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

Artificial intelligence length of stay machine learning race readmission social determinants of health spine surgery

Journal

The spine journal : official journal of the North American Spine Society
ISSN: 1878-1632
Titre abrégé: Spine J
Pays: United States
ID NLM: 101130732

Informations de publication

Date de publication:
19 Jul 2024
Historique:
received: 17 01 2024
revised: 28 06 2024
accepted: 11 07 2024
medline: 22 7 2024
pubmed: 22 7 2024
entrez: 21 7 2024
Statut: aheadofprint

Résumé

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

Sections du résumé

BACKGROUND CONTEXT BACKGROUND
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 OBJECTIVE
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 METHODS
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 METHODS
Patient LOS, discharge disposition, and rate of 90-day readmission.
METHODS 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 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 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.

Identifiants

pubmed: 39033881
pii: S1529-9430(24)00890-8
doi: 10.1016/j.spinee.2024.07.003
pii:
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Informations de copyright

Copyright © 2024. Published by Elsevier Inc.

Déclaration de conflit d'intérêts

Declaration of competing interest Dr. Danisa serves on the board of directors for the Musculoskeletal Transplantation Foundation. He performs consulting for Stryker and receives royalties from Globus Medical. Dr. Cheng is a Cervical Spine Research Society committee member. He reportspaid consulting for Medtronic and Orthofix. Dr. Cheng receives research grants from DePuy.

Auteurs

David Shin (D)

Loma Linda University School of Medicine, Loma Linda, CA, USA.

Jacob Razzouk (J)

Loma Linda University School of Medicine, Loma Linda, CA, USA.

Jonathan Thomas (J)

Department of Ophthalmology, Loma Linda University, Loma Linda, CA, USA.

Kai Nguyen (K)

Loma Linda University School of Medicine, Loma Linda, CA, USA.

Andrew Cabrera (A)

Loma Linda University School of Medicine, Loma Linda, CA, USA.

Daniel Bohen (D)

Information Sciences Institute, University of Southern California, Los Angeles, CA.

Shaina A Lipa (SA)

Department of Orthopaedic Surgery, Brigham and Women's Hospital, Harvard Medical School, Boston, MA, USA.

Christopher M Bono (CM)

Department of Orthopaedic Surgery, Massachusetts General Hospital, Harvard Medical School, Boston, MA, USA.

Christopher I Shaffrey (CI)

Department of Neurosurgery, Duke University Medical Center, Durham, North Carolina, USA.

Wayne Cheng (W)

Division of Orthopaedic Surgery, Jerry L. Pettis Memorial Veterans Hospital, Loma Linda, CA, USA.

Olumide Danisa (O)

Department of Orthopaedic Surgery, Loma Linda University Medical Center, Loma Linda, CA, USA. Electronic address: odanisa@yahoo.com.

Classifications MeSH