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Impact of Automatic Query Generation and Quality Recognition Using Deep Learning to Curate Evidence From Biomedical Literature: Empirical Study

机译:自动查询生成和质量识别的影响利用深度学习策划生物医学文学的证据:实证研究

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Background The quality of health care is continuously improving and is expected to improve further because of the advancement of machine learning and knowledge-based techniques along with innovation and availability of wearable sensors. With these advancements, health care professionals are now becoming more interested and involved in seeking scientific research evidence from external sources for decision making relevant to medical diagnosis, treatments, and prognosis. Not much work has been done to develop methods for unobtrusive and seamless curation of data from the biomedical literature. Objective This study aimed to design a framework that can enable bringing quality publications intelligently to the users’ desk to assist medical practitioners in answering clinical questions and fulfilling their informational needs. Methods The proposed framework consists of methods for efficient biomedical literature curation, including the automatic construction of a well-built question, the recognition of evidence quality by proposing extended quality recognition model (E-QRM), and the ranking and summarization of the extracted evidence. Results Unlike previous works, the proposed framework systematically integrates the echelons of biomedical literature curation by including methods for searching queries, content quality assessments, and ranking and summarization. Using an ensemble approach, our high-impact classifier E-QRM obtained significantly improved accuracy than the existing quality recognition model (1723/1894, 90.97% vs 1462/1894, 77.21%). Conclusions Our proposed methods and evaluation demonstrate the validity and rigorousness of the results, which can be used in different applications, including evidence-based medicine, precision medicine, and medical education.
机译:背景技术保健质量不断改进,预计由于机器学习和基于知识的技术以及可穿戴传感器的创新和可用性以及可穿戴传感器的创新和可用性,预计进一步提高。通过这些进步,医疗保健专业人员现在正在变得更加感兴趣,并且参与从外部来源寻求科学研究证据,以决策与医学诊断,治疗和预后相关。已经完成了没有多少工作来开发从生物医学文献的无引起的和无缝的数据策策的方法。目的本研究旨在设计一个框架,可以实现智能地将质量出版物带到用户的办公桌,以帮助医生在回答临床问题并满足他们的信息需求。方法采用拟议的框架由有效的生物医学文献策策的方法组成,包括自动构建一个良好的问题,通过提出扩展质量识别模型(E-QRM),以及提取证据的排名和总结的识别证据质量。结果与之前的作品不同,所提出的框架通过包括搜索查询,内容质量评估和排序和概述的方法来系统地整合生物医学文献策择梯度。使用集合方法,我们的高冲击分类器E-QRM获得了比现有质量识别模型的准确性显着提高(1723/1894,90.97%VS 1462 / 1894,77.21%)。结论我们所提出的方法和评价表明了结果的有效性和严格,可用于不同的应用,包括循证医学,精密医学和医学教育。

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