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Simultaneous feature extraction and dictionary learning using deep learning architectures for characterization of images of heterogeneous tissue samples

机译:使用深度学习架构同时进行特征提取和字典学习,以表征异质组织样本的图像

摘要

Apparatus, methods, and computer-readable media are provided for simultaneous feature extraction and dictionary learning from heterogeneous tissue images, without the need of prior local labeling. A convolutional autoencoder is adapted and enhanced to jointly learn a feature extraction algorithm and a dictionary of representative atoms. While training the autoencoder an image patch is tiled in sub-patches and only the highest activation value per sub-patch is kept. Thus, only a subset of spatially constrained values per patch is used for reconstruction. The deconvolutional filters are the dictionary elements, and only a deconvolution layer is used for these elements. Embodiments described herein may be provided for use in models for representing local tissue heterogeneity for better disease progression understanding and thus treating, diagnosing, and/or predicting the occurrence (e.g., recurrence) of one or more medical conditions such as, for example, cancer or other types of disease.
机译:提供了用于从异质组织图像中同时进行特征提取和字典学习的设备,方法和计算机可读介质,而无需事先进行局部标记。卷积自动编码器经过修改和增强,可以共同学习特征提取算法和代表性原子字典。在训练自动编码器时,图像补丁会平铺在子补丁中,并且每个子补丁只会保留最高的激活值。因此,每个补丁仅空间约束值的子集用于重建。反卷积滤波器是字典元素,并且仅反卷积层用于这些元素。可以提供本文描述的实施例以用于表示局部组织异质性的模型中,以更好地理解疾病进展,从而治疗,诊断和/或预测一种或多种医学病症例如癌症的发生(例如复发)。或其他类型的疾病。

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