language: nl
license: mit
pipeline_tag: text-classification
inference: false
Regression Model for Attention Functioning Levels (ICF b140)
Description
A fine-tuned regression model that assigns a functioning level to Dutch sentences describing attention functions. The model is based on a pre-trained Dutch medical language model (link to be added): a RoBERTa model, trained from scratch on clinical notes of the Amsterdam UMC. To detect sentences about attention functions in clinical text in Dutch, use the icf-domains classification model.
Functioning levels
Level | Meaning |
---|---|
4 | No problem with concentrating / directing / holding / dividing attention. |
3 | Slight problem with concentrating / directing / holding / dividing attention for a longer period of time or for complex tasks. |
2 | Can concentrate / direct / hold / divide attention only for a short time. |
1 | Can barely concentrate / direct / hold / divide attention. |
0 | Unable to concentrate / direct / hold / divide attention. |
The predictions generated by the model might sometimes be outside of the scale (e.g. 4.2); this is normal in a regression model.
Intended uses and limitations
- The model was fine-tuned (trained, validated and tested) on medical records from the Amsterdam UMC (the two academic medical centers of Amsterdam). It might perform differently on text from a different hospital or text from non-hospital sources (e.g. GP records).
- The model was fine-tuned with the Simple Transformers library. This library is based on Transformers but the model cannot be used directly with Transformers
pipeline
and classes; doing so would generate incorrect outputs. For this reason, the API on this page is disabled.
How to use
To generate predictions with the model, use the Simple Transformers library:
from simpletransformers.classification import ClassificationModel
model = ClassificationModel(
'roberta',
'CLTL/icf-levels-att',
use_cuda=False,
)
example = 'Snel afgeleid, moeite aandacht te behouden.'
_, raw_outputs = model.predict([example])
predictions = np.squeeze(raw_outputs)
The prediction on the example is:
2.89
The raw outputs look like this:
[[2.89226103]]
Training data
- The training data consists of clinical notes from medical records (in Dutch) of the Amsterdam UMC. Due to privacy constraints, the data cannot be released.
- The annotation guidelines used for the project can be found here.
Training procedure
The default training parameters of Simple Transformers were used, including:
- Optimizer: AdamW
- Learning rate: 4e-5
- Num train epochs: 1
- Train batch size: 8
Evaluation results
The evaluation is done on a sentence-level (the classification unit) and on a note-level (the aggregated unit which is meaningful for the healthcare professionals).
Sentence-level | Note-level | |
---|---|---|
mean absolute error | 0.99 | 1.03 |
mean squared error | 1.35 | 1.47 |
root mean squared error | 1.16 | 1.21 |
Authors and references
Authors
Jenia Kim, Piek Vossen
References
TBD