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Ensemble of Deep Convolutional Neural Networks with Monte Carlo Dropout Sampling for Automated Image Segmentation Quality Control and Robust Deep Learning Using Small Datasets

机译:深度卷积神经网络与蒙特卡罗丢失采样集成用于自动图像分割质量控制和使用小数据集的鲁棒深度学习

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Recent progress on deep learning (DL)-based medical image segmentation can enable fast extraction of clinical parameters for efficient clinical workflows. However, current DL methods can still fail and require manual visual inspection of outputs, which is time-consuming and diminishes the advantages of automation. For clinical applications, it is essential to develop DL approaches that can not only perform accurate segmentation, but also predict the segmentation quality and flag poor-quality results to avoid errors in diagnosis. To achieve robust performance, DL-based methods often require large datasets, which are not always readily available. It would be highly desirable to be able to train DL models using only small datasets, but this requires a quality prediction method to ensure reliability. We present a novel segmentation framework utilizing an ensemble of deep convolutional neural networks with Monte Carlo sampling. The proposed framework merges the advantages of both state-of-the-art deep ensembles and Bayesian approaches, to provide robust segmentation with inherent quality control. We successfully developed and tested this framework using just a small MRI dataset of 45 subjects. The framework obtained high mean Dice similarity coefficients (DSC) for segmentation of the endocardium (0.922) and the epicardium (0.942); importantly, segmentation DSC can be accurately predicted with low mean absolute errors (≤0.035), in the absence of the manual ground truth. Furthermore, binary classification of segmentation quality achieved a near-perfect accuracy of 99%. The proposed framework can enable fast and reliable medical image analysis with accurate quality control, and training of DL-based methods using even small datasets.
机译:基于深度学习(DL)的医学图像分割的最新进展可以快速提取临床参数,以实现高效的临床工作流程。然而,当前的DL方法仍然可能失败,并且需要手动目视检查输出,这非常耗时,降低了自动化的优势。对于临床应用来说,开发DL方法不仅可以执行精确的分割,而且还可以预测分割质量并标记低质量的结果,以避免诊断错误,这一点至关重要。为了实现健壮的性能,基于DL的方法通常需要大数据集,而这些数据集并不总是现成可用的。只使用小数据集训练DL模型是非常理想的,但这需要一种质量预测方法来确保可靠性。我们提出了一种新的分割框架,利用蒙特卡罗采样的深度卷积神经网络集成。该框架融合了最先进的深度集成和贝叶斯方法的优点,提供了具有内在质量控制的鲁棒分割。我们仅使用45名受试者的小型MRI数据集成功开发并测试了该框架。该框架获得了较高的平均骰子相似系数(DSC),用于心内膜(0.922)和心外膜(0.942)的分割;重要的是,分割DSC可以用较低的平均绝对误差准确预测(≤0.035),在没有手册基础真相的情况下。此外,分割质量的二元分类达到了接近完美的99%的准确率。该框架可以实现快速、可靠的医学图像分析,并具有精确的质量控制,甚至可以使用较小的数据集来训练基于DL的方法。

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