显微镜图像分析的迭代集成转换学习

T. Shi, Longshi Wu, Changhong Zhong, Ruixuan Wang, Hongmei Liu
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引用次数: 0

摘要

在自动组织病理学和显微图像分析中,由于患者水平的高度可变性,基于一组患者的图像训练的模型可能在另一组患者的图像上表现不佳。为了克服这个问题,在转换学习和集成学习的激励下,我们提出了一个迭代框架,使用测试数据的伪标签来训练集成转换模型。在每次迭代中,首先将训练集与随机选取的部分具有较高预测置信度的测试数据相结合,训练出若干个独立的模型,然后进行集合,预测下一次迭代的测试集标签。这样可以将测试集中的潜在信息暴露给模型,使模型可以直接从测试数据中学习。对白细胞癌显微图像集和乳腺组织病理学图像集的实验评估表明,该方法明显优于传统的集成模型。
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Iterative Ensemble Transductive Learning for Microscopy Image Analysis
In automatic histopathology and microscopy image analysis, due to high patient-level variability, the model trained based on the images from a set of patients may not perform well on the images from another set of patients. To overcome this issue, motivated by transductive learning and ensemble learning, we propose an iterative framework to train ensemble transductive models using pseudo-labels of test data. In each iteration, a number of individual models are first trained by combining the training set with part of randomly selected test data which have high prediction confidence, and then ensembled to predict the labels of test set for the next iteration. In this way, the latent information in test set would be exposed to the model such that the model can directly learn from the test data. Experimental evaluation on the white blood cancer microscopic image set and the breast histopathology image set shows that the proposed approach significantly outperforms the traditional ensemble models.
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