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肺癌分期的结构化报告:一项共识提案。

Structured Reporting of Lung Cancer Staging: A Consensus Proposal.

作者信息

Granata Vincenza, Grassi Roberto, Miele Vittorio, Larici Anna Rita, Sverzellati Nicola, Cappabianca Salvatore, Brunese Luca, Maggialetti Nicola, Borghesi Andrea, Fusco Roberta, Balbi Maurizio, Urraro Fabrizio, Buccicardi Duccio, Bortolotto Chandra, Prost Roberto, Rengo Marco, Baratella Elisa, De Filippo Massimo, Barresi Carmelo, Palmucci Stefano, Busso Marco, Calandriello Lucio, Sansone Mario, Neri Emanuele, Coppola Francesca, Faggioni Lorenzo

机构信息

Division of Radiology, "Istituto Nazionale Tumori IRCCS Fondazione Pascale-IRCCS di Napoli", 80131 Naples, Italy.

Division of Radiology, "Università degli Studi della Campania Luigi Vanvitelli", 80128 Naples, Italy.

出版信息

Diagnostics (Basel). 2021 Aug 30;11(9):1569. doi: 10.3390/diagnostics11091569.

Abstract

BACKGROUND

Structured reporting (SR) in radiology is becoming necessary and has recently been recognized by major scientific societies. This study aimed to build CT-based structured reports for lung cancer during the staging phase, in order to improve communication between radiologists, members of the multidisciplinary team and patients.

MATERIALS AND METHODS

A panel of expert radiologists, members of the Italian Society of Medical and Interventional Radiology, was established. A modified Delphi exercise was used to build the structural report and to assess the level of agreement for all the report sections. The Cronbach's alpha (Cα) correlation coefficient was used to assess internal consistency for each section and to perform a quality analysis according to the average inter-item correlation.

RESULTS

The final SR version was built by including 16 items in the "Patient Clinical Data" section, 4 items in the "Clinical Evaluation" section, 8 items in the "Exam Technique" section, 22 items in the "Report" section, and 5 items in the "Conclusion" section. Overall, 55 items were included in the final version of the SR. The overall mean of the scores of the experts and the sum of scores for the structured report were 4.5 (range 1-5) and 631 (mean value 67.54, STD 7.53), respectively, in the first round. The items of the structured report with higher accordance in the first round were primary lesion features, lymph nodes, metastasis and conclusions. The overall mean of the scores of the experts and the sum of scores for staging in the structured report were 4.7 (range 4-5) and 807 (mean value 70.11, STD 4.81), respectively, in the second round. The Cronbach's alpha (Cα) correlation coefficient was 0.89 in the first round and 0.92 in the second round for staging in the structured report.

CONCLUSIONS

The wide implementation of SR is critical for providing referring physicians and patients with the best quality of service, and for providing researchers with the best quality of data in the context of the big data exploitation of the available clinical data. Implementation is complex, requiring mature technology to successfully address pending user-friendliness, organizational and interoperability challenges.

摘要

背景

放射学中的结构化报告(SR)正变得不可或缺,并且最近已得到主要科学协会的认可。本研究旨在构建肺癌分期阶段基于CT的结构化报告,以改善放射科医生、多学科团队成员与患者之间的沟通。

材料与方法

成立了一个由意大利医学与介入放射学会成员组成的专家放射科医生小组。采用改进的德尔菲法来构建结构化报告并评估所有报告部分的一致性水平。使用克朗巴哈系数(Cα)相关系数来评估每个部分的内部一致性,并根据平均项目间相关性进行质量分析。

结果

最终的SR版本包括“患者临床数据”部分的16项、“临床评估”部分的4项、“检查技术”部分的8项、“报告”部分的22项以及“结论”部分的5项。总体而言,SR的最终版本包含55项。第一轮中,专家评分的总体平均值和结构化报告的得分总和分别为4.5(范围1 - 5)和631(平均值67.54,标准差7.53)。第一轮中一致性较高的结构化报告项目是原发灶特征、淋巴结、转移和结论。第二轮中,专家评分的总体平均值和结构化报告分期的得分总和分别为4.7(范围4 - 5)和807(平均值70.11,标准差4.81)。结构化报告分期在第一轮的克朗巴哈系数(Cα)相关系数为0.89,第二轮为0.92。

结论

SR的广泛实施对于为转诊医生和患者提供最佳服务质量,以及在利用现有临床数据进行大数据开发的背景下为研究人员提供最佳数据质量至关重要。实施过程复杂,需要成熟的技术来成功应对悬而未决的用户友好性、组织和互操作性挑战。

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