Sarah A. Alzakari , Asma Aldrees , Muhammad Umer , Lucia Cascone , Nisreen Innab , Imran Ashraf
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This research work adopts the Tabular Prior Data Fitted Network (TabPFN) model which was originally designed to solve small tabular classification. TabPFN is used to predict the still or live birth during pregnancy with 97.91% accuracy. To address this life-saving problem with more accurate results and in-depth analysis of ML models, this research work makes use of 13 renowned ML models for performance comparison with the proposed model. The proposed model is evaluated using precision, recall, F-score, Mathews Correlation Coefficient (MCC), and the area under the curve evaluation parameters and the results are 97.87%, 98.26%, 98.05%, 96.42%, and 98.88%, respectively. 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引用次数: 0
摘要
在早期疾病检测方面,预测建模正变得越来越流行。使用机器学习方法进行预测建模有助于疾病的早期检测,从而使医学专家能够采取适当的医疗措施。死胎预测也是一个类似的领域,基于人工智能的预测建模可以缓解这一重大的全球健康挑战。尽管产前保健取得了进步,但死胎的预防仍然是一个复杂的问题,需要进一步的研究和干预。本研究工作使用了 UCI 机器学习(ML)资源库中的心脏排卵图(CTG)数据集,以研究拟议方法在死胎预测方面的效率。这项研究工作采用了表格先验数据拟合网络(TabPFN)模型,该模型最初是为解决小表分类问题而设计的。TabPFN 用于预测孕期的死产或活产,准确率高达 97.91%。为了以更准确的结果和对 ML 模型的深入分析来解决这一挽救生命的问题,这项研究工作使用了 13 种著名的 ML 模型与所提出的模型进行性能比较。使用精确度、召回率、F-分数、马修斯相关系数(MCC)和曲线下面积等评价参数对提出的模型进行了评估,结果分别为 97.87%、98.26%、98.05%、96.42% 和 98.88%。使用 k 倍交叉验证对所提模型的结果进行了进一步评估,并将其性能与其他最先进的研究结果进行了比较,结果表明 TabPFN 模型性能优越。
Artificial intelligence-driven predictive framework for early detection of still birth
Predictive modeling is becoming increasingly popular in the context of early disease detection. The use of machine learning approaches for predictive modeling can help early detection of diseases thereby enabling medical experts to appropriate medical treatments. Stillbirth prediction is a similar domain where artificial intelligence-based predictive modeling can alleviate this significant global health challenge. Despite advancements in prenatal care, the prevention of stillbirths remains a complex issue requiring further research and interventions. The cardiotocography (CTG) dataset is used in this research work from the UCI machine learning (ML) repository to investigate the efficiency of the proposed approach regarding stillbirth prediction. This research work adopts the Tabular Prior Data Fitted Network (TabPFN) model which was originally designed to solve small tabular classification. TabPFN is used to predict the still or live birth during pregnancy with 97.91% accuracy. To address this life-saving problem with more accurate results and in-depth analysis of ML models, this research work makes use of 13 renowned ML models for performance comparison with the proposed model. The proposed model is evaluated using precision, recall, F-score, Mathews Correlation Coefficient (MCC), and the area under the curve evaluation parameters and the results are 97.87%, 98.26%, 98.05%, 96.42%, and 98.88%, respectively. The results of the proposed model are further evaluated using k-fold cross-validation and its performance comparison with other state-of-the-art studies indicating the superior performance of TabPFN model.
期刊介绍:
SLAS Technology emphasizes scientific and technical advances that enable and improve life sciences research and development; drug-delivery; diagnostics; biomedical and molecular imaging; and personalized and precision medicine. This includes high-throughput and other laboratory automation technologies; micro/nanotechnologies; analytical, separation and quantitative techniques; synthetic chemistry and biology; informatics (data analysis, statistics, bio, genomic and chemoinformatics); and more.