Social Determinants of Health and Disparities in Spine Surgery: A Ten-Year Analysis of 8,565 Cases using Ensemble Machine Learning and Multilayer Perceptron.

dc.contributor.author

Shin, David

dc.contributor.author

Razzouk, Jacob

dc.contributor.author

Thomas, Jonathan

dc.contributor.author

Nguyen, Kai

dc.contributor.author

Cabrera, Andrew

dc.contributor.author

Bohen, Daniel

dc.contributor.author

Lipa, Shaina A

dc.contributor.author

Bono, Christopher M

dc.contributor.author

Shaffrey, Christopher I

dc.contributor.author

Cheng, Wayne

dc.contributor.author

Danisa, Olumide

dc.date.accessioned

2024-08-08T22:06:41Z

dc.date.available

2024-08-08T22:06:41Z

dc.date.issued

2024-07

dc.description.abstract

Background context

The influence of SDOH on spine surgery is poorly understood. Historically, researchers commonly focused on the isolated influences of race, insurance status, or income on healthcare outcomes. However, analysis of SDOH is becoming increasingly more nuanced as viewing social factors in aggregate rather than individually may offer more precise estimates of the impact of SDOH on healthcare delivery.

Purpose

The aim of this study was to evaluate the effects of patient social history on length of stay (LOS) and readmission within 90 days following spine surgery using ensemble machine learning and multilayer perceptron.

Study design

Retrospective chart review PATIENT SAMPLE: 8,565 elective and emergency spine surgery cases performed from 2013-2023 using our institution's database of longitudinally collected electronic medical record information.

Outcomes measures

Patient LOS, discharge disposition, and rate of 90-day readmission.

Methods

Ensemble machine learning and multilayer perceptron were employed to predict LOS and readmission within 90 days following spine surgery. All other subsequent statistical analysis was performed using SPSS version 28. To further assess correlations among variables, Pearson's correlation tests and multivariate linear regression models were constructed. Independent sample t-tests, paired sample t-tests, one-way analysis of variance (ANOVA) with post-hoc Bonferroni and Tukey corrections, and Pearson's chi-squared test were applied where appropriate for analysis of continuous and categorical variables.

Results

Black patients demonstrated a greater LOS compared to white patients, but race and ethnicity were not significantly associated with 90-day readmission rates. Insured patients had a shorter LOS and lower readmission rates compared to non-insured patients, as did privately insured patients compared to publicly insured patients. Patients discharged home had lower LOS and lower readmission rates, compared to patients discharged to other facilities. Marriage decreased both LOS and readmission rates, underweight patients showcased increased LOS and readmission rates, and religion was shown to impact LOS and readmission rates. When utilizing patient social history, lab values, and medical history, machine learning determined the top 5 most-important variables for prediction of LOS -along with their respective feature importances-to be insurance status (0.166), religion (0.100), ICU status (0.093), antibiotic use (0.061), and case status: elective or urgent (0.055). The top 5 most-important variables for prediction of 90-day readmission-along with their respective feature importances-were insurance status (0.177), religion (0.123), discharge location (0.096), emergency case status (0.064), and history of diabetes (0.041).

Conclusions

This study highlights that SDOH is influential in determining patient length of stay, discharge disposition, and likelihood of readmission following spine surgery. Machine learning was utilized to accurately predict LOS and 90-day readmission with patient medical history, lab values, and social history, as well as social history alone.
dc.identifier

S1529-9430(24)00890-8

dc.identifier.issn

1529-9430

dc.identifier.issn

1878-1632

dc.identifier.uri

https://hdl.handle.net/10161/31344

dc.language

eng

dc.publisher

Elsevier BV

dc.relation.ispartof

The spine journal : official journal of the North American Spine Society

dc.relation.isversionof

10.1016/j.spinee.2024.07.003

dc.rights.uri

https://creativecommons.org/licenses/by-nc/4.0

dc.subject

Artificial intelligence

dc.subject

Length of stay

dc.subject

Machine learning

dc.subject

Race

dc.subject

Readmission

dc.subject

Social determinants of health

dc.subject

Spine surgery

dc.title

Social Determinants of Health and Disparities in Spine Surgery: A Ten-Year Analysis of 8,565 Cases using Ensemble Machine Learning and Multilayer Perceptron.

dc.type

Journal article

duke.contributor.orcid

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

duke.contributor.orcid

Danisa, Olumide|0000-0003-0173-7525

pubs.begin-page

S1529-9430(24)00890-8

pubs.organisational-group

Duke

pubs.organisational-group

School of Medicine

pubs.organisational-group

Clinical Science Departments

pubs.organisational-group

Orthopaedic Surgery

pubs.organisational-group

Neurosurgery

pubs.publication-status

Published

Files

Original bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
1-s2.0-S1529943024008908.pdf
Size:
420.27 KB
Format:
Adobe Portable Document Format