论文标题

使用AI助理增强胸部X光片的早期肺癌检测:一项多阅读器研究

Enhancing Early Lung Cancer Detection on Chest Radiographs with AI-assistance: A Multi-Reader Study

论文作者

Dissez, Gaetan, Tay, Nicole, Dyer, Tom, Tam, Matthew, Dittrich, Richard, Doyne, David, Hoare, James, Pat, Jackson J., Patterson, Stephanie, Stockham, Amanda, Malik, Qaiser, Morgan, Tom Naunton, Williams, Paul, Garcia-Mondragon, Liliana, Smith, Jordan, Pearse, George, Rasalingham, Simon

论文摘要

目的:本研究评估了可商州可解释的AI算法在增强临床医生在胸部X射线(CXR)上鉴定肺癌的能力的影响。 设计:这项回顾性研究评估了11位临床医生在胸部X光片中检测肺癌的表现,并在有和没有市售的AI AI算法的帮助下(Red Dot,Deed.ai),可以预测CXRS可疑的肺癌。根据临床确定的诊断评估了临床医生的表现。 设置:该研究分析了NHS医院的匿名患者数据;该数据集由成年患者(18岁及以上)的400张胸部X光片组成,他们在2020年进行了CXR,并提供相应的临床文本报告。 参与者:由11位临床医生(放射学家,放射科医生受训者和报告射线照相师)组成的读者小组参与了这项研究。 主要结果指标:临床医生在CXR上检测肺癌的总体准确性,敏感性,特异性和精度,有或没有AI输入。还评估了有或没有AI输入的临床医生与绩效标准偏差之间的协议率。 结果:临床医生对AI算法的使用导致肺部肿瘤检测的总体表现提高,总体上增加了17.4%的肺癌,在CXR上鉴定出的肺癌,否则否则遗漏了较小肿瘤的检测,较小的肿瘤的总体检测,24%和13%的阶段1和13%的阶段和2阶段的检测量增加了量和2阶段肺癌的绩效,并分别标准化了标准的效果,并逐步提高了标准的效果。 结论:这项研究在AI算法的临床实用性方面表现出了巨大的希望,可以通过整体改善读者表演来改善早期肺癌诊断和促进健康平等,而不会影响下游成像资源。

Objectives: The present study evaluated the impact of a commercially available explainable AI algorithm in augmenting the ability of clinicians to identify lung cancer on chest X-rays (CXR). Design: This retrospective study evaluated the performance of 11 clinicians for detecting lung cancer from chest radiographs, with and without assistance from a commercially available AI algorithm (red dot, Behold.ai) that predicts suspected lung cancer from CXRs. Clinician performance was evaluated against clinically confirmed diagnoses. Setting: The study analysed anonymised patient data from an NHS hospital; the dataset consisted of 400 chest radiographs from adult patients (18 years and above) who had a CXR performed in 2020, with corresponding clinical text reports. Participants: A panel of readers consisting of 11 clinicians (consultant radiologists, radiologist trainees and reporting radiographers) participated in this study. Main outcome measures: Overall accuracy, sensitivity, specificity and precision for detecting lung cancer on CXRs by clinicians, with and without AI input. Agreement rates between clinicians and performance standard deviation were also evaluated, with and without AI input. Results: The use of the AI algorithm by clinicians led to an improved overall performance for lung tumour detection, achieving an overall increase of 17.4% of lung cancers being identified on CXRs which would have otherwise been missed, an overall increase in detection of smaller tumours, a 24% and 13% increased detection of stage 1 and stage 2 lung cancers respectively, and standardisation of clinician performance. Conclusions: This study showed great promise in the clinical utility of AI algorithms in improving early lung cancer diagnosis and promoting health equity through overall improvement in reader performances, without impacting downstream imaging resources.

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