首页> 外国专利> FULL-MODAL MEDICAL IMAGE SEQUENCE GROUPING METHOD BASED ON DEEP LEARNING SIGN STRUCTURE

FULL-MODAL MEDICAL IMAGE SEQUENCE GROUPING METHOD BASED ON DEEP LEARNING SIGN STRUCTURE

机译:基于深度学习符号结构的全模态医学图像序列分组方法

摘要

A full-modal medical image sequence grouping method based on a deep learning sign structure. The method comprises: acquiring medical image information; performing information extraction on the acquired medical image information; establishing a full-modal deep learning AI sequence matching system; performing sequence matching processing; transmitting processed medical image sequences to a display unit in groups; and the display unit displaying full-modal medical image sequences in groups. A deep learning neural network is used, human skeletons are precisely identified and segmented into relatively fixed local regions according to precise CT and MR anatomy information of a human body, precise human body position segmentation is performed using specified skeleton parts, precise positioning is performed according to a CT or MR image in dual modalities of a molecular image, the CT or MR image is converted to a corresponding layer of a full-modal image, and automatic and precise registration and display is performed, such that diagnosis errors caused by a technical level difference are reduced, and the working efficiency of physicians is also improved.
机译:一种基于深度学习符号结构的全模态医学图像序列分组方法。该方法包括:获取医学图像信息;对获取的医学图像信息进行信息提取;建立全模态深度学习人工智能序列匹配系统;执行序列匹配处理;将处理后的医学图像序列成组地发送到显示单元;显示单元分组显示全模式医学图像序列。使用深度学习神经网络,根据精确的人体CT和MR解剖信息精确识别人体骨骼并将其分割为相对固定的局部区域,使用指定的骨骼部位执行精确的人体位置分割,根据分子图像的双模式CT或MR图像执行精确定位,将CT或MR图像转换为全模式图像的对应层,并进行自动、精确的配准和显示,从而减少技术水平差异造成的诊断错误,提高医生的工作效率。

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