Planning Sensing Sequences for Subsurface 3D Tumor Mapping

Brian Y. Cho, Tucker Hermans, A. Kuntz
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引用次数: 1

Abstract

Surgical automation has the potential to enable increased precision and reduce the per-patient workload of overburdened human surgeons. An effective automation system must be able to sense and map subsurface anatomy, such as tumors, efficiently and accurately. In this work, we present a method that plans a sequence of sensing actions to map the 3D geometry of subsurface tumors. We leverage a sequential Bayesian Hilbert map to create a 3D probabilistic occupancy model that represents the likelihood that any given point in the anatomy is occupied by a tumor, conditioned on sensor readings. We iteratively update the map, utilizing Bayesian optimization to determine sensing poses that explore unsensed regions of anatomy and exploit the knowledge gained by previous sensing actions. We demonstrate our method’s efficiency and accuracy in three anatomical scenarios including a liver tumor scenario generated from a real patient’s CT scan. The results show that our proposed method significantly outperforms comparison methods in terms of efficiency while detecting subsurface tumors with high accuracy.
面向地下三维肿瘤映射的传感序列规划
手术自动化有可能提高精度,减少负担过重的人类外科医生的每个病人的工作量。一个有效的自动化系统必须能够有效和准确地感知和绘制地下解剖结构,如肿瘤。在这项工作中,我们提出了一种方法,该方法计划一系列传感动作来绘制表面下肿瘤的三维几何形状。我们利用序列贝叶斯希尔伯特图来创建一个3D概率占用模型,该模型表示解剖结构中任何给定点被肿瘤占用的可能性,条件是传感器读数。我们迭代更新地图,利用贝叶斯优化来确定探索解剖学未感知区域的传感姿势,并利用以前的传感动作获得的知识。我们在三种解剖场景中展示了我们的方法的效率和准确性,包括从真实患者的CT扫描生成的肝脏肿瘤场景。结果表明,我们提出的方法在检测表面下肿瘤的准确率较高的同时,在效率上明显优于比较方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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