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STOCHASTIC EVENT DETECTION IN NEEDLE-TISSUE INTERACTION

机译:针组织相互作用中随机事件检测

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Over the last decade, many dynamic models that express needle-force relationships under tissues of varying mechanical properties have been developed. While great progress has been made in the development of these high-fidelity models, they are only valid within certain boundary conditions limiting their match with reality. This gap in realism is aggravated by variability in human tissues, needles, and the modes of interaction with the tissue. In an effort to develop more realistic models, the current paper was developed to create and test an event (i.e. changes of variability) detection method based on the probability distribution of residues-difference between force models and measurements. To obtain force measurements, we repeated robotic-driven needle insertion into a simulated mannequin. Needle types and tissue thickness were varied in the measurements in order to add realistic variability. To obtain the force model, the measurement data was used as an input to a Grey-Box model. From the measurements and models, we estimated the probability distribution of residues. For validation, a Gaussian-Mixture Model (GMM) was used to confirm the stochastic model successfully distinguishes the residual distributions under different variability. We found that by examining the residual distributions it is possible to detect unexpected variability in needle-tissue interactions. The findings from this paper have implications for developing real-time event detection methods and simulating patient-variability in haptic applications.
机译:在过去的十年中,已经开发出许多表达在不同机械性能的组织下表达针力关系的动态模型。虽然在这些高保真模型的发展中取得了巨大进展,但它们只在某些边界条件下有效,限制了与现实相匹配的。通过人体组织,针的可变性和与组织的相互作用的变异性加剧了现实主义的这种差距。为了开发更现实的模型,基于力模型和测量之间的残留差异的概率分布来开发目前的纸张来创建和测试事件(即变化)检测方法的事件(即变化)检测方法。为了获得力测量,我们将机器人驱动的针插入模拟的时装模特中。测量中的针型和组织厚度在测量中变化,以增加现实的变化。为了获得力模型,将测量数据用作灰度盒模型的输入。从测量和模型中,我们估计了残留物的概率分布。为了验证,使用高斯 - 混合模型(GMM)来证实随机模型成功区分剩余分布在不同的可变性下。我们发现通过检查残留分布,可以检测针组织相互作用的意外变化。本文的调查结果对开发实时事件检测方法和模拟触觉应用中的患者可变性的影响有影响。

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