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New AI-based, non-invasive diagnostic tool enables accurate brain tumor diagnosis, surpassing current methods

New AI-based, non-invasive diagnostic tool enables accurate brain tumor diagnosis, surpassing current methods
Graphical abstract. Credit: Cell Reports Medicine (2024). DOI: 10.1016/j.xcrm.2024.101464

Jointly developed by investigators of the Vall d'Hebron Institute of Oncology's (VHIO) Radiomics Group and the Bellvitge University Hospital's Neuroradiology Unit, the Diagnosis in Susceptibility Contrast Enhancing Regions for Neuroncology (DISCERN) is an open-access deep learning tool based on the training of patterns using artificial intelligence models from information of standard magnetic resonance imaging (MRI).

Published in the journal Cell Reports Medicine, results of the VHIO-led study demonstrate the feasibility and accuracy of DISCERN as an enabler of accurate brain tumor diagnosis from perfusion MRI, outperforming conventional methods.

Differential diagnosis of brain tumors

Glioblastoma multiforme, brain metastasis from , and primary central nervous system lymphoma account for up to 70% of all malignant brain cancers. Given that each of these malignancies require a distinct therapeutic approach, between these different malignancies represents an unmet clinical need.

"The non-invasive differential diagnosis of brain tumors is currently based on the assessment of magnetic resonance imaging before and after contrast administration. However, a definitive diagnosis often requires neurosurgical interventions that compromise the quality of life of patients," said Raquel Perez-Lopez, Head of VHIO's Radiomics Group and corresponding author of this present study.

"This work is the result of more than five years' research focused on the identification of innovative magnetic resonance perfusion imaging biomarkers to enable the differential diagnosis of brain tumors. This present study integrates insights generated by other previous research projects on , resulting in the development of software that automates presurgical diagnostic classification with very good precision, while facilitating its clinical applicability with a user-friendly interface for clinicians," added Albert Pons-Escoda, a Clinical Neuroradiologist and Investigator of the Neuroradiology Unit at the Bellvitge University Hospital, and co-author of this study.

This novel tool leverages the full spatial and temporal information of conventional MRI to identify behavioral patterns on imaging specific to each tumor.

"Deep learning teaches the machine the characteristics of each tumor detected by magnetic resonance imaging of already diagnosed patients. For example, if we show the machine thousands of images of dogs and cats, it will learn the distinct and defining characteristics of both species, and when it sees a new image, it can differentiate between the two," added Alonso García-Ruiz, a Ph.D. Student of VHIO's Radiomics Group and first author of this study.

In this case, the learning units are voxels which represent the minimum measurement of volume to study MRI scans and are equivalent to pixels, but three-dimensional display elements. The investigators trained DISCERN to learn the characteristics of these three most common brain malignancies on 50,000 voxels from 40 diagnosed patients.

"Validating this deep learning tool in more than 500 additional cases, results of this present study demonstrate 78% accuracy in the classification of these tumors, surpassing conventional methods," observed Perez-Lopez

"DISCERN is a computerized diagnostic support tool that facilitates the classification of tumors to help guide medical decision making by multidisciplinary teams regarding the need for and type of surgery required to confirm diagnosis," said Carles Majós, Clinical Neuroradiologist and Investigator of the Neuroradiology at the Bellvitge University Hospital, and a co-author of this study.

To enhance study reproducibility and accelerate its adoption in , the proposed method developed by VHIO's Radiomics Group, in close collaboration with investigators of HUB's Neuroradiology Unit, has been implemented on the user-friendly, open-access DISCERN application. For demonstrative purposes, the DISCERN app can be accessed here.

This study was carried out in collaboration with colleagues at the Neuroradiology Unit of the Bellvitge Biomedical Research Institute—IDIBELL and Clínic Hospital (Barcelona, Spain), and HT Medica (Andalucia, Spain), and Radiation Medicine and Applied Sciences and Bioengineering Departments of the University of California (San Diego, U.S.).

More information: Alonso Garcia-Ruiz et al, An accessible deep learning tool for voxel-wise classification of brain malignancies from perfusion MRI, Cell Reports Medicine (2024). DOI: 10.1016/j.xcrm.2024.101464

Journal information: Cell Reports Medicine
Citation: New AI-based, non-invasive diagnostic tool enables accurate brain tumor diagnosis, surpassing current methods (2024, March 11) retrieved 27 April 2024 from https://medicalxpress.com/news/2024-03-ai-based-invasive-diagnostic-tool.html
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