Machine Learning-based maternal health risk prediction model for IoMT framework

Subhash Mondal, A. Nag, A. Barman, Mithun Karmakar
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Abstract

The Internet of Things (IoT) is vital as it offers extensive applicability in various fields, including healthcare. In the context of the risk level during pregnancy, to monitor and predict abnormalities, IoT devices provide a means to collect real-time health data, enabling continuous monitoring and analysis in the Internet of Medical Things (IoMT) environments. By integrating IoT devices into the system, crucial signs such as Heart Rate (HR), Systolic and Diastolic Blood Pressure (BP), Fetal Movements (FM), and Temperature (T) can be tracked remotely and non-invasively. This allows for the timely detection of abnormalities or potential risk factors during pregnancy, empowering healthcare professionals to intervene proactively and provide personalized care. This research focuses on developing a system for observing and predicting the maternal risk level in the IoT environment, mainly in remote areas. The goal is to improve maternal health and reduce maternal and child mortality rates, a significant decline according to United Nations targets for 2030. The research utilizes analytical tools and Machine Learning (ML) algorithms to analyze health data and risk factors associated with pregnancy. The acquired dataset contains various risk factors categorized and classified based on intensity. After comparing different ML models’ experimental results, Exploratory Data Analysis (EDA) approaches to determine the most effective risk factors. The fine-tuned Random Forest Classifier (RF) achieves the highest accuracy of 93.14%. An Android-based application has also been developed to deploy the prediction model to determine risk levels based on the different parameters.
基于机器学习的IoMT框架孕产妇健康风险预测模型
物联网(IoT)至关重要,因为它在包括医疗保健在内的各个领域都具有广泛的适用性。在怀孕期间的风险水平背景下,为了监测和预测异常情况,物联网设备提供了一种收集实时健康数据的手段,可以在医疗物联网(IoMT)环境中进行持续监测和分析。通过将物联网设备集成到系统中,可以远程无创地跟踪心率(HR)、收缩压和舒张压(BP)、胎动(FM)和体温(T)等关键体征。这允许在怀孕期间及时发现异常或潜在的风险因素,使医疗保健专业人员能够主动干预并提供个性化护理。本研究的重点是开发一个物联网环境下,主要是偏远地区孕产妇风险水平的观察和预测系统。目标是改善孕产妇保健,降低孕产妇和儿童死亡率,根据联合国2030年的具体目标,这一数字将大幅下降。该研究利用分析工具和机器学习(ML)算法来分析与怀孕相关的健康数据和风险因素。获得的数据集包含各种风险因素,根据强度进行分类和分类。在比较不同机器学习模型的实验结果后,探索性数据分析(EDA)方法确定最有效的风险因素。微调随机森林分类器(RF)的准确率最高,为93.14%。一个基于android的应用程序也被开发出来,用来部署预测模型,根据不同的参数来确定风险水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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