Applying unsupervised keyphrase methods on concepts extracted from discharge sheets

03/15/2023
by   Hoda Memarzadeh, et al.
0

Clinical notes containing valuable patient information are written by different health care providers with various scientific levels and writing styles. It might be helpful for clinicians and researchers to understand what information is essential when dealing with extensive electronic medical records. Entities recognizing and mapping them to standard terminologies is crucial in reducing ambiguity in processing clinical notes. Although named entity recognition and entity linking are critical steps in clinical natural language processing, they can also result in the production of repetitive and low-value concepts. In other hand, all parts of a clinical text do not share the same importance or content in predicting the patient's condition. As a result, it is necessary to identify the section in which each content is recorded and also to identify key concepts to extract meaning from clinical texts. In this study, these challenges have been addressed by using clinical natural language processing techniques. In addition, in order to identify key concepts, a set of popular unsupervised key phrase extraction methods has been verified and evaluated. Considering that most of the clinical concepts are in the form of multi-word expressions and their accurate identification requires the user to specify n-gram range, we have proposed a shortcut method to preserve the structure of the expression based on TF-IDF. In order to evaluate the pre-processing method and select the concepts, we have designed two types of downstream tasks (multiple and binary classification) using the capabilities of transformer-based models. The obtained results show the superiority of proposed method in combination with SciBERT model, also offer an insight into the efficacy of general extracting essential phrase methods for clinical notes.

READ FULL TEXT
research
03/24/2022

Classifying Cyber-Risky Clinical Notes by Employing Natural Language Processing

Clinical notes, which can be embedded into electronic medical records, d...
research
07/22/2022

Assessing mortality prediction through different representation models based on concepts extracted from clinical notes

Recent years have seen particular interest in using electronic medical r...
research
08/16/2021

Hybrid deep learning methods for phenotype prediction from clinical notes

Identifying patient cohorts from clinical notes in secondary electronic ...
research
03/03/2020

Med7: a transferable clinical natural language processing model for electronic health records

The field of clinical natural language processing has been advanced sign...
research
01/19/2021

Inferring COVID-19 Biological Pathways from Clinical Phenotypes via Topological Analysis

COVID-19 has caused thousands of deaths around the world and also result...
research
03/06/2018

CliNER 2.0: Accessible and Accurate Clinical Concept Extraction

Clinical notes often describe important aspects of a patient's stay and ...
research
05/21/2020

Extracting Daily Dosage from Medication Instructions in EHRs: An Automated Approach and Lessons Learned

Understanding a patient's medication history is essential for physicians...

Please sign up or login with your details

Forgot password? Click here to reset