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OSIC Pulmonary Fibrosis Progression

Imagine one day, your breathing became consistently labored and shallow. Months later you were finally diagnosed with pulmonary fibrosis, a disorder with no known cause and no known cure, created by scarring of the lungs. If that happened to you, you would want to know your prognosis. That’s where a troubling disease becomes frightening for the patient: outcomes can range from long-term stability to rapid deterioration, but doctors aren’t easily able to tell where an individual may fall on that spectrum. Your help, and data science, may be able to aid in this prediction, which would dramatically help both patients and clinicians.

Current methods make fibrotic lung diseases difficult to treat, even with access to a chest CT scan. In addition, the wide range of varied prognoses create issues organizing clinical trials. Finally, patients suffer extreme anxiety—in addition to fibrosis-related symptoms—from the disease’s opaque path of progression.

Domain Research | Basic EDA | DICOM Visualization

Going Over Scans

Ct Scan progression of a patient done weekly for about 1-2 years

Patientx

What this Repo Contains:

- Domain Research Notebook
- Basic EDA and Visualization Notebook
- Generating Metadata From DICOM Files Using Fast.AI Library // Script
- Tablular_Baseline   
- Baseline_Score     

Final socre is is evaluated on a modified version of the Laplace Log Likelihood. In medical applications, it is useful to evaluate a model's confidence in its decisions. Accordingly, the metric is designed to reflect both the accuracy and certainty of each prediction.

TO-DO:

- Upload Final Model and Weights