2022
DOI: 10.48550/arxiv.2204.08997
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A Benchmark for Automatic Medical Consultation System: Frameworks, Tasks and Datasets

Abstract: Motivation:In recent years, interest has arisen in using machine learning to improve the efficiency of automatic medical consultation and enhance patient experience. In this paper, we propose two frameworks to support automatic medical consultation, namely doctor-patient dialogue understanding and taskoriented interaction. A new large medical dialogue dataset with multi-level fine-grained annotations is introduced and five independent tasks are established, including named entity recognition, dialogue act clas… Show more

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“…Symptom Attribute Symptoms are widely present in actual doctor-patient conversations, they are the main topics discussed in medical dialogues and important basis for doctors to make diagnosis (Zeng et al, 2020;Chen et al, 2022). However, symptoms alone in the dialogue are less informative, additional annotations are needed to find the relationship between symptoms and patients.…”
Section: Formalizationmentioning
confidence: 99%
“…Symptom Attribute Symptoms are widely present in actual doctor-patient conversations, they are the main topics discussed in medical dialogues and important basis for doctors to make diagnosis (Zeng et al, 2020;Chen et al, 2022). However, symptoms alone in the dialogue are less informative, additional annotations are needed to find the relationship between symptoms and patients.…”
Section: Formalizationmentioning
confidence: 99%