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Application of an Artificial Intelligence Algorithm to Prognostically Stratify Grade II Gliomas

(1) Background: Recently, it has been shown that the extent of resection (EOR) and molecular classification of low-grade gliomas (LGGs) are endowed with prognostic significance. However, a prognostic stratification of patients able to give specific weight to the single parameters able to predict pro...

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Autores principales: Cesselli, Daniela, Ius, Tamara, Isola, Miriam, Del Ben, Fabio, Da Col, Giacomo, Bulfoni, Michela, Turetta, Matteo, Pegolo, Enrico, Marzinotto, Stefania, Scott, Cathryn Anne, Mariuzzi, Laura, Di Loreto, Carla, Beltrami, Antonio Paolo, Skrap, Miran
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7016715/
https://www.ncbi.nlm.nih.gov/pubmed/31877896
http://dx.doi.org/10.3390/cancers12010050
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author Cesselli, Daniela
Ius, Tamara
Isola, Miriam
Del Ben, Fabio
Da Col, Giacomo
Bulfoni, Michela
Turetta, Matteo
Pegolo, Enrico
Marzinotto, Stefania
Scott, Cathryn Anne
Mariuzzi, Laura
Di Loreto, Carla
Beltrami, Antonio Paolo
Skrap, Miran
author_facet Cesselli, Daniela
Ius, Tamara
Isola, Miriam
Del Ben, Fabio
Da Col, Giacomo
Bulfoni, Michela
Turetta, Matteo
Pegolo, Enrico
Marzinotto, Stefania
Scott, Cathryn Anne
Mariuzzi, Laura
Di Loreto, Carla
Beltrami, Antonio Paolo
Skrap, Miran
author_sort Cesselli, Daniela
collection PubMed
description (1) Background: Recently, it has been shown that the extent of resection (EOR) and molecular classification of low-grade gliomas (LGGs) are endowed with prognostic significance. However, a prognostic stratification of patients able to give specific weight to the single parameters able to predict prognosis is still missing. Here, we adopt classic statistics and an artificial intelligence algorithm to define a multiparametric prognostic stratification of grade II glioma patients. (2) Methods: 241 adults who underwent surgery for a supratentorial LGG were included. Clinical, neuroradiological, surgical, histopathological and molecular data were assessed for their ability to predict overall survival (OS), progression-free survival (PFS), and malignant progression-free survival (MPFS). Finally, a decision-tree algorithm was employed to stratify patients. (3) Results: Classic statistics confirmed EOR, pre-operative- and post-operative tumor volumes, Ki67, and the molecular classification as independent predictors of OS, PFS, and MPFS. The decision tree approach provided an algorithm capable of identifying prognostic factors and defining both the cut-off levels and the hierarchy to be used in order to delineate specific prognostic classes with high positive predictive value. Key results were the superior role of EOR on that of molecular class, the importance of second surgery, and the role of different prognostic factors within the three molecular classes. (4) Conclusions: This study proposes a stratification of LGG patients based on the different combinations of clinical, molecular, and imaging data, adopting a supervised non-parametric learning method. If validated in independent case studies, the clinical utility of this innovative stratification approach might be proved.
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spelling pubmed-70167152020-02-28 Application of an Artificial Intelligence Algorithm to Prognostically Stratify Grade II Gliomas Cesselli, Daniela Ius, Tamara Isola, Miriam Del Ben, Fabio Da Col, Giacomo Bulfoni, Michela Turetta, Matteo Pegolo, Enrico Marzinotto, Stefania Scott, Cathryn Anne Mariuzzi, Laura Di Loreto, Carla Beltrami, Antonio Paolo Skrap, Miran Cancers (Basel) Article (1) Background: Recently, it has been shown that the extent of resection (EOR) and molecular classification of low-grade gliomas (LGGs) are endowed with prognostic significance. However, a prognostic stratification of patients able to give specific weight to the single parameters able to predict prognosis is still missing. Here, we adopt classic statistics and an artificial intelligence algorithm to define a multiparametric prognostic stratification of grade II glioma patients. (2) Methods: 241 adults who underwent surgery for a supratentorial LGG were included. Clinical, neuroradiological, surgical, histopathological and molecular data were assessed for their ability to predict overall survival (OS), progression-free survival (PFS), and malignant progression-free survival (MPFS). Finally, a decision-tree algorithm was employed to stratify patients. (3) Results: Classic statistics confirmed EOR, pre-operative- and post-operative tumor volumes, Ki67, and the molecular classification as independent predictors of OS, PFS, and MPFS. The decision tree approach provided an algorithm capable of identifying prognostic factors and defining both the cut-off levels and the hierarchy to be used in order to delineate specific prognostic classes with high positive predictive value. Key results were the superior role of EOR on that of molecular class, the importance of second surgery, and the role of different prognostic factors within the three molecular classes. (4) Conclusions: This study proposes a stratification of LGG patients based on the different combinations of clinical, molecular, and imaging data, adopting a supervised non-parametric learning method. If validated in independent case studies, the clinical utility of this innovative stratification approach might be proved. MDPI 2019-12-22 /pmc/articles/PMC7016715/ /pubmed/31877896 http://dx.doi.org/10.3390/cancers12010050 Text en © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Cesselli, Daniela
Ius, Tamara
Isola, Miriam
Del Ben, Fabio
Da Col, Giacomo
Bulfoni, Michela
Turetta, Matteo
Pegolo, Enrico
Marzinotto, Stefania
Scott, Cathryn Anne
Mariuzzi, Laura
Di Loreto, Carla
Beltrami, Antonio Paolo
Skrap, Miran
Application of an Artificial Intelligence Algorithm to Prognostically Stratify Grade II Gliomas
title Application of an Artificial Intelligence Algorithm to Prognostically Stratify Grade II Gliomas
title_full Application of an Artificial Intelligence Algorithm to Prognostically Stratify Grade II Gliomas
title_fullStr Application of an Artificial Intelligence Algorithm to Prognostically Stratify Grade II Gliomas
title_full_unstemmed Application of an Artificial Intelligence Algorithm to Prognostically Stratify Grade II Gliomas
title_short Application of an Artificial Intelligence Algorithm to Prognostically Stratify Grade II Gliomas
title_sort application of an artificial intelligence algorithm to prognostically stratify grade ii gliomas
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7016715/
https://www.ncbi.nlm.nih.gov/pubmed/31877896
http://dx.doi.org/10.3390/cancers12010050
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