Early and Accurate Diagnosis of a Neurological Disorder Epilepsy Using Machine Learning Techniques

S. Rangaswamy, Jinka Rakesh, Perla Leela charan, Deeptha Giridhar
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引用次数: 1

Abstract

An epileptic seizure is a type of seizure induced by aberrant brain activity caused by an epileptic condition, which is a brain Central Nervous System disorder (CNS). CNSs are relatively prevalent and include a wide range of symptoms, including loss of awareness, and strange behaviour. These symptoms frequently result in injuries as a result of walking imbalance, tongue biting, and hearing loss. For many researchers, detecting a prospective seizure in advance has been a difficult undertaking. In this research work we have used non-imaging data and applied supervised learning algorithms to determine the classification of epilepsy and try to improve the efficiency of the model, compared to the existing ones. Random Forest algorithm was found to have highest accuracy compared to other machine learning models. The paper can be helpful in diagnosing high-risk brain diseases and predicting diseases such as Alzheimer's with symptoms challenging to predict and diseases with overlapping symptoms and overlapping symptoms and attribute values. The scope of the research work can be further extended to determine at which stage the epilepsy is present in a patient, in order to provide a correct diagnosis and medical treatment.
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使用机器学习技术早期准确诊断神经系统疾病癫痫
癫痫发作是由癫痫状态引起的异常大脑活动引起的一种癫痫发作,是一种大脑中枢神经系统疾病(CNS)。神经性麻痹相对普遍,症状范围广泛,包括意识丧失和行为怪异。这些症状通常会导致行走不平衡、咬舌头和听力丧失。对于许多研究人员来说,提前发现潜在的癫痫发作是一项艰巨的任务。在本研究中,我们使用非成像数据,并应用监督学习算法来确定癫痫的分类,与现有的模型相比,我们试图提高模型的效率。与其他机器学习模型相比,随机森林算法具有最高的准确性。该方法可以帮助诊断高危脑疾病,预测阿尔茨海默病等症状难以预测的疾病,以及症状重叠、症状与属性值重叠的疾病。研究工作的范围可以进一步扩大,以确定患者出现癫痫的哪个阶段,以便提供正确的诊断和医疗。
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