Togunwa Taofeeq Oluwatosin, Babatunde Abdulhammed Opeyemi, Abdullah Khalil-Ur-Rahman
Department of Medicine and Surgery, Faculty of Clinical Sciences, College of Medicine, University of Ibadan, Ibadan, Oyo, Nigeria.
College Research and Innovation Hub, University College Hospital, Ibadan, Oyo, Nigeria.
Front Artif Intell. 2023 Jul 5;6:1213436. doi: 10.3389/frai.2023.1213436. eCollection 2023.
Maternal health is a critical aspect of public health that affects the wellbeing of both mothers and infants. Despite medical advancements, maternal mortality rates remain high, particularly in developing countries. AI-based models provide new ways to analyze and interpret medical data, which can ultimately improve maternal and fetal health outcomes.
This study proposes a deep hybrid model for maternal health risk classification in pregnancy, which utilizes the strengths of artificial neural networks (ANN) and random forest (RF) algorithms. The proposed model combines the two algorithms to improve the accuracy and efficiency of risk classification in pregnant women. The dataset used in this study consists of features such as age, systolic and diastolic blood pressure, blood sugar, body temperature, and heart rate. The dataset is divided into training and testing sets, with 75% of the data used for training and 25% used for testing. The output of the ANN and RF classifier is considered, and a maximum probability voting system selects the output with the highest probability as the most correct.
Performance is evaluated using various metrics, such as accuracy, precision, recall, and F1 score. Results showed that the proposed model achieves 95% accuracy, 97% precision, 97% recall, and an F1 score of 0.97 on the testing dataset.
The deep hybrid model proposed in this study has the potential to improve the accuracy and efficiency of maternal health risk classification in pregnancy, leading to better health outcomes for pregnant women and their babies. Future research could explore the generalizability of this model to other populations, incorporate unstructured medical data, and evaluate its feasibility for clinical use.
孕产妇健康是公共卫生的一个关键方面,影响着母亲和婴儿的福祉。尽管医学取得了进步,但孕产妇死亡率仍然很高,特别是在发展中国家。基于人工智能的模型提供了分析和解释医学数据的新方法,最终可以改善孕产妇和胎儿的健康结果。
本研究提出了一种用于孕期孕产妇健康风险分类的深度混合模型,该模型利用了人工神经网络(ANN)和随机森林(RF)算法的优势。所提出的模型结合了这两种算法,以提高孕妇风险分类的准确性和效率。本研究中使用的数据集包括年龄、收缩压和舒张压、血糖、体温和心率等特征。该数据集被分为训练集和测试集,其中75%的数据用于训练,25%用于测试。考虑ANN和RF分类器的输出,最大概率投票系统选择概率最高的输出作为最正确的输出。
使用各种指标评估性能,如准确率、精确率、召回率和F1分数。结果表明,所提出的模型在测试数据集上的准确率达到95%,精确率达到97%,召回率达到97%,F1分数为0.97。
本研究中提出的深度混合模型有可能提高孕期孕产妇健康风险分类的准确性和效率,为孕妇及其婴儿带来更好的健康结果。未来的研究可以探索该模型对其他人群的通用性,纳入非结构化医学数据,并评估其临床应用的可行性。