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Parameter Efficient Fine-tuning of Transformer-based Masked Autoencoder Enhances Resource Constrained Neuroimage

Nikhil J Dhinagar, Saket S Ozarkar, Ketaki U Buwa

    Biorxiv : the Preprint Server for Biology
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    PubMed
    Summary
    This summary is machine-generated.

    Parameter-efficient fine-tuning (PEFT) methods adapt large AI models for medical imaging, outperforming traditional methods with fewer parameters. These efficient AI techniques show promise for neuroimaging tasks like Alzheimer's disease classification.

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    Area of Science:

    • Artificial Intelligence
    • Neuroimaging
    • Medical Image Analysis

    Background:

    • Foundation models in AI are increasingly general-purpose, unlike specialized models.
    • Transformer architectures are standard for foundation models across various data types.
    • Parameter-Efficient Fine-Tuning (PEFT) methods are crucial for adapting models to specialized tasks, especially in medical imaging with limited data.

    Purpose of the Study:

    • To evaluate various PEFT methods on pre-trained vision transformers for neuroimaging tasks.
    • To compare PEFT performance against full fine-tuning and training from scratch.
    • To assess the efficiency and effectiveness of adapting foundation models for medical image analysis.

    Main Methods:

    • Pre-trained a vision encoder using a transformer-based masked autoencoder (MAE) framework on T1-weighted brain MRIs.
    • Fine-tuned the pre-trained vision transformers using different PEFT methods, significantly reducing trainable parameters (as low as 0.04%).
    • Evaluated performance on Alzheimer's disease (AD) and Parkinson's disease (PD) classification, and brain-age prediction.

    Main Results:

    • PEFT methods were competitive with or outperformed full fine-tuning and significantly outperformed training from scratch.
    • PEFT methods improved Alzheimer's disease classification by 3% over full fine-tuning and 11% over 3D CNN with limited data.
    • Smaller model sizes achieved competitive test performance, demonstrating efficiency.

    Conclusions:

    • PEFT methods offer an efficient and effective approach to adapt foundation models for neuroimaging tasks.
    • These methods are valuable alternatives to training specialized models, especially given data limitations.
    • The study highlights the potential of PEFT for diverse neuroimaging applications.