External Validation of a Previously Developed Deep Learning-based Prostate Lesion Detection Algorithm on Paired External and In-House Biparametric MRI Scans.
IF 5.6
Q1 ONCOLOGY
Enis C Yilmaz, Stephanie A Harmon, Yan Mee Law, Erich P Huang, Mason J Belue, Yue Lin, David G Gelikman, Kutsev B Ozyoruk, Dong Yang, Ziyue Xu, Jesse Tetreault, Daguang Xu, Lindsey A Hazen, Charisse Garcia, Nathan S Lay, Philip Eclarinal, Antoun Toubaji, Maria J Merino, Bradford J Wood, Sandeep Gurram, Peter L Choyke, Peter A Pinto, Baris Turkbey
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Abstract
Purpose To evaluate the performance of an artificial intelligence (AI) model in detecting overall and clinically significant prostate cancer (csPCa)-positive lesions on paired external and in-house biparametric MRI (bpMRI) scans and assess performance differences between each dataset. Materials and Methods This single-center retrospective study included patients who underwent prostate MRI at an external institution and were rescanned at the authors' institution between May 2015 and May 2022. A genitourinary radiologist performed prospective readouts on in-house MRI scans following the Prostate Imaging Reporting and Data System (PI-RADS) version 2.0 or 2.1 and retrospective image quality assessments for all scans. A subgroup of patients underwent an MRI/US fusion-guided biopsy. A bpMRI-based lesion detection AI model previously developed using a completely separate dataset was tested on both MRI datasets. Detection rates were compared between external and in-house datasets with use of the paired comparison permutation tests. Factors associated with AI detection performance were assessed using multivariable generalized mixed-effects models, incorporating features selected through forward stepwise regression based on the Akaike information criterion. Results The study included 201 male patients (median age, 66 years [IQR, 62-70 years]; prostate-specific antigen density, 0.14 ng/mL2 [IQR, 0.10-0.22 ng/mL2 ]) with a median interval between external and in-house MRI scans of 182 days (IQR, 97-383 days). For intraprostatic lesions, AI detected 39.7% (149 of 375) on external and 56.0% (210 of 375) on in-house MRI scans (P < .001). For csPCa-positive lesions, AI detected 61% (54 of 89) on external and 79% (70 of 89) on in-house MRI scans (P < .001). On external MRI scans, better overall lesion detection was associated with a higher PI-RADS score (odds ratio [OR] = 1.57; P = .005), larger lesion diameter (OR = 3.96; P < .001), better diffusion-weighted MRI quality (OR = 1.53; P = .02), and fewer lesions at MRI (OR = 0.78; P = .045). Better csPCa detection was associated with a shorter MRI interval between external and in-house scans (OR = 0.58; P = .03) and larger lesion size (OR = 10.19; P < .001). Conclusion The AI model exhibited modest performance in identifying both overall and csPCa-positive lesions on external bpMRI scans. Keywords: MR Imaging, Urinary, Prostate Supplemental material is available for this article. © RSNA, 2024.
基于深度学习的前列腺病变检测算法在外部和内部配对双参数磁共振成像扫描上的外部验证。
目的 评估人工智能(AI)模型在成对的外部和内部双参数磁共振成像(bpMRI)扫描中检测整体和有临床意义的前列腺癌(csPCa)阳性病变的性能,并评估每个数据集之间的性能差异。材料与方法 这项单中心回顾性研究纳入了 2015 年 5 月至 2022 年 5 月期间在外部机构接受前列腺 MRI 扫描并在作者所在机构重新扫描的患者。一名泌尿生殖系统放射科医生按照前列腺成像报告和数据系统(PI-RADS)2.0 或 2.1 版对内部 MRI 扫描进行了前瞻性读片,并对所有扫描进行了回顾性图像质量评估。一部分患者在 MRI/US 融合引导下进行了活检。之前使用完全独立的数据集开发的基于 bpMRI 的病灶检测 AI 模型在这两个 MRI 数据集上进行了测试。使用配对比较置换检验比较了外部数据集和内部数据集的检测率。使用多变量广义混合效应模型评估了与人工智能检测性能相关的因素,并纳入了根据 Akaike 信息标准通过前向逐步回归筛选出的特征。结果 研究纳入了 201 名男性患者(中位年龄为 66 岁 [IQR,62-70 岁];前列腺特异性抗原密度为 0.14 纳克/毫升2 [IQR,0.10-0.22 纳克/毫升2]),外部和内部 MRI 扫描的中位间隔为 182 天(IQR,97-383 天)。对于前列腺内病变,外部 MRI 扫描中 AI 检测出 39.7%(375 例中的 149 例),内部 MRI 扫描中 AI 检测出 56.0%(375 例中的 210 例)(P < .001)。对于 csPCa 阳性病变,外部 MRI 扫描中 AI 检测出 61%(89 例中的 54 例),内部 MRI 扫描中 AI 检测出 79%(89 例中的 70 例)(P < .001)。在外部 MRI 扫描中,更好的总体病灶检测与更高的 PI-RADS 评分(几率比 [OR] = 1.57;P = .005)、更大的病灶直径(OR = 3.96;P < .001)、更好的弥散加权 MRI 质量(OR = 1.53;P = .02)和更少的 MRI 病灶(OR = 0.78;P = .045)相关。更好的 csPCa 检测与外部扫描和内部扫描之间较短的 MRI 间隔(OR = 0.58;P = .03)和较大的病灶尺寸(OR = 10.19;P < .001)相关。结论 人工智能模型在外部 bpMRI 扫描中识别整体病灶和 csPCa 阳性病灶方面表现出适度的性能。关键词磁共振成像、泌尿系统、前列腺 本文有补充材料。© RSNA, 2024.
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