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增强胸部 X 光片肺癌诊断:将人工智能定位以提高放射科医生的表现。

Augmenting lung cancer diagnosis on chest radiographs: positioning artificial intelligence to improve radiologist performance.

机构信息

Mid and South Essex University Hospitals Group, Southend Hospital, Department of Radiology, Prittlewell Chase, Westcliff-on-Sea, SS0 0RY, UK.

Behold.ai, 180 Borough High St, London SE1 1LB, UK.

出版信息

Clin Radiol. 2021 Aug;76(8):607-614. doi: 10.1016/j.crad.2021.03.021. Epub 2021 May 11.

Abstract

AIM

To evaluate the role that artificial intelligence (AI) could play in assisting radiologists as the first reader of chest radiographs (CXRs), to increase the accuracy and efficiency of lung cancer diagnosis by flagging positive cases before passing the remaining examinations to standard reporting.

MATERIALS AND METHODS

A dataset of 400 CXRs including 200 difficult lung cancer cases was curated. Examinations were reviewed by three FRCR radiologists and an AI algorithm to establish performance in tumour identification. AI and radiologist labels were combined retrospectively to simulate the proposed AI triage workflow.

RESULTS

When used as a standalone algorithm, AI classification was equivalent to the average radiologist performance. The best overall performances were achieved when AI was combined with radiologists, with an average reduction of missed cancers of 60%. Combination with AI also standardised the performance of radiologists. The greatest improvements were observed when common sources of errors were present, such as distracting findings.

DISCUSSION

The proposed AI implementation pathway stands to reduce radiologist errors and improve clinician reporting performance. Furthermore, taking a radiologist-centric approach in the development of clinical AI holds promise for catching systematically missed lung cancers. This represents a tremendous opportunity to improve patient outcomes for lung cancer diagnosis.

摘要

目的

评估人工智能(AI)在协助放射科医生作为胸部 X 光片(CXR)的初读医生方面的作用,通过在将其余检查传递给标准报告之前标记阳性病例来提高肺癌诊断的准确性和效率。

材料和方法

创建了一个包含 200 例困难肺癌病例的 400 例 CXR 数据集。由三位 FRCR 放射科医生和一个 AI 算法对检查进行了回顾,以确定肿瘤识别方面的性能。回顾性地将 AI 和放射科医生的标签结合起来,以模拟拟议的 AI 分诊工作流程。

结果

当作为独立算法使用时,AI 分类与平均放射科医生的表现相当。当 AI 与放射科医生结合使用时,获得了最佳的整体性能,平均减少了 60%的漏诊癌症。与 AI 结合还使放射科医生的表现标准化。当存在常见的错误来源时,如干扰性发现,效果最为显著。

讨论

所提出的 AI 实施途径有望减少放射科医生的错误并提高临床医生的报告表现。此外,在开发临床 AI 时采用以放射科医生为中心的方法有望捕捉到系统地遗漏的肺癌。这为改善肺癌诊断的患者预后提供了巨大的机会。

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