预测杏仁核内凯尼酸小鼠癫痫模型中新出现的癫痫表型的分类系统。

IF 4.4 2区 医学 Q2 ENGINEERING, BIOMEDICAL
Mercy Edoho, Omar Mamad, David C Henshall, Catherine Mooney, Lan Wei
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引用次数: 0

摘要

目的:耐药性癫痫动物模型是发现新药靶点和测试实验药物的重要资源。在小鼠杏仁核内微量注射凯尼酸是最广为人知的耐药性癫痫模型之一。小鼠会出现急性癫痫状态,几小时后癫痫症状会减轻,然后在几天内小鼠会出现自发性癫痫发作(癫痫)。自发性癫痫发作的频率因小鼠而异,有的小鼠发作率低,有的小鼠发作率高。如果能在小鼠癫痫状态出现后不久预测哪些小鼠的癫痫发作频率会正常,就能大大减少资源和脑电图检查时间,并为癫痫发作率低或高的小鼠提供人道的早期终点:在这项研究中,我们开发了两种机器学习模型,一种是基于特征的方法,另一种是基于迁移学习的方法,用于预测杏仁核内凯因酸模型中的突发自发癫痫发作率,其依据是小鼠在持续 40 分钟的癫痫状态期间记录的急性脑电图。该方法在 28 只小鼠的数据上进行了训练,随后在 16 只小鼠的数据上进行了测试:结果:基于特征的模型和基于迁移学习的模型在测试集上的准确率分别为 69% 和 75%,可将突发癫痫分为正常和离群(即低频或高频发作率):杏仁核内凯尼酸模型的局限性在于,产生自发癫痫发作率低或高的小鼠会造成时间和资源的损失。迄今为止,还没有其他研究试图预测新出现的自发癫痫发作率。基于特征的模型和基于迁移学习的模型将帮助研究人员在自发性癫痫发作开始之前识别出癫痫发作频率正常的小鼠:我们已将这种方法作为网络服务器实现,这有可能减少分析出现低频或高频癫痫发作率的小鼠脑电图所花费的时间和资源。这将实现对异常小鼠的早期人道终结,符合研究中负责任使用动物的原则,同时加快临床前抗癫痫药物的发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification System for Predicting Emergent Epilepsy Phenotype in the Intra-amygdala Kainic Acid Mouse Model of Epilepsy.

Objective: Animal models of drug-resistant epilepsy represent an important resource for discovering new drug targets and testing experimental medicines. Intra-amygdala microinjection of kainic acid in mice is one of the most widely regarded models of drug-resistant epilepsy. Mice develop acute status epilepticus, which diminishes after a few hours and then, within a few days, mice display spontaneous seizures (epilepsy). The frequency of spontaneous seizures varies between mice, with some developing low or high seizure rates. The ability to predict soon after status epilepticus, which mice will go on to develop a normal frequency of seizures, would enable a significant reduction in resources and EEG reviewing time and lead to humane early end-points for the mice with low or high seizure rates.

Method: In this study, we developed two machine learning models, a feature-based and transfer learning-based approach, for predicting the emergent spontaneous seizure rates in the intra-amygdala kainic acid model based on the acute EEGs recorded in mice during status epilepticus lasting 40 minutes. The method was trained on data from 28 mice and subsequently tested on data from 16 mice.

Results: The feature-based and transfer learning-based models achieved accuracies of 69% and 75%, respectively on the test set in classifying emergent epilepsy as normal or outlier (i.e. low-frequency or high-frequency seizure rate).

Conclusion: A limitation of the intra-amygdala kainic acid model has been the loss of time and resources from generating mice with low or high rates of spontaneous seizures. To date, no other research has attempted to predict emergent spontaneous seizure rates. The feature-based and transfer learning-based models will assist researchers in identifying mice with a normal frequency of seizures before the onset of spontaneous seizures.

Significance: We have implemented this approach as a web server, which can potentially reduce the time and resources spent analysing the EEGs of mice who develop low-frequency or high-frequency seizure rates. This will enable the early humane endpoint of outlier mice, which aligns with the principles of the responsible use of animals in research and simultaneously speeds up preclinical anti-epilepsy drug discovery.

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来源期刊
IEEE Transactions on Biomedical Engineering
IEEE Transactions on Biomedical Engineering 工程技术-工程:生物医学
CiteScore
9.40
自引率
4.30%
发文量
880
审稿时长
2.5 months
期刊介绍: IEEE Transactions on Biomedical Engineering contains basic and applied papers dealing with biomedical engineering. Papers range from engineering development in methods and techniques with biomedical applications to experimental and clinical investigations with engineering contributions.
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