Department of Information Systems, Faculty of Computing and Information Technology, King Abdulaziz University, Jeddah, Saudi Arabia.
Center of Research Excellence in Artificial Intelligence and Data Science, King Abdulaziz University, Jeddah, Saudi Arabia.
Sci Rep. 2024 Sep 14;14(1):21483. doi: 10.1038/s41598-024-71934-x.
Maternal health risks can cause a range of complications for women during pregnancy. High blood pressure, abnormal glucose levels, depression, anxiety, and other maternal health conditions can all lead to pregnancy complications. Proper identification and monitoring of risk factors can assist to reduce pregnancy complications. The primary goal of this research is to use real-world datasets to identify and predict Maternal Health Risk (MHR) factors. As a result, we developed and implemented the Quad-Ensemble Machine Learning framework to predict Maternal Health Risk Classification (QEML-MHRC). The methodology used a vacxsriety of Machine Learning (ML) models, which then integrated with four ensemble ML techniques to improve prediction. The dataset collected from various maternity hospitals and clinics subjected to nineteen training and testing tests. According to the exploratory data analysis, the most significant risk factors for pregnant women include high blood pressure, low blood pressure, and high blood sugar levels. The study proposed a novel approach to dealing with high-risk factors linked to maternal health. Dealing with class-specific performance elaborated further to properly understand the distinction between high, low, and medium risks. All tests yielded outstanding results when predicting the amount of risk during pregnancy. In terms of class performance, the dataset associated with the "HR" class outperformed the others, predicting 90% correctly. GBT with ensemble stacking outperformed and demonstrated remarkable performance for all evaluation measure (0.86) across all classes in the dataset. The key success of the models used in this work is the ability to measure model performance using a class-wise distribution. The proposed approach can help medical experts assess maternal health risks, saving lives and preventing complications throughout pregnancy. The prediction approach presented in this study can detect high-risk pregnancies early on, allowing for timely intervention and treatment. This study's development and findings have the potential to raise public awareness of maternal health issues.
产妇健康风险会导致孕妇在怀孕期间出现一系列并发症。高血压、异常血糖水平、抑郁、焦虑和其他产妇健康状况都可能导致妊娠并发症。正确识别和监测风险因素有助于降低妊娠并发症的发生。本研究的主要目标是使用真实世界数据集来识别和预测产妇健康风险(MHR)因素。因此,我们开发并实施了四元集成机器学习框架来预测产妇健康风险分类(QEML-MHRC)。该方法使用了各种机器学习(ML)模型,然后与四种集成 ML 技术集成,以提高预测能力。该数据集是从不同的妇产科医院和诊所收集的,经过了十九次训练和测试。根据探索性数据分析,对孕妇来说最重要的风险因素包括高血压、低血压和高血糖水平。该研究提出了一种处理与产妇健康相关的高风险因素的新方法。进一步详细研究了特定于类别的性能,以正确理解高、低和中风险之间的区别。在预测怀孕期间的风险量时,所有测试都产生了出色的结果。就类性能而言,与“HR”类相关的数据集表现优于其他数据集,正确预测了 90%的情况。与集成堆叠的 GBT 表现优于其他模型,在数据集的所有类别中,所有评估指标(0.86)的表现都非常出色。本工作中使用的模型的关键成功之处在于能够使用类分布来衡量模型性能。所提出的方法可以帮助医学专家评估产妇健康风险,挽救生命并预防怀孕期间的并发症。本研究提出的预测方法可以早期发现高危妊娠,从而及时进行干预和治疗。本研究的开发和发现有潜力提高公众对产妇健康问题的认识。