Radiomics in Cross-Sectional Adrenal Imaging: A Systematic Review and Quality Assessment Study
Published 2022 View Full Article
- Home
- Publications
- Publication Search
- Publication Details
Title
Radiomics in Cross-Sectional Adrenal Imaging: A Systematic Review and Quality Assessment Study
Authors
Keywords
-
Journal
Diagnostics
Volume 12, Issue 3, Pages 578
Publisher
MDPI AG
Online
2022-02-24
DOI
10.3390/diagnostics12030578
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- A Bayesian nonparametric model for textural pattern heterogeneity
- (2021) Xiao Li et al. JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES C-APPLIED STATISTICS
- Handcrafted MRI radiomics and machine learning: Classification of indeterminate solid adrenal lesions
- (2021) Stanzione Arnaldo et al. MAGNETIC RESONANCE IMAGING
- Meningioma MRI radiomics and machine learning: systematic review, quality score assessment, and meta-analysis
- (2021) Lorenzo Ugga et al. NEURORADIOLOGY
- Quality control and whole-gland, zonal and lesion annotations for the PROSTATEx challenge public dataset
- (2021) Renato Cuocolo et al. EUROPEAN JOURNAL OF RADIOLOGY
- Cross-sectional imaging features of unusual adrenal lesions: a radiopathological correlation
- (2021) Ali Devrim Karaosmanoglu et al. Abdominal Radiology
- MRI based radiomics in nasopharyngeal cancer: Systematic review and perspectives using radiomic quality score (RQS) assessment
- (2021) Gaia Spadarella et al. EUROPEAN JOURNAL OF RADIOLOGY
- A deep look into radiomics
- (2021) Camilla Scapicchio et al. Radiologia Medica
- Radiomics in Oncology: A Practical Guide
- (2021) Joshua D. Shur et al. RADIOGRAPHICS
- Radiomic mapping model for prediction of Ki-67 expression in adrenocortical carcinoma
- (2020) A.A. Ahmed et al. CLINICAL RADIOLOGY
- Application of CT texture analysis to assess the localization of primary aldosteronism
- (2020) Hiroyuki Akai et al. Scientific Reports
- Combined Diagnosis of Whole-Lesion Histogram Analysis of T1- and T2-Weighted Imaging for Differentiating Adrenal Adenoma and Pheochromocytoma: A Support Vector Machine-Based Study
- (2020) Junhong Liu et al. CANADIAN ASSOCIATION OF RADIOLOGISTS JOURNAL-JOURNAL DE L ASSOCIATION CANADIENNE DES RADIOLOGISTES
- Prostate MRI radiomics: A systematic review and radiomic quality score assessment
- (2020) Arnaldo Stanzione et al. EUROPEAN JOURNAL OF RADIOLOGY
- The Image Biomarker Standardization Initiative: Standardized Quantitative Radiomics for High-Throughput Image-based Phenotyping
- (2020) Alex Zwanenburg et al. RADIOLOGY
- CT and MR imaging of acute adrenal disorders
- (2020) Amar Udare et al. Abdominal Radiology
- Machine Learning in oncology: A clinical appraisal
- (2020) Renato Cuocolo et al. CANCER LETTERS
- A review of original articles published in the emerging field of radiomics
- (2020) Jiangdian Song et al. EUROPEAN JOURNAL OF RADIOLOGY
- Radiomics in medical imaging—“how-to” guide and critical reflection
- (2020) Janita E. van Timmeren et al. Insights into Imaging
- Radiomics in predicting treatment response in non-small-cell lung cancer: current status, challenges and future perspectives
- (2020) Madhurima R. Chetan et al. EUROPEAN RADIOLOGY
- A systematic review of radiomics in osteosarcoma: utilizing radiomics quality score as a tool promoting clinical translation
- (2020) Jingyu Zhong et al. EUROPEAN RADIOLOGY
- Texture Analysis as a Radiomic Marker for Differentiating Benign From Malignant Adrenal Tumors
- (2020) HeiShun Yu et al. JOURNAL OF COMPUTER ASSISTED TOMOGRAPHY
- Usefulness of FDG-PET/CT-Based Radiomics for the Characterization and Genetic Orientation of Pheochromocytomas Before Surgery
- (2020) Catherine Ansquer et al. Cancers
- Can Texture Analysis Be Used to Distinguish Benign From Malignant Adrenal Nodules on Unenhanced CT, Contrast-Enhanced CT, or In-Phase and Opposed-Phase MRI?
- (2019) Lisa M. Ho et al. AMERICAN JOURNAL OF ROENTGENOLOGY
- Distinguishing metastases from benign adrenal masses: what can CT texture analysis do?
- (2019) Bing Shi et al. ACTA RADIOLOGICA
- Machine learning-based texture analysis for differentiation of large adrenal cortical tumours on CT
- (2019) M.M. Elmohr et al. CLINICAL RADIOLOGY
- Prognostic Value of Functional Parameters of 18F-FDG-PET Images in Patients with Primary Renal/Adrenal Lymphoma
- (2019) Manni Wang et al. Contrast Media & Molecular Imaging
- Quality of science and reporting of radiomics in oncologic studies: room for improvement according to radiomics quality score and TRIPOD statement
- (2019) Ji Eun Park et al. EUROPEAN RADIOLOGY
- Mimics, pitfalls, and misdiagnoses of adrenal masses on CT and MRI
- (2019) Khaled M. Elsayes et al. Abdominal Radiology
- Management of incidental adrenal masses: an update
- (2019) Daniel I. Glazer et al. Abdominal Radiology
- CT Texture Analysis and Machine Learning Improve Post-ablation Prognostication in Patients with Adrenal Metastases: A Proof of Concept
- (2019) Dania Daye et al. CARDIOVASCULAR AND INTERVENTIONAL RADIOLOGY
- Radiomics in hepatocellular carcinoma: a quantitative review
- (2019) Taiga Wakabayashi et al. Hepatology International
- The dark side of radiomics: on the paramount importance of publishing negative results
- (2019) Irene Buvat et al. JOURNAL OF NUCLEAR MEDICINE
- Imaging features of adrenal gland masses in the pediatric population
- (2019) Abdelrahman K. Hanafy et al. Abdominal Radiology
- Adrenal cortical adenoma: current update, imaging features, atypical findings, and mimics
- (2019) Mohamed G. Elbanan et al. Abdominal Radiology
- Radiomics with artificial intelligence: a practical guide for beginners
- (2019) Burak Kocak et al. Diagnostic and Interventional Radiology
- Exploring Large-scale Public Medical Image Datasets
- (2019) Luke Oakden-Rayner ACADEMIC RADIOLOGY
- Spatial Bayesian modeling of GLCM with application to malignant lesion characterization
- (2018) Xiao Li et al. JOURNAL OF APPLIED STATISTICS
- Characterization of Adrenal Lesions on Unenhanced MRI Using Texture Analysis: A Machine-Learning Approach
- (2018) Valeria Romeo et al. JOURNAL OF MAGNETIC RESONANCE IMAGING
- Tracking tumor biology with radiomics: A systematic review utilizing a radiomics quality score
- (2018) Sebastian Sanduleanu et al. RADIOTHERAPY AND ONCOLOGY
- Bilateral adrenal abnormalities: imaging review of different entities
- (2018) Meshal Ali Alshahrani et al. Abdominal Radiology
- Can Adrenal Adenomas Be Differentiated From Adrenal Metastases at Single-Phase Contrast-Enhanced CT?
- (2018) Wendy Tu et al. AMERICAN JOURNAL OF ROENTGENOLOGY
- Adrenal incidentaloma: machine learning-based quantitative texture analysis of unenhanced CT can effectively differentiate sPHEO from lipid-poor adrenal adenoma
- (2018) Xiaoping Yi et al. Journal of Cancer
- Radiomics improves efficiency for differentiating subclinical pheochromocytoma from lipid-poor adenoma: a predictive, preventive and personalized medical approach in adrenal incidentalomas
- (2018) Xiaoping Yi et al. EPMA Journal
- An extensive study for binary characterisation of adrenal tumours
- (2018) Hasan Koyuncu et al. MEDICAL & BIOLOGICAL ENGINEERING & COMPUTING
- Responsible Radiomics Research for Faster Clinical Translation
- (2017) Martin Vallières et al. JOURNAL OF NUCLEAR MEDICINE
- Radiomics: the bridge between medical imaging and personalized medicine
- (2017) Philippe Lambin et al. Nature Reviews Clinical Oncology
- Deep Learning: A Primer for Radiologists
- (2017) Gabriel Chartrand et al. RADIOGRAPHICS
- Texture analysis of FDG PET/CT for differentiating between FDG-avid benign and metastatic adrenal tumors: efficacy of combining SUV and texture parameters
- (2017) Masatoyo Nakajo et al. Abdominal Radiology
- Differentiating pheochromocytoma from lipid-poor adrenocortical adenoma by CT texture analysis: feasibility study
- (2017) Gu-Mu-Yang Zhang et al. Abdominal Radiology
- The role of dynamic post-contrast T1-w MRI sequence to characterize lipid-rich and lipid-poor adrenal adenomas in comparison to non-adenoma lesions: preliminary results
- (2017) Valeria Romeo et al. Abdominal Radiology
- ADC histogram analysis for adrenal tumor histogram analysis of apparent diffusion coefficient in differentiating adrenal adenoma from pheochromocytoma
- (2016) Tomokazu Umanodan et al. JOURNAL OF MAGNETIC RESONANCE IMAGING
- Radiomics: Images Are More than Pictures, They Are Data
- (2016) Robert J. Gillies et al. RADIOLOGY
Find Funding. Review Successful Grants.
Explore over 25,000 new funding opportunities and over 6,000,000 successful grants.
ExploreCreate your own webinar
Interested in hosting your own webinar? Check the schedule and propose your idea to the Peeref Content Team.
Create Now