--- language: en tags: - bert - medical - clinical - text-classification - transformers - diagnosis thumbnail: https://core.app.datexis.com/static/paper.png inference: true widget: - text: Patient with hypertension presents to ICU. --- # CORe Model - Clinical Diagnosis Prediction ## Model description The CORe (_Clinical Outcome Representations_) model is introduced in the paper [Clinical Outcome Predictions from Admission Notes using Self-Supervised Knowledge Integration](https://www.aclweb.org/anthology/2021.eacl-main.75.pdf). It is based on BioBERT and further pre-trained on clinical notes, disease descriptions and medical articles with a specialised _Clinical Outcome Pre-Training_ objective. This model checkpoint is **fine-tuned on the task of diagnosis prediction**. The model expects patient admission notes as input and outputs multi-label ICD9-code predictions. #### Model Predictions The model makes predictions on a total of 9237 labels. These contain 3- and 4-digit ICD9 codes and textual descriptions of these codes. The 4-digit codes and textual descriptions help to incorporate further topical and hierarchical information into the model during training (see Section 4.2 _ICD+: Incorporation of ICD Hierarchy_ in our paper). We recommend to only use the **3-digit code predictions at inference time**, because only those have been evaluated in our work. #### How to use CORe Diagnosis Prediction You can load the model via the transformers library: ``` from transformers import AutoTokenizer, AutoModelForSequenceClassification tokenizer = AutoTokenizer.from_pretrained("bvanaken/CORe-clinical-diagnosis-prediction") model = AutoModelForSequenceClassification.from_pretrained("bvanaken/CORe-clinical-diagnosis-prediction") ``` The following code shows an inference example: ``` input = "CHIEF COMPLAINT: Headaches\n\nPRESENT ILLNESS: 58yo man w/ hx of hypertension, AFib on coumadin presented to ED with the worst headache of his life." tokenized_input = tokenizer(input, return_tensors="pt") output = model(**tokenized_input) import torch predictions = torch.sigmoid(output.logits) predicted_labels = [model.config.id2label[_id] for _id in (predictions > 0.3).nonzero()[:, 1].tolist()] ``` Note: For the best performance, we recommend to determine the thresholds (0.3 in this example) individually per label. ### More Information For all the details about CORe and contact info, please visit [CORe.app.datexis.com](http://core.app.datexis.com/). ### Cite ```bibtex @inproceedings{vanaken21, author = {Betty van Aken and Jens-Michalis Papaioannou and Manuel Mayrdorfer and Klemens Budde and Felix A. Gers and Alexander Löser}, title = {Clinical Outcome Prediction from Admission Notes using Self-Supervised Knowledge Integration}, booktitle = {Proceedings of the 16th Conference of the European Chapter of the Association for Computational Linguistics: Main Volume, {EACL} 2021, Online, April 19 - 23, 2021}, publisher = {Association for Computational Linguistics}, year = {2021}, } ```