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Fuzzy Model for Detection and Estimation of the Degree of Autism Spectrum Disorder

机译:自闭症谱系障碍程度的检测与估计模糊模型

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Early detection of autism spectrum disorder (ASD) is of great significance for early intervention. Besides, knowing the degree of severity in ASD and how it changes with the intervention is imperative for the treatment process. This study proposes Takagi- Sugeno-Kang (TSK) fuzzy modeling approach that is based on subtractive clustering to classify autism spectrum disorder and to estimate the degree of prognosis. The study has been carried out using Electroencephalography (EEG) signal on two groups of control and ASD children age-matched between seven to nine years old. EEG signals are quantized to temporal-time domain using Short Time Frequency Transformation (STFT). Spectrum energy is extracted as features for alpha band. The proposed system is modeled to estimate the degree in which subject is autistic, normal or uncertain. The results show accuracy in range (70-97) % when using fuzzy model .Also this system is modeled to generate crisp decision; the results show accuracy in the range (80-100) %. The proposed model can be adapted to help psychiatrist for diagnosis and intervention process.
机译:早期发现自闭症谱系障碍(ASD)对于早期干预具有重要意义。此外,了解ASD的严重程度及其随着干预的变化是治疗过程中必不可少的。本研究提出了基于减法聚类的Takagi-Sugeno-Kang(TSK)模糊建模方法,以对自闭症谱系障碍进行分类并评估预后程度。该研究是使用脑电图(EEG)信号对年龄在7至9岁之间的两组对照和ASD儿童进行的。使用短时频率变换(STFT)将EEG信号量化到时域。频谱能量被提取为Alpha波段的特征。拟议的系统被建模以估计受试者自闭,正常或不确定的程度。结果表明,使用模糊模型时,精度在(70-97)%范围内。结果表明准确度在(80-100)%范围内。提出的模型可以进行调整,以帮助精神科医生进行诊断和干预过程。

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