Machine Assist for Pediatric Posterior Fossa Tumor Diagnosis: A Multinational Study

Authors

Michael Zhang, Stanford University Medical Center
Samuel W. Wong, Stanford University
Jason N. Wright, Seattle Children’s Hospital
Sebastian Toescu, Great Ormond Street Hospital for Children NHS Foundation Trust
Maryam Mohammadzadeh, Tehran University of Medical Sciences
Michelle Han, Children's Hospital of Philadelphia
Seth Lummus, University of Colorado-Health Memorial Hospital Central
Matthias W. Wagner, Hospital for Sick Children University of Toronto
Derek Yecies, Lucile Packard Children's Hospital at Stanford University
Hollie Lai, Children's Hospital of Orange County
Azam Eghbal, Children's Hospital of Orange County
Alireza Radmanesh, New York University School of Medicine
Jordan Nemelka, University of Utah School of Medicine
Stephen Harward, Duke Children's Hospital & Health Center
Michael Malinzak, Duke Children's Hospital & Health Center
Suzanne Laughlin, CHU Sainte-Justine - Le Centre Hospitalier Universitaire Mère-Enfant
Sebastien Perreault, Riley Children's Hospital
Kristina R. M. Braun, Children's Hospital of Philadelphia
Arastoo Vossough, Boston Children's Hospital
Tina Poussaint, Duke Children's Hospital & Health Center
Robert Goetti, Duke Children's Hospital & Health Center
Birgit Ertl-Wagner, CHU Sainte-Justine - Le Centre Hospitalier Universitaire Mère-Enfant
Chang Y. Ho, Children's Hospital of Philadelphia
Ozgur Oztekin, University of Sydney and Concord Hospital
Vijay Ramaswamy, Tepecik Education and Research Hospital
Kshitij Mankad, Hospital for Sick Children University of Toronto
Nicholas A. Vitanza, Great Ormond Street Hospital for Children NHS Foundation Trust
Samuel H. Cheshier, Seattle Children’s Hospital
Mourad Said, Radiology Department Centre International Carthage Médicale
Kristian Aquilina, Great Ormond Street Hospital for Children NHS Foundation Trust
Eric Thompson, Children's Memorial Hospital

Document Type

Article

Publication Date

11-1-2021

Identifier/URL

41070307 (Pure); 34392363 (PubMed)

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Abstract

Background: Clinicians and machine classifiers reliably diagnose pilocytic astrocytoma (PA) on magnetic resonance imaging (MRI) but less accurately distinguish medulloblastoma (MB) from ependymoma (EP). One strategy is to first rule out the most identifiable diagnosis.

Objective: To hypothesize a sequential machine-learning classifier could improve diagnostic performance by mimicking a clinician's strategy of excluding PA before distinguishing MB from EP.

Methods: We extracted 1800 total Image Biomarker Standardization Initiative (IBSI)-based features from T2- and gadolinium-enhanced T1-weighted images in a multinational cohort of 274 MB, 156 PA, and 97 EP. We designed a 2-step sequential classifier - first ruling out PA, and next distinguishing MB from EP. For each step, we selected the best performing model from 6-candidate classifier using a reduced feature set, and measured performance on a holdout test set with the microaveraged F1 score.

Results: Optimal diagnostic performance was achieved using 2 decision steps, each with its own distinct imaging features and classifier method. A 3-way logistic regression classifier first distinguished PA from non-PA, with T2 uniformity and T1 contrast as the most relevant IBSI features (F1 score 0.8809). A 2-way neural net classifier next distinguished MB from EP, with T2 sphericity and T1 flatness as most relevant (F1 score 0.9189). The combined, sequential classifier was with F1 score 0.9179.

Conclusion: An MRI-based sequential machine-learning classifiers offer high-performance prediction of pediatric posterior fossa tumors across a large, multinational cohort. Optimization of this model with demographic, clinical, imaging, and molecular predictors could provide significant advantages for family counseling and surgical planning.

Comments

Publisher Copyright: © 2021 Congress of Neurological Surgeons 2021.

DOI

10.1093/neuros/nyab311

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