Medical dialogue generation aims to generate responses according to a history of dialogue turns between doctors and patients. Unlike open-domain dialogue generation, this requires background knowledge specific to the medical domain. Existing generative frameworks for medical dialogue generation fall short of incorporating domain-specific knowledge, especially with regard to medical terminology. In this paper, we propose a novel framework to improve medical dialogue generation by considering features centered on domain-specific terminology. We leverage an attention mechanism to incorporate terminologically centred features, and fill in the semantic gap between medical background knowledge and common utterances by enforcing language models to...
Medication recommendation is a crucial task for intelligent healthcare systems. Previous studies mai...
Spoken medical dialogue is a valuable source of information, and it forms a foundation for diagnosis...
International audienceA key bottleneck for developing dialog models is the lack of adequate training...
Medical dialogue systems have the potential to assist doctors in expanding access to medical care, i...
International audienceVirtual patient software allows health professionals to practice their skills ...
Medical Dialogue Generation (MDG) is intended to build a medical dialogue system for intelligent con...
Developing conversational agents to interact with patients and provide primary clinical advice has a...
Applying Artificial Intelligence (AI) techniques such as natural language generation in assisting me...
The automated capturing and summarization of medical consultations has the potential to reduce the a...
Making inference on clinical texts is a task which has not been fully studied. With the newly releas...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
AbstractThis paper presents some research undertaken as part of the EU-funded HOMEY project, into th...
International audienceHealth care professionals experience difficulties in the correct medical regis...
Information extraction from conversational data is particularly challenging because the task-centric...
AbstractMedical terminologies are important for unambiguous encoding and exchange of clinical inform...
Medication recommendation is a crucial task for intelligent healthcare systems. Previous studies mai...
Spoken medical dialogue is a valuable source of information, and it forms a foundation for diagnosis...
International audienceA key bottleneck for developing dialog models is the lack of adequate training...
Medical dialogue systems have the potential to assist doctors in expanding access to medical care, i...
International audienceVirtual patient software allows health professionals to practice their skills ...
Medical Dialogue Generation (MDG) is intended to build a medical dialogue system for intelligent con...
Developing conversational agents to interact with patients and provide primary clinical advice has a...
Applying Artificial Intelligence (AI) techniques such as natural language generation in assisting me...
The automated capturing and summarization of medical consultations has the potential to reduce the a...
Making inference on clinical texts is a task which has not been fully studied. With the newly releas...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
AbstractThis paper presents some research undertaken as part of the EU-funded HOMEY project, into th...
International audienceHealth care professionals experience difficulties in the correct medical regis...
Information extraction from conversational data is particularly challenging because the task-centric...
AbstractMedical terminologies are important for unambiguous encoding and exchange of clinical inform...
Medication recommendation is a crucial task for intelligent healthcare systems. Previous studies mai...
Spoken medical dialogue is a valuable source of information, and it forms a foundation for diagnosis...
International audienceA key bottleneck for developing dialog models is the lack of adequate training...