Difference between revisions of "SOCR News 2018 UMSN SummerInstitute"

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(Model-based vs. Model-free Analytical Methods)
(Model-based vs. Model-free Analytical Methods)
 
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==Logistics==
 
==Logistics==
 +
[[Image:SOCR_Logo_April_2018.png|150px|thumbnail|right| [http://socr.umich.edu SOCR Resource] ]]
 
* '''Event''': 2018 [http://nursing.umich.edu/academics/global-sexual-health-summer-institute Global Sexual Health Summer Institute]
 
* '''Event''': 2018 [http://nursing.umich.edu/academics/global-sexual-health-summer-institute Global Sexual Health Summer Institute]
 
* '''Series''': ''Big Data & Health Analytics''
 
* '''Series''': ''Big Data & Health Analytics''
 
* '''Session''': ''Big Healthcare Data: Research Challenges, AI Capabilities, and Educational Opportunities''
 
* '''Session''': ''Big Healthcare Data: Research Challenges, AI Capabilities, and Educational Opportunities''
* '''Place/Time''': TBD
+
* '''Place''': SNB 2000
 +
* '''Date/Time''': May 17, 2018, 1:30-4:30 PM (ET)
 
* '''Instructor''': [http://www.umich.edu/~dinov/ Ivo D Dinov]
 
* '''Instructor''': [http://www.umich.edu/~dinov/ Ivo D Dinov]
  
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== Coverage==
 
== Coverage==
As time permits, we will cover some of hte topics listed below.
+
As time permits, we will cover some of the topics listed below.
  
 
===[http://www.socr.umich.edu/people/dinov/courses/DSPA_notes/00_Motivation.html Motivation]===
 
===[http://www.socr.umich.edu/people/dinov/courses/DSPA_notes/00_Motivation.html Motivation]===
 
We will begin by examining several Big Biomedical case-studies (AD, PD, ALS). Then, we will try hands-on some complex visualization of neurodegenerative imaging, clinical and genetics data. The key point will be to identify the common characteristics of Big (Biomedical and Health) Data and define predictive analytics.
 
We will begin by examining several Big Biomedical case-studies (AD, PD, ALS). Then, we will try hands-on some complex visualization of neurodegenerative imaging, clinical and genetics data. The key point will be to identify the common characteristics of Big (Biomedical and Health) Data and define predictive analytics.
  
=== [http://www.socr.umich.edu/people/dinov/courses/DSPA_notes/05_DimensionalityReduction.html Simplifying High-dimensional Complex data] ===
+
=== [http://www.socr.umich.edu/people/dinov/courses/DSPA_notes/05_DimensionalityReduction.html Simplifying Complex High-dimensional Data] ===
 
We will demonstrate examples of interrogating multisource, multidimensional and heterogeneous datasets.
 
We will demonstrate examples of interrogating multisource, multidimensional and heterogeneous datasets.
  
 
=== Model-based vs. Model-free Analytical Methods ===
 
=== Model-based vs. Model-free Analytical Methods ===
 +
[http://socr.umich.edu/docs/uploads/2018/Dinov_Predictive_Cancer_HnN_Analytics_2018_Retreat.pdf These PPTX slides] provide a summary of using advanced analytics to understand clinical notes. Below, we include technical details and additional demonstrations of predictive Big Data health analytics.
 +
 
* [http://www.socr.umich.edu/people/dinov/courses/DSPA_notes/11_Apriory_AssocRuleLearning.html Association Rules Machine-Learning, Head and Neck Cancer Medications Case-Study]
 
* [http://www.socr.umich.edu/people/dinov/courses/DSPA_notes/11_Apriory_AssocRuleLearning.html Association Rules Machine-Learning, Head and Neck Cancer Medications Case-Study]
 
* [http://www.socr.umich.edu/people/dinov/courses/DSPA_notes/12_kMeans_Clustering.html#4_case_study_1:_divorce_and_consequences_on_young_adults Divorce and Consequences on Young Adults Case-Study]
 
* [http://www.socr.umich.edu/people/dinov/courses/DSPA_notes/12_kMeans_Clustering.html#4_case_study_1:_divorce_and_consequences_on_young_adults Divorce and Consequences on Young Adults Case-Study]

Latest revision as of 08:38, 15 May 2018

SOCR News & Events: Big Healthcare Data: Research Challenges, AI Capabilities, and Educational Opportunities

Logistics

  • Event: 2018 Global Sexual Health Summer Institute
  • Series: Big Data & Health Analytics
  • Session: Big Healthcare Data: Research Challenges, AI Capabilities, and Educational Opportunities
  • Place: SNB 2000
  • Date/Time: May 17, 2018, 1:30-4:30 PM (ET)
  • Instructor: Ivo D Dinov

Abstract

This session will focus on three Big Healthcare Data topics (1) healthcare challenges, (2) analytical capabilities, and (3) educational opportunities. Participants are encouraged to bring their laptops to experiment with some of the interactive content and hands-on demonstrations. JavaScript- and Java-enabled web-browsers would be useful. Participants interested in diving deeper into health analytics should also install R and RStudio graphical user interface. The unique URI for this session is http://myumi.ch/6xNgd and it contains links to all resources that will be demonstrated.

Desired learning outcomes

  • Understand the nature of Big Biomedical and Health data archives (challenges, strategies and pitfalls)
  • Gain access to biomedical and health data, analytical protocols, software tools, and learning modules
  • Experiment with some of the available software and computational services
  • Compare and contrast advanced statistical concepts, grasp model assumptions/limitations and apply them for quantitative analyses in healthcare research.

Coverage

As time permits, we will cover some of the topics listed below.

Motivation

We will begin by examining several Big Biomedical case-studies (AD, PD, ALS). Then, we will try hands-on some complex visualization of neurodegenerative imaging, clinical and genetics data. The key point will be to identify the common characteristics of Big (Biomedical and Health) Data and define predictive analytics.

Simplifying Complex High-dimensional Data

We will demonstrate examples of interrogating multisource, multidimensional and heterogeneous datasets.

Model-based vs. Model-free Analytical Methods

These PPTX slides provide a summary of using advanced analytics to understand clinical notes. Below, we include technical details and additional demonstrations of predictive Big Data health analytics.

Learning Modules and Instructional Resources

SOCR Tools

The Statistics Online Computational Resource (SOCR) provides tools and services for capturing and interrogating biomedical and healthcare data. These include SOCR Analytical Toolkit (SOCRAT), SOCR Data Dashboard Webapp, SOCR PubMed Navigator, Motion Charts, Randomization, Resampling and Simulation Webapp Violin Chart, Interactive (3D) Bivariate Normal Distribution Calculator webapp, Normal Distribution Calculator, Distributome Probability Calculators, Virtual Experiments, Simulators, Probability Distributome Navigator, Econometrics Webapps, XTK/HTML5 Brain Viewer and BrainBook Painter, DataSifter: Sharing and Obfuscation of Sensitive Data, CBDA: Compressive Big Data Analytics, 2D Interactive Voronoi Tessellation App, SOCR t-SNE Dimensionaltiy Reduction (TensorBoard) UKBB Machine Learning Modules, SOCR GitHub Resources, Apps, Code, Tools, and other Services.

References





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