Literature DB >> 25239331

Bounceback branchpoints: using conditional inference trees to analyze readmissions.

Mark Hartney1, Yazhuo Liu2, Vic Velanovich2, Peter Fabri2, Jorge Marcet2, Michael Grieco2, Shuai Huang2, Jose Zayas-Castro2.   

Abstract

BACKGROUND: We sought to identify risks for 30-day readmission in patients undergoing colorectal surgery.
METHODS: We reviewed 2011 American College of Surgery National Surgical Quality Improvement Program data to identify patients readmitted after colorectal surgery. We found 3,228 readmissions from 30,412 records. Using statistically suggestive variables from logistic regression (P < .1), we built conditional inference trees (CTREES) with subsampled records to identify combined risks.
RESULTS: Logistic regression identified 27 potentially significant variables. Using these in new logistic regression and CTREES, we found classification accuracies of 0.70 and 0.63, respectively. CTREES predicted that the majority of patients who required reoperation during their hospitalization were predicted to require readmission (n = 496), along with the majority of patients who developed organ space infection (n = 671). Patients with deep infections discharged ≤10 days from their index operation required readmission in 443 of 459 of records; this approach predicted a >99% risk of readmission in patients with these infections who were discharged ≤5 days (220/222). Additionally, >90% (253/271) of patients who returned to the operating room and were discharged ≤8 days from the first operation are predicted to return.
CONCLUSION: Subgroups identified using the CTREES model demonstrate that patients with deep space infections or who return to the operating room have a greater readmission rate if they are discharged early. Modeled patients found to have organ space infections and who returned to the operating room had 30-day readmission risks of >50%, with those discharged a rate of >90%. We show herein that CTREES can be used with retrospective data on surgery populations to bring hidden patterns into relief.
Copyright © 2014 Elsevier Inc. All rights reserved.

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Year:  2014        PMID: 25239331     DOI: 10.1016/j.surg.2014.07.020

Source DB:  PubMed          Journal:  Surgery        ISSN: 0039-6060            Impact factor:   3.982


  3 in total

1.  Adapting machine learning techniques to censored time-to-event health record data: A general-purpose approach using inverse probability of censoring weighting.

Authors:  David M Vock; Julian Wolfson; Sunayan Bandyopadhyay; Gediminas Adomavicius; Paul E Johnson; Gabriela Vazquez-Benitez; Patrick J O'Connor
Journal:  J Biomed Inform       Date:  2016-03-16       Impact factor: 6.317

2.  Prophylactic antibiotic bundle compliance and surgical site infections: an artificial neural network analysis.

Authors:  Steven Walczak; Marbelly Davila; Vic Velanovich
Journal:  Patient Saf Surg       Date:  2019-12-07

3.  Exploring the association of the discharge medicines review with patient hospital readmissions through national routine data linkage in Wales: a retrospective cohort study.

Authors:  Efi Mantzourani; Hamde Nazar; Catherine Phibben; Jessica Pang; Gareth John; Andrew Evans; Helen Thomas; Cheryl Way; Karen Hodson
Journal:  BMJ Open       Date:  2020-02-09       Impact factor: 2.692

  3 in total

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