TY - JOUR
T1 - Predicting Multimorbidity Using Saudi Health Indicators (Sharik) Nationwide Data
T2 - Statistical and Machine Learning Approach
AU - Albagmi, Faisal Mashel
AU - Hussain, Mehwish
AU - Kamal, Khurram
AU - Sheikh, Muhammad Fahad
AU - AlNujaidi, Heba Yaagoub
AU - Bah, Sulaiman
AU - Althumiri, Nora A.
AU - BinDhim, Nasser F.
N1 - Publisher Copyright:
© 2023 by the authors.
PY - 2023/8
Y1 - 2023/8
N2 - The Saudi population is at high risk of multimorbidity. The risk of these morbidities can be reduced by identifying common modifiable behavioural risk factors. This study uses statistical and machine learning methods to predict factors for multimorbidity in the Saudi population. Data from 23,098 Saudi residents were extracted from the “Sharik” Health Indicators Surveillance System 2021. Participants were asked about their demographics and health indicators. Binary logistic models were used to determine predictors of multimorbidity. A backpropagation neural network model was further run using the predictors from the logistic regression model. Accuracy measures were checked using training, validation, and testing data. Females and smokers had the highest likelihood of experiencing multimorbidity. Age and fruit consumption also played a significant role in predicting multimorbidity. Regarding model accuracy, both logistic regression and backpropagation algorithms yielded comparable outcomes. The backpropagation method (accuracy 80.7%) was more accurate than the logistic regression model (77%). Machine learning algorithms can be used to predict multimorbidity among adults, particularly in the Middle East region. Different testing methods later validated the common predicting factors identified in this study. These factors are helpful and can be translated by policymakers to consider improvements in the public health domain.
AB - The Saudi population is at high risk of multimorbidity. The risk of these morbidities can be reduced by identifying common modifiable behavioural risk factors. This study uses statistical and machine learning methods to predict factors for multimorbidity in the Saudi population. Data from 23,098 Saudi residents were extracted from the “Sharik” Health Indicators Surveillance System 2021. Participants were asked about their demographics and health indicators. Binary logistic models were used to determine predictors of multimorbidity. A backpropagation neural network model was further run using the predictors from the logistic regression model. Accuracy measures were checked using training, validation, and testing data. Females and smokers had the highest likelihood of experiencing multimorbidity. Age and fruit consumption also played a significant role in predicting multimorbidity. Regarding model accuracy, both logistic regression and backpropagation algorithms yielded comparable outcomes. The backpropagation method (accuracy 80.7%) was more accurate than the logistic regression model (77%). Machine learning algorithms can be used to predict multimorbidity among adults, particularly in the Middle East region. Different testing methods later validated the common predicting factors identified in this study. These factors are helpful and can be translated by policymakers to consider improvements in the public health domain.
KW - backpropagation methods
KW - health indicators surveillance
KW - logistic regression
KW - multimorbidity
KW - prediction
UR - https://www.scopus.com/pages/publications/85167780717
U2 - 10.3390/healthcare11152176
DO - 10.3390/healthcare11152176
M3 - Article
AN - SCOPUS:85167780717
SN - 2227-9032
VL - 11
JO - Healthcare (Switzerland)
JF - Healthcare (Switzerland)
IS - 15
M1 - 2176
ER -