论文标题

耐力胰管导管腺癌分割,多机构多相部分宣布的CT扫描

Robust Pancreatic Ductal Adenocarcinoma Segmentation with Multi-Institutional Multi-Phase Partially-Annotated CT Scans

论文作者

Zhang, Ling, Shi, Yu, Yao, Jiawen, Bian, Yun, Cao, Kai, Jin, Dakai, Xiao, Jing, Lu, Le

论文摘要

准确和自动化的肿瘤分割非常需要,因为它具有提高计算更完整的肿瘤测量和成像生物标志物的效率和可重复性的巨大潜力,与(通常是部分)人体测量相比。这可能是实现利用医学成像的大规模临床肿瘤患者研究的唯一可行手段。深度学习方法表明,当具有大量像素级全含量全注明的肿瘤图像的训练数据集时,当某些类型的肿瘤(例如MRI成像中的脑肿瘤)提供了强大的分割性能。但是,我们面临的挑战比(非常)有限的注释是可行的,尤其是对于硬肿瘤而言。胰腺导管腺癌(PDAC)分割是最具挑战性的肿瘤分割任务之一,但对于临床需求至关重要。先前关于PDAC分割的工作仅限于静脉或静脉+动脉相CT扫描中适度的注释患者图像(N <300)。基于一个新的自学习框架,我们建议使用大量患者(N〜 = 1,000)训练PDAC分割模型,并结合带注释和未经通知的静脉或多相CT图像。伪注释是通过将两个教师模型与未经注销图像的不同PDAC分割专业相结合,并可以通过识别胰腺周围相关船只的助教模型来进一步完善。在手动和伪注释的多相图像上培训了学生模型。实验结果表明,我们提出的方法在注释图像的训练的NNUNET的强基线上提供了6.3%的骰子得分,从而实现了与放射线医生之间观察者间差异相似的性能(骰子= 0.71)。

Accurate and automated tumor segmentation is highly desired since it has the great potential to increase the efficiency and reproducibility of computing more complete tumor measurements and imaging biomarkers, comparing to (often partial) human measurements. This is probably the only viable means to enable the large-scale clinical oncology patient studies that utilize medical imaging. Deep learning approaches have shown robust segmentation performances for certain types of tumors, e.g., brain tumors in MRI imaging, when a training dataset with plenty of pixel-level fully-annotated tumor images is available. However, more than often, we are facing the challenge that only (very) limited annotations are feasible to acquire, especially for hard tumors. Pancreatic ductal adenocarcinoma (PDAC) segmentation is one of the most challenging tumor segmentation tasks, yet critically important for clinical needs. Previous work on PDAC segmentation is limited to the moderate amounts of annotated patient images (n<300) from venous or venous+arterial phase CT scans. Based on a new self-learning framework, we propose to train the PDAC segmentation model using a much larger quantity of patients (n~=1,000), with a mix of annotated and un-annotated venous or multi-phase CT images. Pseudo annotations are generated by combining two teacher models with different PDAC segmentation specialties on unannotated images, and can be further refined by a teaching assistant model that identifies associated vessels around the pancreas. A student model is trained on both manual and pseudo annotated multi-phase images. Experiment results show that our proposed method provides an absolute improvement of 6.3% Dice score over the strong baseline of nnUNet trained on annotated images, achieving the performance (Dice = 0.71) similar to the inter-observer variability between radiologists.

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