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基于深度学习的前列腺多参数 MRI 计算机辅助检测系统的同步性能研究:涉及经验丰富和经验较少的放射科医生。

A concurrent, deep learning-based computer-aided detection system for prostate multiparametric MRI: a performance study involving experienced and less-experienced radiologists.

机构信息

Department of Radiology, Helios Klinikum Berlin-Buch, Schwanebecker Ch 50, 13125, Berlin, Germany.

Radboud University Medical Center, Nijmegen, The Netherlands.

出版信息

Eur Radiol. 2023 Jan;33(1):64-76. doi: 10.1007/s00330-022-08978-y. Epub 2022 Jul 28.

Abstract

OBJECTIVES

To evaluate the effect of a deep learning-based computer-aided diagnosis (DL-CAD) system on experienced and less-experienced radiologists in reading prostate mpMRI.

METHODS

In this retrospective, multi-reader multi-case study, a consecutive set of 184 patients examined between 01/2018 and 08/2019 were enrolled. Ground truth was combined targeted and 12-core systematic transrectal ultrasound-guided biopsy. Four radiologists, two experienced and two less-experienced, evaluated each case twice, once without (DL-CAD-) and once assisted by DL-CAD (DL-CAD+). ROC analysis, sensitivities, specificities, PPV and NPV were calculated to compare the diagnostic accuracy for the diagnosis of prostate cancer (PCa) between the two groups (DL-CAD- vs. DL-CAD+). Spearman's correlation coefficients were evaluated to assess the relationship between PI-RADS category and Gleason score (GS). Also, the median reading times were compared for the two reading groups.

RESULTS

In total, 172 patients were included in the final analysis. With DL-CAD assistance, the overall AUC of the less-experienced radiologists increased significantly from 0.66 to 0.80 (p = 0.001; cutoff ISUP GG ≥ 1) and from 0.68 to 0.80 (p = 0.002; cutoff ISUP GG ≥ 2). Experienced radiologists showed an AUC increase from 0.81 to 0.86 (p = 0.146; cutoff ISUP GG ≥ 1) and from 0.81 to 0.84 (p = 0.433; cutoff ISUP GG ≥ 2). Furthermore, the correlation between PI-RADS category and GS improved significantly in the DL-CAD + group (0.45 vs. 0.57; p = 0.03), while the median reading time was reduced from 157 to 150 s (p = 0.023).

CONCLUSIONS

DL-CAD assistance increased the mean detection performance, with the most significant benefit for the less-experienced radiologist; with the help of DL-CAD less-experienced radiologists reached performances comparable to that of experienced radiologists.

KEY POINTS

• DL-CAD used as a concurrent reading aid helps radiologists to distinguish between benign and cancerous lesions in prostate MRI. • With the help of DL-CAD, less-experienced radiologists may achieve detection performances comparable to that of experienced radiologists. • DL-CAD assistance increases the correlation between PI-RADS category and cancer grade.

摘要

目的

评估基于深度学习的计算机辅助诊断(DL-CAD)系统在阅读前列腺 mpMRI 方面对经验丰富和经验较少的放射科医生的影响。

方法

在这项回顾性、多读者多病例研究中,纳入了 2018 年 1 月至 2019 年 8 月期间连续检查的 184 例患者。地面实况结合了靶向和 12 核系统经直肠超声引导活检。四位放射科医生,两位经验丰富,两位经验较少,分别对每个病例进行了两次评估,一次没有(DL-CAD-),一次辅助 DL-CAD(DL-CAD+)。计算了 ROC 分析、敏感度、特异度、PPV 和 NPV,以比较两组(DL-CAD-与 DL-CAD+)诊断前列腺癌(PCa)的诊断准确性。评估了 Spearman 相关系数,以评估 PI-RADS 类别与 Gleason 评分(GS)之间的关系。此外,还比较了两组阅读的中位阅读时间。

结果

总共 172 例患者纳入最终分析。有了 DL-CAD 的帮助,经验较少的放射科医生的整体 AUC 从 0.66 显著增加到 0.80(p = 0.001;截断 ISUP GG≥1)和 0.68 到 0.80(p = 0.002;截断 ISUP GG≥2)。经验丰富的放射科医生的 AUC 从 0.81 增加到 0.86(p = 0.146;截断 ISUP GG≥1)和 0.81 到 0.84(p = 0.433;截断 ISUP GG≥2)。此外,DL-CAD + 组中 PI-RADS 类别与 GS 的相关性显著改善(0.45 与 0.57;p = 0.03),而中位阅读时间从 157 秒减少到 150 秒(p = 0.023)。

结论

DL-CAD 辅助提高了平均检测性能,对经验较少的放射科医生的受益最大;借助 DL-CAD,经验较少的放射科医生可以达到与经验丰富的放射科医生相当的检测性能。

关键点

  1. DL-CAD 作为一种同时阅读辅助工具,可以帮助放射科医生在前列腺 MRI 中区分良性和癌性病变。

  2. 在 DL-CAD 的帮助下,经验较少的放射科医生可能会达到与经验丰富的放射科医生相当的检测性能。

  3. DL-CAD 辅助增加了 PI-RADS 类别与癌症分级之间的相关性。

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