prabhj / ALS-Disease-Prediction

ALS Functional Rating Scale using K means Clustering (NOTE: This project is in R language, not HTML. Open to View)

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ALS Disease detection

(Please download the '.html' file to visualize the graphs and other interesting outputs.)

Using the ALS dataset to study a rare but devastating progressive neurodegenerative disease, amyotrophic lateral sclerosis (ALS). Major clinically relevant questions include:

What patient phenotypes can be automatically and reliably identified and used to predict the change of the ALSFRS slope over time ?

Steps Implemented :

  1. Load and prepare the data Report (short!) data summaries and show some preliminary visualizations.
  2. Train a k-Means model on the data, select k.
  3. Evaluate the model performance using bar and silhouette plots and summarize the results.
  4. Tune and plot parameters with k-means++.
  5. Rerun the model with the optimal parameters and interpret the clustering results.
  6. Apply Hierarchical Clustering on three different linkages and compare the corresponding silhouette plots.
  7. Fit a Gaussian mixture model, select the optimal model, report BIC, and display density and classification plots.
  8. Compare the result of the above methods

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ALS Functional Rating Scale using K means Clustering (NOTE: This project is in R language, not HTML. Open to View)


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Language:R 100.0%