首页> 外国专利> DETECTION OF PROSTATE CANCER IN MULTI-PARAMETRIC MRI USING RANDOM FOREST WITH INSTANCE WEIGHTING amp;#x26; MR PROSTATE SEGMENTATION BY DEEP LEARNING WITH HOLISTICALLY-NESTED NETWORKS

DETECTION OF PROSTATE CANCER IN MULTI-PARAMETRIC MRI USING RANDOM FOREST WITH INSTANCE WEIGHTING amp;#x26; MR PROSTATE SEGMENTATION BY DEEP LEARNING WITH HOLISTICALLY-NESTED NETWORKS

机译:使用随机森林和即时加权在多参数MRI中检测前列腺癌&通过深度学习和整体嵌套网络实现MR前列腺区隔

摘要

Disclosed prostate computer aided diagnosis (CAD) systems employ a Random Forest classifier to detect prostate cancer. System classify individual pixels inside the prostate as potential sites of cancer using a combination of spatial, intensity and texture features extracted from three sequences. The Random Forest training considers instance-level weighting for equal treatment of small and large cancerous lesions and small and large prostate backgrounds. Two other approaches are based on an AutoContext pipeline intended to make better use of sequence-specific patterns. Also disclosed are methods and systems for accurate automatic segmentation of the prostate in MRI. Methods can include both patch-based and holistic (image-to-image) deep learning methods for segmentation of the prostate. A patch-based convolutional network aims to refine the prostate contour given an initialization. A method for end- to-end prostate segmentation integrates holistically nested edge detection with fully convolutional networks. HNNs automatically learn a hierarchical representation that improve prostate boundary detection.
机译:公开的前列腺计算机辅助诊断(CAD)系统采用随机森林分类器来检测前列腺癌。系统使用从三个序列中提取的空间,强度和纹理特征的组合,将前列腺内的单个像素分类为潜在的癌症部位。随机森林培训考虑了实例级别的权重,以平等地对待小型和大型癌性病变以及小型和大型前列腺癌背景。另两种方法是基于AutoContext管道的,旨在更好地利用特定于序列的模式。还公开了在MRI中用于前列腺的精确自动分割的方法和系统。方法可以包括基于补丁的和整体的(图像到图像)深度学习方法,用于前列腺的分割。基于补丁的卷积网络旨在在给定初始化的情况下改善前列腺轮廓。一种用于端到端前列腺分割的方法,将整体嵌套边缘检测与完全卷积网络集成在一起。 HNN自动学习可改善前列腺边界检测的分层表示。

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