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Evaluation of Infants with Spinal Muscular Atrophy Type-Ⅰ Using Convolutional Neural Networks

机译:利用卷积神经网络评价脊髓肌萎缩型Ⅰ的评估

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Spinal Muscular Atrophy is the most common genetic cause of infant death. Due to its severity, there is a need for methods for automated estimation of disease progression. In this paper we propose a Convolutional-Neural-Network (CNN) model to estimate disease progression during infants' natural behavior. With the proposed methodology, we were able to predict each child's score on current behavior-based clinical exams with an average per-subject error of 6.96 out of 72 points (<10% difference), using 30-second videos in leave-one-subject-out-cross-validation setting. When simple statistics were used over 30-second video-segments to estimate a score for longer videos, we obtained an average error of 5.95 (~8% error rate). By showing promising results on a small dataset (N = 70, 2-minute samples, which were handled as 1487, 30-second video segments), our methodology demonstrates that it is possible to benefit from CNNs on small datasets by proper design and data handling choices.
机译:脊髓肌肉萎缩是婴儿死亡最常见的遗传原因。由于其严重程度,需要用于自动估计疾病进展的方法。在本文中,我们提出了一种卷积 - 神经网络(CNN)模型来估计婴儿的自然行为中的疾病进展。通过提出的方法,我们能够预测每个孩子在当前行为的临床考试中的得分,平均每对象误差为72分(<10%),使用30秒的视频主题外验证设置。当使用超过30秒的视频段来估计较长视频的分数的简单统计数据时,我们获得了5.95(〜8%的错误率)的平均误差。通过在小型数据集上显示有希望的结果(将其处理为1487,30秒视频段的N = 70,2分钟样本),我们的方法表明,通过适当的设计和数据,可以从小型数据集上受益于CNN处理选择。

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