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首页> 外文期刊>IEEE Transactions on Medical Imaging >AggNet: Deep Learning From Crowds for Mitosis Detection in Breast Cancer Histology Images
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AggNet: Deep Learning From Crowds for Mitosis Detection in Breast Cancer Histology Images

机译:AggNet:从人群中进行深度学习以检测乳腺癌组织学图像中的有丝分裂

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摘要

The lack of publicly available ground-truth data has been identified as the major challenge for transferring recent developments in deep learning to the biomedical imaging domain. Though crowdsourcing has enabled annotation of large scale databases for real world images, its application for biomedical purposes requires a deeper understanding and hence, more precise definition of the actual annotation task. The fact that expert tasks are being outsourced to non-expert users may lead to noisy annotations introducing disagreement between users. Despite being a valuable resource for learning annotation models from crowdsourcing, conventional machine-learning methods may have difficulties dealing with noisy annotations during training. In this manuscript, we present a new concept for learning from crowds that handle data aggregation directly as part of the learning process of the convolutional neural network (CNN) via additional crowdsourcing layer (AggNet). Besides, we present an experimental study on learning from crowds designed to answer the following questions. 1) Can deep CNN be trained with data collected from crowdsourcing? 2) How to adapt the CNN to train on multiple types of annotation datasets (ground truth and crowd-based)? 3) How does the choice of annotation and aggregation affect the accuracy? Our experimental setup involved Annot8, a self-implemented web-platform based on Crowdflower API realizing image annotation tasks for a publicly available biomedical image database. Our results give valuable insights into the functionality of deep CNN learning from crowd annotations and prove the necessity of data aggregation integration.
机译:缺乏公开可用的真实数据已经被确定为将深度学习的最新发展转移到生物医学成像领域的主要挑战。尽管众包已启用对真实世界图像的大规模数据库的注释,但其在生物医学中的应用需要更深入的了解,因此需要对实际注释任务进行更精确的定义。专家任务被外包给非专家用户的事实可能会导致嘈杂的注释,从而导致用户之间的分歧。尽管是从众包中学习注释模型的宝贵资源,但是传统的机器学习方法在训练过程中可能难以处理嘈杂的注释。在本手稿中,我们提出了一个新的概念,供人群学习,该人群通过附加的众包层(AggNet)直接在卷积神经网络(CNN)的学习过程中直接处理数据聚合。此外,我们提出了一项旨在向人群学习的实验性研究,旨在回答以下问题。 1)是否可以使用从众包中收集的数据来训练深层的CNN? 2)如何使CNN适应多种类型的注释数据集(地面事实数据和基于人群的数据)的训练? 3)注释和聚合的选择如何影响准确性?我们的实验设置涉及Annot8,这是一个基于Crowdflower API的自我实现的网络平台,可为可公开获得的生物医学图像数据库实现图像注释任务。我们的结果为从人群批注中深度CNN学习的功能提供了宝贵的见解,并证明了数据聚合集成的必要性。

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