Literature DB >> 30453459

Machine learning applications for the differentiation of primary central nervous system lymphoma from glioblastoma on imaging: a systematic review and meta-analysis.

Anthony V Nguyen1, Elizabeth E Blears2, Evan Ross2, Rishi R Lall3, Juan Ortega-Barnett3.   

Abstract

OBJECTIVEGlioblastoma (GBM) and primary central nervous system lymphoma (PCNSL) are common intracranial pathologies encountered by neurosurgeons. They often may have similar radiological findings, making diagnosis difficult without surgical biopsy; however, management is quite different between these two entities. Recently, predictive analytics, including machine learning (ML), have garnered attention for their potential to aid in the diagnostic assessment of a variety of pathologies. Several ML algorithms have recently been designed to differentiate GBM from PCNSL radiologically with a high sensitivity and specificity. The objective of this systematic review and meta-analysis was to evaluate the implementation of ML algorithms in differentiating GBM and PCNSL.METHODSThe authors performed a systematic review of the literature using PubMed in accordance with PRISMA guidelines to select and evaluate studies that included themes of ML and brain tumors. These studies were further narrowed down to focus on works published between January 2008 and May 2018 addressing the use of ML in training models to distinguish between GBM and PCNSL on radiological imaging. Outcomes assessed were test characteristics such as accuracy, sensitivity, specificity, and area under the receiver operating characteristic curve (AUC).RESULTSEight studies were identified addressing use of ML in training classifiers to distinguish between GBM and PCNSL on radiological imaging. ML performed well with the lowest reported AUC being 0.878. In studies in which ML was directly compared with radiologists, ML performed better than or as well as the radiologists. However, when ML was applied to an external data set, it performed more poorly.CONCLUSIONSFew studies have applied ML to solve the problem of differentiating GBM from PCNSL using imaging alone. Of the currently published studies, ML algorithms have demonstrated promising results and certainly have the potential to aid radiologists with difficult cases, which could expedite the neurosurgical decision-making process. It is likely that ML algorithms will help to optimize neurosurgical patient outcomes as well as the cost-effectiveness of neurosurgical care if the problem of overfitting can be overcome.

Entities:  

Keywords:  AUC = area under the receiver operating curve; FN = false negative; FP = false positive; GBM = glioblastoma; ML = machine learning; PCNSL = primary central nervous system lymphoma; PRISMA = Preferred Reporting Items for Systematic Reviews and Meta-Analysis; QUADAS-2 = Quality Assessment of Diagnostic Accuracy Studies-2; SVM = support vector machine; TN = true negative; TP = true positive; glioblastoma; machine learning; predictive analytics; primary central nervous system lymphoma; radiological diagnosis

Mesh:

Year:  2018        PMID: 30453459     DOI: 10.3171/2018.8.FOCUS18325

Source DB:  PubMed          Journal:  Neurosurg Focus        ISSN: 1092-0684            Impact factor:   4.047


  16 in total

1.  Machine Learning in Differentiating Gliomas from Primary CNS Lymphomas: A Systematic Review, Reporting Quality, and Risk of Bias Assessment.

Authors:  G I Cassinelli Petersen; J Shatalov; T Verma; W R Brim; H Subramanian; A Brackett; R C Bahar; S Merkaj; T Zeevi; L H Staib; J Cui; A Omuro; R A Bronen; A Malhotra; M S Aboian
Journal:  AJNR Am J Neuroradiol       Date:  2022-03-31       Impact factor: 3.825

2.  External Validation of Deep Learning Algorithms for Radiologic Diagnosis: A Systematic Review.

Authors:  Alice C Yu; Bahram Mohajer; John Eng
Journal:  Radiol Artif Intell       Date:  2022-05-04

3.  Surface values, volumetric measurements and radiomics of structural MRI for the diagnosis and subtyping of attention-deficit/hyperactivity disorder.

Authors:  Liting Shi; Xuechun Liu; Keqing Wu; Kui Sun; Chunsen Lin; Zhengmei Li; Shuying Zhao; Xiuqin Fan
Journal:  Eur J Neurosci       Date:  2021-11-09       Impact factor: 3.698

4.  Machine learning algorithms trained with pre-hospital acquired history-taking data can accurately differentiate diagnoses in patients with hip complaints.

Authors:  Michiel Siebelt; Dirk Das; Amber Van Den Moosdijk; Tristan Warren; Peter Van Der Putten; Walter Van Der Weegen
Journal:  Acta Orthop       Date:  2021-02-12       Impact factor: 3.717

5.  Glioblastoma and primary central nervous system lymphoma: differentiation using MRI derived first-order texture analysis - a machine learning study.

Authors:  Sarv Priya; Caitlin Ward; Thomas Locke; Neetu Soni; Ravishankar Pillenahalli Maheshwarappa; Varun Monga; Amit Agarwal; Girish Bathla
Journal:  Neuroradiol J       Date:  2021-03-03

6.  Quality assessment standards in artificial intelligence diagnostic accuracy systematic reviews: a meta-research study.

Authors:  Shruti Jayakumar; Viknesh Sounderajah; Pasha Normahani; Leanne Harling; Sheraz R Markar; Hutan Ashrafian; Ara Darzi
Journal:  NPJ Digit Med       Date:  2022-01-27

7.  Deep Learning With Data Enhancement for the Differentiation of Solitary and Multiple Cerebral Glioblastoma, Lymphoma, and Tumefactive Demyelinating Lesion.

Authors:  Yu Zhang; Kewei Liang; Jiaqi He; He Ma; Hongyan Chen; Fei Zheng; Lingling Zhang; Xinsheng Wang; Xibo Ma; Xuzhu Chen
Journal:  Front Oncol       Date:  2021-08-18       Impact factor: 6.244

Review 8.  Accuracy of Machine Learning Algorithms for the Classification of Molecular Features of Gliomas on MRI: A Systematic Literature Review and Meta-Analysis.

Authors:  Evi J van Kempen; Max Post; Manoj Mannil; Benno Kusters; Mark Ter Laan; Frederick J A Meijer; Dylan J H A Henssen
Journal:  Cancers (Basel)       Date:  2021-05-26       Impact factor: 6.639

9.  Positron emission tomography and magnetic resonance imaging in primary central nervous system lymphoma-a narrative review.

Authors:  Simone Krebs; Julia G Barasch; Robert J Young; Christian Grommes; Heiko Schöder
Journal:  Ann Lymphoma       Date:  2021-06-30

10.  Radiomics-Based Machine Learning in Differentiation Between Glioblastoma and Metastatic Brain Tumors.

Authors:  Chaoyue Chen; Xuejin Ou; Jian Wang; Wen Guo; Xuelei Ma
Journal:  Front Oncol       Date:  2019-08-22       Impact factor: 6.244

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