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磁共振图像中人工智能辅助与非辅助前列腺癌识别

AI-Assisted vs Unassisted Identification of Prostate Cancer in Magnetic Resonance Images.

作者信息

Twilt Jasper J, Saha Anindo, Bosma Joeran S, Padhani Anwar R, Bonekamp David, Giannarini Gianluca, van den Bergh Roderick, Kasivisvanathan Veeru, Obuchowski Nancy, Yakar Derya, Elschot Mattijs, Veltman Jeroen, Fütterer Jurgen, Huisman Henkjan, de Rooij Maarten

机构信息

Minimally Invasive Image-Guided Intervention Center, Department of Medical Imaging, Radboud University Medical Center, Nijmegen, the Netherlands.

Diagnostic Image Analysis Group, Department of Medical Imaging, Radboud University Medical Center, Nijmegen, the Netherlands.

出版信息

JAMA Netw Open. 2025 Jun 2;8(6):e2515672. doi: 10.1001/jamanetworkopen.2025.15672.

Abstract

IMPORTANCE

Artificial intelligence (AI) assistance in magnetic resonance imaging (MRI) assessment for prostate cancer shows promise for improving diagnostic accuracy but lacks large-scale observational evidence.

OBJECTIVE

To evaluate whether use of AI-assisted assessment for diagnosing clinically significant prostate cancer (csPCa) on MRI is superior to unassisted readings.

DESIGN, SETTING, AND PARTICIPANTS: This diagnostic study was conducted between March and July 2024 to compare unassisted and AI-assisted diagnostic performance using the AI system developed within the international Prostate Imaging-Cancer AI (PI-CAI) Consortium. The study involved 61 readers (34 experts and 27 nonexperts) from 53 centers across 17 countries. Readers assessed prostate magnetic resonance images both with and without AI assistance, providing Prostate Imaging Reporting and Data System (PI-RADS) annotations from 3 to 5 (higher PI-RADS indicated a higher likelihood of csPCa) and patient-level suspicion scores ranging from 0 to 100 (higher scores indicated a greater likelihood of harboring csPCa). Biparametric prostate MRI examinations were included for 780 men from the PI-CAI study who were included in the newly-conducted observer study. All men within the PI-CAI study had suspicion of harboring prostate cancer, sufficient diagnostic image quality, and no prior clinically significant cancer findings. Disease presence was defined by histopathology, and absence was determined by 3 or more years of follow-up. The AI system was recalibrated using 420 Dutch examinations to generate lesion-detection maps, with AI scores ranging from 1 to 10, in which 10 indicates the highest likelihood of csPCa. The remaining 360 examinations, originating from 3 Dutch centers and 1 Norwegian center, were included in the observer study.

MAIN OUTCOMES AND MEASURES

The primary outcome was diagnosis of csPCa, evaluated using the area under the receiver operating characteristic curve and sensitivity and specificity at a PI-RADS threshold of 3 or more. The secondary outcomes included analysis at alternate operating points and reader expertise.

RESULTS

Among the 360 examinations of 360 men (median age, 65 years [IQR, 62-70 years]) who were included for testing, 122 (34%) harbored csPCa. AI assistance was associated with significantly improved performance, achieving a 3.3% increase in the area under the receiver operating characteristic curve (95% CI, 1.8%-4.9%; P < .001), from 0.882 (95% CI, 0.854-0.910) in unassisted assessments to 0.916 (95% CI, 0.893-0.938) with AI assistance. Sensitivity improved by 2.5% (95% CI, 1.1%-3.9%; P < .001), from 94.3% (95% CI, 91.9%-96.7%) to 96.8% (95% CI, 95.2%-98.5%), and specificity increased by 3.4% (95% CI, 0.8%-6.0%; P = .01), from 46.7% (95% CI, 39.4%-54.0%) to 50.1% (95% CI, 42.5%-57.7%), at a PI-RADS score of 3 or more. Secondary analyses demonstrated similar performance improvements across alternate operating points and a greater benefit of AI assistance for nonexpert readers.

CONCLUSIONS AND RELEVANCE

The findings of this diagnostic study of patients suspected of harboring prostate cancer suggest that AI assistance was associated with improved radiologic diagnosis of clinically significant disease. Further research is required to investigate the generalization of outcomes and effects on workflow improvement within prospective settings.

摘要

重要性

人工智能(AI)辅助进行前列腺癌的磁共振成像(MRI)评估有望提高诊断准确性,但缺乏大规模观察性证据。

目的

评估在MRI上使用AI辅助评估来诊断临床显著性前列腺癌(csPCa)是否优于非辅助读片。

设计、设置和参与者:这项诊断性研究于2024年3月至7月进行,使用国际前列腺影像-癌症人工智能(PI-CAI)联盟开发的AI系统比较非辅助和AI辅助的诊断性能。该研究涉及来自17个国家53个中心的61名阅片者(34名专家和27名非专家)。阅片者在有和没有AI辅助的情况下评估前列腺磁共振图像,提供3至5分的前列腺影像报告和数据系统(PI-RADS)注释(PI-RADS分数越高,csPCa可能性越高)以及0至100分的患者层面怀疑分数(分数越高,患csPCa可能性越大)。来自PI-CAI研究的780名男性的双参数前列腺MRI检查被纳入新进行的观察者研究。PI-CAI研究中的所有男性都怀疑患有前列腺癌,具备足够的诊断图像质量,且之前没有临床显著性癌症发现。疾病存在与否由组织病理学定义,不存在由3年或更长时间的随访确定。使用420例荷兰检查对AI系统进行重新校准以生成病变检测图,AI分数范围为1至10分,其中10分表示csPCa可能性最高。其余360例检查来自3个荷兰中心和1个挪威中心,被纳入观察者研究。

主要结局和测量指标

主要结局是csPCa的诊断,使用受试者操作特征曲线下面积以及PI-RADS阈值为3或更高时的敏感性和特异性进行评估。次要结局包括在其他操作点的分析以及阅片者专业水平。

结果

在纳入测试的360名男性(中位年龄65岁[四分位间距,62 - 70岁])的360例检查中,122例(34%)患有csPCa。AI辅助与显著改善的性能相关,受试者操作特征曲线下面积增加3.3%(95%CI,1.8% - 4.9%;P <.001),从非辅助评估时的0.882(95%CI,0.854 - 0.910)提高到AI辅助时的0.916(95%CI,0.893 - 0.938)。在PI-RADS分数为3或更高时,敏感性提高2.5%(95%CI,1.1% - 3.9%;P <.001),从94.3%(95%CI,91.9% - 96.7%)提高到96.8%(95%CI,95.2% - 98.5%),特异性增加3.4%(95%CI,0.8% - 6.0%;P = 0.01),从46.7%(95%CI,39.4% - 54.0%)提高到50.1%(95%CI,42.5% - 57.7%)。次要分析表明在其他操作点也有类似的性能改善,且AI辅助对非专家阅片者益处更大。

结论和相关性

这项对疑似患有前列腺癌患者的诊断性研究结果表明,AI辅助与临床显著性疾病的放射学诊断改善相关。需要进一步研究来探讨结果的普遍性以及对前瞻性环境中工作流程改进的影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1849/12166490/6f8f10288b12/jamanetwopen-e2515672-g001.jpg

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