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Cited 12 time in webofscience Cited 17 time in scopus
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The perfect neuroimaging-genetics-computation storm: collision of petabytes of data, millions of hardware devices and thousands of software tools

Authors
Dinov, Ivo D.Petrosyan, PetrosLiu, ZhizhongEggert, PaulZamanyan, AlenTorri, FedericaMacciardi, FabioHobel, SamMoon, Seok WooSung, Young HeeJiang, ZhiguoLabus, JenniferKurth, FlorianAshe-McNalley, CodyMayer, EmeranVespa, Paul M.Van Horn, John D.Toga, Arthur W.
Issue Date
Jun-2014
Publisher
SPRINGER
Keywords
Aging; Pipeline; Neuroimaging; Genetics; Computation solutions; Workflows; IBS; Pain; Parkinson' s disease; Alzheimer' s disease; Shape; Volume; Analysis; Big data; Visualization
Citation
BRAIN IMAGING AND BEHAVIOR, v.8, no.2, pp.311 - 322
Journal Title
BRAIN IMAGING AND BEHAVIOR
Volume
8
Number
2
Start Page
311
End Page
322
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/12583
DOI
10.1007/s11682-013-9248-x
ISSN
1931-7557
Abstract
The volume, diversity and velocity of biomedical data are exponentially increasing providing petabytes of new neuroimaging and genetics data every year. At the same time, tens-of-thousands of computational algorithms are developed and reported in the literature along with thousands of software tools and services. Users demand intuitive, quick and platform-agnostic access to data, software tools, and infrastructure from millions of hardware devices. This explosion of information, scientific techniques, computational models, and technological advances leads to enormous challenges in data analysis, evidence-based biomedical inference and reproducibility of findings. The Pipeline workflow environment provides a crowd-based distributed solution for consistent management of these heterogeneous resources. The Pipeline allows multiple (local) clients and (remote) servers to connect, exchange protocols, control the execution, monitor the states of different tools or hardware, and share complete protocols as portable XML workflows. In this paper, we demonstrate several advanced computational neuroimaging and genetics case-studies, and end-to-end pipeline solutions. These are implemented as graphical workflow protocols in the context of analyzing imaging (sMRI, fMRI, DTI), phenotypic (demographic, clinical), and genetic (SNP) data.
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