Brief Hospital Course (BHC) summaries are succinct summaries of an entire hospital encounter, embedded within discharge summaries, written by senior clinicians responsible for the overall care of a patient. Methods to automatically produce summaries from inpatient documentation would be invaluable in reducing clinician manual burden of summarising documents under high time-pressure to admit and discharge patients. Automatically producing these summaries from the inpatient course, is a complex, multi-document summarisation task, as source notes are written from various perspectives (e.g. nursing, doctor, radiology), during the course of the hospitalisation. We demonstrate a range of methods for BHC summarisation demonstrating the performance of deep learning summarisation models across extractive and abstractive summarisation scenarios. We also test a novel ensemble extractive and abstractive summarisation model that incorporates a medical concept ontology (SNOMED) as a clinical guidance signal and shows superior performance in 2 real-world clinical data sets.
翻译:短期住院病历(BHC)摘要是整个住院记录的简洁摘要,嵌入在出院摘要中,由负责患者全面护理的高级临床医生撰写。自动从住院记录生成摘要的方法将在减轻临床医生对在高时间压力下摘要文件的手动负担方面非常有价值。从住院过程自动产生这些总结是一项复杂的、多文档总结任务,因为在住院期间,源笔记是从各个透视角度(如护理、医生、放射学)编写的。我们展示了各种方法用于BHC摘要,展示了深度学习摘要模型在提取和抽象摘要场景下的性能。我们还测试了一种新颖的组合提取和抽象摘要模型,它包含医学概念本体(SNOMED)作为临床指导信号,并在两个实际临床数据集中显示出优越的性能。