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DeepInsight: A methodology to transform a non-image data to an image for convolution neural network architecture

机译:DeepInsight:一种方法,用于将非图像数据转换为卷积神经网络架构的图像

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It is critical, but difficult, to catch the small variation in genomic or other kinds of data that differentiates phenotypes or categories. A plethora of data is available, but the information from its genes or elements is spread over arbitrarily, making it challenging to extract relevant details for identification. However, an arrangement of similar genes into clusters makes these differences more accessible and allows for robust identification of hidden mechanisms (e.g. pathways) than dealing with elements individually. Here we propose, DeepInsight, which converts non-image samples into a well-organized image-form. Thereby, the power of convolution neural network (CNN), including GPU utilization, can be realized for non-image samples. Furthermore, DeepInsight enables feature extraction through the application of CNN for non-image samples to seize imperative information and shown promising results. To our knowledge, this is the first work to apply CNN simultaneously on different kinds of non-image datasets: RNA-seq, vowels, text, and artificial.
机译:这是至关重要的,但困难,捕获基因组或其他种类的数据的小变异,这些数据有区分表型或类别。可提供多种数据,但来自其基因或元素的信息是任意分布的,使得提取有关识别的相关细节挑战。然而,将相似基因的布置成簇使得这些差异更加可访问,并且允许稳定地识别隐藏机制(例如途径)而不是单独处理元素。在这里,我们提出了深度,它将非图像样本转换为一个有序的图像形式。因此,可以实现卷积神经网络(CNN)的力量,包括GPU利用,用于非图像样本。此外,DeepInsight通过应用CNN来实现特征提取,用于非图像样本,以抓住命令信息并显示有前途的结果。为了我们的知识,这是在不同种类的非图像数据集上同时应用CNN的第一项工作:RNA-SEQ,元音,文本和人造。

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