首页> 外文期刊>Clinical gastroenterology and hepatology: the official clinical practice journal of the American Gastroenterological Association >Natural language processing accurately categorizes findings from colonoscopy and pathology reports.
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Natural language processing accurately categorizes findings from colonoscopy and pathology reports.

机译:自然语言处理可以对结肠镜检查和病理报告中的发现进行准确分类。

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Little is known about the ability of natural language processing (NLP) to extract meaningful information from free-text gastroenterology reports for secondary use.We randomly selected 500 linked colonoscopy and pathology reports from 10,798 nonsurveillance colonoscopies to train and test the NLP system. By using annotation by gastroenterologists as the reference standard, we assessed the accuracy of an open-source NLP engine that processed and extracted clinically relevant concepts. The primary outcome was the highest level of pathology. Secondary outcomes were location of the most advanced lesion, largest size of an adenoma removed, and number of adenomas removed.The NLP system identified the highest level of pathology with 98% accuracy, compared with triplicate annotation by gastroenterologists (the standard). Accuracy values for location, size, and number were 97%, 96%, and 84%, respectively.The NLP can extract specific meaningful concepts with 98% accuracy. It might be developed as a method to further quantify specific quality metrics.
机译:人们对自然语言处理(NLP)从自由文本胃肠病学报告中提取有意义的信息以供二次使用的能力知之甚少。我们从10798例非监测结肠镜检查中随机选择了500例相关的结肠镜检查和病理学报告来训练和测试NLP系统。通过使用胃肠病医生的注释作为参考标准,我们评估了处理和提取临床相关概念的开源NLP引擎的准确性。主要结果是病理水平最高。次要结果是病变最严重的部位,切除的最大腺瘤大小和切除的腺瘤数量。与胃肠病学家一式三份进行注释(标准)相比,NLP系统以98%的准确率确定了最高病理水平。位置,大小和数字的准确度值分别为97%,96%和84%。NLP可以以98%的准确度提取特定有意义的概念。它可能被开发为进一步量化特定质量指标的方法。

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