论文标题
深入的强化学习以检测MRI上的脑病变:概念验证的应用在医学图像中学习
Deep reinforcement learning to detect brain lesions on MRI: a proof-of-concept application of reinforcement learning to medical images
论文作者
论文摘要
目的:放射学的AI主要受到阻碍:1)需要大量注释的数据集。 2)将部署限制为新扫描仪 /机构的非能力性。 3)解释性和解释性不足。我们认为,强大和直观的算法可以在小型数据集上训练,可以通过强大和直观的算法来解决这三个缺点。据我们所知,增强学习并未直接应用于放射学图像的计算机视觉任务。在这项原则工作中,我们训练一个深厚的增强学习网络以预测脑肿瘤的位置。 材料和方法:使用Brats脑肿瘤成像数据库,我们在70个对比后T1加权的2D图像切片上训练了一个深Q网络。我们与图像探索一起进行了奖励和惩罚,旨在定位病变。为了与受监督的深度学习进行比较,我们在相同的70张图像上培训了一个关键点检测卷积神经网络。我们将这两种方法应用于单独的30个图像测试集。 结果:加强学习预测在培训期间始终改善,而受监督深度学习的预测很快就会分歧。强化学习预测测试的精度为85%,而监督深网的精度约为7%。 结论:强化学习预测了高精度的病变,这对于如此小的训练组是前所未有的。我们认为,通过更多的临床医生驱动的研究,最终朝着真正的临床适用性,增强学习可以超越受监督深度学习的固有局限性AI。
Purpose: AI in radiology is hindered chiefly by: 1) Requiring large annotated data sets. 2) Non-generalizability that limits deployment to new scanners / institutions. And 3) Inadequate explainability and interpretability. We believe that reinforcement learning can address all three shortcomings, with robust and intuitive algorithms trainable on small datasets. To the best of our knowledge, reinforcement learning has not been directly applied to computer vision tasks for radiological images. In this proof-of-principle work, we train a deep reinforcement learning network to predict brain tumor location. Materials and Methods: Using the BraTS brain tumor imaging database, we trained a deep Q network on 70 post-contrast T1-weighted 2D image slices. We did so in concert with image exploration, with rewards and punishments designed to localize lesions. To compare with supervised deep learning, we trained a keypoint detection convolutional neural network on the same 70 images. We applied both approaches to a separate 30 image testing set. Results: Reinforcement learning predictions consistently improved during training, whereas those of supervised deep learning quickly diverged. Reinforcement learning predicted testing set lesion locations with 85% accuracy, compared to roughly 7% accuracy for the supervised deep network. Conclusion: Reinforcement learning predicted lesions with high accuracy, which is unprecedented for such a small training set. We believe that reinforcement learning can propel radiology AI well past the inherent limitations of supervised deep learning, with more clinician-driven research and finally toward true clinical applicability.