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Medical Question Understanding and Answering with Knowledge Grounding and Semantic Self-Supervision

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arxiv 2209.15301 v1 pith:WNWUWIQY submitted 2022-09-30 cs.CL

Medical Question Understanding and Answering with Knowledge Grounding and Semantic Self-Supervision

classification cs.CL
keywords questionsystemmedicalansweringanswersknowledgequestionsanswer
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Current medical question answering systems have difficulty processing long, detailed and informally worded questions submitted by patients, called Consumer Health Questions (CHQs). To address this issue, we introduce a medical question understanding and answering system with knowledge grounding and semantic self-supervision. Our system is a pipeline that first summarizes a long, medical, user-written question, using a supervised summarization loss. Then, our system performs a two-step retrieval to return answers. The system first matches the summarized user question with an FAQ from a trusted medical knowledge base, and then retrieves a fixed number of relevant sentences from the corresponding answer document. In the absence of labels for question matching or answer relevance, we design 3 novel, self-supervised and semantically-guided losses. We evaluate our model against two strong retrieval-based question answering baselines. Evaluators ask their own questions and rate the answers retrieved by our baselines and own system according to their relevance. They find that our system retrieves more relevant answers, while achieving speeds 20 times faster. Our self-supervised losses also help the summarizer achieve higher scores in ROUGE, as well as in human evaluation metrics. We release our code to encourage further research.

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