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Dive into the research topics where Alireza Mehrtash is active.

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Featured researches published by Alireza Mehrtash.


NeuroImage: Clinical | 2015

Reconstruction of the arcuate fasciculus for surgical planning in the setting of peritumoral edema using two-tensor unscented Kalman filter tractography

Zhenrui Chen; Yanmei Tie; Olutayo Olubiyi; Laura Rigolo; Alireza Mehrtash; Isaiah Norton; Ofer Pasternak; Yogesh Rathi; Alexandra J. Golby; Lauren J. O'Donnell

Background Diffusion imaging tractography is increasingly used to trace critical fiber tracts in brain tumor patients to reduce the risk of post-operative neurological deficit. However, the effects of peritumoral edema pose a challenge to conventional tractography using the standard diffusion tensor model. The aim of this study was to present a novel technique using a two-tensor unscented Kalman filter (UKF) algorithm to track the arcuate fasciculus (AF) in brain tumor patients with peritumoral edema. Methods Ten right-handed patients with left-sided brain tumors in the vicinity of language-related cortex and evidence of significant peritumoral edema were retrospectively selected for the study. All patients underwent 3-Tesla magnetic resonance imaging (MRI) including a diffusion-weighted dataset with 31 directions. Fiber tractography was performed using both single-tensor streamline and two-tensor UKF tractography. A two-regions-of-interest approach was applied to perform the delineation of the AF. Results from the two different tractography algorithms were compared visually and quantitatively. Results Using single-tensor streamline tractography, the AF appeared disrupted in four patients and contained few fibers in the remaining six patients. Two-tensor UKF tractography delineated an AF that traversed edematous brain areas in all patients. The volume of the AF was significantly larger on two-tensor UKF than on single-tensor streamline tractography (p < 0.01). Conclusions Two-tensor UKF tractography provides the ability to trace a larger volume AF than single-tensor streamline tractography in the setting of peritumoral edema in brain tumor patients.


computer assisted radiology and surgery | 2016

Corticospinal tract modeling for neurosurgical planning by tracking through regions of peritumoral edema and crossing fibers using two-tensor unscented Kalman filter tractography

Zhenrui Chen; Yanmei Tie; Olutayo Olubiyi; Fan Zhang; Alireza Mehrtash; Laura Rigolo; Pegah Kahali; Isaiah Norton; Ofer Pasternak; Yogesh Rathi; Alexandra J. Golby; Lauren J. O’Donnell

PurposeThe aim of this study was to present a tractography algorithm using a two-tensor unscented Kalman filter (UKF) to improve the modeling of the corticospinal tract (CST) by tracking through regions of peritumoral edema and crossing fibers.MethodsTen patients with brain tumors in the vicinity of motor cortex and evidence of significant peritumoral edema were retrospectively selected for the study. All patients underwent 3-T magnetic resonance imaging (MRI) including functional MRI (fMRI) and a diffusion-weighted data set with 31 directions. Fiber tracking was performed using both single-tensor streamline and two-tensor UKF tractography methods. A two-region-of-interest approach was used to delineate the CST. Results from the two tractography methods were compared visually and quantitatively. fMRI was applied to identify the functional fiber tracts.ResultsSingle-tensor streamline tractography underestimated the extent of tracts running through the edematous areas and could only track the medial projections of the CST. In contrast, two-tensor UKF tractography tracked fanning projections of the CST despite peritumoral edema and crossing fibers. Based on visual inspection, the two-tensor UKF tractography delineated tracts that were closer to motor fMRI activations, and it was apparently more sensitive than single-tensor streamline tractography to define the tracts directed to the motor sites. The volume of the CST was significantly larger on two-tensor UKF than on single-tensor streamline tractography (


Magnetic Resonance in Medicine | 2015

Real-time active MR-tracking of metallic stylets in MR-guided radiation therapy.

Wei Wang; Charles Lucian Dumoulin; Akila N. Viswanathan; Zion Tsz Ho Tse; Alireza Mehrtash; Wolfgang Loew; Isaiah Norton; Junichi Tokuda; Ravi T. Seethamraju; Tina Kapur; Antonio L. Damato; Robert A. Cormack; Ehud J. Schmidt


medical image computing and computer assisted intervention | 2017

Transfer Learning for Domain Adaptation in MRI: Application in Brain Lesion Segmentation

Mohsen Ghafoorian; Alireza Mehrtash; Tina Kapur; Nico Karssemeijer; Elena Marchiori; Mehran Pesteie; Charles R. G. Guttmann; Frank-Erik de Leeuw; Clare M. Tempany; Bram van Ginneken; Andriy Fedorov; Purang Abolmaesumi; Bram Platel; William M. Wells

p < 0.001


Proceedings of SPIE | 2017

Classification of clinical significance of MRI prostate findings using 3D convolutional neural networks

Alireza Mehrtash; Alireza Sedghi; Mohsen Ghafoorian; Mehdi Taghipour; Clare M. Tempany; William M. Wells; Tina Kapur; Parvin Mousavi; Purang Abolmaesumi; Andriy Fedorov


Proceedings of SPIE | 2014

EM-navigated catheter placement for gynecologic brachytherapy: an accuracy study

Alireza Mehrtash; Antonio L. Damato; Guillaume Pernelle; Lauren Barber; Nabgha Farhat; Akila N. Viswanathan; Robert A. Cormack; Tina Kapur

p<0.001).ConclusionTwo-tensor UKF tractography tracks a larger volume CST than single-tensor streamline tractography in the setting of peritumoral edema and crossing fibers in brain tumor patients.


Journal of medical imaging | 2016

Bolus arrival time and its effect on tissue characterization with dynamic contrast-enhanced magnetic resonance imaging

Alireza Mehrtash; Sandeep N. Gupta; Dattesh Shanbhag; James V. Miller; Tina Kapur; Fiona M. Fennessy; Ron Kikinis; Andriy Fedorov

To develop an active MR‐tracking system to guide placement of metallic devices for radiation therapy.


Medical Physics | 2014

WE-A-17A-03: Catheter Digitization in High-Dose-Rate Brachytherapy with the Assistance of An Electromagnetic (EM) Tracking System

Antonio L. Damato; Bhagwat; Ivan Buzurovic; Phillip M. Devlin; Scott Friesen; Jorgen L. Hansen; Tina Kapur; Larissa J. Lee; Alireza Mehrtash; Paul L. Nguyen; Desmond A. O'Farrell; Wei Wang; Akila N. Viswanathan; Robert A. Cormack

Magnetic Resonance Imaging (MRI) is widely used in routine clinical diagnosis and treatment. However, variations in MRI acquisition protocols result in different appearances of normal and diseased tissue in the images. Convolutional neural networks (CNNs), which have shown to be successful in many medical image analysis tasks, are typically sensitive to the variations in imaging protocols. Therefore, in many cases, networks trained on data acquired with one MRI protocol, do not perform satisfactorily on data acquired with different protocols. This limits the use of models trained with large annotated legacy datasets on a new dataset with a different domain which is often a recurring situation in clinical settings. In this study, we aim to answer the following central questions regarding domain adaptation in medical image analysis: Given a fitted legacy model, (1) How much data from the new domain is required for a decent adaptation of the original network?; and, (2) What portion of the pre-trained model parameters should be retrained given a certain number of the new domain training samples? To address these questions, we conducted extensive experiments in white matter hyperintensity segmentation task. We trained a CNN on legacy MR images of brain and evaluated the performance of the domain-adapted network on the same task with images from a different domain. We then compared the performance of the model to the surrogate scenarios where either the same trained network is used or a new network is trained from scratch on the new dataset. The domain-adapted network tuned only by two training examples achieved a Dice score of 0.63 substantially outperforming a similar network trained on the same set of examples from scratch.


International Journal of Computer Assisted Radiology and Surgery | 2018

Using the variogram for vector outlier screening: application to feature-based image registration

Jie Luo; Sarah F. Frisken; Inês Machado; Miaomiao Zhang; Steve Pieper; Polina Golland; Matthew Toews; Prashin Unadkat; Alireza Sedghi; Haoyin Zhou; Alireza Mehrtash; Frank Preiswerk; Cheng-Chieh Cheng; Alexandra J. Golby; Masashi Sugiyama; William M. Wells

Prostate cancer (PCa) remains a leading cause of cancer mortality among American men. Multi-parametric magnetic resonance imaging (mpMRI) is widely used to assist with detection of PCa and characterization of its aggressiveness. Computer-aided diagnosis (CADx) of PCa in MRI can be used as clinical decision support system to aid radiologists in interpretation and reporting of mpMRI. We report on the development of a convolution neural network (CNN) model to support CADx in PCa based on the appearance of prostate tissue in mpMRI, conducted as part of the SPIE-AAPM-NCI PROSTATEx challenge. The performance of different combinations of mpMRI inputs to CNN was assessed and the best result was achieved using DWI and DCE-MRI modalities together with the zonal information of the finding. On the test set, the model achieved an area under the receiver operating characteristic curve of 0.80.


Medical Physics | 2013

WE‐G‐WAB‐01: Real‐Time Catheter Tracking and Visualization in MR‐Guided Brachytherapy

Wei Wang; Y Gao; Alireza Mehrtash; R Seethmaraju; Tina Kapur; A Vishwanathan; Ehud J. Schmidt; Robert A. Cormack

Gynecologic malignancies, including cervical, endometrial, ovarian, vaginal and vulvar cancers, cause significant mortality in women worldwide. The standard care for many primary and recurrent gynecologic cancers consists of chemoradiation followed by brachytherapy. In high dose rate (HDR) brachytherapy, intracavitary applicators and /or interstitial needles are placed directly inside the cancerous tissue so as to provide catheters to deliver high doses of radiation. Although technology for the navigation of catheters and needles is well developed for procedures such as prostate biopsy, brain biopsy, and cardiac ablation, it is notably lacking for gynecologic HDR brachytherapy. Using a benchtop study that closely mimics the clinical interstitial gynecologic brachytherapy procedure, we developed a method for evaluating the accuracy of image-guided catheter placement. Future bedside translation of this technology offers the potential benefit of maximizing tumor coverage during catheter placement while avoiding damage to the adjacent organs, for example bladder, rectum and bowel. In the study, two independent experiments were performed on a phantom model to evaluate the targeting accuracy of an electromagnetic (EM) tracking system. The procedure was carried out using a laptop computer (2.1GHz Intel Core i7 computer, 8GB RAM, Windows 7 64-bit), an EM Aurora tracking system with a 1.3mm diameter 6 DOF sensor, and 6F (2 mm) brachytherapy catheters inserted through a Syed-Neblett applicator. The 3D Slicer and PLUS open source software were used to develop the system. The mean of the targeting error was less than 2.9mm, which is comparable to the targeting errors in commercial clinical navigation systems.

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Tina Kapur

Brigham and Women's Hospital

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Robert A. Cormack

Brigham and Women's Hospital

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William M. Wells

Brigham and Women's Hospital

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Andriy Fedorov

Brigham and Women's Hospital

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Antonio L. Damato

Memorial Sloan Kettering Cancer Center

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Alexandra J. Golby

Brigham and Women's Hospital

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Clare M. Tempany

Brigham and Women's Hospital

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Isaiah Norton

Brigham and Women's Hospital

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Purang Abolmaesumi

University of British Columbia

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