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Welcome to the Machine Learning Approach for Somatic Variant Refinement! Use this page to navigate through our development and analysis of machine learning models that automate the variant refinement process. Each page has a link at the bottom to bring you back to this table of contents.
- Chapter 1 - Background Information
- Chapter 2 - Identification of Somatic Variants in Sequencing Data
- Chapter 3 - Methods and Analysis for Machine Learning Models
- Data Assembly
- Logistic Regression Model
- Random Forest Model
- Deep Learning Model
- Model Evaluation
- Inter-reviewer Variability
- Orthogonal Validation
- Re-review Analysis
- Chapter 4 - DeepSVR Tutorial
- Tutorial Preface
- DeepSVR Installation
- Create the Classifier
- Prepare Data
- Classify Data
- Re-Train Model
- Chapter 5 - DeepSVR Usage Documents
Chapter 1 - Background Information:
Authors | Citation | About | Repository Installation
Chapter 2 - Identification of Somatic Variants in Sequencing Data:
Automated Somatic Variant Calling | Somatic Variant Refinement (SVR)
Chapter 3 - Methods and Analysis for Machine Learning Models:
Data Assembly | Logistic Regression Model | Random Forest Model | Deep Learning Model | Model Evaluation | Inter-reviewer Variability | Orthogonal Validation | Manual Review Validation | Re-review Analysis
Chapter 4 - DeepSVR Tutorial:
Tutorial Preface | DeepSVR Installation | Create the Classifier | Prepare Data | Classify Data | Re-Train Model
Chapter 5 - Usage Documents:
DeepSVR Installation | Usage Documents