Dialogue-Contextualized Re-ranking for Medical History-Taking

April 04, 2023 ยท Declared Dead ยท ๐Ÿ› Machine Learning in Health Care

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Authors Jian Zhu, Ilya Valmianski, Anitha Kannan arXiv ID 2304.01974 Category cs.CL: Computation & Language Cross-listed cs.IR Citations 1 Venue Machine Learning in Health Care Last Checked 4 months ago
Abstract
AI-driven medical history-taking is an important component in symptom checking, automated patient intake, triage, and other AI virtual care applications. As history-taking is extremely varied, machine learning models require a significant amount of data to train. To overcome this challenge, existing systems are developed using indirect data or expert knowledge. This leads to a training-inference gap as models are trained on different kinds of data than what they observe at inference time. In this work, we present a two-stage re-ranking approach that helps close the training-inference gap by re-ranking the first-stage question candidates using a dialogue-contextualized model. For this, we propose a new model, global re-ranker, which cross-encodes the dialogue with all questions simultaneously, and compare it with several existing neural baselines. We test both transformer and S4-based language model backbones. We find that relative to the expert system, the best performance is achieved by our proposed global re-ranker with a transformer backbone, resulting in a 30% higher normalized discount cumulative gain (nDCG) and a 77% higher mean average precision (mAP).
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