Suppr超能文献

探索表示和迁移学习在解剖神经影像学中的潜力:在精神病学中的应用。

Exploring the potential of representation and transfer learning for anatomical neuroimaging: Application to psychiatry.

机构信息

Université Paris-Saclay, CEA, CNRS, UMR9027 Baobab, NeuroSpin, Saclay, France; LTCI, Télécom Paris, IPParis, Palaiseau, France.

LTCI, Télécom Paris, IPParis, Palaiseau, France.

出版信息

Neuroimage. 2024 Aug 1;296:120665. doi: 10.1016/j.neuroimage.2024.120665. Epub 2024 Jun 6.

Abstract

The perspective of personalized medicine for brain disorders requires efficient learning models for anatomical neuroimaging-based prediction of clinical conditions. There is now a consensus on the benefit of deep learning (DL) in addressing many medical imaging tasks, such as image segmentation. However, for single-subject prediction problems, recent studies yielded contradictory results when comparing DL with Standard Machine Learning (SML) on top of classical feature extraction. Most existing comparative studies were limited in predicting phenotypes of little clinical interest, such as sex and age, and using a single dataset. Moreover, they conducted a limited analysis of the employed image pre-processing and feature selection strategies. This paper extensively compares DL and SML prediction capacity on five multi-site problems, including three increasingly complex clinical applications in psychiatry namely schizophrenia, bipolar disorder, and Autism Spectrum Disorder (ASD) diagnosis. To compensate for the relative scarcity of neuroimaging data on these clinical datasets, we also evaluate three pre-training strategies for transfer learning from brain imaging of the general healthy population: self-supervised learning, generative modeling and supervised learning with age. Overall, we find similar performance between randomly initialized DL and SML for the three clinical tasks and a similar scaling trend for sex prediction. This was replicated on an external dataset. We also show highly correlated discriminative brain regions between DL and linear ML models in all problems. Nonetheless, we demonstrate that self-supervised pre-training on large-scale healthy population imaging datasets (N≈10k), along with Deep Ensemble, allows DL to learn robust and transferable representations to smaller-scale clinical datasets (N≤1k). It largely outperforms SML on 2 out of 3 clinical tasks both in internal and external test sets. These findings suggest that the improvement of DL over SML in anatomical neuroimaging mainly comes from its capacity to learn meaningful and useful abstract representations of the brain anatomy, and it sheds light on the potential of transfer learning for personalized medicine in psychiatry.

摘要

脑疾病个性化医学的观点需要有效的学习模型,以便基于解剖神经影像学预测临床状况。现在,人们已经达成共识,认为深度学习(DL)在解决许多医学成像任务方面具有优势,例如图像分割。然而,对于单个体预测问题,最近的研究在将 DL 与标准机器学习(SML)进行比较时,对于基于经典特征提取的方法,得到了相互矛盾的结果。大多数现有的比较研究仅限于预测性别和年龄等临床意义不大的表型,并且仅使用单个数据集。此外,它们对所采用的图像预处理和特征选择策略进行了有限的分析。本文广泛比较了 DL 和 SML 在五个多站点问题上的预测能力,包括精神病学中三个日益复杂的临床应用,即精神分裂症、双相情感障碍和自闭症谱系障碍(ASD)的诊断。为了弥补这些临床数据集中神经影像学数据相对较少的问题,我们还评估了从一般健康人群的脑成像中进行迁移学习的三种预训练策略:自监督学习、生成建模和有监督学习与年龄相关。总的来说,我们发现对于这三个临床任务,随机初始化的 DL 和 SML 具有相似的性能,并且性别预测的性能呈相似的扩展趋势。这在外部数据集上得到了复制。我们还表明,在所有问题中,DL 和线性 ML 模型之间存在高度相关的鉴别性脑区。尽管如此,我们证明了在大规模健康人群成像数据集(N≈10k)上进行自监督预训练,以及使用 Deep Ensemble,使 DL 能够学习到针对较小规模临床数据集(N≤1k)的稳健且可迁移的表示。它在内部和外部测试集中的 2 个临床任务上均优于 SML。这些发现表明,在解剖神经影像学方面,DL 相对于 SML 的改进主要来自于其学习大脑解剖结构有意义且有用的抽象表示的能力,并且为个性化医学中的迁移学习提供了启示。

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验