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Machine learning–based haptic-enabled surgical navigation with security awareness

journal contribution
posted on 2019-10-01, 00:00 authored by Y Tai, Lei WeiLei Wei, Hailing Zhou, Q Li, X Huang, J Shi, Saeid Nahavandi
A novel security awareness surgical navigation system has been proposed for the accurate minimally invasive surgery with machine learning algorithms, haptic-enabled devices, and customized surgical tools to guide the surgery with real-time force and visual navigation. To provide a direct and simplified user interface during the operation, we combined traditional surgical guide images with AR-based view and implemented a 3D reconstructed patient-specific surgical environment includes with all surgical requisite details. In particular, we trained the surgical collected biomechanics haptic data by employed LSTM-based RNN algorithm, and residual network for the intraoperative force manipulation prediction and classification, respectively. Experiments evaluation results on percutaneous therapy surgery demonstrated a higher performance and distinguished accuracy by the visual and haptic combined than the traditional navigation system. These preliminary study findings may suggested a new framework in the minimally invasive surgical navigation application and hint at the possibility integration of haptic, AR, and machine learning algorithms implementation in medical simulation. In addition, we take security into account when implementation this new framework.

History

Journal

Concurrency and computation: practice and exerience

Volume

31

Issue

19

Season

Special Issue: Special Issue on Algorithmic Advances in Parallel Architectures and Energy Efficient Computing (PPAM2017) and Recent Advances in Machine Learning for Cyber‐security (MLCSec2018)

Article number

e4908

Pagination

1 - 12

Publisher

John Wiley & Sons

Location

Chichester, Eng.

ISSN

1532-0626

eISSN

1532-0634

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2018, John Wiley & Sons, Ltd.