首页> 外国专利> Converting low-dose to higher dose 3D tomosynthesis images through machine-learning processes

Converting low-dose to higher dose 3D tomosynthesis images through machine-learning processes

机译:通过机器学习过程将低剂量到更高剂量的3D断层合成图像转换为

摘要

A method and system for converting low-dose tomosynthesis projection images or reconstructed slices images with noise into higher quality, less noise, higher-dose-like tomosynthesis reconstructed slices, using of a trainable nonlinear regression (TNR) model with a patch-input-pixel-output scheme called a pixel-based TNR (PTNR). An image patch is extracted from an input raw projection views (images) of a breast acquired at a reduced x-ray radiation dose (lower-dose), and pixel values in the patch are entered into the PTNR as input. The output of the PTNR is a single pixel that corresponds to a center pixel of the input image patch. The PTNR is trained with matched pairs of raw projection views (images together with corresponding desired x-ray radiation dose raw projection views (images) (higher-dose). Through the training, the PTNR learns to convert low-dose raw projection images to high-dose-like raw projection images. Once trained, the trained PTNR does not require the higher-dose raw projection images anymore. When a new reduced x-ray radiation dose (low dose) raw projection images is entered, the trained PTNR outputs a pixel value similar to its desired pixel value, in other words, it outputs high-dose-like raw projection images where noise and artifacts due to low radiation dose are substantially reduced, i.e., a higher image quality. Then, from the “high-dose-like” projection views (images), “high-dose-like” 3D tomosynthesis slices are reconstructed by using a tomosynthesis reconstruction algorithm. With the “virtual high-dose” tomosynthesis reconstruction slices, the detectability of lesions and clinically important findings such as masses and microcalcifications can be improved.
机译:一种使用带有补丁输入的可训练非线性回归(TNR)模型将带有噪声的低剂量断层合成投影图像或重建切片图像转换为高质量,少噪声,高剂量样断层合成重建切片的方法和系统。像素输出方案,称为基于像素的TNR(PTNR)。从以减小的X射线辐射剂量(较低剂量)获取的乳房的原始输入投影视图(图像)中提取图像补丁,并将补丁中的像素值输入到PTNR中。 PTNR的输出是与输入图像块的中心像素相对应的单个像素。通过配对的原始投影视图(图像以及相应的所需x射线辐射剂量原始投影视图(图像)(更高剂量))对PTNR进行训练,PTNR学会了将低剂量的原始投影图像转换为大剂量的原始投影图像,经过训练的PTNR不再需要大剂量的原始投影图像,当输入新的减小的X射线辐射剂量(低剂量)的原始投影图像时,训练的PTNR输出像素值与其期望像素值相似,换句话说,它输出高剂量样原始投影图像,其中由于低辐射剂量而导致的噪声和伪像被大大降低,即图像质量更高。剂量合成的投影视图(图像),“高剂量” 3D断层合成切片使用断层合成重建算法进行重建,借助“虚拟高剂量”断层合成重建切片,可检测病变和临床重要的发现,例如肿块和微钙化可以得到改善。

著录项

  • 公开/公告号US10610182B2

    专利类型

  • 公开/公告日2020-04-07

    原文格式PDF

  • 申请/专利权人 ALARA SYSTEMS INC;

    申请/专利号US201615360276

  • 发明设计人 KENJI SUZUKI;

    申请日2016-11-23

  • 分类号A61B6;G06T11;A61B6/02;G06T5;G06T5/50;G06K9/62;G06T7;

  • 国家 US

  • 入库时间 2022-08-21 11:27:26

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