Pace University, New York, NY, USA.
Florida state University, Tallahassee, FL, USA.
AMIA Annu Symp Proc. 2021 Jan 25;2020:783-792. eCollection 2020.
Patients face challenges in accurately interpreting their lab test results. To fulfill their knowledge gap, patients often turn to online resources, such as Community Question-Answering (CQA) sites, to seek meaningful information and support from their peers. Retrieving the most relevant information to patients' queries is important to help patients understand lab test results. However, few studies investigated the retrieval of lab test-related questions on CQA platforms. To address this research gap, we build and evaluate a system that automatically ranks questions about lab tests based on their similarity to a given question. The system is tested using diabetes-related questions collected from Yahoo! Answers' health section. Experimental results show that the regression-weighted combination of deep representations and shallow features was most effective in the Yahoo! Answers dataset. The proposed system can be extended to medical question retrieval, where questions contain a variety of lab tests.
患者在准确解读实验室检查结果方面面临挑战。为了弥补知识差距,患者通常会转向在线资源,例如社区问答 (CQA) 网站,从同行那里寻求有意义的信息和支持。检索与患者查询最相关的信息对于帮助患者理解实验室检查结果很重要。然而,很少有研究调查在 CQA 平台上检索与实验室检查相关的问题。为了解决这一研究空白,我们构建并评估了一个系统,该系统可以根据与给定问题的相似性自动对实验室检查相关问题进行排名。该系统使用从雅虎!Answers 健康版块收集的糖尿病相关问题进行测试。实验结果表明,在 Yahoo! 回答数据集上,深度表示和浅层特征的回归加权组合效果最佳。所提出的系统可以扩展到医学问题检索,其中问题包含各种实验室检查。