Amyloid Plaque Detection (YOLOv11)

Automated detection of amyloid plaques (β-amyloid/Aβ deposits) in histopathological images for Alzheimer's disease and related amyloidopathies.

Performance

  • mAP:0.481
  • Accuracy:56%
  • Dataset: 37 WSI with 6500 plaques and 333 clusters expert annotations
  • Training: Multi-class YOLOv11 classifier optimized for variable plaque annotations

Quick Start

from ultralytics import YOLO
from huggingface_hub import hf_hub_download

# Download and load model
model_path = hf_hub_download(
    repo_id="Center-for-Computational-Neuropathology/Amyloid_pla...",
    filename="best.pt"
)
model = YOLO(model_path)

# Run inference
results = model.predict("amyloid_stained_image.jpg", conf=0.25, imgsz=640)

Clinical Relevance

Detects amyloid plaques in:

  • Alzheimer's Disease (AD)
  • Cerebral Amyloid Angiopathy (CAA)
  • Mixed Dementia
  • Down Syndrome-associated AD

Key Features

✅ Standardized quantification across institutions
✅ Supports CERAD score approximation
✅ Detects both diffuse and neuritic plaques
✅ High-throughput processing for research

Use Cases

  • Screening for amyloid pathology presence
  • Quantitative plaque burden assessment
  • Multi-center research standardization
  • Clinical trial outcome assessment

Limitations

  • Requires β-amyloid immunohistochemistry
  • Cannot automatically distinguish diffuse vs. neuritic plaques
  • Performance varies with antibody selection
  • Requires expert validation for clinical use

Citation

@article{neuropath_yolo_2025,
  title={Automated Detection of Neurodegenerative Pathology Using YOLOv11},
  author={[Authors]},
  journal={[Journal]},
  year={2025}
}
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