Richey Winona L, Heiselman Jon, Ringel Morgan, Meszoely Ingrid M, Miga Michael I
Vanderbilt University, Department of Biomedical Engineering, Nashville, TN USA.
Vanderbilt University Medical Center, Division of Surgical Oncology, Nashville, TN USA.
Proc SPIE Int Soc Opt Eng. 2022 Feb-Mar;12034. doi: 10.1117/12.2611570. Epub 2022 Apr 4.
Breast cancer is the most common cancer in women, and surgical resection is standard of care for the majority of breast cancer patients. Unfortunately, current reoperation rates are 10-29%. Uncertainty in lesion localization is one of the main factors contributing to these high reoperation rates. This work uses the linearized iterative boundary reconstruction approach to model patient breast deformation due to abduction of the ipsilateral arm. A preoperative supine magnetic resonance (MR) image was obtained with the patient's arms down near the torso. A mock intraoperative breast shape was measured from a supine MR image obtained with the patient's arm up near the head. Sparse data was subsampled from the full volumetric image to represent realistic intraoperative data collection: surface fiducial points, the intra-fiducial skin surface, and the chest wall as measured with 7 tracked ultrasound images. The deformed preoperative arm-down data was compared to the ground truth arm-up data. From rigid registration to model correction the tumor centroid distance improves from 7.3 mm to 3.3 mm, average surface fiducial error across 9 synthetic fiducials and the nipple improves from 7.4 ± 2.2 to 1.3 ± 0.7, and average subsurface error across 14 corresponding features improves from 6.2 ± 1.4 mm to 3.5 ± 1.1 mm. Using preoperative supine MR imaging and sparse data in the deformed position, this modeling framework can correct for breast shape changes between imaging and surgery to more accurately predict intraoperative position of the tumor as well as 10 surface fiducials and 14 subsurface features.
乳腺癌是女性中最常见的癌症,手术切除是大多数乳腺癌患者的标准治疗方法。不幸的是,目前的再次手术率为10%-29%。病变定位的不确定性是导致这些高再次手术率的主要因素之一。这项工作使用线性化迭代边界重建方法来模拟患侧手臂外展引起的患者乳房变形。术前在患者手臂靠近躯干下方时获取仰卧位磁共振(MR)图像。从患者手臂靠近头部上方时获取的仰卧位MR图像中测量模拟术中乳房形状。从全容积图像中对稀疏数据进行二次采样,以代表实际的术中数据采集:表面基准点、基准点内的皮肤表面以及用7幅跟踪超声图像测量的胸壁。将变形的术前手臂下垂数据与真实的手臂上举数据进行比较。从刚性配准到模型校正,肿瘤质心距离从7.3毫米提高到3.3毫米,9个合成基准点和乳头的平均表面基准误差从7.4±2.2提高到1.3±0.7,14个相应特征的平均皮下误差从6.2±1.4毫米提高到3.5±1.1毫米。使用术前仰卧位MR成像和变形位置的稀疏数据,该建模框架可以校正成像和手术之间的乳房形状变化,以更准确地预测肿瘤以及10个表面基准点和14个皮下特征的术中位置。