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Dive into the research topics where Dante De Nigris is active.

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Featured researches published by Dante De Nigris.


IEEE Transactions on Medical Imaging | 2011

Evaluation of Registration Methods on Thoracic CT: The EMPIRE10 Challenge

K. Murphy; B. van Ginneken; Joseph M. Reinhardt; Sven Kabus; Kai Ding; Xiang Deng; Kunlin Cao; Kaifang Du; Gary E. Christensen; V. Garcia; Tom Vercauteren; Nicholas Ayache; Olivier Commowick; Grégoire Malandain; Ben Glocker; Nikos Paragios; Nassir Navab; V. Gorbunova; Jon Sporring; M. de Bruijne; Xiao Han; Mattias P. Heinrich; Julia A. Schnabel; Mark Jenkinson; Cristian Lorenz; Marc Modat; Jamie R. McClelland; Sebastien Ourselin; S. E. A. Muenzing; Max A. Viergever

EMPIRE10 (Evaluation of Methods for Pulmonary Image REgistration 2010) is a public platform for fair and meaningful comparison of registration algorithms which are applied to a database of intra patient thoracic CT image pairs. Evaluation of nonrigid registration techniques is a nontrivial task. This is compounded by the fact that researchers typically test only on their own data, which varies widely. For this reason, reliable assessment and comparison of different registration algorithms has been virtually impossible in the past. In this work we present the results of the launch phase of EMPIRE10, which comprised the comprehensive evaluation and comparison of 20 individual algorithms from leading academic and industrial research groups. All algorithms are applied to the same set of 30 thoracic CT pairs. Algorithm settings and parameters are chosen by researchers expert in the con figuration of their own method and the evaluation is independent, using the same criteria for all participants. All results are published on the EMPIRE10 website (http://empire10.isi.uu.nl). The challenge remains ongoing and open to new participants. Full results from 24 algorithms have been published at the time of writing. This paper details the organization of the challenge, the data and evaluation methods and the outcome of the initial launch with 20 algorithms. The gain in knowledge and future work are discussed.


IEEE Transactions on Medical Imaging | 2012

Multi-Modal Image Registration Based on Gradient Orientations of Minimal Uncertainty

Dante De Nigris; D. L. Collins; Tal Arbel

In this paper, we propose a new multi-scale technique for multi-modal image registration based on the alignment of selected gradient orientations of reduced uncertainty. We show how the registration robustness and accuracy can be improved by restricting the evaluation of gradient orientation alignment to locations where the uncertainty of fixed image gradient orientations is minimal, which we formally demonstrate correspond to locations of high gradient magnitude. We also embed a computationally efficient technique for estimating the gradient orientations of the transformed moving image (rather than resampling pixel intensities and recomputing image gradients). We have applied our method to different rigid multi-modal registration contexts. Our approach outperforms mutual information and other competing metrics in the context of rigid multi-modal brain registration, where we show sub-millimeter accuracy with cases obtained from the retrospective image registration evaluation project. Furthermore, our approach shows significant improvements over standard methods in the highly challenging clinical context of image guided neurosurgery, where we demonstrate misregistration of less than 2 mm with relation to expert selected landmarks for the registration of pre-operative brain magnetic resonance images to intra-operative ultrasound images.


computer assisted radiology and surgery | 2017

IBIS: an OR ready open-source platform for image-guided neurosurgery.

Simon Drouin; Anna Kochanowska; Marta Kersten-Oertel; Ian J. Gerard; Rina Zelmann; Dante De Nigris; Silvain Bériault; Tal Arbel; Denis Sirhan; Abbas F. Sadikot; Jeffery A. Hall; David Sinclair; Kevin Petrecca; Rolando F. DelMaestro; D. Louis Collins

PurposeNavigation systems commonly used in neurosurgery suffer from two main drawbacks: (1) their accuracy degrades over the course of the operation and (2) they require the surgeon to mentally map images from the monitor to the patient. In this paper, we introduce the Intraoperative Brain Imaging System (IBIS), an open-source image-guided neurosurgery research platform that implements a novel workflow where navigation accuracy is improved using tracked intraoperative ultrasound (iUS) and the visualization of navigation information is facilitated through the use of augmented reality (AR).MethodsThe IBIS platform allows a surgeon to capture tracked iUS images and use them to automatically update preoperative patient models and plans through fast GPU-based reconstruction and registration methods. Navigation, resection and iUS-based brain shift correction can all be performed using an AR view. IBIS has an intuitive graphical user interface for the calibration of a US probe, a surgical pointer as well as video devices used for AR (e.g., a surgical microscope).ResultsThe components of IBIS have been validated in the laboratory and evaluated in the operating room. Image-to-patient registration accuracy is on the order of


international conference information processing | 2012

Fast and robust registration based on gradient orientations: case study matching intra-operative ultrasound to pre-operative MRI in neurosurgery

Dante De Nigris; D. Louis Collins; Tal Arbel


medical image computing and computer assisted intervention | 2010

Hierarchical multimodal image registration based on adaptive local mutual information

Dante De Nigris; Laurence Mercier; Rolando F. Del Maestro; D. Louis Collins; Tal Arbel

3.72\pm 1.27\,\hbox {mm}


Workshop on Clinical Image-Based Procedures | 2015

Improving Patient Specific Neurosurgical Models with Intraoperative Ultrasound and Augmented Reality Visualizations in a Neuronavigation Environment

Ian J. Gerard; Marta Kersten-Oertel; Simon Drouin; Jeffery A. Hall; Kevin Petrecca; Dante De Nigris; Tal Arbel; D. Louis Collins


computer assisted radiology and surgery | 2016

User-friendly freehand ultrasound calibration using Lego bricks and automatic registration

Yiming Xiao; Charles X. B. Yan; Simon Drouin; Dante De Nigris; Anna Kochanowska; D. Louis Collins

3.72±1.27mm and can be improved with iUS to a median target registration error of 2.54 mm. The accuracy of the US probe calibration is between 0.49 and 0.82 mm. The average reprojection error of the AR system is


Journal of medical imaging | 2018

Combining intraoperative ultrasound brain shift correction and augmented reality visualizations: a pilot study of eight cases

Ian J. Gerard; Marta Kersten-Oertel; Simon Drouin; Jeffery A. Hall; Kevin Petrecca; Dante De Nigris; Daniel A. Di Giovanni; Tal Arbel; D. Louis Collins


international symposium on biomedical imaging | 2015

Fast and efficient image registration based on gradient orientations of minimal uncertainty

Tal Arbel; Dante De Nigris

0.37\pm 0.19\,\hbox {mm}


workshop on biomedical image registration | 2014

SymBA: Diffeomorphic Registration Based on Gradient Orientation Alignment and Boundary Proximity of Sparsely Selected Voxels

Dante De Nigris; D. Louis Collins; Tal Arbel

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D. Louis Collins

Montreal Neurological Institute and Hospital

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Anna Kochanowska

Montreal Neurological Institute and Hospital

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Jeffery A. Hall

Montreal Neurological Institute and Hospital

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Abbas F. Sadikot

Montreal Neurological Institute and Hospital

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