Keyword search (4,164 papers available)

"Jolaei M" Authored Publications:

Title Authors PubMed ID
1 Toward Task Autonomy in Robotic Cardiac Ablation: Learning-Based Kinematic Control of Soft Tendon-Driven Catheters. Jolaei M, Hooshiar A, Dargahi J, Packirisamy M 32678722
ENCS

 

Title:Toward Task Autonomy in Robotic Cardiac Ablation: Learning-Based Kinematic Control of Soft Tendon-Driven Catheters.
Authors:Jolaei MHooshiar ADargahi JPackirisamy M
Link:https://www.ncbi.nlm.nih.gov/pubmed/32678722
DOI:10.1089/soro.2020.0006
Publication:Soft robotics
Keywords:ablationcatheterlearningsoft robottendon-driven
PMID:32678722 Category:Soft Robot Date Added:2020-07-18
Dept Affiliation: ENCS
1 Robotic Surgery Laboratory and Mechanical, Industrial, and Aerospace Engineering Department, Concordia University, Montreal, Canada.
2 Optical Bio-microsystems Laboratory, Mechanical, Industrial, and Aerospace Engineering Department, Concordia University, Montreal, Canada.

Description:

Toward Task Autonomy in Robotic Cardiac Ablation: Learning-Based Kinematic Control of Soft Tendon-Driven Catheters.

Soft Robot. 2020 Jul 14;:

Authors: Jolaei M, Hooshiar A, Dargahi J, Packirisamy M

Abstract

The goal of this study was to propose and validate a control framework with level-2 autonomy (task autonomy) for the control of flexible ablation catheters. To this end, a kinematic model for the flexible portion of typical ablation catheters was developed and a 40-mm-long spring-loaded flexible catheter was fabricated. The feasible space of the catheter was obtained experimentally. Furthermore, a robotic catheter intervention system was prototyped for controlling the length of the catheter tendons. The proposed control framework used a support vector machine classifier to determine the tendons to be driven, and a fully connected neural network regressor to determine the length of the tendons. The classifier and regressors were trained with the data from the feasible space. The control system was implemented in parallel at user-interface and firmware and exhibited a 0.4-s lag in following the input. The validation studies were four trajectory tracking and four target reaching experiments. The system was capable of tracking trajectories with an error of 0.49?±?0.32 and 0.62?±?0.36?mm in slow and fast trajectories, respectively. Also, it exhibited submillimeter accuracy in reaching three preplanned targets and ruling out one nonfeasible target autonomously. The results showed improved accuracy and repeatability of the position control compared with the recent literature. The proposed learning-based approach could be used in enabling task autonomy for catheter-based ablation therapies.

PMID: 32678722 [PubMed - as supplied by publisher]





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