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Early prognostication of overall survival for pediatric diffuse midline gliomas using MRI radiomics and machine learning: a two-center study.
Liu, Xinyang; Jiang, Zhifan; Roth, Holger R; Anwar, Syed Muhammad; Bonner, Erin R; Mahtabfar, Aria; Packer, Roger J; Kazerooni, Anahita Fathi; Bornhorst, Miriam; Linguraru, Marius George.
Afiliación
  • Liu X; Sheikh Zayed Institute for Pediatric Surgical Innovation, Children's National Hospital.
  • Jiang Z; Sheikh Zayed Institute for Pediatric Surgical Innovation, Children's National Hospital.
  • Roth HR; NVIDIA.
  • Anwar SM; Sheikh Zayed Institute for Pediatric Surgical Innovation, Children's National Hospital.
  • Bonner ER; School of Medicine and Health Sciences, George Washington University.
  • Mahtabfar A; Brain Tumor Institute, Children's National Hospital.
  • Packer RJ; School of Medicine and Health Sciences, George Washington University.
  • Kazerooni AF; Center for Data-Driven Discovery in Biomedicine (D3b), Children's Hospital of Philadelphia.
  • Bornhorst M; Brain Tumor Institute, Children's National Hospital.
  • Linguraru MG; Center for Data-Driven Discovery in Biomedicine (D3b), Children's Hospital of Philadelphia.
medRxiv ; 2024 Jan 03.
Article en En | MEDLINE | ID: mdl-37961086
ABSTRACT

Background:

Diffuse midline gliomas (DMG) are aggressive pediatric brain tumors that are diagnosed and monitored through MRI. We developed an automatic pipeline to segment subregions of DMG and select radiomic features that predict patient overall survival (OS).

Methods:

We acquired diagnostic and post-radiation therapy (RT) multisequence MRI (T1, T1ce, T2, T2 FLAIR) and manual segmentations from two centers of 53 (internal cohort) and 16 (external cohort) DMG patients. We pretrained a deep learning model on a public adult brain tumor dataset, and finetuned it to automatically segment tumor core (TC) and whole tumor (WT) volumes. PyRadiomics and sequential feature selection were used for feature extraction and selection based on the segmented volumes. Two machine learning models were trained on our internal cohort to predict patient 1-year survival from diagnosis. One model used only diagnostic tumor features and the other used both diagnostic and post-RT features.

Results:

For segmentation, Dice score (mean [median]±SD) was 0.91 (0.94)±0.12 and 0.74 (0.83)±0.32 for TC, and 0.88 (0.91)±0.07 and 0.86 (0.89)±0.06 for WT for internal and external cohorts, respectively. For OS prediction, accuracy was 77% and 81% at time of diagnosis, and 85% and 78% post-RT for internal and external cohorts, respectively. Homogeneous WT intensity in baseline T2 FLAIR and larger post-RT TC/WT volume ratio indicate shorter OS.

Conclusions:

Machine learning analysis of MRI radiomics has potential to accurately and non-invasively predict which pediatric patients with DMG will survive less than one year from the time of diagnosis to provide patient stratification and guide therapy.
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