连接ASD分析框架的研究进展

B. Roopa, R. Manjunatha Prasad
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引用次数: 2

摘要

自闭症谱系障碍(ASD)是一种高度复杂的神经发育障碍,其日益增加的患病率为68人中有1人(疾病控制和预防中心的调查)。自闭症谱系障碍有很多影响因素。即使在今天,根本原因也不为人所知。但自闭症研究的现状是,由于自闭症风险基因显示出大脑结构和功能的差异以及自闭症的行为特征。一些关键的测量工具是多方面的指标,可以帮助诊断自闭症,比如:生理检测(自闭症个体的情绪评估),使用4种生理信号,即心电图(ECG)、皮肤电导(SC)、呼吸和皮肤温度。结果是通过三个量表来评定的:唤醒、效价和支配。该方法无创且经济。2. 磁共振成像(MRI)和功能磁共振成像(f-MRI)利用非侵入性的方法来探索大脑网络的连通性,以绘制大脑区域相互作用的顺序模式,从而更好地了解病理。3.最常用的机器学习分类器是支持向量机(SVM)算法。鲁棒支持向量机(单一支持向量机的变体)在研究进展中的进一步应用,提高了对照组(CG)诊断ASD的准确性。4. 最后但并非最不重要的是,深度学习模型有助于建立深度分类精度的模型。早期准确诊断ASD的强度水平,选择正确的治疗方案,从而帮助自闭症个体接受有价值的治疗或其他相关治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Concatenating framework in ASD analysis towards research progress
Autism Spectrum Disorder (ASD) is highly complicated neurodevelopment disorder whose increasing prevalence is 1 in 68 individuals (survey of Centers for Disease Control and Preventions). There are various influential’s for ASD. The root cause is not known predominantly even today. But the state of the art of autism in research is, due to autism risk genes showcasing structural & functional brain differences and behavioral features of ASD. Some of the key measuring tools which are multifaceted indicators help to diagnose autism are like: 1.Physiological Detection (emotion assessment from autistic individual), which uses 4 Physiological signals namely electrocardiogram (ECG), skin conductance (SC), respiration and skin temperature. Outcomes were addressed by rating on three scales: arousal, valance and dominance. This approach is non invasive and economical. 2. Exploring the network connectivity in brain, the magnetic resonance imaging (MRI) and functional magnetic resonance imaging (f-MRI) fetches a non invasive approach to map the ordinal patterns of interaction in brain regions to better understand the pathology. 3. Most common machine learning classifier applied to diagnose ASD is Support vector machine (SVM) algorithm. The further implication of Robust SVM (variant of the single SVM) in research progress has improved the accuracy of diagnosing ASD from control group (CG). 4. Last but not the least Deep learning models helps in building model of profound classification accuracy. Early and accurate diagnosis of ASD intensity level leading to selection of correct treatment procedures and thus helps the autistic individual to undergo worth therapies or other relevant treatments.
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