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SeminarPast EventNeuroscience

Trends in NeuroAI - SwiFT: Swin 4D fMRI Transformer

Junbeom Kwon
Schedule
Tuesday, November 21, 2023

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Schedule

Monday, November 20, 2023

9:30 PM America/New_York

Host: MedARC NeuroAI Journal Club

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Event Information

Domain

Neuroscience

Original Event

View source

Host

MedARC NeuroAI Journal Club

Duration

60 minutes

Abstract

Trends in NeuroAI is a reading group hosted by the MedARC Neuroimaging & AI lab (https://medarc.ai/fmri). Title: SwiFT: Swin 4D fMRI Transformer Abstract: Modeling spatiotemporal brain dynamics from high-dimensional data, such as functional Magnetic Resonance Imaging (fMRI), is a formidable task in neuroscience. Existing approaches for fMRI analysis utilize hand-crafted features, but the process of feature extraction risks losing essential information in fMRI scans. To address this challenge, we present SwiFT (Swin 4D fMRI Transformer), a Swin Transformer architecture that can learn brain dynamics directly from fMRI volumes in a memory and computation-efficient manner. SwiFT achieves this by implementing a 4D window multi-head self-attention mechanism and absolute positional embeddings. We evaluate SwiFT using multiple large-scale resting-state fMRI datasets, including the Human Connectome Project (HCP), Adolescent Brain Cognitive Development (ABCD), and UK Biobank (UKB) datasets, to predict sex, age, and cognitive intelligence. Our experimental outcomes reveal that SwiFT consistently outperforms recent state-of-the-art models. Furthermore, by leveraging its end-to-end learning capability, we show that contrastive loss-based self-supervised pre-training of SwiFT can enhance performance on downstream tasks. Additionally, we employ an explainable AI method to identify the brain regions associated with sex classification. To our knowledge, SwiFT is the first Swin Transformer architecture to process dimensional spatiotemporal brain functional data in an end-to-end fashion. Our work holds substantial potential in facilitating scalable learning of functional brain imaging in neuroscience research by reducing the hurdles associated with applying Transformer models to high-dimensional fMRI. Speaker: Junbeom Kwon is a research associate working in Prof. Jiook Cha’s lab at Seoul National University. Paper link: https://arxiv.org/abs/2307.05916

Topics

Human Connectome ProjectSwiFTSwin Transformerartificial intelligencecognitioncontrastive lossencoding modelsexplainable AIfMRImachine learningneuroimagingself-supervised learningspatiotemporal dynamics

About the Speaker

Junbeom Kwon

Contact & Resources

Personal Website

medarc.ai/fmri

@MedARC_AI

Follow on Twitter/X

twitter.com/MedARC_AI

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