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AI-for-Medicine_3_Treatment

This repository contains the notes, codes, assignments, quizzes and other additional materials about the course "AI for Medical Treatment" from DeepLearning.AI Coursera. Enjoy!

The notes contain the modules outlined below:

Week Module Gist
1-1 Intro
  • Intro
  • Course
  • 1-2 Randomized
  • Absolute Risk Reduction
  • Randomized Control Trials
  • Pandas for a Medical Dataset
  • 1-3 Average Treatment Effect
  • Clarifications about Upcoming Causal Inference
  • Causal Inference
  • Average Treatment Effect
  • Conditional Average Treatment Effect
  • T-Learner
  • S-Learner
  • Model Training/Tuning Basics with Sklearn
  • 1-4 Individualized treatment effect
  • Evaluate Individualized Treatment Effect
  • C-for-benefit
  • C-for-benefit Calculation
  • Logistic Regression Model Interpretation
  • Q Measure Treatment Effects _
    A Estimate Treatment Effect Using ML ^_^
    2-1 Question answering Words with Multiple Meanings
  • Define the Answer in a Text
  • Cleaning Text
  • 2-2 Automatic labeling
  • Automatic Label Extraction for Medical Imaging
  • Synonyms for Labels
  • Is-a Relationships for Labels
  • Presence or Absence of a Disease
  • BioC Format and the NegBio Library
  • 2-3 Ecaluate automatic labeling
  • Evaluating Label Extraction
  • Precision, Recall and F1 Score
  • Evaluating on Multiple Disease Categories
  • Preparing Input for Text Classification
  • Q Information Extraction with NLP _
    A Natural Language Entity Extraction ^_^
    3-1 Feature importance
  • Drop Column Method
  • Permutation Method
  • Lab-Permutation
  • 3-2 Individual Feature Importance
  • Chapley Values
  • Combining Importances
  • Shapley Values for all Patients
  • 3-3 Interpret DL Models
  • Interpreting CNN Models
  • Introduction to GradCAM (Part 1)
  • Localization Maps
  • Heat Maps
  • GradCAM: Continuation (Part 2)
  • Q ML Interpretation !
    A ML Interpretation $