Description
This pretrained pipeline is built on the top of bert_token_classifier_ner_jsl_slim model.
Predicted Entities
Admission_Discharge
, Age
, Alergen
, Birth_Entity
, Body_Part
, Clinical_Dept
, Date_Time
, Death_Entity
, Demographics
, Disease_Syndrome_Disorder
, Drug
, Header
, Lifestyle
, Medical_Device
, Oncological
,Physical_Measurement
, Pregnancy_Newborn
, Procedure
, Substance_Quantity
, Symptom
, Test
, Test_Result
, Treatment
, Vital_Sign
How to use
from sparknlp.pretrained import PretrainedPipeline
pipeline = PretrainedPipeline("bert_token_classifier_ner_jsl_slim_pipeline", "en", "clinical/models")
text = '''HISTORY: 30-year-old female presents for digital bilateral mammography secondary to a soft tissue lump palpated by the patient in the upper right shoulder. The patient has a family history of breast cancer within her mother at age 58. Patient denies personal history of breast cancer.'''
result = pipeline.fullAnnotate(text)
import com.johnsnowlabs.nlp.pretrained.PretrainedPipeline
val pipeline = new PretrainedPipeline("bert_token_classifier_ner_jsl_slim_pipeline", "en", "clinical/models")
val text = "HISTORY: 30-year-old female presents for digital bilateral mammography secondary to a soft tissue lump palpated by the patient in the upper right shoulder. The patient has a family history of breast cancer within her mother at age 58. Patient denies personal history of breast cancer."
val result = pipeline.fullAnnotate(text)
import nlu
nlu.load("en.classify.token_bert.jsl_slim.pipeline").predict("""HISTORY: 30-year-old female presents for digital bilateral mammography secondary to a soft tissue lump palpated by the patient in the upper right shoulder. The patient has a family history of breast cancer within her mother at age 58. Patient denies personal history of breast cancer.""")
Results
| | ner_chunk | begin | end | ner_label | confidence |
|---:|:-----------------|--------:|------:|:-------------|-------------:|
| 0 | HISTORY: | 0 | 7 | Header | 0.994786 |
| 1 | 30-year-old | 9 | 19 | Age | 0.982408 |
| 2 | female | 21 | 26 | Demographics | 0.99981 |
| 3 | mammography | 59 | 69 | Test | 0.993892 |
| 4 | soft tissue lump | 86 | 101 | Symptom | 0.999448 |
| 5 | shoulder | 146 | 153 | Body_Part | 0.99978 |
| 6 | breast cancer | 192 | 204 | Oncological | 0.999466 |
| 7 | her mother | 213 | 222 | Demographics | 0.997765 |
| 8 | age 58 | 227 | 232 | Age | 0.997636 |
| 9 | breast cancer | 270 | 282 | Oncological | 0.999452 |
Model Information
Model Name: | bert_token_classifier_ner_jsl_slim_pipeline |
Type: | pipeline |
Compatibility: | Healthcare NLP 4.4.4+ |
License: | Licensed |
Edition: | Official |
Language: | en |
Size: | 404.9 MB |
Included Models
- DocumentAssembler
- SentenceDetectorDLModel
- TokenizerModel
- MedicalBertForTokenClassifier
- NerConverter