Department of Radiology, Kindai University Faculty of Medicine, 377-2 Ohno-Higashi, Osaka-Sayama, Osaka, 589-8511, Japan.
Jpn J Radiol. 2020 Nov;38(11):1052-1061. doi: 10.1007/s11604-020-01009-0. Epub 2020 Jun 26.
To evaluate the performance of a deep learning-based computer-aided diagnosis (CAD) system at detecting pulmonary nodules on CT by comparing radiologists' readings with and without CAD.
A total of 120 chest CT images were randomly selected from patients with suspected lung cancer. The gold standard of nodules ≥ 3 mm was established by a panel of three expert radiologists. Two less experienced radiologists read the images without and afterward with CAD system. Their reading times were recorded.
The radiologists' sensitivity increased from 20.9% to 38.0% with the introduction of CAD. The positive predictive value (PPV) decreased from 70.5% to 61.8%, and the F1-score increased from 32.2% to 47.0%. The sensitivity significantly increased from 13.7% to 32.4% for small nodules (3-6 mm) and from 33.3% to 47.6% for medium nodules (6-10 mm). CAD alone showed a sensitivity of 70.3%, a PPV of 57.9%, and an F1-score of 63.5%. Reading time decreased by 11.3% with the use of CAD.
CAD improved the less experienced radiologists' sensitivity in detecting pulmonary nodules of all sizes, especially including a significant improvement in the detection of clinically important-sized medium nodules (6-10 mm) as well as small nodules (3-6 mm) and reduced their reading time.
通过比较有和没有计算机辅助诊断(CAD)的情况下放射科医生的阅读结果,评估基于深度学习的 CAD 系统在 CT 上检测肺结节的性能。
从疑似肺癌患者中随机选择 120 例胸部 CT 图像。由三名专家放射科医生组成的小组确定结节≥3mm 的金标准。两名经验较少的放射科医生分别在没有和使用 CAD 系统后阅读图像。记录他们的阅读时间。
引入 CAD 后,放射科医生的敏感度从 20.9%增加到 38.0%。阳性预测值(PPV)从 70.5%下降到 61.8%,F1 评分从 32.2%增加到 47.0%。对于小结节(3-6mm),敏感度从 13.7%显著增加到 32.4%,对于中结节(6-10mm),敏感度从 33.3%增加到 47.6%。CAD 单独的敏感度为 70.3%,PPV 为 57.9%,F1 评分为 63.5%。使用 CAD 可将阅读时间减少 11.3%。
CAD 提高了经验较少的放射科医生检测所有大小肺结节的敏感度,特别是在检测临床上重要的中结节(6-10mm)和小结节(3-6mm)方面有显著提高,同时减少了他们的阅读时间。