» Articles » PMID: 38849903

A Novel Higher Performance Nomogram Based on Explainable Machine Learning for Predicting Mortality Risk in Stroke Patients Within 30 Days Based on Clinical Features on the First Day ICU Admission

Overview
Publisher Biomed Central
Date 2024 Jun 7
PMID 38849903
Authors
Affiliations
Soon will be listed here.
Abstract

Background: This study aimed to develop a higher performance nomogram based on explainable machine learning methods, and to predict the risk of death of stroke patients within 30 days based on clinical characteristics on the first day of intensive care units (ICU) admission.

Methods: Data relating to stroke patients were extracted from the Medical Information Marketplace of the Intensive Care (MIMIC) IV and III database. The LightGBM machine learning approach together with Shapely additive explanations (termed as explain machine learning, EML) was used to select clinical features and define cut-off points for the selected features. These selected features and cut-off points were then evaluated using the Cox proportional hazards regression model and Kaplan-Meier survival curves. Finally, logistic regression-based nomograms for predicting 30-day mortality of stroke patients were constructed using original variables and variables dichotomized by cut-off points, respectively. The performance of two nomograms were evaluated in overall and individual dimension.

Results: A total of 2982 stroke patients and 64 clinical features were included, and the 30-day mortality rate was 23.6% in the MIMIC-IV datasets. 10 variables ("sofa (sepsis-related organ failure assessment)", "minimum glucose", "maximum sodium", "age", "mean spo2 (blood oxygen saturation)", "maximum temperature", "maximum heart rate", "minimum bun (blood urea nitrogen)", "minimum wbc (white blood cells)" and "charlson comorbidity index") and respective cut-off points were defined from the EML. In the Cox proportional hazards regression model (Cox regression) and Kaplan-Meier survival curves, after grouping stroke patients according to the cut-off point of each variable, patients belonging to the high-risk subgroup were associated with higher 30-day mortality than those in the low-risk subgroup. The evaluation of nomograms found that the EML-based nomogram not only outperformed the conventional nomogram in NIR (net reclassification index), brier score and clinical net benefits in overall dimension, but also significant improved in individual dimension especially for low "maximum temperature" patients.

Conclusions: The 10 selected first-day ICU admission clinical features require greater attention for stroke patients. And the nomogram based on explainable machine learning will have greater clinical application.

Citing Articles

A nomogram for postoperative pain relief in patients with osteoporotic vertebral compression fracture treated with polymethylmethacrylate bone cement.

Lu S, Xia X, Shi X, Qin X, Wang C, Wei W Sci Rep. 2025; 15(1):1780.

PMID: 39805925 PMC: 11729885. DOI: 10.1038/s41598-025-85820-7.


Exploring the prognostic impact of triglyceride-glucose index in critically ill patients with first-ever stroke: insights from traditional methods and machine learning-based mortality prediction.

Chen Y, Yang Z, Liu Y, Li Y, Zhong Z, McDowell G Cardiovasc Diabetol. 2024; 23(1):443.

PMID: 39695656 PMC: 11658255. DOI: 10.1186/s12933-024-02538-y.


Prediction of preterm birth using machine learning: a comprehensive analysis based on large-scale preschool children survey data in Shenzhen of China.

Ding L, Yin X, Wen G, Sun D, Xian D, Zhao Y BMC Pregnancy Childbirth. 2024; 24(1):810.

PMID: 39633287 PMC: 11616287. DOI: 10.1186/s12884-024-06980-4.

References
1.
Poncette A, Mosch L, Spies C, Schmieding M, Schiefenhovel F, Krampe H . Improvements in Patient Monitoring in the Intensive Care Unit: Survey Study. J Med Internet Res. 2020; 22(6):e19091. PMC: 7307326. DOI: 10.2196/19091. View

2.
Uno H, Tian L, Cai T, Kohane I, Wei L . A unified inference procedure for a class of measures to assess improvement in risk prediction systems with survival data. Stat Med. 2012; 32(14):2430-42. PMC: 3734387. DOI: 10.1002/sim.5647. View

3.
Owolabi M, Thrift A, Mahal A, Ishida M, Martins S, Johnson W . Primary stroke prevention worldwide: translating evidence into action. Lancet Public Health. 2021; 7(1):e74-e85. PMC: 8727355. DOI: 10.1016/S2468-2667(21)00230-9. View

4.
Wu S, Zeng N, Sun F, Zhou J, Wu X, Sun Y . Hepatocellular Carcinoma Prediction Models in Chronic Hepatitis B: A Systematic Review of 14 Models and External Validation. Clin Gastroenterol Hepatol. 2021; 19(12):2499-2513. DOI: 10.1016/j.cgh.2021.02.040. View

5.
Lambden S, Laterre P, Levy M, Francois B . The SOFA score-development, utility and challenges of accurate assessment in clinical trials. Crit Care. 2019; 23(1):374. PMC: 6880479. DOI: 10.1186/s13054-019-2663-7. View