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arXiv 提交日期: 2026-03-18
📄 Abstract - Robust-ComBat: Mitigating Outlier Effects in Diffusion MRI Data Harmonization

Harmonization methods such as ComBat and its variants are widely used to mitigate diffusion MRI (dMRI) site-specific biases. However, ComBat assumes that subject distributions exhibit a Gaussian profile. In practice, patients with neurological disorders often present diffusion metrics that deviate markedly from those of healthy controls, introducing pathological outliers that distort site-effect estimation. This problem is particularly challenging in clinical practice as most patients undergoing brain imaging have an underlying and yet undiagnosed condition, making it difficult to exclude them from harmonization cohorts, as their scans were precisely prescribed to establish a diagnosis. In this paper, we show that harmonizing data to a normative reference population with ComBat while including pathological cases induces significant distortions. Across 7 neurological conditions, we evaluated 10 outlier rejection methods with 4 ComBat variants over a wide range of scenarios, revealing that many filtering strategies fail in the presence of pathology. In contrast, a simple MLP provides robust outlier compensation enabling reliable harmonization while preserving disease-related signal. Experiments on both control and real multi-site cohorts, comprising up to 80% of subjects with neurological disorders, demonstrate that Robust-ComBat consistently outperforms conventional statistical baselines with lower harmonization error across all ComBat variants.

顶级标签: medical machine learning data
详细标签: diffusion mri data harmonization outlier mitigation neuroimaging robust estimation 或 搜索:

鲁棒性ComBat:减轻弥散磁共振成像数据协调中的异常值影响 / Robust-ComBat: Mitigating Outlier Effects in Diffusion MRI Data Harmonization


1️⃣ 一句话总结

这篇论文提出了一种名为Robust-ComBat的新方法,它通过一个简单的神经网络模型来识别并补偿数据中的异常值,从而在包含大量神经疾病患者的多中心脑影像数据协调中,比传统方法更准确地消除设备差异,同时保留与疾病相关的真实信号。

源自 arXiv: 2603.17968