Unsupervised machine learning using K-means identifies radiomic subgroups of pediatric low-grade gliomas that correlate with key molecular markers

被引:19
|
作者
Haldar, Debanjan [1 ,2 ]
Kazerooni, Anahita Fathi [2 ,3 ]
Arif, Sherjeel [2 ,3 ]
Familiar, Ariana [2 ]
Madhogarhia, Rachel [2 ,3 ]
Khalili, Nastaran [2 ,3 ]
Bagheri, Sina [2 ,3 ]
Anderson, Hannah [2 ,3 ]
Shaikh, Ibraheem Salman [4 ]
Mahtabfar, Aria [2 ,6 ]
Kim, Meen Chul [2 ]
Tu, Wenxin [5 ]
Ware, Jefferey [3 ]
Vossough, Arastoo [2 ,3 ]
Davatzikos, Christos [3 ]
Storm, Phillip B. [2 ,7 ]
Resnick, Adam [2 ]
Nabavizadeh, Ali [2 ,3 ,8 ]
机构
[1] Univ Penn, Perelman Sch Med, Philadelphia, PA USA
[2] Childrens Hosp Philadelphia, Ctr Data Driven Discovery Biomed D3b, Philadelphia, PA USA
[3] Univ Penn, Hosp Univ Penn, Perelman Sch Med, Dept Radiol, Philadelphia, PA USA
[4] Crozer Chester Med Ctr, Dept Med, Chester, PA USA
[5] Univ Penn, Coll Arts & Sci, Philadelphia, PA USA
[6] Thomas Jefferson Univ, Sidney Kimmel Med Coll, Dept Neurol Surg, Philadelphia, PA USA
[7] Childrens Hosp Philadelphia, Div Neurol Surg, Philadelphia, PA USA
[8] Hosp Univ Penn, Dept Radiol, Radiol, 1 Silverstein Bldg,3400 Spruce St, Philadelphia, PA 19104 USA
来源
NEOPLASIA | 2023年 / 36卷
基金
美国国家卫生研究院;
关键词
Radiomics; Radiogenomics; Pediatric low-grade glioma; Unsupervised machine learning;
D O I
10.1016/j.neo.2022.100869
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Introduction: Despite advancements in molecular and histopathologic characterization of pediatric low-grade gliomas (pLGGs), there remains significant phenotypic heterogeneity among tumors with similar categorizations. We hypothesized that an unsupervised machine learning approach based on radiomic features may reveal distinct pLGG imaging subtypes.Methods: Multi-parametric MR images (T1 pre- and post-contrast, T2, and T2 FLAIR) from 157 patients with pLGGs were collected and 881 quantitative radiomic features were extracted from tumorous region. Clustering was performed using K-means after applying principal component analysis (PCA) for feature dimensionality reduction. Molecular and demographic data was obtained from the PedCBioportal and compared between imaging subtypes.Results: K-means identified three distinct imaging-based subtypes. Subtypes differed in mutational frequencies of BRAF (p < 0.05) as well as the gene expression of BRAF (p < 0.05). It was also found that age (p < 0.05), tumor location (p < 0.01), and tumor histology (p < 0.0001) differed significantly between the imaging subtypes.Conclusion: In this exploratory work, it was found that clustering of pLGGs based on radiomic features identifies distinct, imaging-based subtypes that correlate with important molecular markers and demographic details. This finding supports the notion that incorporation of radiomic data could augment our ability to better characterize pLGGs.
引用
收藏
页数:8
相关论文
共 7 条
  • [1] Radiomic features from multiparametric magnetic resonance imaging predict molecular subgroups of pediatric low-grade gliomas
    Liu, Zhen
    Hong, Xuanke
    Wang, Linglong
    Ma, Zeyu
    Guan, Fangzhan
    Wang, Weiwei
    Qiu, Yuning
    Zhang, Xueping
    Duan, Wenchao
    Wang, Minkai
    Sun, Chen
    Zhao, Yuanshen
    Duan, Jingxian
    Sun, Qiuchang
    Liu, Lin
    Ding, Lei
    Ji, Yuchen
    Yan, Dongming
    Liu, Xianzhi
    Cheng, Jingliang
    Zhang, Zhenyu
    Li, Zhi-Cheng
    Yan, Jing
    BMC CANCER, 2023, 23 (01)
  • [2] Radiomic features from multiparametric magnetic resonance imaging predict molecular subgroups of pediatric low-grade gliomas
    Zhen Liu
    Xuanke Hong
    Linglong Wang
    Zeyu Ma
    Fangzhan Guan
    Weiwei Wang
    Yuning Qiu
    Xueping Zhang
    Wenchao Duan
    Minkai Wang
    Chen Sun
    Yuanshen Zhao
    Jingxian Duan
    Qiuchang Sun
    Lin Liu
    Lei Ding
    Yuchen Ji
    Dongming Yan
    Xianzhi Liu
    Jingliang Cheng
    Zhenyu Zhang
    Zhi-Cheng Li
    Jing Yan
    BMC Cancer, 23
  • [3] Applications of machine learning to MR imaging of pediatric low-grade gliomas
    Kudus, Kareem
    Wagner, Matthias
    Ertl-Wagner, Birgit Betina
    Khalvati, Farzad
    CHILDS NERVOUS SYSTEM, 2024, 40 (10) : 3027 - 3035
  • [4] Molecular subtype classification of low-grade gliomas using magnetic resonance imaging-based radiomics and machine learning
    Lam, Luu Ho Thanh
    Do, Duyen Thi
    Diep, Doan Thi Ngoc
    Nguyet, Dang Le Nhu
    Truong, Quang Dinh
    Tri, Tran Thanh
    Thanh, Huynh Ngoc
    Le, Nguyen Quoc Khanh
    NMR IN BIOMEDICINE, 2022, 35 (11)
  • [5] Classification of 1p/19q Status in Low-Grade Gliomas: Experiments with Radiomic Features and Ensemble- Based Machine Learning Methods
    Medeiros, Tony Alexandre
    Saraiva, Raimundo Guimaraes
    Cassia, Guilherme de Souza
    Nascimento, Francisco Assis de Oliveira
    Carvalho, Joao Luiz Azevedo de
    BRAZILIAN ARCHIVES OF BIOLOGY AND TECHNOLOGY, 2023, 66
  • [6] Deriving quantitative information from multiparametric MRI via Radiomics: Evaluation of the robustness and predictive value of radiomic features in the discrimination of low-grade versus high-grade gliomas with machine learning
    Ubaldi, Leonardo
    Saponaro, Sara
    Giuliano, Alessia
    Talamonti, Cinzia
    Retico, Alessandra
    PHYSICA MEDICA-EUROPEAN JOURNAL OF MEDICAL PHYSICS, 2023, 107
  • [7] Improving Deep Learning Models for Pediatric Low-Grade Glioma Tumours Molecular Subtype Identification Using MRI-based 3D Probability Distributions of Tumour Location
    Namdar, Khashayar
    Wagner, Matthias W.
    Kudus, Kareem
    Hawkins, Cynthia
    Tabori, Uri
    Ertl-Wagner, Birgit B.
    Khalvati, Farzad
    CANADIAN ASSOCIATION OF RADIOLOGISTS JOURNAL-JOURNAL DE L ASSOCIATION CANADIENNE DES RADIOLOGISTES, 2025, 76 (02): : 313 - 323