Literature DB >> 34460921

Machine Learning Using Multiparametric Magnetic Resonance Imaging Radiomic Feature Analysis to Predict Ki-67 in World Health Organization Grade I Meningiomas.

Omaditya Khanna1, Anahita Fathi Kazerooni2,3, Christopher J Farrell1, Michael P Baldassari1, Tyler D Alexander1, Michael Karsy1, Benjamin A Greenberger4, Jose A Garcia2,3, Chiharu Sako2,3, James J Evans1, Kevin D Judy1, David W Andrews1, Adam E Flanders5, Ashwini D Sharan1, Adam P Dicker4, Wenyin Shi4, Christos Davatzikos2,3.   

Abstract

BACKGROUND: Although World Health Organization (WHO) grade I meningiomas are considered "benign" tumors, an elevated Ki-67 is one crucial factor that has been shown to influence tumor behavior and clinical outcomes. The ability to preoperatively discern Ki-67 would confer the ability to guide surgical strategy.
OBJECTIVE: In this study, we develop a machine learning (ML) algorithm using radiomic feature analysis to predict Ki-67 in WHO grade I meningiomas.
METHODS: A retrospective analysis was performed for a cohort of 306 patients who underwent surgical resection of WHO grade I meningiomas. Preoperative magnetic resonance imaging was used to perform radiomic feature extraction followed by ML modeling using least absolute shrinkage and selection operator wrapped with support vector machine through nested cross-validation on a discovery cohort (n = 230), to stratify tumors based on Ki-67 <5% and ≥5%. The final model was independently tested on a replication cohort (n = 76).
RESULTS: An area under the receiver operating curve (AUC) of 0.84 (95% CI: 0.78-0.90) with a sensitivity of 84.1% and specificity of 73.3% was achieved in the discovery cohort. When this model was applied to the replication cohort, a similar high performance was achieved, with an AUC of 0.83 (95% CI: 0.73-0.94), sensitivity and specificity of 82.6% and 85.5%, respectively. The model demonstrated similar efficacy when applied to skull base and nonskull base tumors.
CONCLUSION: Our proposed radiomic feature analysis can be used to stratify WHO grade I meningiomas based on Ki-67 with excellent accuracy and can be applied to skull base and nonskull base tumors with similar performance achieved. © Congress of Neurological Surgeons 2021.

Entities:  

Keywords:  Artificial intelligence; Machine learning; Meningioma; Radiomics

Mesh:

Substances:

Year:  2021        PMID: 34460921      PMCID: PMC8510851          DOI: 10.1093/neuros/nyab307

Source DB:  PubMed          Journal:  Neurosurgery        ISSN: 0148-396X            Impact factor:   5.315


  42 in total

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Authors:  Bo Yin; Li Liu; Bi Yun Zhang; Yu Xin Li; Yuan Li; Dao Ying Geng
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Authors:  Alejandro Berlin; Julio F Castro-Mesta; Laura Rodriguez-Romo; David Hernandez-Barajas; Juan F González-Guerrero; Iván A Rodríguez-Fernández; Galileo González-Conchas; Adrian Verdines-Perez; Francisco E Vera-Badillo
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Journal:  Neuro Oncol       Date:  2015-07-16       Impact factor: 12.300

Review 4.  Radiomics: the bridge between medical imaging and personalized medicine.

Authors:  Philippe Lambin; Ralph T H Leijenaar; Timo M Deist; Jurgen Peerlings; Evelyn E C de Jong; Janita van Timmeren; Sebastian Sanduleanu; Ruben T H M Larue; Aniek J G Even; Arthur Jochems; Yvonka van Wijk; Henry Woodruff; Johan van Soest; Tim Lustberg; Erik Roelofs; Wouter van Elmpt; Andre Dekker; Felix M Mottaghy; Joachim E Wildberger; Sean Walsh
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5.  ADC-derived spatial features can accurately classify adnexal lesions.

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Journal:  J Magn Reson Imaging       Date:  2017-09-13       Impact factor: 4.813

6.  Ki67 reproducibility using digital image analysis: an inter-platform and inter-operator study.

Authors:  Balazs Acs; Vasiliki Pelekanou; Yalai Bai; Sandra Martinez-Morilla; Maria Toki; Samuel C Y Leung; Torsten O Nielsen; David L Rimm
Journal:  Lab Invest       Date:  2018-09-04       Impact factor: 5.662

7.  The Ki-67 Proliferation Index as a Marker of Time to Recurrence in Intracranial Meningioma.

Authors:  Christian Mirian; Simon Skyrman; Jiri Bartek; Lasse Rehné Jensen; Lars Kihlström; Petter Förander; Abiel Orrego; Tiit Mathiesen
Journal:  Neurosurgery       Date:  2020-11-16       Impact factor: 4.654

8.  MIB-1 labelling index is an independent prognostic marker in primary breast cancer.

Authors:  R L Jansen; P S Hupperets; J W Arends; S R Joosten-Achjanie; A Volovics; H C Schouten; H F Hillen
Journal:  Br J Cancer       Date:  1998-08       Impact factor: 7.640

9.  Multiplatform genomic profiling and magnetic resonance imaging identify mechanisms underlying intratumor heterogeneity in meningioma.

Authors:  Stephen T Magill; Harish N Vasudevan; Kyounghee Seo; Javier E Villanueva-Meyer; Abrar Choudhury; S John Liu; Melike Pekmezci; Sarah Findakly; Stephanie Hilz; Sydney Lastella; Benjamin Demaree; Steve E Braunstein; Nancy Ann Oberheim Bush; Manish K Aghi; Philip V Theodosopoulos; Penny K Sneed; Adam R Abate; Mitchel S Berger; Michael W McDermott; Daniel A Lim; Erik M Ullian; Joseph F Costello; David R Raleigh
Journal:  Nat Commun       Date:  2020-09-23       Impact factor: 17.694

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3.  Applications of Radiomics and Radiogenomics in High-Grade Gliomas in the Era of Precision Medicine.

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4.  Prediction for Mitosis-Karyorrhexis Index Status of Pediatric Neuroblastoma via Machine Learning Based 18F-FDG PET/CT Radiomics.

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5.  Application of MRI-Based Radiomics in Preoperative Prediction of NF2 Alteration in Intracranial Meningiomas.

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