Development and Evaluation of an Automated Protocol Recommendation System for Chest CT Using Natural Language Processing With CLEVER Terminology Word Replacement.

IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Patrik Rogalla, Jennifer Fratesi, Sonja Kandel, Demetris Patsios, Farzad Khalvati, Sean Carey
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引用次数: 0

Abstract

Purpose: To evaluate the clinical performance of a Protocol Recommendation System (PRS) automatic protocolling of chest CT imaging requests. Materials and Methods: 322 387 consecutive historical imaging requests for chest CT between 2017 and 2022 were extracted from a radiology information system (RIS) database containing 16 associated patient information values. Records with missing fields and protocols with <100 occurrences were removed, leaving 18 protocols for training. After freetext pre-processing and applying CLEVER terminology word replacements, the features of a bag-of-words model were used to train a multinomial logistic regression classifier. Four readers protocolled 300 clinically executed protocols (CEP) based on all clinically available information. After their selection was made, the PRS and CEP were unblinded, and the readers were asked to score their agreement (1 = severe error, 2 = moderate error, 3 = disagreement but acceptable, 4 = agreement). The ground truth was established by the readers' majority selection, a judge helped break ties. For the PRS and CEP, the accuracy and clinical acceptability (scores 3 and 4) were calculated. The readers' protocolling reliability was measured using Fleiss' Kappa. Results: Four readers agreed on 203/300 protocols, 3 on 82/300 cases, and in 15 cases, a judge was needed. PRS errors were found by the 4 readers in 1%, 2.7%, 1%, and 0.7% of the cases, respectively. The accuracy/clinical acceptability of the PRS and CEP were 84.3%/98.6% and 83.0%/99.3%, respectively. The Fleiss' Kappa for all readers and all protocols was 0.805. Conclusion: The PRS achieved similar accuracy to human performance and may help radiologists master the ever-increasing workload.

利用自然语言处理和 CLEVER 术语单词替换技术开发和评估胸部 CT 自动协议推荐系统。
目的:评估协议推荐系统(PRS)自动原核胸部 CT 成像请求的临床性能。材料与方法:从包含 16 个相关患者信息值的放射学信息系统(RIS)数据库中提取了 322 387 份 2017 年至 2022 年期间连续的胸部 CT 历史成像请求。缺失字段的记录和有结果的协议:4 名阅读者对 203/300 份协议达成一致,3 名阅读者对 82/300 个病例达成一致,15 个病例需要一名法官。4 位读者分别在 1%、2.7%、1% 和 0.7% 的病例中发现了 PRS 错误。PRS 和 CEP 的准确性/临床可接受性分别为 84.3%/98.6% 和 83.0%/99.3% 。所有读者和所有方案的弗莱斯卡帕值均为 0.805。结论PRS 达到了与人类表现相似的准确性,可以帮助放射科医生应对不断增加的工作量。
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来源期刊
CiteScore
6.20
自引率
12.90%
发文量
98
审稿时长
6-12 weeks
期刊介绍: The Canadian Association of Radiologists Journal is a peer-reviewed, Medline-indexed publication that presents a broad scientific review of radiology in Canada. The Journal covers such topics as abdominal imaging, cardiovascular radiology, computed tomography, continuing professional development, education and training, gastrointestinal radiology, health policy and practice, magnetic resonance imaging, musculoskeletal radiology, neuroradiology, nuclear medicine, pediatric radiology, radiology history, radiology practice guidelines and advisories, thoracic and cardiac imaging, trauma and emergency room imaging, ultrasonography, and vascular and interventional radiology. Article types considered for publication include original research articles, critically appraised topics, review articles, guest editorials, pictorial essays, technical notes, and letter to the Editor.
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