Department of Electrical Engineering, Stanford University, Stanford, CA, 94305, USA.
Department of Radiology, Stanford University School of Medicine, Stanford, CA, 94305, USA.
Med Phys. 2021 Jun;48(6):2960-2972. doi: 10.1002/mp.14855. Epub 2021 May 3.
While multi-parametric magnetic resonance imaging (MRI) shows great promise in assisting with prostate cancer diagnosis and localization, subtle differences in appearance between cancer and normal tissue lead to many false positive and false negative interpretations by radiologists. We sought to automatically detect aggressive cancer (Gleason pattern 4) and indolent cancer (Gleason pattern 3) on a per-pixel basis on MRI to facilitate the targeting of aggressive cancer during biopsy.
We created the Stanford Prostate Cancer Network (SPCNet), a convolutional neural network model, trained to distinguish between aggressive cancer, indolent cancer, and normal tissue on MRI. Ground truth cancer labels were obtained by registering MRI with whole-mount digital histopathology images from patients who underwent radical prostatectomy. Before registration, these histopathology images were automatically annotated to show Gleason patterns on a per-pixel basis. The model was trained on data from 78 patients who underwent radical prostatectomy and 24 patients without prostate cancer. The model was evaluated on a pixel and lesion level in 322 patients, including six patients with normal MRI and no cancer, 23 patients who underwent radical prostatectomy, and 293 patients who underwent biopsy. Moreover, we assessed the ability of our model to detect clinically significant cancer (lesions with an aggressive component) and compared it to the performance of radiologists.
Our model detected clinically significant lesions with an area under the receiver operator characteristics curve of 0.75 for radical prostatectomy patients and 0.80 for biopsy patients. Moreover, the model detected up to 18% of lesions missed by radiologists, and overall had a sensitivity and specificity that approached that of radiologists in detecting clinically significant cancer.
Our SPCNet model accurately detected aggressive prostate cancer. Its performance approached that of radiologists, and it helped identify lesions otherwise missed by radiologists. Our model has the potential to assist physicians in specifically targeting the aggressive component of prostate cancers during biopsy or focal treatment.
多参数磁共振成像(MRI)在辅助前列腺癌诊断和定位方面显示出巨大的潜力,但癌症组织与正常组织之间的细微外观差异导致放射科医生的许多假阳性和假阴性解读。我们试图在 MRI 上逐像素自动检测侵袭性癌症(Gleason 模式 4)和惰性癌症(Gleason 模式 3),以便在活检期间靶向侵袭性癌症。
我们创建了斯坦福前列腺癌网络(SPCNet),这是一种卷积神经网络模型,经过训练可以区分 MRI 上的侵袭性癌症、惰性癌症和正常组织。通过将 MRI 与接受根治性前列腺切除术的患者的全组织数字组织病理学图像进行配准,获得癌症的真实标签。在配准之前,这些组织病理学图像被自动注释为逐像素显示 Gleason 模式。该模型基于 78 名接受根治性前列腺切除术和 24 名无前列腺癌患者的数据进行训练。该模型在包括 6 名 MRI 正常且无癌症的患者、23 名接受根治性前列腺切除术的患者和 293 名接受活检的患者在内的 322 名患者中进行了评估。此外,我们评估了我们的模型检测临床显著癌症(具有侵袭性成分的病变)的能力,并将其与放射科医生的表现进行了比较。
我们的模型在接受根治性前列腺切除术的患者中,接受者操作特征曲线下的面积为 0.75,在接受活检的患者中为 0.80,检测到了临床显著病变。此外,该模型检测到了放射科医生遗漏的高达 18%的病变,总体上在检测临床显著癌症方面,其敏感性和特异性接近放射科医生。
我们的 SPCNet 模型准确地检测到侵袭性前列腺癌。它的性能接近放射科医生,并且有助于识别放射科医生遗漏的病变。我们的模型有可能帮助医生在活检或局部治疗期间有针对性地靶向前列腺癌的侵袭性成分。