Wagholikar Amol, Zuccon Guido, Nguyen Anthony, Chu Kevin, Martin Shane, Lai Kim, Greenslade Jaimi
The Australian e-Health Research Centre, Brisbane, CSIRO.
Australas Med J. 2013 May 30;6(5):301-7. doi: 10.4066/AMJ.2013.1651. Print 2013.
Timely diagnosis and reporting of patient symptoms in hospital emergency departments (ED) is a critical component of health services delivery. However, due to dispersed information resources and a vast amount of manual processing of unstructured information, accurate point-of-care diagnosis is often difficult.
The aim of this research is to report initial experimental evaluation of a clinician-informed automated method for the issue of initial misdiagnoses associated with delayed receipt of unstructured radiology reports.
A method was developed that resembles clinical reasoning for identifying limb abnormalities. The method consists of a gazetteer of keywords related to radiological findings; the method classifies an X-ray report as abnormal if it contains evidence contained in the gazetteer. A set of 99 narrative reports of radiological findings was sourced from a tertiary hospital. Reports were manually assessed by two clinicians and discrepancies were validated by a third expert ED clinician; the final manual classification generated by the expert ED clinician was used as ground truth to empirically evaluate the approach.
The automated method that attempts to individuate limb abnormalities by searching for keywords expressed by clinicians achieved an F-measure of 0.80 and an accuracy of 0.80.
While the automated clinician-driven method achieved promising performances, a number of avenues for improvement were identified using advanced natural language processing (NLP) and machine learning techniques.
在医院急诊科及时诊断和报告患者症状是医疗服务提供的关键组成部分。然而,由于信息资源分散以及大量非结构化信息的人工处理,即时医疗诊断往往困难重重。
本研究的目的是报告一种由临床医生提供信息的自动化方法的初步实验评估,该方法用于解决与非结构化放射学报告延迟接收相关的初始误诊问题。
开发了一种类似于临床推理的方法来识别肢体异常。该方法由一个与放射学发现相关的关键词词典组成;如果X射线报告包含词典中的证据,则将其分类为异常。从一家三级医院获取了一组99份放射学发现的叙述性报告。由两名临床医生进行人工评估,并由第三位急诊科专家临床医生验证差异;由急诊科专家临床医生生成的最终人工分类用作实际评估该方法的基本事实。
通过搜索临床医生表达的关键词来试图识别肢体异常的自动化方法,F值为0.80,准确率为0.80。
虽然由临床医生驱动的自动化方法取得了不错的性能,但使用先进的自然语言处理(NLP)和机器学习技术确定了一些改进途径。