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全自动深度学习在临床前列腺 MRI 评估中的模拟临床部署。

Simulated clinical deployment of fully automatic deep learning for clinical prostate MRI assessment.

机构信息

Division of Radiology, German Cancer Research Center (DKFZ), Im Neuenheimer Feld 280, 69120, Heidelberg, Germany.

Department of Radiology, Affiliated Hospital of Guilin Medical University, Guangxi, Guilin, People's Republic of China.

出版信息

Eur Radiol. 2021 Jan;31(1):302-313. doi: 10.1007/s00330-020-07086-z. Epub 2020 Aug 7.

Abstract

OBJECTIVES

To simulate clinical deployment, evaluate performance, and establish quality assurance of a deep learning algorithm (U-Net) for detection, localization, and segmentation of clinically significant prostate cancer (sPC), ISUP grade group ≥ 2, using bi-parametric MRI.

METHODS

In 2017, 284 consecutive men in active surveillance, biopsy-naïve or pre-biopsied, received targeted and extended systematic MRI/transrectal US-fusion biopsy, after examination on a single MRI scanner (3 T). A prospective adjustment scheme was evaluated comparing the performance of the Prostate Imaging Reporting and Data System (PI-RADS) and U-Net using sensitivity, specificity, predictive values, and the Dice coefficient.

RESULTS

In the 259 eligible men (median 64 [IQR 61-72] years), PI-RADS had a sensitivity of 98% [106/108]/84% [91/108] with a specificity of 17% [25/151]/58% [88/151], for thresholds at ≥ 3/≥ 4 respectively. U-Net using dynamic threshold adjustment had a sensitivity of 99% [107/108]/83% [90/108] (p > 0.99/> 0.99) with a specificity of 24% [36/151]/55% [83/151] (p > 0.99/> 0.99) for probability thresholds d3 and d4 emulating PI-RADS ≥ 3 and ≥ 4 decisions respectively, not statistically different from PI-RADS. Co-occurrence of a radiological PI-RADS ≥ 4 examination and U-Net ≥ d3 assessment significantly improved the positive predictive value from 59 to 63% (p = 0.03), on a per-patient basis.

CONCLUSIONS

U-Net has similar performance to PI-RADS in simulated continued clinical use. Regular quality assurance should be implemented to ensure desired performance.

KEY POINTS

• U-Net maintained similar diagnostic performance compared to radiological assessment of PI-RADS ≥ 4 when applied in a simulated clinical deployment. • Application of our proposed prospective dynamic calibration method successfully adjusted U-Net performance within acceptable limits of the PI-RADS reference over time, while not being limited to PI-RADS as a reference. • Simultaneous detection by U-Net and radiological assessment significantly improved the positive predictive value on a per-patient and per-lesion basis, while the negative predictive value remained unchanged.

摘要

目的

使用双参数 MRI 模拟临床部署,评估深度学习算法(U-Net)检测、定位和分割临床上有意义的前列腺癌(sPC)、国际泌尿病理学会分级分组≥2 的性能,并建立质量保证。

方法

2017 年,284 例连续接受主动监测、无活检或活检前的男性在单个 MRI 扫描仪(3T)上接受靶向和扩展系统 MRI/经直肠超声融合活检。评估了一种前瞻性调整方案,比较了前列腺影像报告和数据系统(PI-RADS)和 U-Net 的性能,使用敏感性、特异性、预测值和 Dice 系数。

结果

在 259 例符合条件的男性(中位年龄 64 [IQR 61-72] 岁)中,PI-RADS 的敏感性分别为 98%[106/108]/84%[91/108]和特异性分别为 17%[25/151]/58%[88/151],阈值分别为≥3/≥4。使用动态阈值调整的 U-Net 的敏感性分别为 99%[107/108]/83%[90/108](p>0.99/>0.99)和特异性分别为 24%[36/151]/55%[83/151](p>0.99/>0.99),概率阈值 d3 和 d4 分别模拟 PI-RADS≥3 和≥4 决策,与 PI-RADS 相比无统计学差异。放射学 PI-RADS≥4 检查和 U-Net≥d3 评估的同时出现显著提高了阳性预测值,从 59%提高到 63%(p=0.03),基于每个患者。

结论

U-Net 在模拟临床应用中具有与 PI-RADS 相似的性能。应定期进行质量保证,以确保所需的性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8dc7/7755653/a7160f179439/330_2020_7086_Fig1_HTML.jpg

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