相关参考文献
注意:仅列出部分参考文献,下载原文获取全部文献信息。Automated machine learning based on radiomics features predicts H3 K27M mutation in midline gliomas of the brain
Xiaorui Su et al.
NEURO-ONCOLOGY (2020)
Impact of image preprocessing methods on reproducibility of radiomic features in multimodal magnetic resonance imaging in glioblastoma
Hajar Moradmand et al.
JOURNAL OF APPLIED CLINICAL MEDICAL PHYSICS (2020)
Radiomics-based machine learning methods for isocitrate dehydrogenase genotype prediction of diffuse gliomas
Shuang Wu et al.
JOURNAL OF CANCER RESEARCH AND CLINICAL ONCOLOGY (2019)
Gray-level discretization impacts reproducible MRI radiomics texture features
Loic Duron et al.
PLOS ONE (2019)
Radiomics of Brain MRI: Utility in Prediction of Metastatic Tumor Type
Helge C. Kniep et al.
RADIOLOGY (2019)
Combining Multiple Magnetic Resonance Imaging Sequences Provides Independent Reproducible Radiomics Features
A. Lecler et al.
SCIENTIFIC REPORTS (2019)
Validation of a Method to Compensate Multicenter Effects Affecting CT Radiomics
Fanny Orlhac et al.
RADIOLOGY (2019)
Radiomics in Glioblastoma: Current Status and Challenges Facing Clinical Implementation
Ahmad Chaddad et al.
FRONTIERS IN ONCOLOGY (2019)
Identification of the presence of ischaemic stroke lesions by means of texture analysis on brain magnetic resonance images
Rafael Ortiz-Ramon et al.
COMPUTERIZED MEDICAL IMAGING AND GRAPHICS (2019)
Impact of image preprocessing on the scanner dependence of multi-parametric MRI radiomic features and covariate shift in multi-institutional glioblastoma datasets
Hyemin Um et al.
PHYSICS IN MEDICINE AND BIOLOGY (2019)
Repeatability of Multiparametric Prostate MRI Radiomics Features
Michael Schwier et al.
SCIENTIFIC REPORTS (2019)
Treatment response prediction of rehabilitation program in children with cerebral palsy using radiomics strategy: protocol for a multicenter prospective cohort study in west China
Heng Liu et al.
QUANTITATIVE IMAGING IN MEDICINE AND SURGERY (2019)
Technical Note: Virtual phantom analyses for preprocessing evaluation and detection of a robust feature set for MRI-radiomics of the brain
Marco Bologna et al.
MEDICAL PHYSICS (2019)
Differentiation between glioblastoma, brain metastasis and subtypes using radiomics analysis
Moran Artzi et al.
JOURNAL OF MAGNETIC RESONANCE IMAGING (2019)
Preoperative MRI-radiomics features improve prediction of survival in glioblastoma patients over MGMT methylation status alone
Florent Tixier et al.
Oncotarget (2019)
Distinguishing True Progression From Radionecrosis After Stereotactic Radiation Therapy for Brain Metastases With Machine Learning and Radiomics
Luke Peng et al.
INTERNATIONAL JOURNAL OF RADIATION ONCOLOGY BIOLOGY PHYSICS (2018)
Radiomics Strategy for Molecular Subtype Stratification of Lower-Grade Glioma: Detecting IDH and TP53 Mutations Based on Multimodal MRI
Xi Zhang et al.
JOURNAL OF MAGNETIC RESONANCE IMAGING (2018)
A Postreconstruction Harmonization Method for Multicenter Radiomic Studies in PET
Fanny Orlhac et al.
JOURNAL OF NUCLEAR MEDICINE (2018)
Radiomic MRI signature reveals three distinct subtypes of glioblastoma with different clinical and molecular characteristics, offering prognostic value beyond IDH1
Saima Rathore et al.
SCIENTIFIC REPORTS (2018)
Quantitative Radiomics: Impact of Pulse Sequence Parameter Selection on MRI-Based Textural Features of the Brain
John Ford et al.
CONTRAST MEDIA & MOLECULAR IMAGING (2018)
A radiomics approach to assess tumour-infiltrating CD8 cells and response to anti-PD-1 or anti-PD-L1 immunotherapy: an imaging biomarker, retrospective multicohort study
Roger Sun et al.
LANCET ONCOLOGY (2018)
Radiomic MRI Phenotyping of Glioblastoma: Improving Survival Preciction
Sohi Bae et al.
RADIOLOGY (2018)
Overall survival prediction in glioblastoma multiforme patients from volumetric, shape and texture features using machine learning
Parita Sanghania et al.
SURGICAL ONCOLOGY-OXFORD (2018)
A radiomic signature as a non-invasive predictor of progression-free survival in patients with lower-grade gliomas
Xing Liu et al.
NEUROIMAGE-CLINICAL (2018)
Computer-Aided Grading of Gliomas Combining Automatic Segmentation and Radiomics
Wei Chen et al.
INTERNATIONAL JOURNAL OF BIOMEDICAL IMAGING (2018)
Empirical Evaluation of Cross-Site Reproducibility in Radiomic Features for Characterizing Prostate MRI
Prathyush Chirra et al.
MEDICAL IMAGING 2018: COMPUTER-AIDED DIAGNOSIS (2018)
Computation of reliable textural indices from multimodal brain MRI: suggestions based on a study of patients with diffuse intrinsic pontine glioma
Jessica Goya-Outi et al.
PHYSICS IN MEDICINE AND BIOLOGY (2018)
Intrinsic dependencies of CT radiomic features on voxel size and number of gray levels
Muhammad Shafiq-ul-Hassan et al.
MEDICAL PHYSICS (2017)
Radiomics: the bridge between medical imaging and personalized medicine
Philippe Lambin et al.
NATURE REVIEWS CLINICAL ONCOLOGY (2017)
Data Descriptor: Advancing The Cancer Genome Atlas glioma MRI collections with expert segmentation labels and radiomic features
Spyridon Bakas et al.
SCIENTIFIC DATA (2017)
Lack of robustness of textural measures obtained from 3D brain tumor MRIs impose a need for standardization
David Molina et al.
PLOS ONE (2017)
Computational Radiomics System to Decode the Radiographic Phenotype
Joost J. M. van Griethuysen et al.
CANCER RESEARCH (2017)
Promises and challenges for the implementation of computational medical imaging (radiomics) in oncology
E. J. Limkin et al.
ANNALS OF ONCOLOGY (2017)
Applications and limitations of radiomics
Stephen S. F. Yip et al.
PHYSICS IN MEDICINE AND BIOLOGY (2016)
Radiomics: Images Are More than Pictures, They Are Data
Robert J. Gillies et al.
RADIOLOGY (2016)
Radiomics Analysis on FLT-PET/MRI for Characterization of Early Treatment Response in Renal Cell Carcinoma: A Proof-of-Concept Study
Jacob Antunes et al.
TRANSLATIONAL ONCOLOGY (2016)
Dynamic behavior of suture-anastomosed arteries and implications to vascular surgery operations
Panayiotis C. Roussis et al.
BIOMEDICAL ENGINEERING ONLINE (2015)
A radiomics model from joint FDG-PET and MRI texture features for the prediction of lung metastases in soft-tissue sarcomas of the extremities
M. Vallieres et al.
PHYSICS IN MEDICINE AND BIOLOGY (2015)
Imaging of gliomas at 1.5 and 3 Tesla - A comparative study
Lambros Tselikas et al.
NEURO-ONCOLOGY (2015)
The effect of SUV discretization in quantitative FDG-PET Radiomics: the need for standardized methodology in tumor texture analysis
Ralph T. H. Leijenaar et al.
SCIENTIFIC REPORTS (2015)
Statistical normalization techniques for magnetic resonance imaging
Russell T. Shinohara et al.
NEUROIMAGE-CLINICAL (2014)
The Cancer Imaging Archive (TCIA): Maintaining and Operating a Public Information Repository
Kenneth Clark et al.
JOURNAL OF DIGITAL IMAGING (2013)
Intratumor Heterogeneity Characterized by Textural Features on Baseline 18F-FDG PET Images Predicts Response to Concomitant Radiochemotherapy in Esophageal Cancer
Florent Tixier et al.
JOURNAL OF NUCLEAR MEDICINE (2011)
Evaluating intensity normalization on MRIs of human brain with multiple sclerosis
Mohak Shah et al.
MEDICAL IMAGE ANALYSIS (2011)
The SRI24 Multichannel Atlas of Normal Adult Human Brain Structure
Torsten Rohlfing et al.
HUMAN BRAIN MAPPING (2010)
N4ITK: Improved N3 Bias Correction
Nicholas J. Tustison et al.
IEEE TRANSACTIONS ON MEDICAL IMAGING (2010)
Effects of MRI acquisition parameter variations and protocol heterogeneity on the results of texture analysis and pattern discrimination: An application-oriented study
Marius E. Mayerhoefer et al.
MEDICAL PHYSICS (2009)
Adjusting batch effects in microarray expression data using empirical Bayes methods
W. Evan Johnson et al.
BIOSTATISTICS (2007)
Phantoms for texture analysis of MR images.: Long-term and multi-center study
D Jirák et al.
MEDICAL PHYSICS (2004)