Exploring Adult Glioma through MRI: A Review of Publicly Available Datasets to Guide Efficient Image Analysis
Meryem Abbad Andaloussi, Raphael Maser, Frank Hertel, Fran\c{c}ois, Lamoline, Andreas Dominik Husch

TL;DR
This review compiles and analyzes 28 publicly available glioma MRI datasets, highlighting their characteristics, limitations, and potential research applications to guide efficient dataset selection for medical image analysis.
Contribution
It provides a comprehensive overview of existing glioma MRI datasets, including their features, limitations, and relevance to current WHO classifications, aiding researchers in dataset selection.
Findings
28 datasets identified with 62,019 images from 5,515 patients
Only 2 datasets reflect the latest WHO glioma classification
Significant variation in dataset characteristics and annotation quality
Abstract
Publicly available data is essential for the progress of medical image analysis, in particular for crafting machine learning models. Glioma is the most common group of primary brain tumors, and magnetic resonance imaging (MRI) is a widely used modality in their diagnosis and treatment. However, the availability and quality of public datasets for glioma MRI are not well known. In this review, we searched for public datasets for glioma MRI using Google Dataset Search, The Cancer Imaging Archive (TCIA), and Synapse. A total of 28 datasets published between 2005 and May 2024 were found, containing 62019 images from 5515 patients. We analyzed the characteristics of these datasets, such as the origin, size, format, annotation, and accessibility. Additionally, we examined the distribution of tumor types, grades, and stages among the datasets. The implications of the evolution of the WHO…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Brain Tumor Detection and Classification · AI in cancer detection
