This course is part of AI for Medicine Specialization

Instructors: Pranav Rajpurkar +2 more

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What you'll learn

  •   Walk through examples of prognostic tasks
  •   Apply tree-based models to estimate patient survival rates
  •   Navigate practical challenges in medicine like missing data  
  • Skills you'll gain

  •   Risk Modeling
  •   Random Forest Algorithm
  •   Regression Analysis
  •   Statistical Analysis
  •   Feature Engineering
  •   Forecasting
  •   Probability & Statistics
  •   Predictive Modeling
  •   Data Analysis
  •   Decision Tree Learning
  •   Machine Learning
  •   Applied Machine Learning
  •   Statistical Methods
  • There are 4 modules in this course

    Machine learning is a powerful tool for prognosis, a branch of medicine that specializes in predicting the future health of patients. In this second course, you’ll walk through multiple examples of prognostic tasks. You’ll then use decision trees to model non-linear relationships, which are commonly observed in medical data, and apply them to predicting mortality rates more accurately. Finally, you’ll learn how to handle missing data, a key real-world challenge. These courses go beyond the foundations of deep learning to teach you the nuances in applying AI to medical use cases. This course focuses on tree-based machine learning, so a foundation in deep learning is not required for this course. However, a foundation in deep learning is highly recommended for course 1 and 3 of this specialization. You can gain a foundation in deep learning by taking the Deep Learning Specialization offered by deeplearning.ai and taught by Andrew Ng.

    Prognosis with Tree-based Models

    Survival Models and Time

    Build a Risk Model Using Linear and Tree-based Models

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