偶然发现的肺结节放射学报告的自然语言处理分析

IF 2.2 4区 医学 Q3 RESPIRATORY SYSTEM
Emmanuel Grolleau , Sébastien Couraud , Emilien Jupin Delevaux , Céline Piegay , Adeline Mansuy , Julie de Bermont , François Cotton , Jean-Baptiste Pialat , François Talbot , Loïc Boussel
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引用次数: 0

摘要

背景肺结节是胸部计算机断层扫描(CT)中常见的偶然发现,多数情况下不属于肺癌筛查(LCS)范围。我们的目的是评估我们医院一年内发现的偶然肺结节(IPN)的数量、随访率(FUP)以及与 FUP 相关的临床和放射学特征。我们通过关键词分析提取了结节的特征。NLP 算法的准确性是通过人工阅读人群样本确定的。通过临床医生的电子健康数据库和病历分析,我们获得了有关肺结核和癌症诊断的信息。结果在这项回顾性观察研究中,我们分析了与 2020 年进行的全部 CT 相对应的 101,703 份记录誊本。我们发现了 1,991 例(2%)IPN 患者。CT 报告中结节检测的 NLP 准确率为 99%。在 2020 年 1 月至 2021 年 12 月期间,只有 41% 的患者接受了 FUP。患者年龄、结节大小以及在印象部分提及结节与FUP呈正相关,而在COVID-19背景下诊断出的结节则较少被关注。结论我们发现 IPN 的发病率很高,而 FUP 率却很低,因此鼓励实施 IPN 管理计划。我们还强调了 NLP 在临床研究数据库分析方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incidental pulmonary nodules: Natural language processing analysis of radiology reports

Background

Pulmonary nodules are a common incidental finding on chest Computed Tomography scans (CT), most of the time outside of lung cancer screening (LCS). We aimed to evaluate the number of incidental pulmonary nodules (IPN) found in 1 year in our hospital, as well as the follow-up (FUP) rate and the clinical and radiological features associated with FUP.

Methods

We trained a Natural Language Processing (NLP) tool to identify the transcripts mentioning the presence of a pulmonary nodule, among a large population of patients from a French hospital. We extracted nodule characteristics using keyword analysis. NLP algorithm accuracy was determined through manual reading from a sample of our population. Electronic health database and medical record analysis by clinician allowed us to obtain information about FUP and cancer diagnoses.

Results

In this retrospective observational study, we analyzed 101,703 transcripts corresponding to the entire CTs performed in 2020. We identified 1,991 (2 %) patients with an IPN. NLP accuracy for nodule detection in CT reports was 99 %. Only 41 % received a FUP between January 2020 and December 2021. Patient age, nodule size, and the mention of the nodule in the impression part were positively associated with FUP, while nodules diagnosed in the context of COVID-19 were less followed. 36 (2 %) lung cancers were subsequently diagnosed, with 16 (45 %) at a non-metastatic stage.

Conclusions

We identified a high prevalence of IPN with a low FUP rate, encouraging the implementation of IPN management program. We also highlighted the potential of NLP for database analysis in clinical research.

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来源期刊
Respiratory Medicine and Research
Respiratory Medicine and Research RESPIRATORY SYSTEM-
CiteScore
2.70
自引率
0.00%
发文量
82
审稿时长
50 days
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