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首页> 外文期刊>Health informatics journal >Psychiatric stressor recognition from clinical notes to reveal association with suicide
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Psychiatric stressor recognition from clinical notes to reveal association with suicide

机译:从临床票据识别与自杀的临床注意事项

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摘要

Suicide takes the lives of nearly a million people each year and it is a tremendous economic burden globally. One important type of suicide risk factor is psychiatric stress. Prior studies mainly use survey data to investigate the association between suicide and stressors. Very few studies have investigated stressor data in electronic health records, mostly due to the data being recorded in narrative text. This study takes the initiative to automatically extract and classify psychiatric stressors from clinical text using natural language processing-based methods. Suicidal behaviors were also identified by keywords. Then, a statistical association analysis between suicide ideations/attempts and stressors extracted from a clinical corpus is conducted. Experimental results show that our natural language processing method could recognize stressor entities with an F-measure of 89.01percent. Mentions of suicidal behaviors were identified with an F-measure of 97.3percent. The top three significant stressors associated with suicide are health, pressure, and death, which are similar to previous studies. This study demonstrates the feasibility of using natural language processing approaches to unlock information from psychiatric notes in electronic health record, to facilitate large-scale studies about associations between suicide and psychiatric stressors.
机译:自杀每年占据近一百万人的生活,这是全球经济巨大的负担。一种重要类型的自杀危险因素是精神病患者。事先研究主要使用调查数据来研究自杀和压力源之间的关联。很少有研究在电子健康记录中调查了压力源数据,主要是由于叙述文本中记录的数据。本研究主动采用基于自然语言处理的方法从临床文本中自动提取和分类精神病患者。通过关键字识别自杀行为。然后,进行自杀式偶像/尝试和从临床语料中提取的试验和压力源之间的统计关联分析。实验结果表明,我们的自然语言加工方法可以识别89.01平方的F测量值的压力实体。用97.3percent的F测量确定了自杀行为的提升。与自杀相关的前三名重要压力是健康,压力和死亡,类似于以前的研究。本研究展示了利用自然语言处理方法解锁电子健康记录中精神病票据的信息的可行性,以促进自杀和精神病患者之间的缔约国的大规模研究。

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