International Classification of Disease (ICD) coding plays a significant role in classify-ing morbidity and mortality rates. Currently, ICD codes are assigned to a patient's medical record by hand by medical practitioners or specialist clinical coders. This practice is prone to errors, and training skilled clinical coders requires time and human resources. Automatic prediction of ICD codes can help alleviate this burden. In this paper, we propose a transformer-based architecture with label-wise attention for predicting ICD codes on a medical dataset. The transformer model is first pre-trained from scratch on a medical dataset. Once this is done, the pre-trained model is used to generate representations of the tokens in the clinical document...
The International Classification of Diseases (ICD) is a globally recognized medical classification s...
The International Classification of Diseases (ICD) is a system for systematically recording patients...
International audienceMining medical data has significantly gained interest in the recent years than...
Abstract Background Clinical notes record the health status, clinical manifestations and other detai...
Abstract Background Clinical notes are unstructured text documents generated by clinicians during pa...
Automatic ICD coding is the task of assigning codes from the International Classification of Disease...
Automated ICD coding, which assigns the International Classification of Disease codes to patient vis...
We report on the design and evaluation of an original system to help assignment ICD (International C...
Background: The automatic coding of electronic medical records with ICD (International Classificatio...
Standard reference terminology of diagnoses and risk factors is crucial for billing, epidemiological...
A fundamental task for epidemiology, statistics, and health informatics is to associate some standar...
We present a semantically interpretable system for automated ICD coding of clinical text documents. ...
The international classification of diseases (ICD) is a widely used tool to describe patient diagnos...
The international classification of diseases (ICD) is a widely used tool to describe patient diagnos...
Thesis (MSc)--Stellenbosch University, 2021.ENGLISH ABSTRACT: Clinical coding is the process of desc...
The International Classification of Diseases (ICD) is a globally recognized medical classification s...
The International Classification of Diseases (ICD) is a system for systematically recording patients...
International audienceMining medical data has significantly gained interest in the recent years than...
Abstract Background Clinical notes record the health status, clinical manifestations and other detai...
Abstract Background Clinical notes are unstructured text documents generated by clinicians during pa...
Automatic ICD coding is the task of assigning codes from the International Classification of Disease...
Automated ICD coding, which assigns the International Classification of Disease codes to patient vis...
We report on the design and evaluation of an original system to help assignment ICD (International C...
Background: The automatic coding of electronic medical records with ICD (International Classificatio...
Standard reference terminology of diagnoses and risk factors is crucial for billing, epidemiological...
A fundamental task for epidemiology, statistics, and health informatics is to associate some standar...
We present a semantically interpretable system for automated ICD coding of clinical text documents. ...
The international classification of diseases (ICD) is a widely used tool to describe patient diagnos...
The international classification of diseases (ICD) is a widely used tool to describe patient diagnos...
Thesis (MSc)--Stellenbosch University, 2021.ENGLISH ABSTRACT: Clinical coding is the process of desc...
The International Classification of Diseases (ICD) is a globally recognized medical classification s...
The International Classification of Diseases (ICD) is a system for systematically recording patients...
International audienceMining medical data has significantly gained interest in the recent years than...