Literature DB >> 31672678

Accurate Preoperative Prediction of Discharge Destination Using 8 Predictor Variables: A NSQIP Analysis.

Abhinav B Singh1, Michael R Bronsert2, William G Henderson3, Anne Lambert-Kerzner2, Karl E Hammermeister4, Robert A Meguid5.   

Abstract

BACKGROUND: With inpatient length of stay decreasing, discharge destination after surgery can serve as an important metric for quality of care. Additionally, patients desire information on possible discharge destination. Adequate planning requires a multidisciplinary approach, can reduce healthcare costs and ensure patient needs are met. The Surgical Risk Preoperative Assessment System (SURPAS) is a parsimonious risk assessment tool using 8 predictor variables developed from the American College of Surgeons (ACS) National Surgical Quality Improvement Program (NSQIP) dataset. SURPAS is applicable to more than 3,000 operations in adults in 9 surgical specialties, predicts important adverse outcomes, and is incorporated into our electronic health record. We sought to determine whether SURPAS can accurately predict discharge destination. STUDY
DESIGN: A "full model" for risk of postoperative "discharge not to home" was developed from 28 nonlaboratory preoperative variables from ACS NSQIP 2012-2017 dataset using logistic regression. This was compared with the 8-variable SURPAS model using the C index as a measure of discrimination, the Hosmer-Lemeshow observed-to-expected plots testing calibration, and the Brier score, a combined metric of discrimination and calibration.
RESULTS: Of 5,303,519 patients, 447,153 (8.67%) experienced a discharge not to home. The SURPAS model's C index, 0.914, was 99.24% of that of the full model's (0.921); the Hosmer-Lemeshow plots indicated good calibration and the Brier score was 0.0537 and 0.0514 for the SUPAS and full model, respectively.
CONCLUSIONS: The 8-variable SURPAS model preoperatively predicts risk of postoperative discharge to a destination other than home as accurately as the 28 nonlaboratory variable ACS NSQIP full model. Therefore, discharge destination can be integrated into the existing SURPAS tool, providing accurate outcomes to guide decision-making and help prepare patients for their postoperative recovery.
Copyright © 2019. Published by Elsevier Inc.

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Year:  2019        PMID: 31672678     DOI: 10.1016/j.jamcollsurg.2019.09.018

Source DB:  PubMed          Journal:  J Am Coll Surg        ISSN: 1072-7515            Impact factor:   6.113


  4 in total

1.  Prediction Model of International Trade Risk Based on Stochastic Time-Series Neural Network.

Authors:  Lei Xu; Guicai Dong
Journal:  Comput Intell Neurosci       Date:  2022-06-16

2.  The value of the "Surgical Risk Preoperative Assessment System" (SURPAS) in preoperative consultation for elective surgery: a pilot study.

Authors:  Michael R Bronsert; Anne Lambert-Kerzner; William G Henderson; Karl E Hammermeister; Chisom Atuanya; Davis M Aasen; Abhinav B Singh; Robert A Meguid
Journal:  Patient Saf Surg       Date:  2020-07-25

3.  Attitudes about use of preoperative risk assessment tools: a survey of surgeons and surgical residents in an academic health system.

Authors:  Nisha Pradhan; Adam R Dyas; Michael R Bronsert; Anne Lambert-Kerzner; William G Henderson; Howe Qiu; Kathryn L Colborn; Nicholas J Mason; Robert A Meguid
Journal:  Patient Saf Surg       Date:  2022-03-17

4.  What Factors Predict Adverse Discharge Disposition in Patients Older Than 60 Years Undergoing Lower-extremity Surgery? The Adverse Discharge in Older Patients after Lower-extremity Surgery (ADELES) Risk Score.

Authors:  Maximilian S Schaefer; Maximilian Hammer; Katharina Platzbecker; Peter Santer; Stephanie D Grabitz; Kadhiresan R Murugappan; Tim Houle; Sheila Barnett; Edward K Rodriguez; Matthias Eikermann
Journal:  Clin Orthop Relat Res       Date:  2021-03-01       Impact factor: 4.755

  4 in total

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