首页> 外国专利> ASSOCIATION OF PROGNOSTIC RADIOMICS PHENOTYPE OF TUMOR HABITAT WITH INTERACTION OF TUMOR INFILTRATING LYMPHOCYTES (TILS) AND CANCER NUCLEI

ASSOCIATION OF PROGNOSTIC RADIOMICS PHENOTYPE OF TUMOR HABITAT WITH INTERACTION OF TUMOR INFILTRATING LYMPHOCYTES (TILS) AND CANCER NUCLEI

机译:肿瘤栖息地与肿瘤浸润淋巴细胞(TILS)和癌核相互作用的肿瘤栖息地表型的关系

摘要

Embodiments discussed herein facilitate training and/or employing a machine learning model trained on radiomic features, quantitative histomorphometric features, and molecular expression to generate prognoses for treatment of tumors. One example embodiment can access a medical imaging scan of a tumor; segment a peri-tumoral region around the tumor; extract one or more radiomic features from the one or more of the tumor or the peri-tumoral region; provide the one or more radiomic features to a machine learning model trained based on the one or more radiomic features of a training set, one or more quantitative histomorphometric (QH) features of the training set, and a molecular expression of the training set; and receive a prognosis associated with the tumor from the machine learning model.
机译:本文讨论的实施例有助于训练和/或采用培训的机器学习模型,培训在射致辐射特征,定量组织形态形状特征和分子表达以产生预后以治疗肿瘤。一个示例实施例可以访问肿瘤的医学成像扫描;在肿瘤周围分段细胞区域;从一个或多个肿瘤或细胞肿瘤区域提取一个或多个射出物特征;向基于训练组的一个或多个射线特征,训练集的一个或多个定量组织形态(QH)特征的一个或多个射线特征提供一种或多种射线特征,以及训练集的一个或多个数量的组织特征,以及训练集的分子表达;从机器学习模型中接受与肿瘤相关的预后。

著录项

  • 公开/公告号US2021110928A1

    专利类型

  • 公开/公告日2021-04-15

    原文格式PDF

  • 申请/专利权人 CASE WESTERN RESERVE UNIVERSITY;

    申请/专利号US202017065767

  • 申请日2020-10-08

  • 分类号G16H50/20;G16B40/30;G06T7/11;G06T7;G06K9/46;G06K9/62;G06N3/04;G06N3/08;G16H30/20;G16H30/40;G16H50/30;G16H50/50;G16H70/60;G16H50/70;

  • 国家 US

  • 入库时间 2022-08-24 18:14:00

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