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Soft Tissue Sarcoma Co-segmentation in Combined MRI and PET/CT Data

机译:组合MRI和PET / CT数据中的软组织SARCOMA共分割

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Tumor segmentation in multimodal medical images has seen a growing trend towards deep learning based methods. Typically, studies dealing with this topic fuse multimodal image data to improve the tumor segmentation contour for a single imaging modality. However, they do not take into account that tumor characteristics are emphasized differently by each modality, which affects the tumor delineation. Thus, the tumor segmentation is modality- and task-dependent. This is especially the case for soft tissue sarcomas, where, due to necrotic tumor tissue, the segmentation differs vastly. Closing this gap, we develop a modality-specific sarcoma segmentation model that utilizes multimodal image data to improve the tumor delineation on each individual modality. We propose a simultaneous co-segmentation method, which enables multimodal feature learning through modality-specific encoder and decoder branches, and the use of resource-efficient densely connected convolutional layers. We further conduct experiments to analyze how different input modalities and encoder-decoder fusion strategies affect the segmentation result. We demonstrate the effectiveness of our approach on public soft tissue sarcoma data, which comprises MRI (Tl and T2 sequence) and PET/CT scans. The results show that our multimodal co-segmentation model provides better modality-specific tumor segmentation than models using only the PET or MRI (Tl and T2) scan as input.
机译:多式化医学图像中的肿瘤分割已经看到了对基于深度学习的方法的趋势。通常,处理该主题的研究熔化多峰图像数据以改善单个成像模型的肿瘤分割轮廓。然而,他们没有考虑到每种偶数不同地强调肿瘤特性,这会影响肿瘤描绘。因此,肿瘤分割是模态和任务依赖性。尤其是软组织肉瘤的情况,其中,由于坏死的肿瘤组织,分割非常不同。关闭此差距,我们开发了一种模态特定的SARCOMA分段模型,该模型利用多模式图像数据来改善肿瘤描绘对每个单独的方式。我们提出了一种同时的共分割方法,它能够通过模态的编码器和解码器分支来学习多模式特征,以及使用资源有效的密集连接卷积层。我们进一步开展实验,以分析不同的输入方式和编码器 - 解码器融合策略如何影响分割结果。我们展示了我们对公共软组织SARCOMA数据的方法的有效性,包括MRI(TL和T2序列)和PET / CT扫描。结果表明,我们的多模式共分割模型提供比仅使用PET或MRI(TL和T2)扫描的模型为更好的模型特异性肿瘤分段。

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