Zhang Mingyuan, Del Fiol Guilherme, Grout Randall W, Jonnalagadda Siddhartha, Medlin Richard, Mishra Rashmi, Weir Charlene, Liu Hongfang, Mostafa Javed, Fiszman Marcelo
Department of Biomedical Informatics, University of Utah, Salt Lake City, UT, USA.
Stud Health Technol Inform. 2013;192:846-50.
Online knowledge resources such as Medline can address most clinicians' patient care information needs. Yet, significant barriers, notably lack of time, limit the use of these sources at the point of care. The most common information needs raised by clinicians are treatment-related. Comparative effectiveness studies allow clinicians to consider multiple treatment alternatives for a particular problem. Still, solutions are needed to enable efficient and effective consumption of comparative effectiveness research at the point of care.
Design and assess an algorithm for automatically identifying comparative effectiveness studies and extracting the interventions investigated in these studies.
The algorithm combines semantic natural language processing, Medline citation metadata, and machine learning techniques. We assessed the algorithm in a case study of treatment alternatives for depression.
Both precision and recall for identifying comparative studies was 0.83. A total of 86% of the interventions extracted perfectly or partially matched the gold standard.
Overall, the algorithm achieved reasonable performance. The method provides building blocks for the automatic summarization of comparative effectiveness research to inform point of care decision-making.
诸如Medline之类的在线知识资源能够满足大多数临床医生对患者护理信息的需求。然而,显著的障碍,尤其是时间短缺,限制了这些资源在医疗现场的使用。临床医生提出的最常见信息需求与治疗相关。比较有效性研究使临床医生能够针对特定问题考虑多种治疗方案。尽管如此,仍需要解决方案,以便在医疗现场高效且有效地利用比较有效性研究。
设计并评估一种用于自动识别比较有效性研究并提取这些研究中所调查干预措施的算法。
该算法结合了语义自然语言处理、Medline引文元数据和机器学习技术。我们在抑郁症治疗方案的案例研究中评估了该算法。
识别比较研究的精确率和召回率均为0.83。总共86%的提取干预措施与金标准完全或部分匹配。
总体而言,该算法取得了合理的性能。该方法为自动总结比较有效性研究以指导医疗现场决策提供了基础。