Cui Wenhui, Akrami Haleh, Zhao Ganning, Joshi Anand A, Leahy Richard M
Ming Hsieh Department of Electrical and Computer Engineering, University of Southern California, Los Angeles 90089, United States.
ArXiv. 2023 Dec 21:arXiv:2312.14204v1.
Despite the impressive advancements achieved using deep-learning for functional brain activity analysis, the heterogeneity of functional patterns and scarcity of imaging data still pose challenges in tasks such as prediction of future onset of Post-Traumatic Epilepsy (PTE) from data acquired shortly after traumatic brain injury (TBI). Foundation models pre-trained on separate large-scale datasets can improve the performance from scarce and heterogeneous datasets. For functional Magnetic Resonance Imaging (fMRI), while data may be abundantly available from healthy controls, clinical data is often scarce, limiting the ability of foundation models to identify clinically-relevant features. We overcome this limitation by introducing a novel training strategy for our foundation model by integrating meta-learning with self-supervised learning to improve the generalization from normal to clinical features. In this way we enable generalization to other downstream clinical tasks, in our case prediction of PTE. To achieve this, we perform self-supervised training on the control dataset to focus on inherent features that are not limited to a particular supervised task while applying meta-learning, which strongly improves the model's generalizability using bi-level optimization. Through experiments on neurological disorder classification tasks, we demonstrate that the proposed strategy significantly improves task performance on small-scale clinical datasets. To explore the generalizability of the foundation model in downstream applications, we then apply the model to an unseen TBI dataset for prediction of PTE using zero-shot learning. Results further demonstrated the enhanced generalizability of our foundation model.
尽管在使用深度学习进行脑功能活动分析方面取得了令人瞩目的进展,但功能模式的异质性和成像数据的稀缺性,在诸如从创伤性脑损伤(TBI)后不久获取的数据预测创伤后癫痫(PTE)未来发病等任务中,仍然构成挑战。在单独的大规模数据集上预训练的基础模型,可以提高来自稀缺和异质数据集的性能。对于功能磁共振成像(fMRI),虽然健康对照的可用数据可能丰富,但临床数据往往稀缺,这限制了基础模型识别临床相关特征的能力。我们通过为基础模型引入一种新颖的训练策略来克服这一限制,即将元学习与自监督学习相结合,以提高从正常特征到临床特征的泛化能力。通过这种方式,我们能够将其泛化到其他下游临床任务,在我们的案例中即PTE的预测。为实现这一点,我们在对照数据集上进行自监督训练,以关注不限于特定监督任务的固有特征,同时应用元学习,通过双层优化极大地提高了模型的泛化能力。通过对神经疾病分类任务的实验,我们证明了所提出的策略显著提高了小规模临床数据集上的任务性能。为了探索基础模型在下游应用中的泛化能力,我们随后将该模型应用于一个未见过的TBI数据集,使用零样本学习来预测PTE。结果进一步证明了我们基础模型增强的泛化能力。