[1]黄梦倩,张瑞恒,刘楚浩,等.影像组学在神经系统疾病中的应用研究[J].医学信息,2019,32(16):47-50.[doi:10.3969/j.issn.1006-1959.2019.16.015]
 HUANG Meng-qian,ZHANG Rui-heng,LIU Chu-hao,et al.Application of Radiomics in Nervous System Diseases[J].Journal of Medical Information,2019,32(16):47-50.[doi:10.3969/j.issn.1006-1959.2019.16.015]
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影像组学在神经系统疾病中的应用研究()
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医学信息[ISSN:1006-1959/CN:61-1278/R]

卷:
32卷
期数:
2019年16期
页码:
47-50
栏目:
综述
出版日期:
2019-08-15

文章信息/Info

Title:
Application of Radiomics in Nervous System Diseases
文章编号:
1006-1959(2019)16-0047-04
作者:
黄梦倩1张瑞恒2刘楚浩3杨守博4
1.首都医科大学附属复兴医院2015级五年制临床医学,北京 100038; 2.首都医科大学附属北京同仁医院,北京 100730; 3.南华大学应用解剖与生殖研究所,湖南 衡阳 421001; 4.首都医科大学附属北京天坛医院神经外科神经肿瘤综合病区,北京 100050
Author(s):
HUANG Meng-qian1 ZHANG Rui-heng2 LIU Chu-hao3YANG Shou-bo4
1.Five-year Clinical Medicine,2015 Grade,Fuxing Hospital,Capital Medical University,Beijing 100038,China; 2.Beijing Tongren Hospital,Capital Medical University,Beijing 100730,China; 3.Institute of Applied Anatomy and Reproduction,Nanhua University,Hengyan
关键词:
影像组学脑胶质瘤阿尔兹海默病动脉粥样硬化
Keywords:
Key words:RadiomicsGliomaAlzheimer's diseaseAtherosclerosis
分类号:
R739.41
DOI:
10.3969/j.issn.1006-1959.2019.16.015
文献标志码:
A
摘要:
医学影像学在疾病诊断、分期或分级、治疗以及预后判断中都有着不可或缺的地位。影像组学(radiomics)是一种高通量数据分析方法,从影像中获取标准的、量化的数据并以之建立模型,具备准确性、客观性以及可重复性,可结合多种成像方式,为医学影像学在临床实践中提供帮助。这种非侵入性的检查在神经系统疾病的诊治中应用广泛,因此,本文主要综述影像组学在神经系统疾病中应用的最新研究进展。
Abstract:
Abstract:Radiomics has an indispensable role in disease diagnosis, staging or grading, treatment and prognosis. Radiomics is a high-throughput data analysis method that acquires standard and quantified data from images and models them with accuracy, objectivity, and repeatability. It can be combined with multiple imaging methods. Helping medical imaging in clinical practice. This non-invasive examination is widely used in the diagnosis and treatment of neurological diseases. Therefore, this paper mainly reviews the latest research progress in the application of radiomics in neurological diseases.

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更新日期/Last Update: 2019-08-15