基于人工智能的可解释深度学习胎儿健康分类。

IF 2.5 4区 医学 Q3 BIOCHEMICAL RESEARCH METHODS SLAS Technology Pub Date : 2024-10-11 DOI:10.1016/j.slast.2024.100206
Gazala Mushtaq, Veningston K
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引用次数: 0

摘要

本研究提出了一种深度学习模型,用于将胎儿健康状况分为 3 类:正常、可疑和病理。其主要目的是利用深度学习的力量来提高诊断过程的效率和有效性。我们提出了一种深度神经网络(DNN)模型,利用从心脏排畸(CTG)获得的数据进行胎儿健康分析。这项工作使用了一个包含 21 个属性的数据集。该模型包含多个隐藏层,并增加了批量归一化和剔除层,以提高泛化能力。本研究利用可解释深度学习评估了模型在胎儿健康分类中的解释能力。这通过利用特征重要性和特征显著性分析,提高了分类器模型决策的透明度,增强了信任度,促进了胎儿健康评估的临床应用。我们提出的模型在胎儿健康分类方面表现出了卓越的性能,准确率为 0.99,灵敏度为 0.93,特异性为 0.93,AUC 为 0.96,精确度为 0.93,F1 分数为 0.93。我们还与其他六个模型进行了比较分析,包括逻辑回归、KNN、SVM、Naive Bayes、随机森林和梯度提升,以评估和比较我们模型的有效性。结果显示,我们提出的模型在准确率方面优于所有基线模型。这表明了深度学习在改善胎儿健康评估方面的潜力,并通过提供早期风险检测的强大工具为产科领域做出了贡献。
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AI driven interpretable deep learning based fetal health classification
In this study, a deep learning model is proposed for the classification of fetal health into 3 categories: Normal, suspect, and pathological. The primary objective is to utilize the power of deep learning to improve the efficiency and effectiveness of diagnostic processes. A deep neural network (DNN) model is proposed for fetal health analysis using data obtained from Cardiotocography (CTG). A dataset containing 21 attributes is used to carry out this work. The model incorporates multiple hidden layers, augmented with batch normalization and dropout layers for improved generalization. This study assesses the model's interpretation ability in fetal health classification using explainable deep learning. This enhances transparency in decision-making of the classifier model by leveraging feature importance and feature saliency analysis, fostering trust and facilitating the clinical adoption of fetal health assessments. Our proposed model demonstrates a remarkable performance with 0.99 accuracy, 0.93 sensitivity, 0.93 specificity, 0.96 AUC, 0.93 precision, and 0.93 F1 scores in classifying fetal health. We also performed comparative analysis with six other models including Logistic Regression, KNN, SVM, Naive Bayes, Random Forest, and Gradient Boosting to assess and compare the effectiveness of our model and the accuracies of 0.89, 0.88, 0.90, 081, 0.93, and 0.93 were achieved respectively by these baseline models. The results revealed that our proposed model outperformed all the baseline models in terms of accuracy. This indicates the potential of deep learning in improving fetal health assessment and contributing to the field of obstetrics by providing a robust tool for early risk detection.
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来源期刊
SLAS Technology
SLAS Technology Computer Science-Computer Science Applications
CiteScore
6.30
自引率
7.40%
发文量
47
审稿时长
106 days
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.
期刊最新文献
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