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Automated Classification of Radiology Reports to Facilitate Retrospective Study in Radiology

机译:放射学报告的自动分类以促进放射学的回顾性研究

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摘要

Retrospective research is an import tool in radiology. Identifying imaging examinations appropriate for a given research question from the unstructured radiology reports is extremely useful, but labor-intensive. Using the machine learning text-mining methods implemented in LingPipe [], we evaluated the performance of the dynamic language model (DLM) and the Naïve Bayesian (NB) classifiers in classifying radiology reports to facilitate identification of radiological examinations for research projects. The training dataset consisted of 14,325 sentences from 11,432 radiology reports randomly selected from a database of 5,104,594 reports in all disciplines of radiology. The training sentences were categorized manually into six categories (Positive, Differential, Post Treatment, Negative, Normal, and History). A 10-fold cross-validation [] was used to evaluate the performance of the models, which were tested in classification of radiology reports for cases of sellar or suprasellar masses and colloid cysts. The average accuracies for the DLM and NB classifiers were 88.5 % with 95 % confidence interval (CI) of 1.9 % and 85.9 % with 95 % CI of 2.0 %, respectively. The DLM performed slightly better and was used to classify 1,397 radiology reports containing the keywords “sellar or suprasellar mass”, or “colloid cyst”. The DLM model produced an accuracy of 88.2 % with 95 % CI of 2.1 % for 959 reports that contain “sellar or suprasellar mass” and an accuracy of 86.3 % with 95 % CI of 2.5 % for 437 reports of “colloid cyst”. We conclude that automated classification of radiology reports using machine learning techniques can effectively facilitate the identification of cases suitable for retrospective research.
机译:回顾性研究是放射学的重要工具。从非结构化放射学报告中确定适合给定研究问题的影像学检查非常有用,但劳动强度大。使用LingPipe []中实现的机器学习文本挖掘方法,我们评估了动态语言模型(DLM)和朴素贝叶斯(NB)分类器在对放射学报告进行分类中的性能,以帮助识别研究项目的放射学检查。训练数据集由来自11 432份放射学报告的14 325个句子组成,这些句子是从所有放射学学科的5104 594个报告的数据库中随机选择的。手动将训练句子分为六类(正面,差异,后处理,负面,正常和历史)。使用10倍交叉验证[]来评估模型的性能,并在放射学报告分类中对蝶鞍或鞍上肿块和胶体囊肿的情况进行了测试。 DLM和NB分类器的平均准确度分别为88.5%和95%置信区间(CI)为1.9%和85.9%和95%CI为2.0%。 DLM的效果略好一些,被用于分类包含关键词“鞍状或鞍上肿块”或“胶体囊肿”的1,397份放射学报告。 DLM模型对于959个包含“单核或鞍上质量”的报告产生了88.2%的准确度,其中95%CI为2.1%,对于437个“胶体囊肿”的报告产生了86.3%的准确度,其中95%CI为2.5%。我们得出的结论是,使用机器学习技术对放射学报告进行自动分类可以有效地帮助确定适合回顾性研究的病例。

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