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Searching for prostate cancer by fully automated magnetic resonance imaging classification: deep learning versus non-deep learning

机译:通过全自动磁共振成像分类搜索前列腺癌:深度学习与非深度学习

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Prostate cancer (PCa) is a major cause of death since ancient time documented in Egyptian Ptolemaic mummy imaging. PCa detection is critical to personalized medicine and varies considerably under an MRI scan. 172 patients with 2,602 morphologic images (axial 2D T2-weighted imaging) of the prostate were obtained. A deep learning with deep convolutional neural network (DCNN) and a non-deep learning with SIFT image feature and bag-of-word (BoW), a representative method for image recognition and analysis, were used to distinguish pathologically confirmed PCa patients from prostate benign conditions (BCs) patients with prostatitis or prostate benign hyperplasia (BPH). In fully automated detection of PCa patients, deep learning had a statistically higher area under the receiver operating characteristics curve (AUC) than non-deep learning (P?=?0.0007??0.001). The AUCs were 0.84 (95% CI 0.78–0.89) for deep learning method and 0.70 (95% CI 0.63–0.77) for non-deep learning method, respectively. Our results suggest that deep learning with DCNN is superior to non-deep learning with SIFT image feature and BoW model for fully automated PCa patients differentiation from prostate BCs patients. Our deep learning method is extensible to image modalities such as MR imaging, CT and PET of other organs.
机译:自埃及托勒密木乃伊成像以来记载的远古时代以来,前列腺癌(PCa)是主要的死亡原因。 PCa检测对于个性化药物至关重要,并且在MRI扫描下变化很大。获得了172位患者的2,602张前列腺形态学图像(轴向2T2加权成像)。通过深度卷积神经网络(DCNN)进行的深度学习以及具有SIFT图像特征和词袋(BoW)的非深度学习(一种用于图像识别和分析的代表性方法)被用于区分经病理证实的PCa患者与前列腺前列腺炎或前列腺良性增生(BPH)患者的良性疾病(BCs)。在PCa病人的全自动检测中,与非深度学习相比,深度学习在接收者操作特征曲线(AUC)下具有统计学上更高的面积(P <=0.0007≤<0.001)。深度学习方法的AUC分别为0.84(95%CI 0.78-0.89),非深度学习方法的AUC为0.70(95%CI 0.63-0.77)。我们的结果表明,对于完全PCa患者与前列腺BCs患者的区分,DCNN的深度学习优于具有SIFT图像特征和BoW模型的非深度学习。我们的深度学习方法可扩展到其他器官的图像模式,例如MR成像,CT和PET。

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