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Med-BERT: pre-trained contextualized embeddings on large-scale structured electronic health records for disease prediction

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Deep learning (DL) based predictive models from electronic health records (EHR) deliver impressive performance in many clinical tasks. Large training cohorts, however, are often required to achieve high accuracy, hindering the adoption of DL-based models in scenarios with limited training data size. Recently, bidirectional encoder representations from transformers (BERT) and related models have achieved tremendous successes in the natural language processing domain. The pre-training of BERT on a very large training corpus generates contextualized embeddings that can boost the performance of models trained on smaller datasets. We propose Med-BERT, which adapts the BERT framework for pre-training contextualized embedding models on structured diagnosis data from 28,490,650 patients EHR dataset. Fine-tuning experiments are conducted on two disease-prediction tasks: (1) prediction of heart failure in patients with diabetes and (2) prediction of pancreatic cancer from two clinical databases. Med-BERT substantially improves prediction accuracy, boosting the area under receiver operating characteristics curve (AUC) by 2.02-7.12%. In particular, pre-trained Med-BERT substantially improves the performance of tasks with very small fine-tuning training sets (300-500 samples) boosting the AUC by more than 20% or equivalent to the AUC of 10 times larger training set. We believe that Med-BERT will benefit disease-prediction studies with small local training datasets, reduce data collection expenses, and accelerate the pace of artificial intelligence aided healthcare.

Laila Rasmy, Yang Xiang, Ziqian Xie, Cui Tao, Degui Zhi• 2020

Related benchmarks

TaskDatasetResultRank
Readmission predictionMIMIC IV
AUC-ROC0.6851
74
In-hospital mortality predictionMIMIC IV
AUROC0.9498
62
Mortality PredictioneICU
AUC-PRC0.8056
53
Readmission predictionMIMIC-III (target)
AUPRC62.9
48
In-hospital mortality predictionMIMIC-III
AUPRC75.28
36
ICU readmission predictionICU-Readmit 30d
AUROC0.715
16
Mortality Prediction1YR Mortality
AUROC74.9
16
In-hospital mortality predictionIn-hospital Mortality
AUROC90.7
16
Length-of-Stay PredictionLong LOS 7d
AUROC0.802
16
Prolonged Length of Stay (PLOS) PredictioneICU
F1 Score67.98
7
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