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Knowledge Representations and Inference Techniques for Medical Question Answering

机译:医学问答中的知识表示和推理技术

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Answering medical questions related to complex medical cases, as required in modern Clinical Decision Support (CDS) systems, imposes (1) access to vast medical knowledge and (2) sophisticated inference techniques. In this article, we examine the representation and role of combining medical knowledge automatically derived from (a) clinical practice and (b) research findings for inferring answers to medical questions. Knowledge from medical practice was distilled from a vast Electronic Medical Record (EMR) system, while research knowledge was processed from biomedical articles available in PubMed Central. The knowledge automatically acquired from the EMR system took into account the clinical picture and therapy recognized from each medical record to generate a probabilistic Markov network denoted as a Clinical Picture and Therapy Graph (CPTG). Moreover, we represented the background of medical questions available from the description of each complex medical case as a medical knowledge sketch. We considered three possible representations of medical knowledge sketches that were used by four different probabilistic inference methods to pinpoint the answers from the CPTG. In addition, several answer-informed relevance models were developed to provide a ranked list of biomedical articles containing the answers. Evaluations on the TREC-CDS data show which of the medical knowledge representations and inference methods perform optimally. The experiments indicate an improvement of biomedical article ranking by 49% over state-of-the-art results.
机译:根据现代临床决策支持(CDS)系统的要求,回答与复杂医疗案例有关的医疗问题会导致(1)获得大量医学知识和(2)先进的推理技术。在本文中,我们研究了结合自动从(a)临床实践和(b)研究结果中推断出医学问题答案的医学知识的表示形式和作用。来自医学实践的知识是从庞大的电子病历(EMR)系统中提取出来的,而研究知识则是从PubMed Central中可用的生物医学文章中处理的。从EMR系统自动获取的知识考虑了从每个病历中识别出的临床图像和治疗方法,以生成一个概率马尔可夫网络,表示为临床图像和治疗图(CPTG)。此外,我们将每个复杂医疗案例的描述中可用的医疗问题的背景表示为医疗知识草图。我们考虑了医学知识草图的三种可能表示形式,它们被四种不同的概率推理方法用来确定CPTG的答案。另外,开发了几种答案相关的信息模型,以提供包含答案的生物医学文章的排名列表。对TREC-CDS数据的评估表明,哪种医学知识表示和推理方法效果最佳。实验表明,生物医学制品的排名比最新结果提高了49%。

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