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qMRI-age-similarities

Overview

This project focuses on analyzing microstructural changes in the brain during aging using statistical methods and machine learning techniques applied to quantitative MRI (qMRI) data. The project develops a novel multi-parameter method to assess brain region convergence and variability during aging. It leverages data science, machine learning, and statistical methods to uncover insights into brain aging.

Key Features

  • qMRI Data Processing: Preprocessing of quantitative MRI data from multiple brain regions for analysis.
  • Machine Learning: Application of advanced algorithms like XGBoost and t-SNE to classify brain regions by age and uncover patterns in brain aging.
  • Statistical Analysis: Use of statistical methods to explore correlations between brain regions and variability across subjects.
  • Visualization: Creation of visualizations such as brain region clustering plots and correlation matrices.

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