Identifying mortality risk factors amongst acute coronary syndrome patients admitted to Arabian Gulf hospitals using machine‐learning methods
Date
2019Author
Raza, Syed AsifThalib, Lukman
Al Suwaidi, Jassim
Sulaiman, Kadhim
Almahmeed, Wael
Amin, Haitham
AlHabib, Khalid F.
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Acute coronary syndrome (ACS) is a leading cause of mortality and morbidity in the
Arabian Gulf. In this study, the in‐hospital mortality amongst patients admitted with
ACS to Arabian Gulf hospitals is predicted using a comprehensive modelling framework
that combines powerful machine‐learning methods such as support‐vector
machine (SVM), Naïve Bayes (NB), artificial neural networks (NN), and decision trees
(DT). The performance of the machine‐learning methods is compared with that of the
performance of a commonly used statistical method, namely, logistic regression (LR).
The study follows the current practise of computing mortality risk using risk scores
such as the Global Registry of Acute Coronary Events (GRACE) score, which has
not been validated for Arabian Gulf patients. Cardiac registry data of 7,000 patients
from 65 hospitals located in Arabian Gulf countries are used for the study. This study
is unique as it uses a contemporary data analytics framework. A k‐fold (k = 10) crossvalidation
is utilized to generate training and validation samples from the GRACE
dataset. The machine‐learning‐based predictive models often incur prejudgments
for imbalanced training data patterns. To mitigate the data imbalance due to scarce
observations for in‐hospital mortalities, we have utilized specialized methods such
as random undersampling (RUS) and synthetic minority over sampling technique
(SMOTE). A detailed simulation experimentation is carried out to build models with
each of the five predictive methods (LR, NN, NB, SVM, and DT) for the each of the
three datasets k‐fold subsamples generated. The predictive models are developed
under three schemes of the k‐fold samples that include no data imbalance, RUS,
and SMOTE. We have implemented an information fusion method rooted in computing
weighted impact scores obtain for an individual medical history attributes from
each of the predictive models simulated for a collective recommendation based on
an impact score specific to a predictor. Finally, we grouped the predictors using fuzzy
c‐mean clustering method into three categories, high‐, medium‐, and low‐risk factors
for in‐hospital mortality due to ACS. Our study revealed that patients with medical
history related to the presences of peripheral artery disease, congestive heart failure,
cardiovascular transient ischemic attack valvular disease, and coronary artery bypass
grafting amongst others have the most risk for in‐hospital
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