» Articles » PMID: 38769382

Machine Learning-based Model to Predict Delirium in Patients with Advanced Cancer Treated with Palliative Care: a Multicenter, Patient-based Registry Cohort

Overview
Journal Sci Rep
Specialty Science
Date 2024 May 20
PMID 38769382
Authors
Affiliations
Soon will be listed here.
Abstract

This study aimed to present a new approach to predict to delirium admitted to the acute palliative care unit. To achieve this, this study employed machine learning model to predict delirium in patients in palliative care and identified the significant features that influenced the model. A multicenter, patient-based registry cohort study in South Korea between January 1, 2019, and December 31, 2020. Delirium was identified by reviewing the medical records based on the criteria of the Diagnostic and Statistical Manual of Mental Disorders, Fifth Edition. The study dataset included 165 patients with delirium among 2314 patients with advanced cancer admitted to the acute palliative care unit. Seven machine learning models, including extreme gradient boosting, adaptive boosting, gradient boosting, light gradient boosting, logistic regression, support vector machine, and random forest, were evaluated to predict delirium in patients with advanced cancer admitted to the acute palliative care unit. An ensemble approach was adopted to determine the optimal model. For k-fold cross-validation, the combination of extreme gradient boosting and random forest provided the best performance, achieving the following accuracy metrics: 68.83% sensitivity, 70.85% specificity, 69.84% balanced accuracy, and 74.55% area under the receiver operating characteristic curve. The performance of the isolated testing dataset was also validated, and the machine learning model was successfully deployed on a public website ( http://ai-wm.khu.ac.kr/Delirium/ ) to provide public access to delirium prediction results in patients with advanced cancer. Furthermore, using feature importance analysis, sex was determined to be the top contributor in predicting delirium, followed by a history of delirium, chemotherapy, smoking status, alcohol consumption, and living with family. Based on a large-scale, multicenter, patient-based registry cohort, a machine learning prediction model for delirium in patients with advanced cancer was developed in South Korea. We believe that this model will assist healthcare providers in treating patients with delirium and advanced cancer.

Citing Articles

Predicting responsiveness to fixed-dose methylene blue in adult patients with septic shock using interpretable machine learning: a retrospective study.

Xue S, Li L, Liu Z, Lyu F, Wu F, Shi P Sci Rep. 2025; 15(1):7254.

PMID: 40021734 PMC: 11871053. DOI: 10.1038/s41598-025-89934-w.


Prediction model for type 2 diabetes mellitus and its association with mortality using machine learning in three independent cohorts from South Korea, Japan, and the UK: a model development and validation study.

Lee H, Hwang S, Park S, Choi Y, Lee S, Park J EClinicalMedicine. 2025; 80:103069.

PMID: 39896872 PMC: 11787438. DOI: 10.1016/j.eclinm.2025.103069.


[Risk assessment in geriatric traumatology : Crucial role of anesthesiology].

Olotu C Z Gerontol Geriatr. 2024; 57(8):603-608.

PMID: 39570393 DOI: 10.1007/s00391-024-02381-6.


Using Machine Learning and Electronic Health Records to Identify Neuropsychiatric Risk Scores for Delirium in ICU and General Hospital Settings.

Heikal M, Saad H, Ghanime P, Bou Dargham T, Bizri M, Kobeissy F Neuropsychiatr Dis Treat. 2024; 20:1861-1876.

PMID: 39372875 PMC: 11456270. DOI: 10.2147/NDT.S479756.

References
1.
Kwon R, Lee H, Kim M, Lee J, Yon D . Machine learning-based prediction of suicidality in adolescents during the COVID-19 pandemic (2020-2021): Derivation and validation in two independent nationwide cohorts. Asian J Psychiatr. 2023; 88:103704. DOI: 10.1016/j.ajp.2023.103704. View

2.
Shin Y, Shin J, Moon S, Jin H, Kim S, Yang J . Autoimmune inflammatory rheumatic diseases and COVID-19 outcomes in South Korea: a nationwide cohort study. Lancet Rheumatol. 2021; 3(10):e698-e706. PMC: 8213376. DOI: 10.1016/S2665-9913(21)00151-X. View

3.
Lawlor P, Bush S . Delirium in patients with cancer: assessment, impact, mechanisms and management. Nat Rev Clin Oncol. 2014; 12(2):77-92. DOI: 10.1038/nrclinonc.2014.147. View

4.
Kurisu K, Inada S, Maeda I, Ogawa A, Iwase S, Akechi T . A decision tree prediction model for a short-term outcome of delirium in patients with advanced cancer receiving pharmacological interventions: A secondary analysis of a multicenter and prospective observational study (Phase-R). Palliat Support Care. 2022; 20(2):153-158. DOI: 10.1017/S1478951521001565. View

5.
Pagali S, Miller D, Fischer K, Schroeder D, Egger N, Manning D . Predicting Delirium Risk Using an Automated Mayo Delirium Prediction Tool: Development and Validation of a Risk-Stratification Model. Mayo Clin Proc. 2021; 96(5):1229-1235. PMC: 8106623. DOI: 10.1016/j.mayocp.2020.08.049. View