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Harnessing information from injury narrative in the 'big data' era: Understanding and applying machine learning for injury surveillance

机译:在“大数据”时代利用来自伤害叙事的信息:了解和应用机器学习进行伤害监测

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摘要

ObjectiveududVast amounts of injury narratives are collected daily and are available electronically in real time and have great potential for use in injury surveillance and evaluation. Machine learning algorithms have been developed to assist in identifying cases and classifying mechanisms leading to injury in a much timelier manner than is possible when relying on manual coding of narratives. The aim of this paper is to describe the background, growth, value, challenges and future directions of machine learning as applied to injury surveillance. ududMethodsududThis paper reviews key aspects of machine learning using injury narratives, providing a case study to demonstrate an application to an established human-machine learning approach. ududResultsududThe range of applications and utility of narrative text has increased greatly with advancements in computing techniques over time. Practical and feasible methods exist for semi-automatic classification of injury narratives which are accurate, efficient and meaningful. The human-machine learning approach described in the case study achieved high sensitivity and positive predictive value and reduced the need for human coding to less than one-third of cases in one large occupational injury database. ududConclusionududThe last 20 years have seen a dramatic change in the potential for technological advancements in injury surveillance. Machine learning of ‘big injury narrative data’ opens up many possibilities for expanded sources of data which can provide more comprehensive, ongoing and timely surveillance to inform future injury prevention policy and practice.
机译:目标 ud ud每天收集大量的伤害说明,并且可以实时以电子方式获取,并且有很大的潜力可用于伤害监测和评估。已经开发了机器学习算法,以比依赖于人工叙述的方式更及时的方式来帮助识别导致伤害的案件和机制。本文的目的是描述应用于损伤监测的机器学习的背景,增长,价值,挑战和未来方向。本文回顾了使用伤害叙事的机器学习的关键方面,并提供了一个案例研究来证明其在已建立的人机学习方法中的应用。 ud udResults ud ud随着时间的推移,叙事文本的应用范围和实用性随着计算技术的进步而大大增加。存在用于损伤叙述的半自动分类的实用且可行的方法,该方法是准确,有效和有意义的。案例研究中描述的人机学习方法实现了高灵敏度和积极的预测价值,并且在一个大型的职业伤害数据库中将对人类编码的需求减少到不到三分之一。 ud ud结论 ud ud在过去的20年中,伤害监测技术进步的潜力发生了巨大变化。机器学习“大伤害叙述数据”为扩展数据源提供了许多可能性,这些数据源可以提供更全面,持续和及时的监视,以为将来的伤害预防政策和实践提供信息。

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