Free online course 

Informed Clinical Decision Making Using Deep Learning Online distance learning

Medical information displayed on a tablet

Apply Deep Learning in Electronic Health Records. Understand the road path from data mining of clinical databases to clinical decision support systems

  • Length: 2 months: 10 hours per week
  • Start date: Anytime
  • Specialisation, Basic knowledge on SQL queries and python is required.

Why this course

This specialisation is for learners with experience in programming that are interested in expanding their skills in applying deep learning in Electronic Health Records and with a focus on how to translate their models into Clinical Decision Support Systems.

The main areas that would explore are:

  • Data mining of Clinical Databases: Ethics, MIMIC III database, International Classification of Disease System and definition of common clinical outcomes.

  • Deep learning in Electronic Health Records: From descriptive analytics to predictive analytics

  • Explainable deep learning models for healthcare applications: What it is and why it is needed

  • Clinical Decision Support Systems: Generalisation, bias, ‘fairness’, clinical usefulness and privacy of artificial intelligence algorithms.

Applied Learning Project

Learners have the opportunity to choose and undertake an exercise based on MIMIC-III extracted datasets that combines knowledge from:

  • Data mining of Clinical Databases to query the MIMIC database

  • Deep learning in Electronic Health Records to pre-process EHR and build deep learning models

  • Explainable deep learning models for healthcare to explain the models decision

Learners can choose from:

1. Permutation feature importance on the MIMIC critical care database

The technique is applied both on logistic regression and on an LSTM model. The explanations derived are global explanations of the model.

2. LIME on the MIMIC critical care database

The technique is applied on both logistic regression and an LSTM model. The explanations derived are local explanations of the model.

3. Grad-CAM on the MIMIC critical care database

GradCam is implemented and applied on an LSTM model that predicts mortality. The explanations derived are local explanations of the model.

How to register

Registration is free. The course is hosted on an external learning platform, Coursera.

Register now

Registration for this course is free, with free time-limited access to content: charges may apply for additional features and extended study.

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