The execution of surgical tasks by an Autonomous Robotic System (ARS) requires an up-to-date model of the current surgical environment, which has to be deduced from measurements collected during task execution. In this work, we propose to automate tissue dissection tasks by introducing a convolutional neural network, called BA-Net, to predict the location of attachment points between adjacent tissues. BA-Net identifies the attachment areas from a single partial view of the deformed surface, without any a-priori knowledge about their location. The proposed method guarantees a very fast prediction time, which makes it ideal for intra-operative applications. Experimental validation is carried out on both simulated and real world phantom data of soft tissue manipulation performed with the da Vinci Research Kit (dVRK). The obtained results demonstrate that BA-Net provides robust predictions at varying geometric configurations, material properties, distributions of attachment points and grasping point locations. The estimation of attachment points provided by BA-Net improves the simulation of the anatomical environment where the system is acting, leading to a median simulation error below 5 mm in all the tested conditions. BA-Net can thus further support an ARS by providing a more robust test bench for the robotic actions intra-operatively, in particular when replanning is needed. The method and collected dataset are available at https://gitlab.com/altairLab/banet.

Data-driven intra-operative estimation of anatomical attachments for autonomous tissue dissection / Tagliabue, E.; Dall'Alba, D.; Pfeiffer, M.; Piccinelli, M.; Marin, R.; Castellani, U.; Speidel, S.; Fiorini, P.. - In: IEEE ROBOTICS AND AUTOMATION LETTERS. - ISSN 2377-3766. - 6:2(2021), pp. 1856-1863. [10.1109/LRA.2021.3060655]

Data-driven intra-operative estimation of anatomical attachments for autonomous tissue dissection

Piccinelli M.;Marin R.;
2021

Abstract

The execution of surgical tasks by an Autonomous Robotic System (ARS) requires an up-to-date model of the current surgical environment, which has to be deduced from measurements collected during task execution. In this work, we propose to automate tissue dissection tasks by introducing a convolutional neural network, called BA-Net, to predict the location of attachment points between adjacent tissues. BA-Net identifies the attachment areas from a single partial view of the deformed surface, without any a-priori knowledge about their location. The proposed method guarantees a very fast prediction time, which makes it ideal for intra-operative applications. Experimental validation is carried out on both simulated and real world phantom data of soft tissue manipulation performed with the da Vinci Research Kit (dVRK). The obtained results demonstrate that BA-Net provides robust predictions at varying geometric configurations, material properties, distributions of attachment points and grasping point locations. The estimation of attachment points provided by BA-Net improves the simulation of the anatomical environment where the system is acting, leading to a median simulation error below 5 mm in all the tested conditions. BA-Net can thus further support an ARS by providing a more robust test bench for the robotic actions intra-operatively, in particular when replanning is needed. The method and collected dataset are available at https://gitlab.com/altairLab/banet.
2021
AI-based methods; laparoscopy; surgical robotics
01 Pubblicazione su rivista::01a Articolo in rivista
Data-driven intra-operative estimation of anatomical attachments for autonomous tissue dissection / Tagliabue, E.; Dall'Alba, D.; Pfeiffer, M.; Piccinelli, M.; Marin, R.; Castellani, U.; Speidel, S.; Fiorini, P.. - In: IEEE ROBOTICS AND AUTOMATION LETTERS. - ISSN 2377-3766. - 6:2(2021), pp. 1856-1863. [10.1109/LRA.2021.3060655]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1552650
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