超声引导下对比学习脑肿瘤切除术的多模态解剖地标检测

Soorena Salari, Amir Rasoulian, H. Rivaz, Yiming Xiao
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引用次数: 0

摘要

在各种临床应用中,医学扫描之间的同源解剖标志有助于定量评估图像配准质量,例如超声引导下脑肿瘤切除术中组织移位校正的mri超声配准。虽然手动识别MRI和超声(US)之间的地标对极大地促进了不同配准算法的验证,但该过程需要大量的专业知识、人力和时间,并且容易出现内部和内部的不一致。到目前为止,已经提出了许多用于解剖地标检测的传统方法和机器学习方法,但它们主要集中在单模态应用上。不幸的是,尽管有临床需要,但很少有人尝试检测多模态/造影剂地标。因此,我们提出了一种新的对比学习框架来检测神经外科MRI和术中US扫描之间的相应标志。具体来说,两个卷积神经网络被联合训练来编码MRI和US扫描中的图像特征,以帮助匹配包含MRI中相应地标的US图像补丁。我们使用公共RESECT数据库开发并验证了该技术。该方法的平均地标检测精度为5.88+-4.79 mm,而SIFT特征为18.78+-4.77 mm,首次为神经外科应用的MRI-US地标检测提供了有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards multi-modal anatomical landmark detection for ultrasound-guided brain tumor resection with contrastive learning
Homologous anatomical landmarks between medical scans are instrumental in quantitative assessment of image registration quality in various clinical applications, such as MRI-ultrasound registration for tissue shift correction in ultrasound-guided brain tumor resection. While manually identified landmark pairs between MRI and ultrasound (US) have greatly facilitated the validation of different registration algorithms for the task, the procedure requires significant expertise, labor, and time, and can be prone to inter- and intra-rater inconsistency. So far, many traditional and machine learning approaches have been presented for anatomical landmark detection, but they primarily focus on mono-modal applications. Unfortunately, despite the clinical needs, inter-modal/contrast landmark detection has very rarely been attempted. Therefore, we propose a novel contrastive learning framework to detect corresponding landmarks between MRI and intra-operative US scans in neurosurgery. Specifically, two convolutional neural networks were trained jointly to encode image features in MRI and US scans to help match the US image patch that contain the corresponding landmarks in the MRI. We developed and validated the technique using the public RESECT database. With a mean landmark detection accuracy of 5.88+-4.79 mm against 18.78+-4.77 mm with SIFT features, the proposed method offers promising results for MRI-US landmark detection in neurosurgical applications for the first time.
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