Literature DB >> 34728706

Using explainable machine learning to identify patients at risk of reattendance at discharge from emergency departments.

F P Chmiel1, D K Burns2, M Azor3, F Borca3,4, M J Boniface2, Z D Zlatev2, N M White2, T W V Daniels5,6, M Kiuber7.   

Abstract

Short-term reattendances to emergency departments are a key quality of care indicator. Identifying patients at increased risk of early reattendance could help reduce the number of missed critical illnesses and could reduce avoidable utilization of emergency departments by enabling targeted post-discharge intervention. In this manuscript, we present a retrospective, single-centre study where we created and evaluated an extreme gradient boosting decision tree model trained to identify patients at risk of reattendance within 72 h of discharge from an emergency department (University Hospitals Southampton Foundation Trust, UK). Our model was trained using 35,447 attendances by 28,945 patients and evaluated on a hold-out test set featuring 8847 attendances by 7237 patients. The set of attendances from a given patient appeared exclusively in either the training or the test set. Our model was trained using both visit level variables (e.g., vital signs, arrival mode, and chief complaint) and a set of variables available in a patients electronic patient record, such as age and any recorded medical conditions. On the hold-out test set, our highest performing model obtained an AUROC of 0.747 (95% CI 0.722-0.773) and an average precision of 0.233 (95% CI 0.194-0.277). These results demonstrate that machine-learning models can be used to classify patients, with moderate performance, into low and high-risk groups for reattendance. We explained our models predictions using SHAP values, a concept developed from coalitional game theory, capable of explaining predictions at an attendance level. We demonstrated how clustering techniques (the UMAP algorithm) can be used to investigate the different sub-groups of explanations present in our patient cohort.
© 2021. The Author(s).

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Year:  2021        PMID: 34728706      PMCID: PMC8563762          DOI: 10.1038/s41598-021-00937-9

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  20 in total

1.  From Local Explanations to Global Understanding with Explainable AI for Trees.

Authors:  Scott M Lundberg; Gabriel Erion; Hugh Chen; Alex DeGrave; Jordan M Prutkin; Bala Nair; Ronit Katz; Jonathan Himmelfarb; Nisha Bansal; Su-In Lee
Journal:  Nat Mach Intell       Date:  2020-01-17

2.  Association between frailty and 30-day outcomes after discharge from hospital.

Authors:  Sharry Kahlon; Jenelle Pederson; Sumit R Majumdar; Sara Belga; Darren Lau; Miriam Fradette; Debbie Boyko; Jeffrey A Bakal; Curtis Johnston; Raj S Padwal; Finlay A McAlister
Journal:  CMAJ       Date:  2015-05-25       Impact factor: 8.262

3.  Prediction of emergency department patient disposition based on natural language processing of triage notes.

Authors:  Nicholas W Sterling; Rachel E Patzer; Mengyu Di; Justin D Schrager
Journal:  Int J Med Inform       Date:  2019-06-13       Impact factor: 4.046

Review 4.  Emergency and urgent care systems in Australia, Denmark, England, France, Germany and the Netherlands - Analyzing organization, payment and reforms.

Authors:  Natalie Baier; Alexander Geissler; Mickael Bech; David Bernstein; Thomas E Cowling; Terri Jackson; Johan van Manen; Andreas Rudkjøbing; Wilm Quentin
Journal:  Health Policy       Date:  2018-11-10       Impact factor: 2.980

5.  Derivation of a nomogram to estimate probability of revisit in at-risk older adults discharged from the emergency department.

Authors:  Glenn Arendts; Sarah Fitzhardinge; Karren Pronk; Marani Hutton; Yusuf Nagree; Mark Donaldson
Journal:  Intern Emerg Med       Date:  2013-03-05       Impact factor: 3.397

6.  Association between waiting times and short term mortality and hospital admission after departure from emergency department: population based cohort study from Ontario, Canada.

Authors:  Astrid Guttmann; Michael J Schull; Marian J Vermeulen; Therese A Stukel
Journal:  BMJ       Date:  2011-06-01

7.  Characteristics of older adults admitted to the emergency department (ED) and their risk factors for ED readmission based on comprehensive geriatric assessment: a prospective cohort study.

Authors:  Mieke Deschodt; Els Devriendt; Marc Sabbe; Daniel Knockaert; Peter Deboutte; Steven Boonen; Johan Flamaing; Koen Milisen
Journal:  BMC Geriatr       Date:  2015-04-26       Impact factor: 3.921

8.  Risk prediction of emergency department revisit 30 days post discharge: a prospective study.

Authors:  Shiying Hao; Bo Jin; Andrew Young Shin; Yifan Zhao; Chunqing Zhu; Zhen Li; Zhongkai Hu; Changlin Fu; Jun Ji; Yong Wang; Yingzhen Zhao; Dorothy Dai; Devore S Culver; Shaun T Alfreds; Todd Rogow; Frank Stearns; Karl G Sylvester; Eric Widen; Xuefeng B Ling
Journal:  PLoS One       Date:  2014-11-13       Impact factor: 3.240

9.  UMAP reveals cryptic population structure and phenotype heterogeneity in large genomic cohorts.

Authors:  Alex Diaz-Papkovich; Luke Anderson-Trocmé; Chief Ben-Eghan; Simon Gravel
Journal:  PLoS Genet       Date:  2019-11-01       Impact factor: 5.917

10.  Explainable machine learning can outperform Cox regression predictions and provide insights in breast cancer survival.

Authors:  Arturo Moncada-Torres; Marissa C van Maaren; Mathijs P Hendriks; Sabine Siesling; Gijs Geleijnse
Journal:  Sci Rep       Date:  2021-03-26       Impact factor: 4.379

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  1 in total

1.  Using explainable machine learning to characterise data drift and detect emergent health risks for emergency department admissions during COVID-19.

Authors:  Christopher Duckworth; Francis P Chmiel; Dan K Burns; Zlatko D Zlatev; Neil M White; Thomas W V Daniels; Michael Kiuber; Michael J Boniface
Journal:  Sci Rep       Date:  2021-11-26       Impact factor: 4.379

  1 in total

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