Preetham Ganesh
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metadata
license: apache-2.0
tags:
  - brain-mri
  - classification
  - medical-imaging
  - deep-learning
  - cnn
model-index:
  - name: Brain MRI Classification - FLAIR Abnormality Classification
    results:
      - task:
          type: image-classification
          name: Image Classification
        dataset:
          name: LGG Segmentation Dataset
          type: medical-imaging
          link: https://www.kaggle.com/datasets/mateuszbuda/lgg-mri-segmentation
        metrics:
          - type: accuracy
            value: 0.958
            name: Accuracy

Brain MRI Classification - FLAIR Abnormality Classification v1.2.0

This repository hosts the trained model for FLAIR Abnormality Classification in Brain MRI scans. The model is a CNN-based architecture designed to classify Brain MRI images as normal or abnormal (FLAIR abnormality).

Model Details

  • Architecture: A CNN model that classifies whether a given Brain MRI image has abnormality.
  • Dataset: LGG Segmentation Dataset
  • Version: v1.2.0
  • Task: Image Classification
  • License: Apache 2.0

Usage

To use this model for inference, you can load it using the tensorflow library.

# Clones the repository and installs dependencies
!git clone https://huggingface.co/preethamganesh/bms-flair-abnormality-classification-v1.2.0
!pip install tensorflow

# Imports TensorFlow
import tensorflow as tf

# Loads the pre-trained model from the cloned directory
model_path = "bms-flair-abnormality-classification-v1.2.0"
exported_model = tf.saved_model.load(model_path)

# Retrieves the default serving function from the loaded model
model = exported_model.signatures["serving_default"]

# Prepares a dummy input tensor for inference (batch size: 1, height: 256, width: 256, channels: 3)
input_data = tf.ones((1, 256, 256, 3), dtype=tf.float32)

# Performs inference using the model. The output will be a dictionary, with the classification logits in the key 'output_0'
output = model(input_data)["output_0"]

# Prints the predicted class (e.g., 0 for normal, 1 for abnormal)
predicted_class = tf.argmax(output, axis=-1).numpy()
print("Predicted class: ", predicted_class)

Training Details

Compute

  • The model was trained on a GeForce 4070Ti GPU with 16GB VRAM.
  • Training completed in approximately 1.8 minutes over 20 epochs.

Dataset

  • The model was trained on the LGG Segmentation Dataset, which includes Brain MRI images labeled for FLAIR abnormality segmentation.

Performance on test set

  • Accuracy: 0.958

Citation

If you use this model in your research, please cite the repository:

@misc{preethamganesh2024brainmri,
  title={Brain MRI Segmentation - FLAIR Abnormality Classification},
  author={Preetham Ganesh},
  year={2025},
  url={https://huggingface.co/preethamganesh/brain-mri-flair-abnormality-classification-v1.2.0},
  note={Apache-2.0 License}
}

Contact

For any questions or support, please contact [email protected].