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Computer‐aided diagnosis of prostate cancer on magnetic resonance imaging using a convolutional neural network algorithm

机译:使用卷积神经网络算法对磁共振成像前列腺癌的计算机辅助诊断

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Objective To develop a computer‐aided diagnosis ( CAD ) algorithm with a deep learning architecture for detecting prostate cancer on magnetic resonance imaging ( MRI ) to promote global standardisation and diminish variation in the interpretation of prostate MRI . Patients and Methods We retrospectively reviewed data from 335 patients with a prostate‐specific antigen level of 20?ng/ mL who underwent MRI and extended systematic prostate biopsy with or without MRI ‐targeted biopsy. The data were divided into a training data set ( n = 301), which was used to develop the CAD algorithm, and two evaluation data sets ( n = 34). A deep convolutional neural network ( CNN ) was trained using MR images labelled as ‘cancer’ or ‘no cancer’ confirmed by the above‐mentioned biopsy. Using the CAD algorithm that showed the best diagnostic accuracy with the two evaluation data sets, the data set not used for evaluation was analysed, and receiver operating curve analysis was performed. Results Graphics processing unit computing required 5.5?h to learn to analyse 2?million images. The time required for the CAD algorithm to evaluate a new image was 30?ms/image. The two algorithms showed area under the curve values of 0.645 and 0.636, respectively, in the validation data sets. The number of patients mistakenly diagnosed as having cancer was 16/17 patients and seven of 17 patients in the two validation data sets, respectively. Zero and two oversights were found in the two validation data sets, respectively. Conclusion We developed a CAD system using a CNN algorithm for the fully automated detection of prostate cancer using MRI , which has the potential to provide reproducible interpretation and a greater level of standardisation and consistency.
机译:目的旨在开发具有深度学习架构的计算机辅助诊断(CAD)算法,用于检测磁共振成像(MRI)的前列腺癌,以促进全球标准化和降低前列腺MRI解释的变化。患者和方法我们回顾性从335例患者的前列腺特异性抗原水平的患者回顾性地审查了& 20?ng / ml的患者的患者,以及延长系统的前列腺活检,或没有MRI-可生物检查。将数据分为培训数据集(n = 301),用于开发CAD算法,以及两个评估数据集(n = 34)。使用标记为“癌症”或“癌症”或“无癌症”的先生通过上述活组织检查证实了深度卷积神经网络(CNN)。使用与两个评估数据集显示最佳诊断精度的CAD算法,分析了不用于评估的数据集,并进行接收机操作曲线分析。结果图形处理单元计算需要5.5?H学习分析2?百万图像。 CAD算法评估新图像所需的时间为30?MS /图像。在验证数据集中分别在0.645和0.636的曲线值下显示的两个算法。患有癌症的患者的数量分别是患有癌症的16/17患者,分别在两个验证数据集中的17名患者中有7例。在两个验证数据集中发现零和两个潜视。结论我们利用CNN算法开发了一种CNN算法,用于使用MRI全自动地检测前列腺癌,这具有提供可重复的解释和更大水平的标准化和一致性。

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