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人工智能结合 Lung-RADS 用于基线肺癌筛查的肺结节管理策略的制定与成本分析。

Development and Cost Analysis of a Lung Nodule Management Strategy Combining Artificial Intelligence and Lung-RADS for Baseline Lung Cancer Screening.

机构信息

Department of Medical Imaging, University of Saskatchewan, Saskatoon, Saskatchewan, Canada.

Department of Community Health and Epidemiology, University of Saskatchewan, Saskatoon, Saskatchewan, Canada.

出版信息

J Am Coll Radiol. 2021 May;18(5):741-751. doi: 10.1016/j.jacr.2020.11.014. Epub 2021 Jan 19.

Abstract

OBJECTIVES

To develop a lung nodule management strategy combining the Lung CT Screening Reporting and Data System (Lung-RADS) with an artificial intelligence (AI) malignancy risk score and determine its impact on follow-up investigations and associated costs in a baseline lung cancer screening population.

MATERIALS AND METHODS

Secondary analysis was undertaken of a data set consisting of AI malignancy risk scores and Lung-RADS classifications from six radiologists for 192 baseline low-dose CT studies. Low-dose CT studies were weighted to model a representative cohort of 3,197 baseline screening patients. An AI risk score threshold was defined to match average sensitivity of six radiologists applying Lung-RADS. Cases initially Lung-RADS category 1 or 2 with a high AI risk score were upgraded to category 3, and cases initially category 3 or higher with a low AI risk score were downgraded to category 2. Follow-up investigations resulting from Lung-RADS and the AI-informed management strategy were determined. Investigation costs were based on the 2019 US Medicare Physician Fee Schedule.

RESULTS

The AI-informed management strategy achieved sensitivity and specificity of 91% and 96%, respectively. Average sensitivity and specificity of six radiologists using Lung-RADS only was 91% and 66%, respectively. Using the AI-informed management strategy, 41 (0.2%) category 1 or 2 classifications were upgraded to category 3, and 5,750 (30%) category 3 or higher classifications were downgraded to category 2. Minimum net cost savings using the AI-informed management strategy was estimated to be $72 per patient screened.

CONCLUSION

Using an AI risk score combined with Lung-RADS at baseline lung cancer screening may result in fewer follow-up investigations and substantial cost savings.

摘要

目的

结合肺部 CT 筛查报告和数据系统(Lung-RADS)与人工智能(AI)恶性肿瘤风险评分,制定肺结节管理策略,并在基线肺癌筛查人群中评估其对随访检查及相关成本的影响。

材料与方法

对来自 6 位放射科医生的 192 项基线低剂量 CT 研究的 AI 恶性肿瘤风险评分和 Lung-RADS 分类的数据集进行二次分析。通过加权低剂量 CT 研究来模拟 3197 例基线筛查患者的代表性队列。定义 AI 风险评分阈值以匹配 6 位放射科医生应用 Lung-RADS 的平均敏感度。最初 Lung-RADS 类别为 1 或 2 且 AI 风险评分较高的病例升级为类别 3,最初 Lung-RADS 类别为 3 或更高且 AI 风险评分较低的病例降级为类别 2。确定 Lung-RADS 和 AI 指导管理策略产生的随访检查。调查费用基于 2019 年美国医疗保险医师费用表。

结果

AI 指导管理策略的敏感度和特异度分别为 91%和 96%。仅使用 Lung-RADS 的 6 位放射科医生的平均敏感度和特异度分别为 91%和 66%。使用 AI 指导管理策略,41 例(0.2%)最初为类别 1 或 2 的分类升级为类别 3,5750 例(30%)最初为类别 3 或更高的分类降级为类别 2。使用 AI 指导管理策略估计每位筛查患者的最小净成本节省为 72 美元。

结论

在基线肺癌筛查中使用 AI 风险评分与 Lung-RADS 相结合,可能会减少随访检查并节省大量成本。

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