基于数据特征多水平融合的缺血性缺氧脑损伤与低血糖脑损伤致癫痫的比较

Sameer Kadem, Noor Sami, A. Elaraby, Shahad .., M. Jalil, M. Altaee, Muntather Almusawi, Ismaeel, A. Ghany, Ali Kamil Kareem, M. Kamalrudin, Adnan Allwi Ftaiet
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引用次数: 0

摘要

本研究旨在探讨缺氧缺血(HI)、低血糖和癫痫引起的脑损伤的异同。低血糖对改善胰岛素治疗患者的血糖调节提出了重大挑战,而新生儿HI脑疾病与低氧水平有关。该研究考察了结合使用医疗数据和脑电图(EEG)测量来预测两年期间结果的可能性。该研究采用数据特征的多层次融合来提高预测的准确性。为此,本文提出了一种缺氧缺血低血糖、癫痫性脑损伤(HCM-BI)的杂交分类模型。使用支持向量机结合临床细节来定义每个婴儿的缺氧缺血结果。新生婴儿每两年再次接受一次评估,以了解神经发育结果。从脑电图记录中得到四个属性的选择,支持向量机没有得到关于疾病分类的结论。最后通过贝叶斯神经网络(BNN)对脑电信号的特征提取进行优化,得到低血糖和癫痫患者清晰的健康状况。通过监测和评估脑电图的物理效应,利用贝叶斯神经网络(BNN)提取日志数据最多的测试样本,无创地报告低血糖和癫痫患者。实验结果表明,该策略在疾病对比中准确率提高了95.05%,错误率降至0.41。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Epilepsy Induced by Ischemic Hypoxic Brain Injury and Hypoglycemic Brain Injury using Multilevel Fusion of Data Features
The study aims to investigate the similarities and differences in the brain damage caused by Hypoxia-Ischemia (HI), Hypoglycemia, and Epilepsy. Hypoglycemia poses a significant challenge in improving glycemic regulation for insulin-treated patients, while HI brain disease in neonates is associated with low oxygen levels. The study examines the possibility of using a combination of medical data and Electroencephalography (EEG) measurements to predict outcomes over a two-year period. The study employs a multilevel fusion of data features to enhance the accuracy of the predictions. Therefore this paper suggests a hybridized classification model for Hypoxia-Ischemia and Hypoglycemia, Epilepsy brain injury (HCM-BI). A Support Vector Machine is applied with clinical details to define the Hypoxia-Ischemia outcomes of each infant. The newborn babies are assessed every two years again to know the neural development results. A selection of four attributes is derived from the Electroencephalography records, and SVM does not get conclusions regarding the classification of diseases. The final feature extraction of the EEG signal is optimized by the Bayesian Neural Network (BNN) to get the clear health condition of Hypoglycemia and Epilepsy patients. Through monitoring and assessing physical effects resulting from Electroencephalography, The Bayesian Neural Network (BNN) is used to extract the test samples with the most log data and to report hypoglycemia and epilepsy patients non-invasively. The experimental findings demonstrate that the suggested strategy improves accuracy by 95.05% and reduces the error rate to 0.41 when comparing diseases.
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