Literature DB >> 31558433

Exploiting Machine Learning Algorithms and Methods for the Prediction of Agitated Delirium After Cardiac Surgery: Models Development and Validation Study.

Hani Nabeel Mufti1,2,3, Gregory Marshal Hirsch4, Samina Raza Abidi5, Syed Sibte Raza Abidi6.   

Abstract

BACKGROUND: Delirium is a temporary mental disorder that occasionally affects patients undergoing surgery, especially cardiac surgery. It is strongly associated with major adverse events, which in turn leads to increased cost and poor outcomes (eg, need for nursing home due to cognitive impairment, stroke, and death). The ability to foresee patients at risk of delirium will guide the timely initiation of multimodal preventive interventions, which will aid in reducing the burden and negative consequences associated with delirium. Several studies have focused on the prediction of delirium. However, the number of studies in cardiac surgical patients that have used machine learning methods is very limited.
OBJECTIVE: This study aimed to explore the application of several machine learning predictive models that can pre-emptively predict delirium in patients undergoing cardiac surgery and compare their performance.
METHODS: We investigated a number of machine learning methods to develop models that can predict delirium after cardiac surgery. A clinical dataset comprising over 5000 actual patients who underwent cardiac surgery in a single center was used to develop the models using logistic regression, artificial neural networks (ANN), support vector machines (SVM), Bayesian belief networks (BBN), naïve Bayesian, random forest, and decision trees.
RESULTS: Only 507 out of 5584 patients (11.4%) developed delirium. We addressed the underlying class imbalance, using random undersampling, in the training dataset. The final prediction performance was validated on a separate test dataset. Owing to the target class imbalance, several measures were used to evaluate algorithm's performance for the delirium class on the test dataset. Out of the selected algorithms, the SVM algorithm had the best F1 score for positive cases, kappa, and positive predictive value (40.2%, 29.3%, and 29.7%, respectively) with a P=.01, .03, .02, respectively. The ANN had the best receiver-operator area-under the curve (78.2%; P=.03). The BBN had the best precision-recall area-under the curve for detecting positive cases (30.4%; P=.03).
CONCLUSIONS: Although delirium is inherently complex, preventive measures to mitigate its negative effect can be applied proactively if patients at risk are prospectively identified. Our results highlight 2 important points: (1) addressing class imbalance on the training dataset will augment machine learning model's performance in identifying patients likely to develop postoperative delirium, and (2) as the prediction of postoperative delirium is difficult because it is multifactorial and has complex pathophysiology, applying machine learning methods (complex or simple) may improve the prediction by revealing hidden patterns, which will lead to cost reduction by prevention of complications and will optimize patients' outcomes. ©Hani Nabeel N Mufti, Gregory Marshal Hirsch, Samina Raza Abidi, Syed Sibte Raza Abidi. Originally published in JMIR Medical Informatics (http://medinform.jmir.org), 23.10.2019.

Entities:  

Keywords:  cardiac surgery; delirium; machine learning; predictive modeling

Year:  2019        PMID: 31558433     DOI: 10.2196/14993

Source DB:  PubMed          Journal:  JMIR Med Inform


  9 in total

1.  Development of machine learning models for mortality risk prediction after cardiac surgery.

Authors:  Yunlong Fan; Junfeng Dong; Yuanbin Wu; Ming Shen; Siming Zhu; Xiaoyi He; Shengli Jiang; Jiakang Shao; Chao Song
Journal:  Cardiovasc Diagn Ther       Date:  2022-02

2.  A machine learning approach to identifying delirium from electronic health records.

Authors:  Jae Hyun Kim; May Hua; Robert A Whittington; Junghwan Lee; Cong Liu; Casey N Ta; Edward R Marcantonio; Terry E Goldberg; Chunhua Weng
Journal:  JAMIA Open       Date:  2022-05-24

3.  A novel model to label delirium in an intensive care unit from clinician actions.

Authors:  Caitlin E Coombes; Kevin R Coombes; Naleef Fareed
Journal:  BMC Med Inform Decis Mak       Date:  2021-03-09       Impact factor: 2.796

4.  Postoperative delirium prediction using machine learning models and preoperative electronic health record data.

Authors:  Andrew Bishara; Catherine Chiu; Elizabeth L Whitlock; Vanja C Douglas; Sei Lee; Atul J Butte; Jacqueline M Leung; Anne L Donovan
Journal:  BMC Anesthesiol       Date:  2022-01-03       Impact factor: 2.376

Review 5.  Machine learning methods for perioperative anesthetic management in cardiac surgery patients: a scoping review.

Authors:  Santino R Rellum; Jaap Schuurmans; Ward H van der Ven; Susanne Eberl; Antoine H G Driessen; Alexander P J Vlaar; Denise P Veelo
Journal:  J Thorac Dis       Date:  2021-12       Impact factor: 2.895

6.  Association Between Hypernatremia and Delirium After Cardiac Surgery: A Nested Case-Control Study.

Authors:  Liang Hong; Xiao Shen; Qiankun Shi; Xiaochun Song; Lihai Chen; Wenxiu Chen; Shangyu Chen; Yingyin Xue; Cui Zhang; Jifang Zhou
Journal:  Front Cardiovasc Med       Date:  2022-03-08

Review 7.  The future of Cardiothoracic surgery in Artificial intelligence.

Authors:  Hassan Mumtaz; Muhammad Saqib; Farrukh Ansar; Durafshan Zargar; Madiha Hameed; Mohammad Hasan; Pakiza Muskan
Journal:  Ann Med Surg (Lond)       Date:  2022-07-31

8.  Relationship of sleep disturbance and postoperative delirium: a systematic review and meta-analysis.

Authors:  Ertao He; Ying Dong; Haitao Jia; Lixin Yu
Journal:  Gland Surg       Date:  2022-07

9.  Health informatics publication trends in Saudi Arabia: a bibliometric analysis over the last twenty-four years.

Authors:  Samar Binkheder; Raniah Aldekhyyel; Jwaher Almulhem
Journal:  J Med Libr Assoc       Date:  2021-04-01
  9 in total

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