论文标题
深度互动学习:一种基于深度学习的骨肉瘤治疗响应评估的有效标签方法
Deep Interactive Learning: An Efficient Labeling Approach for Deep Learning-Based Osteosarcoma Treatment Response Assessment
论文作者
论文摘要
骨肉瘤是最常见的恶性原发性骨肿瘤。标准治疗包括术前化疗,然后进行手术切除。通过坏死肿瘤面积与整体肿瘤区域的比率测量的治疗的反应是总体生存的已知预后因素。目前,病理学家通过观察显微镜下的载玻片,这是由病理学家手动进行的,这可能是由于其主观性质而无法再现的。卷积神经网络(CNN)可用于在整个幻灯片图像上自动分割可行和坏死肿瘤。一个用于监督学习的瓶颈是,培训需要大量准确的注释,这是一个耗时且昂贵的过程。在本文中,我们将深度互动学习(DIL)描述为用于培训CNN的有效标签方法。完成初始标记步骤后,注释者只需要从先前的分割预测中纠正标记的区域,即可改善CNN模型,直到实现令人满意的预测。我们的实验表明,我们仅使用DIL只有7个小时的注释训练的CNN模型可以成功估计非标准化手动手术病理学任务的预期观察者间变化率中坏死的比率。
Osteosarcoma is the most common malignant primary bone tumor. Standard treatment includes pre-operative chemotherapy followed by surgical resection. The response to treatment as measured by ratio of necrotic tumor area to overall tumor area is a known prognostic factor for overall survival. This assessment is currently done manually by pathologists by looking at glass slides under the microscope which may not be reproducible due to its subjective nature. Convolutional neural networks (CNNs) can be used for automated segmentation of viable and necrotic tumor on osteosarcoma whole slide images. One bottleneck for supervised learning is that large amounts of accurate annotations are required for training which is a time-consuming and expensive process. In this paper, we describe Deep Interactive Learning (DIaL) as an efficient labeling approach for training CNNs. After an initial labeling step is done, annotators only need to correct mislabeled regions from previous segmentation predictions to improve the CNN model until the satisfactory predictions are achieved. Our experiments show that our CNN model trained by only 7 hours of annotation using DIaL can successfully estimate ratios of necrosis within expected inter-observer variation rate for non-standardized manual surgical pathology task.