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Unsupervised Learning as a Complement to Convolutional Neural Network Classification in the Analysis of Saccadic Eye Movement in Spino-Cerebellar Ataxia Type 2

机译:无监督学习作为对卷积神经网络分类的补充,以分析脊髓小脑性共济失调2型眼跳运动

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This paper aims at assessing spino-cerebellar type 2 ataxia by classifying electrooculography records into registers corresponding to healthy, presymptomatic and ill individuals. The primary used technique is the convolutional neural network applied to the time series of eye movements, called saccades. The problem is exceptionally hard, though, because the recorded saccadic movements for presymptomatic cases often do not substantially differ from those of healthy individuals. Precisely this distinction is of the utmost clinical importance, since early intervention on presymptomatic patients can ameliorate symptoms or at least slow their progression. Yet, each register contains a number of saccades that, although not consistent with the current label, have not been considered indicative of another class by the examining physicians. As a consequence, an unsupervised learning mechanism may be more suitable to handle this form of misclassification. Thus, our proposal introduces the k-means approach and the SOM method, as complementary techniques to analyse the time series. The three techniques operating in tandem lead to a well performing solution to this diagnosis problem.
机译:本文旨在通过将眼电图记录分类为与健康,症状前和患病个体相对应的登记簿来评估2型脊髓-小脑共济失调。主要使用的技术是应用于眼睛运动的时间序列的卷积神经网络,称为扫视。但是,这个问题异常困难,因为症状前病例的有记录的跳音运动通常与健康个体没有实质性差异。准确地说,这种区别具有最大的临床意义,因为对有症状的患者进行早期干预可以缓解症状或至少减慢其进展。但是,每个登记册都包含许多扫视,尽管与当前标签不一致,但检查医师并未将其视为是另一种指示。结果,无监督的学习机制可能更适合处理这种形式的错误分类。因此,我们的建议引入了k均值方法和SOM方法,作为分析时间序列的补充技术。三种技术串联运行可为该诊断问题提供性能良好的解决方案。

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