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Deep learning-based automatic tumor burden assessment of pediatric high-grade gliomas, medulloblastomas, and other leptomeningeal seeding tumors

Authors :
John Sollee
Jian Peng
Katherine E. Warren
Jerrold L. Boxerman
Tina Young Poussaint
Daniel D Kim
Xinping Xun
Patrick Y. Wen
Chengzhang Zhu
Beiji Zou
Jayashree Kalpathy-Cramer
Jing Wu
Deepa Dalal
Jiaer Huang
Chen Zhang
Harrison X. Bai
Xiaowei Zeng
Jay B. Patel
Ke Jin
Lisa J. States
Li Yang
Ken Chang
Raymond Y. Huang
Hao Zhou
Xue Feng
Source :
Neuro Oncol
Publication Year :
2021
Publisher :
Oxford University Press (OUP), 2021.

Abstract

Background Longitudinal measurement of tumor burden with magnetic resonance imaging (MRI) is an essential component of response assessment in pediatric brain tumors. We developed a fully automated pipeline for the segmentation of tumors in pediatric high-grade gliomas, medulloblastomas, and leptomeningeal seeding tumors. We further developed an algorithm for automatic 2D and volumetric size measurement of tumors. Methods The preoperative and postoperative cohorts were randomly split into training and testing sets in a 4:1 ratio. A 3D U-Net neural network was trained to automatically segment the tumor on T1 contrast-enhanced and T2/FLAIR images. The product of the maximum bidimensional diameters according to the RAPNO (Response Assessment in Pediatric Neuro-Oncology) criteria (AutoRAPNO) was determined. Performance was compared to that of 2 expert human raters who performed assessments independently. Volumetric measurements of predicted and expert segmentations were computationally derived and compared. Results A total of 794 preoperative MRIs from 794 patients and 1003 postoperative MRIs from 122 patients were included. There was excellent agreement of volumes between preoperative and postoperative predicted and manual segmentations, with intraclass correlation coefficients (ICCs) of 0.912 and 0.960 for the 2 preoperative and 0.947 and 0.896 for the 2 postoperative models. There was high agreement between AutoRAPNO scores on predicted segmentations and manually calculated scores based on manual segmentations (Rater 2 ICC = 0.909; Rater 3 ICC = 0.851). Lastly, the performance of AutoRAPNO was superior in repeatability to that of human raters for MRIs with multiple lesions. Conclusions Our automated deep learning pipeline demonstrates potential utility for response assessment in pediatric brain tumors. The tool should be further validated in prospective studies.

Details

ISSN :
15235866 and 15228517
Volume :
24
Database :
OpenAIRE
Journal :
Neuro-Oncology
Accession number :
edsair.doi.dedup.....fc13d0c6bd9879323c7e02168225a49d
Full Text :
https://doi.org/10.1093/neuonc/noab151