Domain Specific Transformers-Based Prioritization of Readmission for Patients in Healthcare
Abstract
Hospital re-admissions are not only resource-intensive but also a key indicator
of healthcare quality. Therefore, there is a critical need to enhance the efficiency of
healthcare systems by accurately identifying patients at a higher risk of readmission.
While several prediction models were built before for predicting the re-admission of
patients, no research study focused on the prioritization of patient readmissions. Thus,
in this research, we focused on developing a predictive model to prioritize the
readmissions of patients based on their discharge summaries. To enhance the model's
performance and address class imbalance problems in this dataset, various data
balancing techniques were investigated. BioBERT was utilized for feature extraction
during model training. The capabilities of Optuna framework were leveraged for
hyperparameter optimization. By utilizing this framework, we significantly reduced
training time and computational resources. The predictive model exhibits remarkable
performance when evaluated on the testing dataset. The experimental results signify the
model's potential to effectively prioritize patient re-admissions, thereby contributing to
more informed and efficient healthcare decision-making processes.
DOI/handle
http://hdl.handle.net/10576/51458Collections
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