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Multimodal MRI-based classification of migraine: using deep learning convolutional neural network

机译:基于多模式MRI的偏头痛分类:使用深度学习卷积神经网络

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Recently, deep learning technologies have rapidly expanded into medical image analysis, including both disease detection and classification. As far as we know, migraine is a disabling and common neurological disorder, typically characterized by unilateral, throbbing and pulsating headaches. Unfortunately, a large number of migraineurs do not receive the accurate diagnosis when using traditional diagnostic criteria based on the guidelines of the International Headache Society. As such, there is substantial interest in developing automated methods to assist in the diagnosis of migraine. To the best of our knowledge, no studies have evaluated the potential of deep learning technologies in assisting with the classification of migraine patients. Here, we used deep learning methods in combination with three functional measures (the amplitude of low-frequency fluctuations, regional homogeneity and regional functional correlation strength) based on rs-fMRI data to distinguish not only between migraineurs and healthy controls, but also between the two subtypes of migraine. We employed 21 migraine patients without aura, 15 migraineurs with aura, and 28 healthy controls. Compared with the traditional support vector machine classifier, which has an accuracy of 83.67%, our Inception module-based convolutional neural network approach showed a significant improvement in classification output (over 86.18%). Our data also indicate that the Inception module-based CNN performs better than the AlexNet-based CNN (Inception module-based CNN reached an accuracy of 99.25%). Finally, we also found that regional functional correlation strength (RFCS) could be regarded as the optimum input out of the three indices (ALFF, ReHo, RFCS). Overall, our study shows that combining the three functional measures of rs-fMRI with deep learning classification is a powerful method to distinguish between migraineurs and healthy individuals. Our data also highlight that deep learning-based frameworks could be used to develop more complicated models or systems to aid in clinical decision making in the future.
机译:最近,深度学习技术已迅速扩展到医学图像分析,包括疾病检测和分类。据我们所知,偏头痛是一种致残性且常见的神经系统疾病,通常表现为单侧,th动和搏动性头痛。不幸的是,当使用基于国际头痛协会指南的传统诊断标准时,许多移民都无法获得准确的诊断。因此,人们非常关注开发自动化方法以帮助诊断偏头痛。据我们所知,尚无研究评估深度学习技术在协助偏头痛患者分类中的潜力。在这里,我们基于rs-fMRI数据将深度学习方法与三种功能量度(低频波动幅度,区域同质性和区域功能相关强度)结合使用,不仅区分了偏头痛者和健康对照者,还区分了偏头痛患者和健康对照者。偏头痛的两种亚型。我们雇用了21名没有先兆的偏头痛患者,15名有先兆的偏头痛患者和28名健康对照。与传统支持向量机分类器的准确度为83.67%相比,我们的基于Inception模块的卷积神经网络方法显示了分类输出的显着提高(超过86.18%)。我们的数据还表明,基于Inception模块的CNN的性能优于基于AlexNet的CNN(基于Inception模块的CNN的准确度达到99.25%)。最后,我们还发现,区域功能相关强度(RFCS)可被视为三个指标(ALFF,ReHo和RFCS)中的最佳输入。总体而言,我们的研究表明,将rs-fMRI的三种功能测量与深度学习分类相结合是区分偏头痛和健康个体的有力方法。我们的数据还强调,基于深度学习的框架可用于开发更复杂的模型或系统,以帮助将来进行临床决策。

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