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The Pediatric Auto-Defacer is distributed under a research-
only-restricted BSD-2-Clause license (Children's Hospital of
Philadelphia, 2024). Access is granted solely for non-commercial
academic research and educational use. Commercial use --
including clinical decision support, clinical workflows,
commercial products, or services for a fee -- is expressly
reserved by CHOP and requires separate written authorization
from Dr. Ariana Familiar (arianafamiliar@gmail.com).
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Pediatric MRI auto-defacer (d3b nnU-Net 5-fold ensemble) -- Pediatric Auto-Defacer fold 3 (nnU-Net V1 Generic_UNet)
Description
Pediatric Auto-Defacer (Familiar et al., AJNR 2024), ported to JAX / Equinox from the d3b-center's PyTorch nnU-Net V1 release (github.com/d3b-center/pediatric-auto-defacer-public). A five-fold ensemble of Generic_UNet (nnU-Net V1 Task070_autosegm, configuration 3d_fullres, trainer nnUNetTrainerV2, plans nnUNetPlansv2.1) that predicts a per-voxel face mask on a single-channel 3D brain MRI, then zeroes the face region in the input to produce a defaced volume. Trained on 976 multiparametric MRIs (T1w / T1w-CE / T2w / T2w-FLAIR) from 208 pediatric brain-tumour patients (Children's Brain Tumor Network) and 36 clinical controls. The network is single-channel modality-agnostic -- each modality is processed independently, NOT concatenated -- so one bundle handles all four modalities at inference time. Output: a 2-channel softmax over (background, face); the inference pipeline thresholds the face channel and applies it to the input.
Intended use
Fold 3 of the 5-fold ensemble.
Usage
from ilex.models.pediatric_auto_defacer import PediatricAutoDefacer
model = PediatricAutoDefacer.from_pretrained('ilex-hub/pediatric_auto_defacer.fold3.1')
Authors
Familiar A. M., Khalili N., Khalili N., Schuman C., Grove E., Viswanathan K., et al. (D3b Center for Data-Driven Discovery in Biomedicine, Children's Hospital of Philadelphia)
Citation
Familiar A. M., Khalili N., Khalili N., Schuman C., Grove E., Viswanathan K., Nabavizadeh A. (2024). Empowering Data Sharing in Neuroscience: A Deep Learning De-identification Method for Pediatric Brain MRIs. American Journal of Neuroradiology. doi:10.3174/ajnr.A8581.
References
- Familiar A. M., Khalili N., Khalili N., Schuman C., Grove E., Viswanathan K., Nabavizadeh A. (2024). Empowering Data Sharing in Neuroscience: A Deep Learning De-identification Method for Pediatric Brain MRIs. American Journal of Neuroradiology. doi:10.3174/ajnr.A8581.
- Upstream code + weights: github.com/d3b-center/pediatric-auto-defacer-public (Docker image
afam00/peds-brain-auto-deface; weights via Google Drive at drive.google.com/file/d/1P06VrdaMxX_VENOYVRyvFgJN82SMEsMz). - Architecture lineage: Isensee F., Jaeger P., Kohl S., Petersen J., Maier-Hein K. (2021). nnU-Net: a self-configuring method for deep learning-based biomedical image segmentation. Nature Methods 18, 203-211.
License
HF Hub license tag: other
HF Hub license slug: pediatric-auto-defacer-research-only
Effective terms: Pediatric Auto-Defacer Research-Only License (c) 2024 The Children's Hospital of Philadelphia. Use of this software and the published weights is available to academic and non-profit institutions for research purposes only, subject to the terms of the 2-Clause BSD License. Commercial use -- including commercial products, services for a fee, clinical decision support, and clinical workflows -- requires direct authorization by contacting Dr. Ariana Familiar (arianafamiliar@gmail.com). The software is provided AS IS without warranty of any kind; all implied warranties of merchantability and fitness for a particular purpose are disclaimed. The ilex JAX / Equinox port code is separately licensed under Apache-2.0 / GPL-3.0.
Copyright
Network architecture and pretrained weights -- copyright (c) 2024 The Children's Hospital of Philadelphia, released under a research-only-restricted BSD-2-Clause license. The ilex JAX / Equinox port code is separately licensed under Apache-2.0 / GPL-3.0.
Upstream source
Original weights / reference implementation: https://github.com/d3b-center/pediatric-auto-defacer-public
Provenance
This artefact was produced by ilex's
save/load pipeline. The architecture is implemented in
ilex.models.pediatric_auto_defacer.PediatricAutoDefacer and the weights have been converted
from their upstream format. See the upstream source above
for the canonical reference.
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