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Multi-Task Pre-Training of Deep Neural Networks for Digital Pathology

机译:用于数字病理学深神经网络的多任务预培训

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摘要

In this work, we investigate multi-task learning as a way of pre-training models for classification tasks in digital pathology. It is motivated by the fact that many small and medium-size datasets have been released by the community over the years whereas there is no large scale dataset similar to ImageNet in the domain. We first assemble and transform many digital pathology datasets into a pool of 22 classification tasks and almost 900k images. Then, we propose a simple architecture and training scheme for creating a transferable model and a robust evaluation and selection protocol in order to evaluate our method. Depending on the target task, we show that our models used as feature extractors either improve significantly over ImageNet pre-trained models or provide comparable performance. Fine-tuning improves performance over feature extraction and is able to recover the lack of specificity of ImageNet features, as both pre-training sources yield comparable performance.
机译:在这项工作中,我们调查多任务学习作为数字病理学中分类任务的预训练模型的一种方式。这是由于多年来社区释放了许多中小型数据集的动机,而没有类似于域中的想象人的大规模数据集。我们首先将许多数字病理数据集组装在一起,进入22个分类任务和近900K图像的池中。然后,我们提出了一种简单的体系结构和培训方案,用于创建可转移模型和强大的评估和选择协议,以便评估我们的方法。根据目标任务,我们表明,我们的模型用作特征提取器的模型在想象的预训练模型上显着改进或提供可比性。微调改善了特征提取的性能,并且能够恢复缺乏想象成特征的特异性,因为训练前的来源都会产生相当的性能。

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