RELIEF: A structured multivariate approach for removal of latent inter-scanner effects.

Imaging neuroscience (Cambridge, Mass.) Pub Date : 2023-08-30 eCollection Date: 2023-08-01 DOI:10.1162/imag_a_00011
Rongqian Zhang, Lindsay D Oliver, Aristotle N Voineskos, Jun Young Park
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Abstract

Combining data collected from multiple study sites is becoming common and is advantageous to researchers to increase the generalizability and replicability of scientific discoveries. However, at the same time, unwanted inter-scanner biases are commonly observed across neuroimaging data collected from multiple study sites or scanners, rendering difficulties in integrating such data to obtain reliable findings. While several methods for handling such unwanted variations have been proposed, most of them use univariate approaches that could be too simple to capture all sources of scanner-specific variations. To address these challenges, we propose a novel multivariate harmonization method called RELIEF (REmoval of Latent Inter-scanner Effects through Factorization) for estimating and removing both explicit and latent scanner effects. Our method is the first approach to introduce the simultaneous dimension reduction and factorization of interlinked matrices to a data harmonization context, which provides a new direction in methodological research for correcting inter-scanner biases. Analyzing diffusion tensor imaging (DTI) data from the Social Processes Initiative in Neurobiology of the Schizophrenia (SPINS) study and conducting extensive simulation studies, we show that RELIEF outperforms existing harmonization methods in mitigating inter-scanner biases and retaining biological associations of interest to increase statistical power. RELIEF is publicly available as an R package.

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缓解:一种去除潜在扫描仪间影响的结构化多变量方法。
将从多个研究地点收集的数据结合起来越来越普遍,这有利于研究人员提高科学发现的可推广性和可复制性。然而,与此同时,在从多个研究地点或扫描仪收集的神经成像数据中,通常会观察到不必要的扫描仪间偏差,这使得整合这些数据以获得可靠的结果变得困难。虽然已经提出了几种处理这种不需要的变化的方法,但大多数方法都使用单变量方法,这种方法可能过于简单,无法捕获扫描仪特定变化的所有来源。为了应对这些挑战,我们提出了一种新的多元协调方法,称为RELIEF(通过因子分解消除潜在的扫描仪间效应),用于估计和消除显式和潜在的扫描仪效应。我们的方法是第一种将互连矩阵的同时降维和因子分解引入数据协调上下文的方法,这为校正扫描仪间偏差的方法研究提供了新的方向。通过分析精神分裂症神经生物学社会过程倡议(SPINS)研究的扩散张量成像(DTI)数据,并进行广泛的模拟研究,我们发现RELIEF在减轻扫描仪间偏差和保留感兴趣的生物关联以提高统计能力方面优于现有的协调方法。RELIEF作为R包公开提供。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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