PROSTATE CANCER DIAGNOSIS WITH SPARSE BIOPSY DATA AND IN PRESENCE OF LOCATION UNCERTAINTY.

Alireza Mehrtash, Tina Kapur, Clare M Tempany, Purang Abolmaesumi, William M Wells
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Abstract

Prostate cancer is the second most prevalent cancer in men worldwide. Deep neural networks have been successfully applied for prostate cancer diagnosis in magnetic resonance images (MRI). Pathology results from biopsy procedures are often used as ground truth to train such systems. There are several sources of noise in creating ground truth from biopsy data including sampling and registration errors. We propose: 1) A fully convolutional neural network (FCN) to produce cancer probability maps across the whole prostate gland in MRI; 2) A Gaussian weighted loss function to train the FCN with sparse biopsy locations; 3) A probabilistic framework to model biopsy location uncertainty and adjust cancer probability given the deep model predictions. We assess the proposed method on 325 biopsy locations from 203 patients. We observe that the proposed loss improves the area under the receiver operating characteristic curve and the biopsy location adjustment improves the sensitivity of the models.

利用稀疏的活检数据和位置不确定性来诊断前列腺癌。
前列腺癌是全球男性发病率第二高的癌症。深度神经网络已成功应用于磁共振图像(MRI)中的前列腺癌诊断。活检程序的病理结果通常被用作训练此类系统的基本事实。从活检数据中创建地面实况有几个噪声源,包括采样和配准误差。我们建议:1)使用全卷积神经网络(FCN)生成 MRI 中整个前列腺的癌症概率图;2)使用高斯加权损失函数训练具有稀疏活检位置的 FCN;3)使用概率框架来模拟活检位置的不确定性,并根据深度模型预测调整癌症概率。我们对来自 203 名患者的 325 个活检位置进行了评估。我们观察到,拟议的损失提高了接收者工作特征曲线下的面积,活检位置调整提高了模型的灵敏度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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