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Detecting and Classifying Nuclei on a Budget

机译:检测和分类核核算

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The benefits of deep neural networks can be hard to realise in medical imaging tasks because training sample sizes are often modest. Pre-training on large data sets and subsequent transfer learning to specific tasks with limited labelled training data has proved a successful strategy in other domains. Here, we implement and test this idea for detecting and classifying nuclei in histology, important tasks that enable quantifiable characterisation of prostate cancer. We pre-train a convolutional neural network for nucleus detection on a large colon histology dataset, and examine the effects of fine-tuning this network with different amounts of prostate histology data. Results show promise for clinical translation. However, we find that transfer learning is not always a viable option when training deep neural networks for nucleus classification. As such, we also demonstrate that semi-supervised ladder networks are a suitable alternative for learning a nucleus classifier with limited data.
机译:深度神经网络的好处可能很难在医学成像任务中实现,因为训练样本尺寸通常是适度的。在大型数据集和随后的转移到具有有限标记培训数据的特定任务的后续转移,已经证明了其他域名的成功策略。在这里,我们实施并测试该想法,用于检测和分类组织学中的核,重要任务,使得能够可量化的前列腺癌表征。我们在大型结肠组织学数据集上预先列车用于核检测的核心检测,并检查微调该网络具有不同量的前列腺组织学数据的影响。结果表明临床翻译的承诺。但是,我们发现在培训核心分类的深度神经网络时,转移学习并不总是一种可行的选择。因此,我们还展示了半监督梯形网络是用于学习具有有限数据的核分类器的合适替代方案。

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