] The majority of studies published on this topic share similar principles and methodologies in the development of their respective predictive models. The most common technique employed across the studies mentioned in this article relies on decision tree-based machine learning, where either classification or regression trees are built based on the target variable (output).…”
Section: Methodology and Statisticsmentioning
confidence: 99%
“…Importantly, numerous studies have also been published predicting QoL measures [23][24][25] and cervical alignment 22 following thoracolumbar ASD surgery. Passias et al 22 used predictive analytics to produce a model for predicting reciprocal changes, specifically cervical alignment, following thoracolumbar spinal deformity surgery in a cohort of 225 ASD patients.…”
Section: Perioperative Analytics and Outcomesmentioning
confidence: 99%
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“…Great advanc-es have been made in other areas of spine surgery, such as spinal deformity surgery, to develop predictive algorithms that can help surgeons and patients alike in the decision-making process. 4,5 For example, predictive algorithms that can help calculate potential complications, readmission, and the invasiveness of surgery may help patients decide on whether to proceed with surgery. Such information would provide a true risk assessment.…”
Section: Introductionmentioning
confidence: 99%