[正规论文]EP-CapsNet:基于初始化模块的电泳二元分类扩展胶囊网络

Elizabeth Tobing, A. Murtaza, Keejun Han, M. Yi
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引用次数: 3

摘要

电泳(EP)测试根据蛋白质成分的密度分离蛋白质成分。该测试显示的模式大多显示非常接近的近似值,这使得很难在短时间内检查测试结果,因为它有许多模式的变化,并且需要大量的知识来准确地辨别它们。为了帮助临床检查人员节省时间并产生一致的结果,开发了一种针对EP图形图像优化的新深度学习模型。胶囊网络是一种最先进的深度学习模型,本研究扩展了最近在胶囊网络上的工作,旨在开发一种性能最佳的模型,用于分类异常和正常电泳模式。我们没有从图像中提取特征,而是使用整个幻灯片图像作为分类器的输入。本研究使用39,484张电泳二维图图像,利用胶囊网络作为深度学习架构的基础,对未经数据增强的图像进行学习。配方模型比较了许多性能指标,包括准确性,敏感性和特异性。总体而言,研究结果表明,我们提出的架构EP-CapsNet结合了胶囊网络和谷歌的初始模块,是表现最好的模型,在几乎所有的比较中都优于基线和替代模型。
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[Regular Paper] EP-CapsNet: Extending Capsule Network with Inception Module for Electrophoresis Binary Classification
Electrophoresis (EP) test separates protein components based on their density. Patterns exhibited by this test mostly show very close approximation, making it difficult to examine test results within a short amount of time as it has many variations of patterns and requires a significant amount of knowledge to discern them accurately. To help clinical examiners save time and produce consistent results, a new deeplearning model optimized for EP graphic images was developed. Extending recent work on capsule network, which is a stateof- the-art deep learning model, this study was carried out to develop a best-performing model in classifying abnormal and normal electrophoresis patterns. Instead of extracting features from the image, we used the whole slide image as an input to the classifier. This study used 39,484 electrophoresis 2D graph images and utilized capsule network as the foundation of the deep learning architecture to learn the images without data augmentation. The formulated models were compared for a multitude of performance metrics including accuracy, sensitivity, and specificity. Overall, the study results show that our proposed architecture EP-CapsNet, which combines capsule network with Google’s inception module, is the best performing model, outperforming the baseline and alternative models in almost all comparisons.
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