首页> 外国专利> INTRA-PERINODULAR TEXTURAL TRANSITION (IPRIS): A THREE DIMENISONAL (3D) DESCRIPTOR FOR NODULE DIAGNOSIS ON LUNG COMPUTED TOMOGRAPHY (CT) IMAGES

INTRA-PERINODULAR TEXTURAL TRANSITION (IPRIS): A THREE DIMENISONAL (3D) DESCRIPTOR FOR NODULE DIAGNOSIS ON LUNG COMPUTED TOMOGRAPHY (CT) IMAGES

机译:肺内纹理过渡(IPRIS):三维(3D)诊断肺影像学(CT)图像结节的描述器

摘要

Embodiments classify lung nodules by accessing a 3D radiological image of a region of tissue, the 3D image including a plurality of voxels and slices, a slice having a thickness; segmenting the nodule represented in the 3D image across contiguous slices, the nodule having a 3D volume and 3D interface, where the 3D interface includes an interface voxel; partitioning the 3D interface into a plurality of nested shells, a nested shell including a plurality of 2D slices, a 2D slice including a boundary pixel; extracting a set of intra-perinodular textural transition (Ipris) features from the 2D slices based on a normal of a boundary pixel of the 2D slices; providing the Ipris features to a machine learning classifier which computes a probability that the nodule is malignant, based, at least in part, on the set of Ipris features; and generating a classification of the nodule based on the probability.
机译:实施例通过访问组织区域的3D放射图像来对肺结节进行分类,该3D图像包括多个体素和切片,切片具有厚度。将3D图像中表示的结节跨接在相邻的切片上进行分割,该结节具有3D体积和3D界面,其中3D界面包括界面体素;将3D界面划分为多个嵌套的壳,包括多个2D切片的嵌套的壳,包括边界像素的2D切片;基于2D切片的边界像素的法线,从2D切片中提取一组椎间内纹理过渡(Ipris)特征;向机器学习分类器提供Ipris特征,该机器学习分类器至少部分地基于该组Ipris特征来计算结节是恶性的;并根据概率生成结核的分类。

著录项

  • 公开/公告号US2018365829A1

    专利类型

  • 公开/公告日2018-12-20

    原文格式PDF

  • 申请/专利权人 CASE WESTERN RESERVE UNIVERSITY;

    申请/专利号US201816012937

  • 发明设计人 ANANT MADABHUSHI;MEHDI ALILOU;

    申请日2018-06-20

  • 分类号G06T7;G06T15/08;G06K9/62;G06T7/40;G06T7/174;G16H30/20;G16H20/40;

  • 国家 US

  • 入库时间 2022-08-21 12:09:41

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