Literature DB >> 34119265

Machine learning applications to neuroimaging for glioma detection and classification: An artificial intelligence augmented systematic review.

Quinlan D Buchlak1, Nazanin Esmaili2, Jean-Christophe Leveque3, Christine Bennett4, Farrokh Farrokhi3, Massimo Piccardi5.   

Abstract

Glioma is the most common primary intraparenchymal tumor of the brain and the 5-year survival rate of high-grade glioma is poor. Magnetic resonance imaging (MRI) is essential for detecting, characterizing and monitoring brain tumors but definitive diagnosis still relies on surgical pathology. Machine learning has been applied to the analysis of MRI data in glioma research and has the potential to change clinical practice and improve patient outcomes. This systematic review synthesizes and analyzes the current state of machine learning applications to glioma MRI data and explores the use of machine learning for systematic review automation. Various datapoints were extracted from the 153 studies that met inclusion criteria and analyzed. Natural language processing (NLP) analysis involved keyword extraction, topic modeling and document classification. Machine learning has been applied to tumor grading and diagnosis, tumor segmentation, non-invasive genomic biomarker identification, detection of progression and patient survival prediction. Model performance was generally strong (AUC = 0.87 ± 0.09; sensitivity = 0.87 ± 0.10; specificity = 0.0.86 ± 0.10; precision = 0.88 ± 0.11). Convolutional neural network, support vector machine and random forest algorithms were top performers. Deep learning document classifiers yielded acceptable performance (mean 5-fold cross-validation AUC = 0.71). Machine learning tools and data resources were synthesized and summarized to facilitate future research. Machine learning has been widely applied to the processing of MRI data in glioma research and has demonstrated substantial utility. NLP and transfer learning resources enabled the successful development of a replicable method for automating the systematic review article screening process, which has potential for shortening the time from discovery to clinical application in medicine.
Copyright © 2021 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Brain tumor classification; Convolutional neural networks; Deep learning; FLAIR; Glioblastoma; Glioma; Glioma grading; Image processing; Machine learning; Multimodal neuroimaging; Neurosurgery; Radiomics; T1-MR image; T2-MR image

Mesh:

Year:  2021        PMID: 34119265     DOI: 10.1016/j.jocn.2021.04.043

Source DB:  PubMed          Journal:  J Clin Neurosci        ISSN: 0967-5868            Impact factor:   1.961


  11 in total

Review 1.  [Structured reporting and artificial intelligence].

Authors:  Johann-Martin Hempel; Daniel Pinto Dos Santos
Journal:  Radiologe       Date:  2021-10-04       Impact factor: 0.635

2.  Comparing human milk macronutrients measured using analyzers based on mid-infrared spectroscopy and ultrasound and the application of machine learning in data fitting.

Authors:  Huijuan Ruan; Qingya Tang; Yajie Zhang; Xuelin Zhao; Yi Xiang; Yi Feng; Wei Cai
Journal:  BMC Pregnancy Childbirth       Date:  2022-07-14       Impact factor: 3.105

3.  Machine Learning Models for Classifying High- and Low-Grade Gliomas: A Systematic Review and Quality of Reporting Analysis.

Authors:  Ryan C Bahar; Sara Merkaj; Gabriel I Cassinelli Petersen; Niklas Tillmanns; Harry Subramanian; Waverly Rose Brim; Tal Zeevi; Lawrence Staib; Eve Kazarian; MingDe Lin; Khaled Bousabarah; Anita J Huttner; Andrej Pala; Seyedmehdi Payabvash; Jana Ivanidze; Jin Cui; Ajay Malhotra; Mariam S Aboian
Journal:  Front Oncol       Date:  2022-04-22       Impact factor: 5.738

4.  Research on Infant Health Diagnosis and Intelligence Development Based on Machine Learning and Health Information Statistics.

Authors:  Siyu Wang; Min Li; Soo Boon Ng
Journal:  Front Public Health       Date:  2022-06-02

Review 5.  Machine Learning Tools for Image-Based Glioma Grading and the Quality of Their Reporting: Challenges and Opportunities.

Authors:  Sara Merkaj; Ryan C Bahar; Tal Zeevi; MingDe Lin; Ichiro Ikuta; Khaled Bousabarah; Gabriel I Cassinelli Petersen; Lawrence Staib; Seyedmehdi Payabvash; John T Mongan; Soonmee Cha; Mariam S Aboian
Journal:  Cancers (Basel)       Date:  2022-05-25       Impact factor: 6.575

Review 6.  Gaps and Opportunities of Artificial Intelligence Applications for Pediatric Oncology in European Research: A Systematic Review of Reviews and a Bibliometric Analysis.

Authors:  Alberto Eugenio Tozzi; Francesco Fabozzi; Megan Eckley; Ileana Croci; Vito Andrea Dell'Anna; Erica Colantonio; Angela Mastronuzzi
Journal:  Front Oncol       Date:  2022-05-31       Impact factor: 5.738

Review 7.  Clinical outcomes associated with robotic and computer-navigated total knee arthroplasty: a machine learning-augmented systematic review.

Authors:  Quinlan D Buchlak; Joe Clair; Nazanin Esmaili; Arshad Barmare; Siva Chandrasekaran
Journal:  Eur J Orthop Surg Traumatol       Date:  2021-06-25

Review 8.  Transfer Learning Approaches for Neuroimaging Analysis: A Scoping Review.

Authors:  Zaniar Ardalan; Vignesh Subbian
Journal:  Front Artif Intell       Date:  2022-02-21

9.  Predictors of improvement in quality of life at 12-month follow-up in patients undergoing anterior endoscopic skull base surgery.

Authors:  Quinlan D Buchlak; Nazanin Esmaili; Christine Bennett; Yi Yuen Wang; James King; Tony Goldschlager
Journal:  PLoS One       Date:  2022-07-27       Impact factor: 3.752

10.  AI-Driven Image Analysis in Central Nervous System Tumors-Traditional Machine Learning, Deep Learning and Hybrid Models.

Authors:  A V Krauze; Y Zhuge; R Zhao; E Tasci; K Camphausen
Journal:  J Biotechnol Biomed       Date:  2022-01-10
View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.