Multimodal image registration has many applications in diagnostic medical imaging and image-guided interventions, such as Transcatheter Arterial Chemoembolization (TACE) of liver cancer guided by intraprocedural CBCT and pre-operative MR. The ability to register peri-procedurally acquired diagnostic images into the intraprocedural environment can potentially improve the intra-procedural tumor targeting, which will significantly improve therapeutic outcomes. However, the intra-procedural CBCT often suffers from suboptimal image quality due to lack of signal calibration for Hounsfield unit, limited FOV, and motion/metal artifacts. These non-ideal conditions make standard intensity-based multimodal registration methods infeasible to generate correct transformation across modalities. While registration based on anatomic structures, such as segmentation or landmarks, provides an efficient alternative, such anatomic structure information is not always available. One can train a deep learning-based anatomy extractor, but it requires large-scale manual annotations on specific modalities, which are often extremely time-consuming to obtain and require expert radiological readers. To tackle these issues, we leverage annotated datasets already existing in a source modality and propose an anatomy-preserving domain adaptation to segmentation network (APA2Seg-Net) for learning segmentation without target modality ground truth. The segmenters are then integrated into our anatomy-guided multimodal registration based on the robust point matching machine. Our experimental results on in-house TACE patient data demonstrated that our APA2Seg-Net can generate robust CBCT and MR liver segmentation, and the anatomy-guided registration framework with these segmenters can provide high-quality multimodal registrations. Our code is available at https://github.com/bbbbbbzhou/APA2Seg-Net.


翻译:多式图像登记在诊断医学成像和图像引导干预措施方面有许多应用,例如 Transcatheter Article Chemmoborization(TACE)肝癌的诊断性医学成像和图像引导干预。 在程序内CBCT和手术前MR的指导下,这些非理想条件使得标准基于强度的多式联运登记方法不易产生正确的全方位转变。虽然根据剖析或地标等解析结构进行的登记提供了高效的替代方法,但并不总能显著改善治疗结果。但是,由于Hounsfield 单位、FOV和运动/金属工艺品缺乏信号校准,程序内CBCT的诊断性检测质量往往低于最佳水平。 这些非理想性条件使得标准基于强度的多式联运登记方法无法产生正确的全方位转变。 虽然基于解析结构(如分解或地标)的注册提供了高效的替代方法,但这样的解剖结构信息并非总能得到。一个人能训练一个深层次的解剖式解剖质精度提取器,但是它需要大量手描述具体模式,这些方法往往非常耗时才能获取和需要在实验室里程里程中进行。

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