Using measurements of water diffusion, dMRI can give unique insights into the microstructure and cellular orientation of tissues. In neurosurgical brain cancer research, dMRI is the only existing method that provides information about the trajectories of the white matter connections (fiber tracts). Neurosurgeons aim to preserve key fiber tracts when surgically removing tumors. dMRI also provides quantitative measurements that may aid in defining the borders of brain tumors, or in distinguishing tumor infiltration from edema. There is a growing awareness in the neurosurgery community that diffusion models must move beyond the current clinical standard of the diffusion tensor for better anatomical accuracy of fiber tracts. But several informatics challenges prevent advances in dMRI from easily reaching clinical cancer researchers: 1) advances in dMRI are not supported by commercial clinical software, 2) dMRI research software is not designed for clinical cancer settings, and 3) a lack of common file format standards prevents interoperability between dMRI software packages. Unlike other popular dMRI packages, the community software package 3D Slicer 4.0 (www.slicer.org) is uniquely positioned to enable novel clinical research in brain cancer because it was designed from the start for patient-specific cancer research. The 3D Slicer software package is an open-source community-based software platform, with 68629 total Slicer downloads around the world in 2013. While the current dMRI capabilities of Slicer are comparable to the technology available in commercial brain cancer neuron navigation software, the basic diffusion tensor model available in 3D Slicer is no longer state of the art for research. Its drawbacks include anatomical inaccuracies in fiber tracts and non-specificity of DTI-derived measurements. We propose to develop the open-source software infrastructure and key clinically-relevant workflows necessary to move toward more advanced dMRI technologies for open-source cancer research using 3D Slicer. In addition, we propose to improve file format interoperability by developing a standalone standards- compliant library for dMRI tractography file formats, based on the newly proposed DICOM supplement for MR diffusion tractography storage. We will collaborate with local and international neurosurgical brain cancer researchers as well as our prostate cancer research collaborators, all of whom use 3D Slicer in their research. Our software dissemination will leverage the infrastructure in place for the community-based Slicer software. The expected outcome is a state-of-the-art suite of dMRI tools in the open-source software 3D Slicer and a standards-compliant tractography file format library. We expect that this open source dMRI technology will enable novel clinical research in brain cancer.

Public Health Relevance

In brain cancer research, diffusion MRI (dMRI) is the only existing method that provides information about the trajectories of the white matter connections, and it also provides novel quantitative measurements that may aid in defining the borders of brain tumors, or in distinguishing tumor infiltration from edema. But dMRI has not yet seen widespread clinical translation, in large part due to the limitations of the current clinical standrd of the diffusion tensor model. We propose to develop a state-of-the-art suite of diffusion MRI tools, incorporating advanced data and modeling beyond the diffusion tensor, into the 3D Slicer community-based open-source software package.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Project--Cooperative Agreements (U01)
Project #
1U01CA199459-01
Application #
8971083
Study Section
Special Emphasis Panel (ZCA1-TCRB-W (M1))
Program Officer
Zhang, Yantian
Project Start
2015-09-22
Project End
2018-07-31
Budget Start
2015-09-22
Budget End
2016-07-31
Support Year
1
Fiscal Year
2015
Total Cost
$368,226
Indirect Cost
$160,726
Name
Brigham and Women's Hospital
Department
Type
DUNS #
030811269
City
Boston
State
MA
Country
United States
Zip Code
02115
Albi, Angela; Meola, Antonio; Zhang, Fan et al. (2018) Image Registration to Compensate for EPI Distortion in Patients with Brain Tumors: An Evaluation of Tract-Specific Effects. J Neuroimaging 28:173-182
Zhang, Fan; Savadjiev, Peter; Cai, Weidong et al. (2018) Whole brain white matter connectivity analysis using machine learning: An application to autism. Neuroimage 172:826-837
Stojanovski, Sonja; Felsky, Daniel; Viviano, Joseph D et al. (2018) Polygenic Risk and Neural Substrates of Attention-Deficit/Hyperactivity Disorder Symptoms in Youths With a History of Mild Traumatic Brain Injury. Biol Psychiatry :
Zhang, Fan; Wu, Weining; Ning, Lipeng et al. (2018) Suprathreshold fiber cluster statistics: Leveraging white matter geometry to enhance tractography statistical analysis. Neuroimage 171:341-354
Zhang, Fan; Wu, Ye; Norton, Isaiah et al. (2018) An anatomically curated fiber clustering white matter atlas for consistent white matter tract parcellation across the lifespan. Neuroimage 179:429-447
Hong, Yi; O'Donnell, Lauren J; Savadjiev, Peter et al. (2018) Genetic load determines atrophy in hand cortico-striatal pathways in presymptomatic Huntington's disease. Hum Brain Mapp 39:3871-3883
Stefanik, Laura; Erdman, Lauren; Ameis, Stephanie H et al. (2018) Brain-Behavior Participant Similarity Networks Among Youth and Emerging Adults with Schizophrenia Spectrum, Autism Spectrum, or Bipolar Disorder and Matched Controls. Neuropsychopharmacology 43:1180-1188
O'Donnell, Lauren J; Suter, Yannick; Rigolo, Laura et al. (2017) Automated white matter fiber tract identification in patients with brain tumors. Neuroimage Clin 13:138-153
Shaffer, Joseph J; Ghayoor, Ali; Long, Jeffrey D et al. (2017) Longitudinal diffusion changes in prodromal and early HD: Evidence of white-matter tract deterioration. Hum Brain Mapp 38:1460-1477
Liao, Ruizhi; Ning, Lipeng; Chen, Zhenrui et al. (2017) Performance of unscented Kalman filter tractography in edema: Analysis of the two-tensor model. Neuroimage Clin 15:819-831

Showing the most recent 10 out of 18 publications