Prostate cancer risk assessment and avoidance of prostate biopsies using fully automatic deep learning in prostate MRI: comparison to PI-RADS and integration with clinical data in nomograms.

IF 4.7 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING European Radiology Pub Date : 2024-12-01 Epub Date: 2024-07-02 DOI:10.1007/s00330-024-10818-0
Adrian Schrader, Nils Netzer, Thomas Hielscher, Magdalena Görtz, Kevin Sun Zhang, Viktoria Schütz, Albrecht Stenzinger, Markus Hohenfellner, Heinz-Peter Schlemmer, David Bonekamp
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Abstract

Objectives: Risk calculators (RCs) improve patient selection for prostate biopsy with clinical/demographic information, recently with prostate MRI using the prostate imaging reporting and data system (PI-RADS). Fully-automated deep learning (DL) analyzes MRI data independently, and has been shown to be on par with clinical radiologists, but has yet to be incorporated into RCs. The goal of this study is to re-assess the diagnostic quality of RCs, the impact of replacing PI-RADS with DL predictions, and potential performance gains by adding DL besides PI-RADS.

Material and methods: One thousand six hundred twenty-seven consecutive examinations from 2014 to 2021 were included in this retrospective single-center study, including 517 exams withheld for RC testing. Board-certified radiologists assessed PI-RADS during clinical routine, then systematic and MRI/Ultrasound-fusion biopsies provided histopathological ground truth for significant prostate cancer (sPC). nnUNet-based DL ensembles were trained on biparametric MRI predicting the presence of sPC lesions (UNet-probability) and a PI-RADS-analogous five-point scale (UNet-Likert). Previously published RCs were validated as is; with PI-RADS substituted by UNet-Likert (UNet-Likert-substituted RC); and with both UNet-probability and PI-RADS (UNet-probability-extended RC). Together with a newly fitted RC using clinical data, PI-RADS and UNet-probability, existing RCs were compared by receiver-operating characteristics, calibration, and decision-curve analysis.

Results: Diagnostic performance remained stable for UNet-Likert-substituted RCs. DL contained complementary diagnostic information to PI-RADS. The newly-fitted RC spared 49% [252/517] of biopsies while maintaining the negative predictive value (94%), compared to PI-RADS ≥ 4 cut-off which spared 37% [190/517] (p < 0.001).

Conclusions: Incorporating DL as an independent diagnostic marker for RCs can improve patient stratification before biopsy, as there is complementary information in DL features and clinical PI-RADS assessment.

Clinical relevance statement: For patients with positive prostate screening results, a comprehensive diagnostic workup, including prostate MRI, DL analysis, and individual classification using nomograms can identify patients with minimal prostate cancer risk, as they benefit less from the more invasive biopsy procedure.

Key points: The current MRI-based nomograms result in many negative prostate biopsies. The addition of DL to nomograms with clinical data and PI-RADS improves patient stratification before biopsy. Fully automatic DL can be substituted for PI-RADS without sacrificing the quality of nomogram predictions. Prostate nomograms show cancer detection ability comparable to previous validation studies while being suitable for the addition of DL analysis.

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在前列腺磁共振成像中使用全自动深度学习进行前列腺癌风险评估和避免前列腺活检:与 PI-RADS 的比较以及在提名图中与临床数据的整合。
目的:风险计算器(RC)通过临床/人口统计学信息改进了前列腺活检的患者选择,最近还使用了前列腺成像报告和数据系统(PI-RADS)的前列腺磁共振成像。全自动深度学习(DL)可独立分析核磁共振成像数据,已被证明可与临床放射科医生媲美,但尚未被纳入 RC。本研究的目的是重新评估 RC 的诊断质量、用 DL 预测取代 PI-RADS 的影响,以及在 PI-RADS 之外增加 DL 可能带来的性能提升:这项回顾性单中心研究纳入了 2014 年至 2021 年连续进行的 1627 次检查,其中包括 517 次因 RC 测试而暂停的检查。经委员会认证的放射科医师在临床常规检查中评估 PI-RADS,然后通过系统性和 MRI/ 超声融合活检提供重大前列腺癌(sPC)的组织病理学基本事实。基于 nnUNet 的 DL 组合在预测 sPC 病变存在的双参数 MRI(UNet-概率)和 PI-RADS 类似的五点量表(UNet-Likert)上进行了训练。对以前发表的 RC 进行了原样验证;用 UNet-Likert 代替 PI-RADS(UNet-Likert 替代 RC);同时使用 UNet-probability 和 PI-RADS (UNet-probability-extended RC)。通过接收器运行特征、校准和决策曲线分析,对现有的 RC 与使用临床数据、PI-RADS 和 UNet-probability 新拟合的 RC 进行了比较:结果:UNet-Likert 替代 RC 的诊断性能保持稳定。DL 包含与 PI-RADS 互补的诊断信息。在保持阴性预测值(94%)的同时,新匹配的 RC 使 49% [252/517] 的活检免于失败,而 PI-RADS ≥ 4 临界值使 37% [190/517] 的活检免于失败(p 结论:将 DL 作为诊断方法的一部分,可使活检免于失败:由于 DL 特征和临床 PI-RADS 评估信息具有互补性,因此将 DL 作为 RC 的独立诊断标志物可改善活检前的患者分层:对于前列腺筛查结果呈阳性的患者,包括前列腺磁共振成像、DL 分析和使用提名图进行个体分层在内的综合诊断工作可识别出前列腺癌风险极低的患者,因为他们从更具侵入性的活检程序中获益较少:要点:目前基于磁共振成像的提名图会导致许多前列腺活检结果呈阴性。将 DL 添加到具有临床数据和 PI-RADS 的提名图中,可在活检前对患者进行分层。全自动 DL 可以替代 PI-RADS,而不会影响提名图预测的质量。前列腺提名图显示的癌症检测能力与之前的验证研究相当,同时适合添加 DL 分析。
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来源期刊
European Radiology
European Radiology 医学-核医学
CiteScore
11.60
自引率
8.50%
发文量
874
审稿时长
2-4 weeks
期刊介绍: European Radiology (ER) continuously updates scientific knowledge in radiology by publication of strong original articles and state-of-the-art reviews written by leading radiologists. A well balanced combination of review articles, original papers, short communications from European radiological congresses and information on society matters makes ER an indispensable source for current information in this field. This is the Journal of the European Society of Radiology, and the official journal of a number of societies. From 2004-2008 supplements to European Radiology were published under its companion, European Radiology Supplements, ISSN 1613-3749.
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