Literature DB >> 31783353

Using machine learning to predict 30-day readmissions after posterior lumbar fusion: an NSQIP study involving 23,264 patients.

Benjamin S Hopkins1, Jonathan T Yamaguchi1, Roxanna Garcia2, Kartik Kesavabhotla2, Hannah Weiss1, Wellington K Hsu3, Zachary A Smith2, Nader S Dahdaleh2.   

Abstract

OBJECTIVE: Unplanned preventable hospital readmissions within 30 days are a great burden to patients and the healthcare system. With an estimated $41.3 billion spent yearly, reducing such readmission rates is of the utmost importance. With the widespread adoption of big data and machine learning, clinicians can use these analytical tools to understand these complex relationships and find predictive factors that can be generalized to future patients. The object of this study was to assess the efficacy of a machine learning algorithm in the prediction of 30-day hospital readmission after posterior spinal fusion surgery.
METHODS: The authors analyzed the distribution of National Surgical Quality Improvement Program (NSQIP) posterior lumbar fusions from 2011 to 2016 by using machine learning techniques to create a model predictive of hospital readmissions. A deep neural network was trained using 177 unique input variables. The model was trained and tested using cross-validation, in which the data were randomly partitioned into training (n = 17,448 [75%]) and testing (n = 5816 [25%]) data sets. In training, the 17,448 training cases were fed through a series of 7 layers, each with varying degrees of forward and backward communicating nodes (neurons).
RESULTS: Mean and median positive predictive values were 78.5% and 78.0%, respectively. Mean and median negative predictive values were both 97%, respectively. Mean and median areas under the curve for the model were 0.812 and 0.810, respectively. The five most heavily weighted inputs were (in order of importance) return to the operating room, septic shock, superficial surgical site infection, sepsis, and being on a ventilator for > 48 hours.
CONCLUSIONS: Machine learning and artificial intelligence are powerful tools with the ability to improve understanding of predictive metrics in clinical spine surgery. The authors' model was able to predict those patients who would not require readmission. Similarly, the majority of predicted readmissions (up to 60%) were predicted by the model while retaining a 0% false-positive rate. Such findings suggest a possible need for reevaluation of the current Hospital Readmissions Reduction Program penalties in spine surgery.

Entities:  

Keywords:  30-day hospital readmissions; AUC = area under the curve; CPT = Current Procedural Terminology; DNN = deep neural network; HRRP = Hospital Readmissions Reduction Program; Hospital Readmissions Reduction Program; INR = international normalized ratio; NPV = negative predictive value; NSQIP = National Surgical Quality Improvement Program; PPV = positive predictive value; ROC = receiver operating characteristic; artificial intelligence; machine learning; posterior lumbar fusions

Year:  2019        PMID: 31783353     DOI: 10.3171/2019.9.SPINE19860

Source DB:  PubMed          Journal:  J Neurosurg Spine        ISSN: 1547-5646


  14 in total

1.  Implementation of Artificial Intelligence-Based Clinical Decision Support to Reduce Hospital Readmissions at a Regional Hospital.

Authors:  Santiago Romero-Brufau; Kirk D Wyatt; Patricia Boyum; Mindy Mickelson; Matthew Moore; Cheristi Cognetta-Rieke
Journal:  Appl Clin Inform       Date:  2020-09-02       Impact factor: 2.342

2.  Precision medicine in anesthesiology.

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3.  The State of Radiology AI: Considerations for Purchase Decisions and Current Market Offerings.

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Review 4.  Application of machine learning in predicting hospital readmissions: a scoping review of the literature.

Authors:  Yinan Huang; Ashna Talwar; Satabdi Chatterjee; Rajender R Aparasu
Journal:  BMC Med Res Methodol       Date:  2021-05-06       Impact factor: 4.615

5.  Prediction of Major Complications and Readmission After Lumbar Spinal Fusion: A Machine Learning-Driven Approach.

Authors:  Akash A Shah; Sai K Devana; Changhee Lee; Amador Bugarin; Elizabeth L Lord; Arya N Shamie; Don Y Park; Mihaela van der Schaar; Nelson F SooHoo
Journal:  World Neurosurg       Date:  2021-05-28       Impact factor: 2.210

6.  A Review on the Use of Artificial Intelligence in Spinal Diseases.

Authors:  Parisa Azimi; Taravat Yazdanian; Edward C Benzel; Hossein Nayeb Aghaei; Shirzad Azhari; Sohrab Sadeghi; Ali Montazeri
Journal:  Asian Spine J       Date:  2020-04-24

7.  Prediction Models in Degenerative Spine Surgery: A Systematic Review.

Authors:  Daniel Lubelski; Andrew Hersh; Tej D Azad; Jeff Ehresman; Zachary Pennington; Kurt Lehner; Daniel M Sciubba
Journal:  Global Spine J       Date:  2021-04

8.  Association of Frailty and the Expanded Operative Stress Score with Preoperative Acute Serious Conditions, Complications and Mortality in Males Compared to Females: A Retrospective Observational Study.

Authors:  Qi Yan; Jeongsoo Kim; Daniel E Hall; Myrick C Shinall; Katherine Moll Reitz; Karyn B Stitzenberg; Lillian S Kao; Elizabeth L George; Ada Youk; Chen-Pin Wang; Jonathan C Silverstein; Elmer V Bernstam; Paula K Shireman
Journal:  Ann Surg       Date:  2021-06-25       Impact factor: 12.969

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Authors:  Khodayar Goshtasbi; Tyler M Yasaka; Mehdi Zandi-Toghani; Hamid R Djalilian; William B Armstrong; Tjoson Tjoa; Yarah M Haidar; Mehdi Abouzari
Journal:  Head Neck       Date:  2020-11-03       Impact factor: 3.147

10.  Prediction of vestibular schwannoma recurrence using artificial neural network.

Authors:  Mehdi Abouzari; Khodayar Goshtasbi; Brooke Sarna; Pooya Khosravi; Trevor Reutershan; Navid Mostaghni; Harrison W Lin; Hamid R Djalilian
Journal:  Laryngoscope Investig Otolaryngol       Date:  2020-02-17
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