Innab Nisreen, Alsubai Shtwai, Alabdulqader Ebtisam Abdullah, Alarfaj Aisha Ahmed, Umer Muhammad, Trelova Silvia, Ashraf Imran
Department of Computer Science and Information Systems, College of Applied Sciences, AlMaarefa University, Diriyah, Riyadh, Saudi Arabia.
Department of Computer Science, College of Computer Engineering and Sciences, Prince Sattam Bin Abdulaziz University, Al-Kharj, Saudi Arabia.
Front Public Health. 2024 Dec 20;12:1462693. doi: 10.3389/fpubh.2024.1462693. eCollection 2024.
Fetal health holds paramount importance in prenatal care and obstetrics, as it directly impacts the wellbeing of mother and fetus. Monitoring fetal health through pregnancy is crucial for identifying and addressing potential risks and complications that may arise. Early detection of abnormalities and deviations in fetal health can facilitate timely interventions to mitigate risks and improve outcomes for the mother and fetus. Monitoring fetal health also provides valuable insights into the effectiveness of prenatal interventions and treatments. For fetal health classification, this research work makes use of cardiotocography (CTG) data containing 21 features including fetal growth, development, and physiological parameters such as heart rate and movement patterns with three target classes "normal," "suspect," and "pathological." The proposed methodology makes use of data upsampled using the synthetic minority oversampling technique (SMOTE) to handle the class imbalance problem that is very crucial in medical diagnosing with a light gradient boosting machine. The results show that the proposed model gives 0.9989 accuracy, 0.9988 area under the curve, 0.9832 recall, 0.9834 precision, 0.9832 F1 score, 0.9748 Kappa score, and 0.9749 Matthews correlation coefficient value on the test dataset. The performance of the proposed model is compared with other machine learning models to show the dominance of the proposed model. The proposed model's significance is further evaluated using 10-fold cross-validation and comparing the proposed model with other state-of-the-art models.
胎儿健康在产前护理和产科中至关重要,因为它直接影响母亲和胎儿的健康。在整个孕期监测胎儿健康对于识别和应对可能出现的潜在风险及并发症至关重要。早期发现胎儿健康方面的异常和偏差有助于及时采取干预措施,降低风险并改善母亲和胎儿的结局。监测胎儿健康还能为产前干预和治疗的效果提供有价值的见解。对于胎儿健康分类,本研究工作利用包含21个特征的胎心监护(CTG)数据,这些特征包括胎儿生长、发育以及诸如心率和运动模式等生理参数,目标类别有“正常”“可疑”和“病理性”三种。所提出的方法利用通过合成少数过采样技术(SMOTE)进行上采样的数据来处理类别不平衡问题,这在医学诊断中非常关键,同时使用了轻梯度提升机。结果表明,所提出的模型在测试数据集上的准确率为0.9989,曲线下面积为0.9988,召回率为0.9832,精确率为0.9834,F1分数为0.9832,卡帕分数为0.9748,马修斯相关系数值为0.9749。将所提出模型的性能与其他机器学习模型进行比较,以显示所提出模型的优势。使用10折交叉验证并将所提出模型与其他现有最先进模型进行比较,进一步评估所提出模型的重要性。