基于迭代深度学习的人在环无偏立体学

Saeed S. Alahmari, Dmitry Goldgof, L. Hall, P. Dave, H. A. Phoulady, P. Mouton
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引用次数: 13

摘要

在构建基于机器学习的模型时,缺乏足够的标记数据是一个主要问题,因为手动标注(标记)容易出错、昂贵、繁琐且耗时。在本文中,我们介绍了一种基于迭代深度学习的方法来改进基于无偏立体学的细胞分割和计数,该方法应用于扩展景深(EDF)图像的感兴趣区域。该方法使用一种称为自适应分割算法(ASA)的现有机器学习算法,为EDF图像生成遮罩(由用户验证),以训练深度学习模型。然后使用迭代深度学习方法将新预测和接受的深度学习掩码/图像(由用户验证)馈送到深度学习模型的训练集。在基于迭代深度学习的无偏立体学过程的5次迭代后,在未见测试集上无偏立体学细胞计数的错误率从约3%降至不到1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Iterative Deep Learning Based Unbiased Stereology with Human-in-the-Loop
Lack of enough labeled data is a major problem in building machine learning based models when the manual annotation (labeling) is error-prone, expensive, tedious, and time-consuming. In this paper, we introduce an iterative deep learning based method to improve segmentation and counting of cells based on unbiased stereology applied to regions of interest of extended depth of field (EDF) images. This method uses an existing machine learning algorithm called the adaptive segmentation algorithm (ASA) to generate masks (verified by a user) for EDF images to train deep learning models. Then an iterative deep learning approach is used to feed newly predicted and accepted deep learning masks/images (verified by a user) to the training set of the deep learning model. The error rate in unbiased stereology count of cells on an unseen test set reduced from about 3 % to less than 1 % after 5 iterations of the iterative deep learning based unbiased stereology process.
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