Glioblastoma Pseudoprogression Discrimination Using Multiparametric Magnetic Resonance Imaging, Principal Component Analysis, and Supervised and Unsupervised Machine Learning

Otros/as autores/as

Institut Català de la Salut

[Thenier-Villa JL, Arikan-Abelló F] Department of Neurosurgery, University Hospital Arnau de Vilanova, Lleida, Spain. Servei de Neurocirurgia, Vall d’Hebron Hospital Universitari, Barcelona, Spain. Unitat de Recerca en Neurotraumatologia i Neurocirurgia (UNINN), Vall d’Hebron Institut de Recerca (VHIR), Barcelona, Spain. [Martínez-Ricarte FR] Servei de Neurocirurgia, Vall d’Hebron Hospital Universitari, Barcelona, Spain. Unitat de Recerca en Neurotraumatologia i Neurocirurgia (UNINN), Vall d’Hebron Institut de Recerca (VHIR), Barcelona, Spain. [Figueroa-Vezirian M] Servei de Neurocirurgia, Vall d’Hebron Hospital Universitari, Barcelona, Spain

Vall d'Hebron Barcelona Hospital Campus

Fecha de publicación

2024-03-27T08:42:07Z

2024-03-27T08:42:07Z

2024-03



Resumen

Glioblastoma; Prediction models; Pseudoprogression


Glioblastoma; Models de predicció; Pseudoprogressió


Glioblastoma; Modelos de predicción; Pseudoprogresión


Background One of the most frequent phenomena in the follow-up of glioblastoma is pseudoprogression, present in up to half of cases. The clinical usefulness of discriminating this phenomenon through magnetic resonance imaging and nuclear medicine has not yet been standardized; in this study, we used machine learning on multiparametric magnetic resonance imaging to explore discriminators of this phenomenon. Methods For the study, 30 patients diagnosed with IDH wild-type glioblastoma operated on at both study centers in 2011–2020 were selected; 15 patients corresponded to early tumor progression and 15 patients to pseudoprogression. Using unsupervised learning, the number of clusters and tumor segmentation was recorded using gap-stat and k-means method, adjusting to voxel adjacency. In a second phase, a class prediction was carried out with a multinomial logistic regression supervised learning method; the outcome variables were the percentage of assignment, class overrepresentation, and degree of voxel adjacency. Results Unsupervised learning of the tumor in its diagnosis shows up to 14 well-differentiated tumor areas. In the supervised learning phase, there is a higher percentage of assigned classes (P < 0.01), less overrepresentation of classes (P < 0.01), and greater adjacency (55% vs. 33%) in cases of true tumor progression compared with pseudoprogression. Conclusions True tumor progression preserves the multidimensional characteristics of the basal tumor at the voxel and region of interest level, resulting in a characteristic differential pattern when supervised learning is used.

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Artículo


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Inglés

Materias y palabras clave

Imatgeria per ressonància magnètica; Glioblastoma multiforme; Aprenentatge supervisat (Aprenentatge automàtic); PHENOMENA AND PROCESSES::Mathematical Concepts::Algorithms::Artificial Intelligence::Machine Learning::Unsupervised Machine Learning; PHENOMENA AND PROCESSES::Mathematical Concepts::Algorithms::Artificial Intelligence::Machine Learning::Supervised Machine Learning; DISEASES::Neoplasms::Neoplasms by Histologic Type::Neoplasms, Germ Cell and Embryonal::Neuroectodermal Tumors::Neoplasms, Neuroepithelial::Glioma::Astrocytoma::Glioblastoma; ANALYTICAL, DIAGNOSTIC AND THERAPEUTIC TECHNIQUES, AND EQUIPMENT::Diagnosis::Diagnostic Techniques and Procedures::Diagnostic Imaging::Tomography::Magnetic Resonance Imaging; FENÓMENOS Y PROCESOS::conceptos matemáticos::algoritmos::inteligencia artificial::aprendizaje automático::aprendizaje automático no supervisado; FENÓMENOS Y PROCESOS::conceptos matemáticos::algoritmos::inteligencia artificial::aprendizaje automático::aprendizaje automático supervisado; ENFERMEDADES::neoplasias::neoplasias por tipo histológico::neoplasias de células germinales y embrionarias::tumores neuroectodérmicos::neoplasias neuroepiteliales::glioma::astrocitoma::glioblastoma; TÉCNICAS Y EQUIPOS ANALÍTICOS, DIAGNÓSTICOS Y TERAPÉUTICOS::diagnóstico::técnicas y procedimientos diagnósticos::diagnóstico por imagen::tomografía::imagen por resonancia magnética

Publicado por

Elsevier

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Derechos

Attribution-NonCommercial-NoDerivatives 4.0 International

http://creativecommons.org/licenses/by-nc-nd/4.0/

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