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基于改良 Aquila 的优化 XGBoost 框架,用于检测新生儿中可能的癫痫发作状态。

A Modified Aquila-Based Optimized XGBoost Framework for Detecting Probable Seizure Status in Neonates.

机构信息

Electronics and Communication Engineering (ECE) Discipline, Khulna University (KU), Khulna 9208, Bangladesh.

Department of ICT Integrated Ocean Smart Cities Engineering, Dong-A University, Busan 49315, Republic of Korea.

出版信息

Sensors (Basel). 2023 Aug 9;23(16):7037. doi: 10.3390/s23167037.

Abstract

Electroencephalography (EEG) is increasingly being used in pediatric neurology and provides opportunities to diagnose various brain illnesses more accurately and precisely. It is thought to be one of the most effective tools for identifying newborn seizures, especially in Neonatal Intensive Care Units (NICUs). However, EEG interpretation is time-consuming and requires specialists with extensive training. It can be challenging and time-consuming to distinguish between seizures since they might have a wide range of clinical characteristics and etiologies. Technological advancements such as the Machine Learning (ML) approach for the rapid and automated diagnosis of newborn seizures have increased in recent years. This work proposes a novel optimized ML framework to eradicate the constraints of conventional seizure detection techniques. Moreover, we modified a novel meta-heuristic optimization algorithm (MHOA), named Aquila Optimization (AO), to develop an optimized model to make our proposed framework more efficient and robust. To conduct a comparison-based study, we also examined the performance of our optimized model with that of other classifiers, including the Decision Tree (DT), Random Forest (RF), and Gradient Boosting Classifier (GBC). This framework was validated on a public dataset of Helsinki University Hospital, where EEG signals were collected from 79 neonates. Our proposed model acquired encouraging results showing a 93.38% Accuracy Score, 93.9% Area Under the Curve (AUC), 92.72% F1 score, 65.17% Kappa, 93.38% sensitivity, and 77.52% specificity. Thus, it outperforms most of the present shallow ML architectures by showing improvements in accuracy and AUC scores. We believe that these results indicate a major advance in the detection of newborn seizures, which will benefit the medical community by increasing the reliability of the detection process.

摘要

脑电图(EEG)在儿科神经学中的应用越来越广泛,为更准确、更精确地诊断各种脑部疾病提供了机会。它被认为是识别新生儿癫痫发作的最有效工具之一,尤其是在新生儿重症监护病房(NICU)中。然而,脑电图解释既耗时又需要具有广泛培训的专家。由于癫痫发作可能具有广泛的临床特征和病因,因此区分它们可能具有挑战性和耗时。近年来,机器学习(ML)方法等技术进步已经增加了快速和自动诊断新生儿癫痫发作的可能性。这项工作提出了一种新颖的优化 ML 框架,以消除传统癫痫检测技术的限制。此外,我们修改了一种新颖的元启发式优化算法(MHOA),名为 Aquila Optimization(AO),以开发一个优化模型,使我们提出的框架更加高效和稳健。为了进行基于比较的研究,我们还研究了我们优化模型的性能与其他分类器的性能,包括决策树(DT)、随机森林(RF)和梯度提升分类器(GBC)。该框架在赫尔辛基大学医院的公共数据集上进行了验证,其中从 79 名新生儿收集了 EEG 信号。我们提出的模型获得了令人鼓舞的结果,准确率为 93.38%,曲线下面积(AUC)为 93.9%,F1 得分为 92.72%,Kappa 为 65.17%,敏感度为 93.38%,特异性为 77.52%。因此,它通过提高准确率和 AUC 得分,优于大多数现有的浅层 ML 架构。我们相信这些结果表明在检测新生儿癫痫发作方面取得了重大进展,这将通过提高检测过程的可靠性使医疗界受益。

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