rigonsallauka
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README.md
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- english
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#
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## Use
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- **Primary Use Case**: This model is designed to extract medical entities such as symptoms, diagnostic tests, and treatments from clinical text in the
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- **Applications**: Suitable for healthcare professionals, clinical data analysis, and research into medical text processing.
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- **Supported Entity Types**:
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- `PROBLEM`: Diseases, symptoms, and medical conditions.
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- `TREATMENT`: Medications, therapies, and other medical interventions.
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## Training Data
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- **Data Sources**: Annotated datasets, including clinical data
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- **Data Augmentation**: The training dataset underwent data augmentation techniques to improve the model's ability to generalize to different text structures.
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- **Dataset Split**:
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- **Training Set**: 80%
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- **Batch Size**: 64
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- **Epochs**: 200
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- **Loss Function**: Focal Loss to handle class imbalance
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- **Frameworks
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## How to Use
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You can easily use this model with the Hugging Face `transformers` library. Here's an example of how to load and use the model for inference:
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- english
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# English Medical NER
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## Use
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- **Primary Use Case**: This model is designed to extract medical entities such as symptoms, diagnostic tests, and treatments from clinical text in the English language.
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- **Applications**: Suitable for healthcare professionals, clinical data analysis, and research into medical text processing.
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- **Supported Entity Types**:
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- `PROBLEM`: Diseases, symptoms, and medical conditions.
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- `TREATMENT`: Medications, therapies, and other medical interventions.
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## Training Data
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- **Data Sources**: Annotated datasets, including clinical data in English.
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- **Data Augmentation**: The training dataset underwent data augmentation techniques to improve the model's ability to generalize to different text structures.
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- **Dataset Split**:
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- **Training Set**: 80%
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- **Batch Size**: 64
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- **Epochs**: 200
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- **Loss Function**: Focal Loss to handle class imbalance
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- **Frameworks
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**: PyTorch, Hugging Face Transformers, SimpleTransformers
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## How to Use
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You can easily use this model with the Hugging Face `transformers` library. Here's an example of how to load and use the model for inference:
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