多实例神经图像转换器

Ayush Singla, Qingyu Zhao, Daniel K. Do, Yuyin Zhou, K. Pohl, E. Adeli
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引用次数: 5

摘要

我们首次提出使用基于多实例学习的无卷积变换模型,称为多实例神经图像变换(MINiT),用于t1加权(T1w)核磁共振成像的分类。我们首先提出了用于神经图像的变压器模型的几种变体。这些模型从输入体中提取不重叠的3D块,并对其线性投影序列执行多头自关注。另一方面,MINiT将输入MRI的每个不重叠的3D块视为自己的实例,将其进一步分割为不重叠的3D块,并在其上计算多头自关注。作为概念验证,我们通过训练模型从两个公共数据集(青少年大脑认知发展(ABCD)和全国青少年酒精和神经发育协会(nanda))的t1w - mri中识别性别来评估模型的有效性。习得的注意图突出了有助于识别大脑形态计量学中的性别差异的体素。代码可在https://github.com/singlaayush/MINIT上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple Instance Neuroimage Transformer
For the first time, we propose using a multiple instance learning based convolution-free transformer model, called Multiple Instance Neuroimage Transformer (MINiT), for the classification of T1-weighted (T1w) MRIs. We first present several variants of transformer models adopted for neuroimages. These models extract non-overlapping 3D blocks from the input volume and perform multi-headed self-attention on a sequence of their linear projections. MINiT, on the other hand, treats each of the non-overlapping 3D blocks of the input MRI as its own instance, splitting it further into non-overlapping 3D patches, on which multi-headed self-attention is computed. As a proof-of-concept, we evaluate the efficacy of our model by training it to identify sex from T1w-MRIs of two public datasets: Adolescent Brain Cognitive Development (ABCD) and the National Consortium on Alcohol and Neurodevelopment in Adolescence (NCANDA). The learned attention maps highlight voxels contributing to identifying sex differences in brain morphometry. The code is available at https://github.com/singlaayush/MINIT.
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