Difference between revisions of "SOCR News MDS 2020 BigData"

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* '''Date/Time''': September 13, 2020, 14:00-15:30 US ET (GMT-4)
 
* '''Date/Time''': September 13, 2020, 14:00-15:30 US ET (GMT-4)
 
* '''Presenter''': [https://www.socr.umich.edu/people/ Ivo D. Dinov], and [https://www.med.upenn.edu/apps/faculty/index.php/g275/p8639958 Allison Willis (UPenn)]
 
* '''Presenter''': [https://www.socr.umich.edu/people/ Ivo D. Dinov], and [https://www.med.upenn.edu/apps/faculty/index.php/g275/p8639958 Allison Willis (UPenn)]
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* '''Video Stream''': [https://app.sli.do/event/zvpmop62/live/questions live video stream] and [https://www.pathlms.com/mds archived videos for the 2020 MDS Congress, including this Big Data Session (#601)]
 
* '''Learning Objectives''':  
 
* '''Learning Objectives''':  
 
** Describe the concept of big data analytics and the impact in clinical research in the field of movement disorders  
 
** Describe the concept of big data analytics and the impact in clinical research in the field of movement disorders  

Latest revision as of 13:48, 13 September 2020

SOCR News & Events: What is Big Neuro Data? Where is it? How to Use it? Why is it Important?

Logistics



Abstract

This talk will present the pillars and rationale of Big Neuroscience Data and Open Science. We will focus on the important characteristics of biomedical and health challenges and sharing of sensitive information. We will review some case-studies illustrating applications to Neurodegenerative Disease (Parkinson’s disease) and Population Census-like Neuroscience (UK Biobank). Particularly, we will show some sources of Big Neuro Data, illustrate how it can be deidentified, desensitized, shared and utilized for diagnostic detection, tracking and prediction.

PDF Slidedeck.

References

  • Dinov, ID, Heavner, B, Tang, M, Glusman, G, Chard, K, Darcy, M, Madduri, R, Pa, J, Spino, C, Kesselman, C, Foster, I, Deutsch, EW, Price, ND, Van Horn, JD, Ames, J, Clark, K, Hood, L, Hampstead, BM, Dauer, W, and Toga, AW. (2016) Predictive Big Data Analytics: A Study of Parkinson's Disease using Large, Complex, Heterogeneous, Incongruent, Multi-source and Incomplete Observations. PLoS ONE, 11(8):1-28, e0157077. DOI: 10.1371/journal.pone.0157077.
  • Fu KA, Nathan R, Dinov I, Li J, Toga AW. (2016) T2-Imaging Changes in the Nigrosome-1 Relate to Clinical Measures of Parkinson’s Disease. Frontiers in Neurology, 7(174):1-27. DOI: 10.3389/fneur.2016.00174.
  • Gao C, Sun H, Wang T, Tang M, Bohnen NI, Müller MLTM, Herman, T, Giladi, N. Kalinin, A, Spino, C, Dauer, W, Hausdorff, JM, Dinov, ID. (2018) Model-based and Model-free Machine Learning Techniques for Diagnostic Prediction and Classification of Clinical Outcomes in Parkinson’s Disease, Scientific Reports, 8(1):7129. DOI: 10.1038/s41598-018-24783-4 2018.


See also





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