The Laboratory of Neuro Imaging Resource (LONIR) will create and apply innovative solutions for the investigation of imaging, genetics, behavioral and clinical data. The methods that we produce enable population-based analysis in numerous healthy and disease cohorts. We build upon our considerable prior progress in this competitive renewal proposal to focus our LONIR Technology Research and Development (TR&D) projects on three specific areas. TR&D 1 (Image Understanding) focuses on methodological developments for the analysis of brain imagery including robust image segmentation and registration, quality assurance and evaluation of image processing results, and processing of structural and diffusion brain data. TR&D 2 (Connectomics) will advance the study of brain connectivity using diffusion imaging and its powerful extensions. This project will go beyond tensor models of diffusion for assessing fiber integrity and connectivity, develop tract-based statistical analysis tools, introduce novel connectivity mapping approaches, and provide mechanisms for studying the genetics of brain connectivity. TR&D 3 (Data Interpretation) will utilize the imaging feature information extracted using tools from TR&D 1 and 2 and enable the interpretation of the resulting data, to address relevant biologically questions by providing tools for the selection of appropriate statistical models and the visual examination and interpretation of results. These research activities are tightly coupled and address the needs and requirements that have been presented to us by our Driving Biological Projects and Service Collaborators. These projects form a well-integrated program for the characterization, measurement, modeling, analysis, interpretation, and understanding of multifaceted patterns of structural and functional brain data. LONIR will facilitate studies of dynamically changing anatomical frameworks, e.g., developmental, neurodegenerative, traumatic, metastatic, by providing tools for comprehensive understanding of the nature and extent of these processes. These research efforts are supported by integrated Infrastructure, Dissemination, Training and Dissemination cores.

Public Health Relevance

The Laboratory of Neuro Imaging Resource (LONIR) develops, validates and disseminates powerful and user-friendly tools and biomedical analysis protocols for studies of various neurological disorders, e.g., HIV, complex behavior, Alzheimer's disease, and child development. All LONIR data, analysis protocols, computational resources and research findings are openly shared online, enhancing research efforts of a wide community. The research efforts of LONIR investigators and collaborators are centered on the fundamental recognition that the brain is dynamic. LONIR facilitates studies of dynamically changing anatomical frameworks, e.g., developmental, neurodegenerative, traumatic, and metastatic, by providing tools for comprehensive understanding of the nature and extent of these processes.

Agency
National Institute of Health (NIH)
Institute
National Institute of Biomedical Imaging and Bioengineering (NIBIB)
Type
Biotechnology Resource Grants (P41)
Project #
5P41EB015922-20
Application #
9223701
Study Section
Special Emphasis Panel (ZRG1-SBIB-L (40)P)
Program Officer
Pai, Vinay Manjunath
Project Start
1998-09-30
Project End
2018-01-31
Budget Start
2017-02-01
Budget End
2018-01-31
Support Year
20
Fiscal Year
2017
Total Cost
$1,250,263
Indirect Cost
$474,942
Name
University of Southern California
Department
Ophthalmology
Type
Schools of Medicine
DUNS #
072933393
City
Los Angeles
State
CA
Country
United States
Zip Code
90033
Kim, Hosung; Caldairou, Benoit; Bernasconi, Andrea et al. (2018) Multi-Template Mesiotemporal Lobe Segmentation: Effects of Surface and Volume Feature Modeling. Front Neuroinform 12:39
Duncan, Dominique; Vespa, Paul; Toga, Arthur W (2018) DETECTING FEATURES OF EPILEPTOGENESIS IN EEG AFTER TBI USING UNSUPERVISED DIFFUSION COMPONENT ANALYSIS. Discrete Continuous Dyn Syst Ser B 23:161-172
Azevedo, Christina J; Cen, Steven Y; Khadka, Sankalpa et al. (2018) Thalamic atrophy in multiple sclerosis: A magnetic resonance imaging marker of neurodegeneration throughout disease. Ann Neurol 83:223-234
Ning, Kaida; Chen, Bo; Sun, Fengzhu et al. (2018) Classifying Alzheimer's disease with brain imaging and genetic data using a neural network framework. Neurobiol Aging 68:151-158
Coletti, Amanda M; Singh, Deepinder; Kumar, Saurabh et al. (2018) Characterization of the ventricular-subventricular stem cell niche during human brain development. Development 145:
Aydogan, Dogu Baran; Jacobs, Russell; Dulawa, Stephanie et al. (2018) When tractography meets tracer injections: a systematic study of trends and variation sources of diffusion-based connectivity. Brain Struct Funct 223:2841-2858
Gahm, Jin Kyu; Shi, Yonggang; Alzheimer’s Disease Neuroimaging Initiative (2018) Riemannian metric optimization on surfaces (RMOS) for intrinsic brain mapping in the Laplace-Beltrami embedding space. Med Image Anal 46:189-201
Sepehrband, Farshid; Lynch, Kirsten M; Cabeen, Ryan P et al. (2018) Neuroanatomical morphometric characterization of sex differences in youth using statistical learning. Neuroimage 172:217-227
Tang, Yuchun; Sun, Wei; Toga, Arthur W et al. (2018) A probabilistic atlas of human brainstem pathways based on connectome imaging data. Neuroimage 169:227-239
Li, Junning; Gahm, Jin Kyu; Shi, Yonggang et al. (2018) Topological false discovery rates for brain mapping based on signal height. Neuroimage 167:478-487

Showing the most recent 10 out of 273 publications