Development of Deployable Predictive Models for Minimal Clinically Important Difference Achievement Across the Commonly Used Health-related Quality of Life Instruments in Adult Spinal Deformity Surgery.

dc.contributor.author

Ames, Christopher P

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Smith, Justin S

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Pellisé, Ferran

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Kelly, Michael P

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Gum, Jeffrey L

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Alanay, Ahmet

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Acaroğlu, Emre

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Pérez-Grueso, Francisco Javier Sánchez

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Kleinstück, Frank S

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Obeid, Ibrahim

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Vila-Casademunt, Alba

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Burton, Douglas C

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Lafage, Virginie

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Schwab, Frank J

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Shaffrey, Christopher I

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Bess, Shay

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Serra-Burriel, Miquel

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European Spine Study Group, International Spine Study Group

dc.date.accessioned

2023-06-20T13:02:49Z

dc.date.available

2023-06-20T13:02:49Z

dc.date.issued

2019-08

dc.date.updated

2023-06-20T13:02:48Z

dc.description.abstract

Study design

Retrospective analysis of prospectively-collected, multicenter adult spinal deformity (ASD) databases.

Objective

To predict the likelihood of reaching minimum clinically important differences in patient-reported outcomes after ASD surgery.

Summary of background data

ASD surgeries are costly procedures that do not always provide the desired benefit. In some series only 50% of patients achieve minimum clinically important differences in patient-reported outcomes (PROs). Predictive modeling may be useful in shared-decision making and surgical planning processes. The goal of this study was to model the probability of achieving minimum clinically important differences change in PROs at 1 and 2 years after surgery.

Methods

Two prospective observational ASD cohorts were queried. Patients with Scoliosis Research Society-22, Oswestry Disability Index , and Short Form-36 data at preoperative baseline and at 1 and 2 years after surgery were included. Seventy-five variables were used in the training of the models including demographics, baseline PROs, and modifiable surgical parameters. Eight predictive algorithms were trained at four-time horizons: preoperative or postoperative baseline to 1 year and preoperative or postoperative baseline to 2 years. External validation was accomplished via an 80%/20% random split. Five-fold cross validation within the training sample was performed. Precision was measured as the mean average error (MAE) and R values.

Results

Five hundred seventy patients were included in the analysis. Models with the lowest MAE were selected; R values ranged from 20% to 45% and MAE ranged from 8% to 15% depending upon the predicted outcome. Patients with worse preoperative baseline PROs achieved the greatest mean improvements. Surgeon and site were not important components of the models, explaining little variance in the predicted 1- and 2-year PROs.

Conclusion

We present an accurate and consistent way of predicting the probability for achieving clinically relevant improvement after ASD surgery in the largest-to-date prospective operative multicenter cohort with 2-year follow-up. This study has significant clinical implications for shared decision making, surgical planning, and postoperative counseling.

Level of evidence

4.
dc.identifier

00007632-201908150-00008

dc.identifier.issn

0362-2436

dc.identifier.issn

1528-1159

dc.identifier.uri

https://hdl.handle.net/10161/28189

dc.language

eng

dc.publisher

Ovid Technologies (Wolters Kluwer Health)

dc.relation.ispartof

Spine

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10.1097/brs.0000000000003031

dc.subject

European Spine Study Group, International Spine Study Group

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Humans

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Scoliosis

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Prognosis

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Treatment Outcome

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Neurosurgical Procedures

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Postoperative Period

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Retrospective Studies

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Prospective Studies

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Random Allocation

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Quality of Life

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Databases, Factual

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Adult

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Middle Aged

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Female

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Male

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Minimal Clinically Important Difference

dc.title

Development of Deployable Predictive Models for Minimal Clinically Important Difference Achievement Across the Commonly Used Health-related Quality of Life Instruments in Adult Spinal Deformity Surgery.

dc.type

Journal article

duke.contributor.orcid

Shaffrey, Christopher I|0000-0001-9760-8386

pubs.begin-page

1144

pubs.end-page

1153

pubs.issue

16

pubs.organisational-group

Duke

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School of Medicine

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Clinical Science Departments

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Orthopaedic Surgery

pubs.organisational-group

Neurosurgery

pubs.publication-status

Published

pubs.volume

44

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