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MaligNet: Semisupervised Learning for Bone Lesion Instance Segmentation Using Bone Scintigraphy

机译:恶性:使用骨闪烁图的骨病变实例分割学习学习

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One challenge in applying deep learning to medical imaging is the lack of labeled data. Although large amounts of clinical data are available, acquiring labeled image data is difficult, especially for bone scintigraphy (i.e., 2D bone imaging) images. Bone scintigraphy images are generally noisy, and ground-truth or gold standard information from surgical or pathological reports may not be available. We propose a novel neural network model that can segment abnormal hotspots and classify bone cancer metastases in the chest area in a semisupervised manner. Our proposed model, called MaligNet, is an instance segmentation model that incorporates ladder networks to harness both labeled and unlabeled data. Unlike deep learning segmentation models that classify each instance independently, MaligNet utilizes global information via an additional connection from the core network. To evaluate the performance of our model, we created a dataset for bone lesion instance segmentation using labeled and unlabeled example data from 544 and 9,280 patients, respectively. Our proposed model achieved mean precision, mean sensitivity, and mean F1-score of 0.852, 0.856, and 0.848, respectively, and outperformed the baseline mask region-based convolutional neural network (Mask R-CNN) by 3.92%. Further analysis showed that incorporating global information also helps the model classify specific instances that require information from other regions. On the metastasis classification task, our model achieves a sensitivity of 0.657 and a specificity of 0.857, demonstrating its great potential for automated diagnosis using bone scintigraphy in clinical practice.
机译:对医学成像应用深度学习的一个挑战是缺乏标记数据。尽管有大量的临床数据可用,但获取标记的图像数据是困难的,特别是对于骨闪烁图(即2D骨成像)图像。骨闪烁图像通常是嘈杂的,并且可能无法获得外科或病理报告的地面真理或金标准信息。我们提出了一种新型神经网络模型,可以以半熟的方式对异常热点进行异常热点并分类胸部区域中的骨癌转移。我们所提出的模型,称为Malignet,是一个实例分段模型,它包含梯形网络来利用标记和未标记的数据。与独立分类每个实例的深度学习分段模型不同,Malignet通过来自核心网络的附加连接使用全局信息。为了评估我们模型的性能,我们将分别使用来自544和9,280名患者的标记和未标记的示例数据创建了一个用于骨骼病变实例分段的数据集。我们所提出的模型分别实现了平均精度,平均敏感性,平均敏感性,平均敏感度为0.852,0.856和0.848,并且优于基于基于基于基于基线掩模区的卷积神经网络(掩模R-CNN)的3.92%。进一步的分析表明,结合全局信息还有助于模型对需要来自其他地区信息的特定实例。在转移分类任务中,我们的模型实现了0.657的灵敏度,特异性为0.857,表明使用临床实践中的骨闪烁术自动诊断的巨大潜力。

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