Lezcano Dimitri A, Zhetpissov Yernar, Bernardes Mariana C, Moreira Pedro, Tokuda Junichi, Kim Jin Seob, Iordachita Iulian I
Mechanical Engineering Department, Johns Hopkins University, MD 21201 USA.
Department of Radiology, Brigham and Women's Hospital, Harvard Medical School, Boston, MA.
IEEE Sens J. 2024 Jun;24(11):18359-18371. doi: 10.1109/jsen.2024.3386120. Epub 2024 Apr 12.
Needle insertion using flexible bevel tip needles are a common minimally-invasive surgical technique for prostate cancer interventions. Flexible, asymmetric bevel tip needles enable physicians for complex needle steering techniques to avoid sensitive anatomical structures during needle insertion. For accurate placement of the needle, predicting the trajectory of these needles intra-operatively would greatly reduce the need for frequently needle reinsertions thus improving patient comfort and positive outcomes. However, predicting the trajectory of the needle during insertion is a complex task that has yet to be solved due to random needle-tissue interactions. In this paper, we present and validate for the first time a hybrid deep learning and model-based approach to handle the intra-operative needle shape prediction problem through, leveraging a validated Lie-group theoretic model for needle shape representation. Furthermore, we present a novel self-supervised learning and method in conjunction with the Lie-group shape model for training these networks in the absence of data, enabling further refinement of these networks with transfer learning. Needle shape prediction was performed in single-layer and double-layer homogeneous phantom tissue for C- and S-shape needle insertions. Our method demonstrates an average root-mean-square prediction error of 1.03 mm over a dataset containing approximately 3,000 prediction samples with maximum prediction steps of 110 mm.
使用柔性斜面尖端针进行针刺是前列腺癌干预中一种常见的微创手术技术。柔性、不对称斜面尖端针使医生能够采用复杂的针转向技术,在针刺过程中避开敏感的解剖结构。为了准确放置针,术中预测这些针的轨迹将大大减少频繁重新插针的需求,从而提高患者舒适度和手术效果。然而,由于针与组织之间的随机相互作用,预测针刺过程中针的轨迹是一项尚未解决的复杂任务。在本文中,我们首次提出并验证了一种混合深度学习和基于模型的方法,通过利用经过验证的李群理论模型来表示针的形状,以解决术中针形状预测问题。此外,我们还提出了一种新颖的自监督学习方法,并结合李群形状模型在无数据情况下训练这些网络,通过迁移学习实现对这些网络的进一步优化。针对单层和双层均匀体模组织中的C形和S形针插入进行了针形状预测。我们的方法在一个包含约3000个预测样本、最大预测步长为110毫米的数据集上,平均均方根预测误差为1.03毫米。