CN115769251A - 基于深度学习获取主动脉图像的系统 - Google Patents

基于深度学习获取主动脉图像的系统 Download PDF

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CN115769251A
CN115769251A CN202080100602.8A CN202080100602A CN115769251A CN 115769251 A CN115769251 A CN 115769251A CN 202080100602 A CN202080100602 A CN 202080100602A CN 115769251 A CN115769251 A CN 115769251A
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aorta
image
unit
data
acquiring
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冯亮
刘广志
王之元
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Suzhou Rainmed Medical Technology Co Ltd
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Abstract

一种基于深度学习获取主动脉图像的系统,包括:数据库装置(100)、深度学习装置(200)、数据提取装置(300)和主动脉获取装置(400);数据库装置(100)用于生成主动脉层的切片数据库与非主动脉层的切片数据库;深度学习装置(200)与数据库装置(100)连接用于对切片数据进行深度学习,对特征数据进行分析,获得主动脉数据;数据提取装置(300)用于提取待处理的CT序列图像的特征数据;主动脉获取装置(400)与数据提取装置(300)、深度学习装置(200)连接,用于根据深度学习模型、特征数据从CT序列图像中获取主动脉图像。该装置依据特征数据和数据库获取深度学习模型,通过深度学习模型获取主动脉图像,具有提取效果好,鲁棒性高的优点,计算结果准确,在临床上具有较高的推广价值。

Description

PCT国内申请,说明书已公开。

Claims (9)

  1. PCT国内申请,权利要求书已公开。
CN202080100602.8A 2020-06-29 2020-11-30 基于深度学习获取主动脉图像的系统 Pending CN115769251A (zh)

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CN2020106069631 2020-06-29
CN202010606963.1A CN111815587A (zh) 2020-06-29 2020-06-29 基于ct序列图像拾取主动脉中心线上的点的方法和系统
CN202010606964.6A CN111815588B (zh) 2020-06-29 2020-06-29 基于ct序列图像获取降主动脉的方法和系统
CN2020106069646 2020-06-29
PCT/CN2020/132798 WO2022000977A1 (zh) 2020-06-29 2020-11-30 基于深度学习获取主动脉图像的系统

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EP4174762A1 (en) 2023-05-03
EP4174760A1 (en) 2023-05-03
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