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DeepCAN-SEG-PosEnc-T1-CanonAug

Canine Brain MRI 9-Class Segmentation — T1 + Canon-robust domain randomization

⚠️ Research / preview checkpoint. Trained with simulated Canon-style degradation on SKY (GE-family) T1 data — no real Canon-labeled data. See Known limitations before clinical routing.

A T1-weighted, Canon-robust adaptation of hwonheo/DeepCAN-SEG-PosEnc (shared T2-trained base). LoRA (rank 16, α 32) on Conv3d layers, trained with canon_aug intensity domain randomization (applied to the intensity channel only — the xyz position-encoding channels are never degraded). Adapters are merged into the base weights, so this is a standard LRSegmentationMultiClassUNet loaded exactly like the base model (drop-in).

Classes (9, L/R separated)

0 Background · 1/5 Lateral Ventricle L/R · 2/6 Gray Matter L/R · 3/7 White Matter L/R · 4/8 Cerebellum L/R

Input is 4-channel: image intensity + normalized x/y/z position encoding. Models expect the RPS orientation / 0.5 mm grid layout.

Domain randomization (canon_aug)

To mimic thick-slice, low-contrast Canon (Vantage Elan) clinical scans without any Canon labels, the intensity channel is degraded during training: anisotropic through-plane Gaussian blur (σ_z 1–3), GM-WM contrast gamma (0.6–1.6), mild bias field, and Gaussian noise. Validation uses a deterministic degradation (σ_z=2.0, γ=1.3) so val_dice and early-stopping track Canon-restoration.

Performance

val_dice 0.6565 on the Canon-degraded validation set (early-stopped @ epoch 74).

On the real Canon "달래" AX T1WI case, canon_aug restores near-normal symmetry vs the plain T1 model:

metric plain T1 T1 + CanonAug
Hemisphere asymmetry 32.4% 13.0%
Cerebral-cortex asymmetry 45.3% 13.9%
White-matter asymmetry 20.3% 8.5%

Training

Base DeepCAN-SEG-PosEnc (T2)
Method LoRA (r=16, α=32) on all Conv3d + canon_aug, base frozen, adapters merged at export
Data 30 T1 HR subjects → balanced 64³ patches @ 0.5 mm
Optimizer AdamW, LR 2e-4, weight decay 1e-5
Schedule cosine, 200 epochs (early-stopped @ 74)
Loss MultiClass Dice + CE (dice_weight 0.7)
W&B https://wandb.ai/heohwon/DeepCAN-SegSR-public/runs/la5fb6qx

Usage

from huggingface_hub import snapshot_download
snapshot_download(repo_id="hwonheo/DeepCAN-SEG-PosEnc-T1-CA",
                  local_dir="src/checkpoint/DeepCAN-SEG-PosEnc-T1-CanonAug-LoRA")

from src.inference.models.segmentation_inferencer import SegmentationInferencer
seg = SegmentationInferencer(
    checkpoint_path="src/checkpoint/DeepCAN-SEG-PosEnc-T1-CanonAug-LoRA/DeepCAN-SEG-PosEnc-T1-CanonAug-LoRA.pth",
    device="cuda")

Known limitations

  • Trained on GE-family (SKY) T1 with simulated Canon degradation, not real Canon anatomy — domain randomization narrows but does not fully close the gap.
  • Smaller T1 corpus (30 subjects) than the T2 base; Ventricle is the weakest class.

License

Research use only — see LICENSE. Contact: Hwon Heo, PhD (heohwon@gmail.com), BMC lab, Asan Medical Center.

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