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---
tags:
- echocardiogram
- arxiv:2408.06930
- medical
language:
- nl
license: gpl-3.0
model-index:
- name: Echocardiogram_MitralRegurgitation_reduced
  results:
  - task:
      type: text-classification
    dataset:
      type: test
      name: internal test set
    metrics:
    - name: Macro f1
      type: f1
      value: 0.968
      verified: false
    - name: Macro precision
      type: precision
      value: 0.964
      verified: false
    - name: Macro recall
      type: recall
      value: 0.972
      verified: false
pipeline_tag: text-classification
metrics:
- f1
- precision
- recall
---

# Description
This model is a [MedRoBERTa.nl](https://huggingface.co/CLTL/MedRoBERTa.nl) model finetuned on Dutch echocardiogram reports sourced from Electronic Health Records. 
The publication associated with the span classification task can be found at https://arxiv.org/abs/2408.06930. 
The config file for training the model can be found at https://github.com/umcu/echolabeler.

# Minimum working example
```python
from transformer import pipeline
```
```python
le_pipe = pipeline(model="UMCU/Echocardiogram_MitralRegurgitation_reduced")
document = "Lorem ipsum"
results = le_pipe(document)
```

# Label Scheme

<details>

<summary>View label scheme</summary>

| Component | Labels |
| --- | --- |
| **`reduced`** | `No label`, `Normal`, `Not Normal` |
</details>

Here, for the reduced labels `Present` means that for *any one or multiple* of the pathologies we have a positive result.

Here, for the pathologies we have

<details>

<summary>View pathologies</summary>

| Annotation | Pathology |
| --- | --- |
| pe  | Pericardial Effusion |
| wma | Wall Motion Abnormality |
| lv_dil | Left Ventricle Dilation |
| rv_dil | Right Ventricle Dilation |
| lv_syst_func | Left Ventricle Systolic Dysfunction |
| rv_syst_func | Right Ventricle Systolic Dysfunction |
| lv_dias_func | Diastolic Dysfunction |
| aortic_valve_native_stenosis | Aortic Stenosis |
| mitral_valve_native_regurgitation | Mitral valve regurgitation |
| tricuspid_valve_native_regurgitation | Tricuspid regurgitation |
| aortic_valve_native_regurgitation | Aortic Regurgitation |
</details>

Note: `lv_dias_func` should have been `dias_func`..

# Intended use
The model is developed for *document* classification of Dutch clinical echocardiogram reports.
Since it is a domain-specific model trained on medical data, it is **only** meant to be used on medical NLP tasks for *Dutch echocardiogram reports*.

# Data
The model was trained on approximately 4,000 manually annotated echocardiogram reports from the University Medical Centre Utrecht.
The training data was anonymized before starting the training procedure.

| Feature | Description |
| --- | --- |
| **Name** | `Echocardiogram_MitralRegurgitation_reduced` |
| **Version** | `1.0.0` |
| **transformers** | `>=4.40.0` |
| **Default Pipeline** | `pipeline`, `text-classification` |
| **Components** | `RobertaForSequenceClassification` |
| **License** | `cc-by-sa-4.0` |
| **Author** | [Bram van Es]() |

# Contact
If you are having problems with this model please add an issue on our git: https://github.com/umcu/echolabeler/issues

# Usage
If you use the model in your work please use the following referral; https://doi.org/10.48550/arXiv.2408.06930

# References
Paper: Bauke Arends, Melle Vessies, Dirk van Osch, Arco Teske, Pim van der Harst, René van Es, Bram van Es (2024): Diagnosis extraction from unstructured Dutch echocardiogram reports using span- and document-level characteristic classification, Arxiv https://arxiv.org/abs/2408.06930