Keyword search (4,163 papers available)

"Dargahi J" Authored Publications:

Title Authors PubMed ID
1 Design Optimization of a Hybrid-Driven Soft Surgical Robot with Biomimetic Constraints Roshanfar M; Dargahi J; Hooshiar A; 38275456
ENCS
2 Hyperelastic Modeling and Validation of Hybrid-Actuated Soft Robot with Pressure-Stiffening Roshanfar M; Taki S; Sayadi A; Cecere R; Dargahi J; Hooshiar A; 37241524
ENCS
3 Design of a Linear Wavenumber Spectrometer for Line Scanning Optical Coherence Tomography with 50 mm Focal Length Cylindrical Optics Samadi S; Mohazzab M; Dargahi J; Narayanswamy S; 35590968
ENCS
4 Design and Optimization of a Linear Wavenumber Spectrometer with Cylindrical Optics for Line Scanning Optical Coherence Tomography Samadi S; Dargahi J; Narayanswamy S; 34640783
ENCS
5 Optical Fiber Array Sensor for Force Estimation and Localization in TAVI Procedure: Design, Modeling, Analysis and Validation Bandari N; Dargahi J; Packirisamy M; 34450813
ENCS
6 Corrigendum: Deep Learning-Based Haptic Guidance for Surgical Skills Transfer Fekri P; Dargahi J; Zadeh M; 34026860
ENCS
7 Deep Learning-Based Haptic Guidance for Surgical Skills Transfer. Fekri P, Dargahi J, Zadeh M 33553246
ENCS
8 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
9 Development and assessment of a stiffness display system for minimally invasive surgery based on smart magneto-rheological elastomers. Hooshiar A, Alkhalaf A, Dargahi J 31924050
ENCS
10 Flow force augmented 3D suspended polymeric microfluidic (SPMF3 ) platform. Marzban M, Dargahi J, Packirisamy M 30025169
ENCS

 

Title:Deep Learning-Based Haptic Guidance for Surgical Skills Transfer.
Authors:Fekri PDargahi JZadeh M
Link:https://www.ncbi.nlm.nih.gov/pubmed/33553246
DOI:10.3389/frobt.2020.586707
Publication:Frontiers in robotics and AI
Keywords:COVID-19LSTMbone drillingdeep learningforce feedbackhapticrecurrent neural networksurgical skill transfer
PMID:33553246 Category:Front Robot AI Date Added:2021-02-09
Dept Affiliation: ENCS
1 Mehchanical, Industrial, and Aerospace Engineering Department, Concordia University, Montreal, QC, Canada.
2 Electrical and Computer Engineering Department, Kettering University, Flint, MI, United States.

Description:

Deep Learning-Based Haptic Guidance for Surgical Skills Transfer.

Front Robot AI. 2020; 7:586707

Authors: Fekri P, Dargahi J, Zadeh M

Abstract

Having a trusted and useful system that helps to diminish the risk of medical errors and facilitate the improvement of quality in the medical education is indispensable. Thousands of surgical errors are occurred annually with high adverse event rate, despite inordinate number of devised patients safety initiatives. Inadvertently or otherwise, surgeons play a critical role in the aforementioned errors. Training surgeons is one of the most crucial and delicate parts of medical education and needs more attention due to its practical intrinsic. In contrast to engineering, dealing with mortal alive creatures provides a minuscule chance of trial and error for trainees. Training in operative rooms, on the other hand, is extremely expensive in terms of not only equipment but also hiring professional trainers. In addition, the COVID-19 pandemic has caused to establish initiatives such as social distancing in order to mitigate the rate of outbreak. This leads surgeons to postpone some non-urgent surgeries or operate with restrictions in terms of safety. Subsequently, educational systems are affected by the limitations due to the pandemic. Skill transfer systems in cooperation with a virtual training environment is thought as a solution to address aforesaid issues. This enables not only novice surgeons to enrich their proficiency but also helps expert surgeons to be supervised during the operation. This paper focuses on devising a solution based on deep leaning algorithms to model the behavior of experts during the operation. In other words, the proposed solution is a skill transfer method that learns professional demonstrations using different effective factors from the body of experts. The trained model then provides a real-time haptic guidance signal for either instructing trainees or supervising expert surgeons. A simulation is utilized to emulate an operating room for femur drilling surgery, which is a common invasive treatment for osteoporosis. This helps us with both collecting the essential data and assessing the obtained models. Experimental results show that the proposed method is capable of emitting guidance force haptic signal with an acceptable error rate.

PMID: 33553246 [PubMed]





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