Deep learning in Electronic Health Records - CDSS 2
Overview of the main principles of Deep Learning along with common architectures. Formulate the problem for time-series classification and apply it to vital...
By Fani Deligianni on Coursera
About This Course
Overview of the main principles of Deep Learning along with common architectures. Formulate the problem for time-series classification and apply it to vital signals such as ECG. Applying this methods in Electronic Health Records is challenging due to the missing values and the heterogeneity in EHR, which include both continuous, ordinal and categorical variables. Subsequently, explore imputation techniques and different encoding strategies to address these issues. Apply these approaches to formulate clinical prediction benchmarks derived from information available in MIMIC-III database.
Topics Covered
Frequently Asked Questions
How much does Deep learning in Electronic Health Records - CDSS 2 cost?
Visit the Deep learning in Electronic Health Records - CDSS 2 course page for current pricing and available discounts.
Who teaches Deep learning in Electronic Health Records - CDSS 2?
Deep learning in Electronic Health Records - CDSS 2 is taught by Fani Deligianni, University of Glasgow .
What skill level is Deep learning in Electronic Health Records - CDSS 2 for?
This course is designed for all levels learners.
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