Health literacy, i.e. the ability to read and understand medical text, is a relevant component of public health. Unfortunately, many medical texts are hard to grasp by the general population as they are targeted at highly-skilled professionals and use complex language and domain-specific terms. Here, automatic text simplification making text commonly understandable would be very beneficial. However, research and development into medical text simplification is hindered by the lack of openly available training and test corpora which contain complex medical sentences and their aligned simplified versions. In this paper, we introduce such a dataset to aid medical text simplification research. The dataset is created by filtering aligned health s...
International audienceParallel sentences provide semantically similar information which can vary on ...
The article at hand aggregates the work of our group in automatic processing of simplified German. W...
We are developing algorithms for semi-automated simplification of medical text. Based on lexical and...
Health literacy, i.e. the ability to read and understand medical text, is a relevant component of pu...
We consider the problem of learning to simplify medical texts. This is important because most reliab...
Limited health literacy is a barrier to understanding health information. Simplifying text can reduc...
Automatic medical text simplification can assist providers with patient-friendly communication and m...
Automatic text simplification is a subdomain of natural language processing (NLP). It aims at proces...
In this thesis we introduce the problem of paragraph simplification in the medical domain. We produc...
International audienceParallel sentences provide semantically similar information which can vary on ...
There are rich opportunities to reduce the language complexity of professional content (either human...
A collection of 24.298 pairs of professional and simplified texts (>96 million tokens): 1) Drug leaf...
This paper presents MedSimples, an authoring tool that combines Natural Language Processing, Corpus ...
Clinical letters are infamously impenetrable for the lay patient. This work uses neural text simplif...
With the increasing demand for improved health literacy, better tools are needed to produce personal...
International audienceParallel sentences provide semantically similar information which can vary on ...
The article at hand aggregates the work of our group in automatic processing of simplified German. W...
We are developing algorithms for semi-automated simplification of medical text. Based on lexical and...
Health literacy, i.e. the ability to read and understand medical text, is a relevant component of pu...
We consider the problem of learning to simplify medical texts. This is important because most reliab...
Limited health literacy is a barrier to understanding health information. Simplifying text can reduc...
Automatic medical text simplification can assist providers with patient-friendly communication and m...
Automatic text simplification is a subdomain of natural language processing (NLP). It aims at proces...
In this thesis we introduce the problem of paragraph simplification in the medical domain. We produc...
International audienceParallel sentences provide semantically similar information which can vary on ...
There are rich opportunities to reduce the language complexity of professional content (either human...
A collection of 24.298 pairs of professional and simplified texts (>96 million tokens): 1) Drug leaf...
This paper presents MedSimples, an authoring tool that combines Natural Language Processing, Corpus ...
Clinical letters are infamously impenetrable for the lay patient. This work uses neural text simplif...
With the increasing demand for improved health literacy, better tools are needed to produce personal...
International audienceParallel sentences provide semantically similar information which can vary on ...
The article at hand aggregates the work of our group in automatic processing of simplified German. W...
We are developing algorithms for semi-automated simplification of medical text. Based on lexical and...