DeepComBat:一种基于统计、超参数稳健、深度学习的神经成像数据协调方法。

IF 3.5 2区 医学 Q1 NEUROIMAGING
Fengling Hu, Alfredo Lucas, Andrew A. Chen, Kyle Coleman, Hannah Horng, Raymond W. S. Ng, Nicholas J. Tustison, Kathryn A. Davis, Haochang Shou, Mingyao Li, Russell T. Shinohara, The Alzheimer's Disease Neuroimaging Initiative
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引用次数: 0

摘要

使用多种扫描仪或方案获取的神经成像数据越来越多。然而,这些数据在不同批次之间会出现技术伪影,从而引入混杂因素并降低可重复性。当使用复杂的下游模型分析多批次数据时,情况尤其如此,因为复杂的下游模型更有可能捕捉并隐含与批次相关的信息。以前提出的图像协调方法试图消除这些批次效应;然而,在应用这些方法后,批次效应仍可在数据中检测到。我们提出了 DeepComBat,这是一种基于条件变异自动编码器和 ComBat 方法的深度学习协调方法。DeepComBat 结合了统计方法和深度学习方法的优势,以考虑特征之间的多变量关系,同时放宽了以往深度学习协调方法的强假设。因此,DeepComBat 可以执行多变量协调,同时保留数据结构并避免引入合成人工痕迹。我们将这种方法应用于认知老化队列的皮层厚度测量,结果表明,DeepComBat 在消除批次效应的同时保留生物异质性,在质量和数量上都优于现有方法。此外,DeepComBat 还为统计动机的深度学习协调方法提供了一个新的视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

DeepComBat: A statistically motivated, hyperparameter-robust, deep learning approach to harmonization of neuroimaging data

DeepComBat: A statistically motivated, hyperparameter-robust, deep learning approach to harmonization of neuroimaging data

Neuroimaging data acquired using multiple scanners or protocols are increasingly available. However, such data exhibit technical artifacts across batches which introduce confounding and decrease reproducibility. This is especially true when multi-batch data are analyzed using complex downstream models which are more likely to pick up on and implicitly incorporate batch-related information. Previously proposed image harmonization methods have sought to remove these batch effects; however, batch effects remain detectable in the data after applying these methods. We present DeepComBat, a deep learning harmonization method based on a conditional variational autoencoder and the ComBat method. DeepComBat combines the strengths of statistical and deep learning methods in order to account for the multivariate relationships between features while simultaneously relaxing strong assumptions made by previous deep learning harmonization methods. As a result, DeepComBat can perform multivariate harmonization while preserving data structure and avoiding the introduction of synthetic artifacts. We apply this method to cortical thickness measurements from a cognitive-aging cohort and show DeepComBat qualitatively and quantitatively outperforms existing methods in removing batch effects while preserving biological heterogeneity. Additionally, DeepComBat provides a new perspective for statistically motivated deep learning harmonization methods.

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来源期刊
Human Brain Mapping
Human Brain Mapping 医学-核医学
CiteScore
8.30
自引率
6.20%
发文量
401
审稿时长
3-6 weeks
期刊介绍: Human Brain Mapping publishes peer-reviewed basic, clinical, technical, and theoretical research in the interdisciplinary and rapidly expanding field of human brain mapping. The journal features research derived from non-invasive brain imaging modalities used to explore the spatial and temporal organization of the neural systems supporting human behavior. Imaging modalities of interest include positron emission tomography, event-related potentials, electro-and magnetoencephalography, magnetic resonance imaging, and single-photon emission tomography. Brain mapping research in both normal and clinical populations is encouraged. Article formats include Research Articles, Review Articles, Clinical Case Studies, and Technique, as well as Technological Developments, Theoretical Articles, and Synthetic Reviews. Technical advances, such as novel brain imaging methods, analyses for detecting or localizing neural activity, synergistic uses of multiple imaging modalities, and strategies for the design of behavioral paradigms and neural-systems modeling are of particular interest. The journal endorses the propagation of methodological standards and encourages database development in the field of human brain mapping.
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