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Predicting maternal risk level using machine learning models
by
Abdollahian, Mali
, Tafakori, Laleh
, Al Mashrafi, Sulaiman Salim
in
Adult
/ Age
/ Algorithms
/ Bayes Theorem
/ Births
/ Developing countries
/ Education
/ Female
/ Gynecology
/ Health risk assessment
/ Humans
/ Hypertension
/ Industrialized nations
/ LDCs
/ Logistic Models
/ Machine Learning
/ Machine learning to build predictive models in maternal-fetal medicine
/ Maternal and Child Health
/ Maternal Mortality
/ Maternal mortality ratio
/ Maternal mortality risk
/ Medicine
/ Medicine & Public Health
/ Mothers
/ Neural Networks, Computer
/ Oman
/ Oman - epidemiology
/ Parity
/ Prediction
/ Pregnancy
/ Principal Component Analysis
/ Principal Component Analysis (PCA)
/ Reproductive Medicine
/ Risk Assessment - methods
/ Socioeconomic factors
/ Support Vector Machine
/ Womens health
2024
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Predicting maternal risk level using machine learning models
by
Abdollahian, Mali
, Tafakori, Laleh
, Al Mashrafi, Sulaiman Salim
in
Adult
/ Age
/ Algorithms
/ Bayes Theorem
/ Births
/ Developing countries
/ Education
/ Female
/ Gynecology
/ Health risk assessment
/ Humans
/ Hypertension
/ Industrialized nations
/ LDCs
/ Logistic Models
/ Machine Learning
/ Machine learning to build predictive models in maternal-fetal medicine
/ Maternal and Child Health
/ Maternal Mortality
/ Maternal mortality ratio
/ Maternal mortality risk
/ Medicine
/ Medicine & Public Health
/ Mothers
/ Neural Networks, Computer
/ Oman
/ Oman - epidemiology
/ Parity
/ Prediction
/ Pregnancy
/ Principal Component Analysis
/ Principal Component Analysis (PCA)
/ Reproductive Medicine
/ Risk Assessment - methods
/ Socioeconomic factors
/ Support Vector Machine
/ Womens health
2024
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Predicting maternal risk level using machine learning models
by
Abdollahian, Mali
, Tafakori, Laleh
, Al Mashrafi, Sulaiman Salim
in
Adult
/ Age
/ Algorithms
/ Bayes Theorem
/ Births
/ Developing countries
/ Education
/ Female
/ Gynecology
/ Health risk assessment
/ Humans
/ Hypertension
/ Industrialized nations
/ LDCs
/ Logistic Models
/ Machine Learning
/ Machine learning to build predictive models in maternal-fetal medicine
/ Maternal and Child Health
/ Maternal Mortality
/ Maternal mortality ratio
/ Maternal mortality risk
/ Medicine
/ Medicine & Public Health
/ Mothers
/ Neural Networks, Computer
/ Oman
/ Oman - epidemiology
/ Parity
/ Prediction
/ Pregnancy
/ Principal Component Analysis
/ Principal Component Analysis (PCA)
/ Reproductive Medicine
/ Risk Assessment - methods
/ Socioeconomic factors
/ Support Vector Machine
/ Womens health
2024
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Predicting maternal risk level using machine learning models
Journal Article
Predicting maternal risk level using machine learning models
2024
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Overview
Background
Maternal morbidity and mortality remain critical health concerns globally. As a result, reducing the maternal mortality ratio (MMR) is part of goal 3 in the global sustainable development goals (SDGs), and previously, it was an important indicator in the Millennium Development Goals (MDGs). Therefore, identifying high-risk groups during pregnancy is crucial for decision-makers and medical practitioners to mitigate mortality and morbidity. However, the availability of accurate predictive models for maternal mortality and maternal health risks is challenging. Compared with traditional predictive models, machine learning algorithms have emerged as promising predictive modelling methods providing accurate predictive models.
Methods
This work aims to explore the potential of machine learning (ML) algorithms in maternal risk level prediction using a nationwide maternal mortality dataset from Oman for the first time. A total of 402 maternal deaths from 1991 to 2023 in Oman were included in this study. We utilised principal component analysis (PCA) in the ML algorithms and compared them to the results of model performance without PCA. We employed and compared ten ML algorithms, including decision tree (DT), random forest (RF), K—Nearest Neighbors (KNN), Naïve Bayes (NB), Extreme Gradient Boosting (xgboost), Linear Discriminant Analysis (LDA), Quadratic Discriminant Analysis (QDA), Logistic Regression (LR), Support Vector Machine (SVM) and Artificial Neural Network (ANN). Different metrics, including, accuracy, sensitivity, precision, and the F1- score, were utilised to assess Model performance.
Results
The results indicated that the RF model outperformed the other methods in predicting the risk level (low or high) with an accuracy of 75.2%, precision of 85.7% and F1- score of 73% after PCA was applied.
Conclusions
We applied several machine learning models to predict maternal risk levels for the first time using real data from Oman. RF outperformed the other algorithms in this classification problem. A reliable estimate of maternal risk level would facilitate intervention plans for medical practitioners to reduce maternal death.
Publisher
BioMed Central,Springer Nature B.V,BMC
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