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arXiv 提交日期: 2026-06-01
📄 Abstract - Realistic noise synthesis reduces bias and improves tissue microstructure estimation with supervised machine learning

Diffusion MRI enables non-invasive probing of tissue microstructure, but accurate parameter estimation is challenged by noise-related effects. In supervised machine learning frameworks trained on simulated data, discrepancies between the noise characteristics of simulated and acquired signals introduce a form of covariate shift, whereby the input signal distribution differs between training and inference. We investigated the impact of this mismatch on microstructure parameter estimation and propose a realistic noise synthesis (RNS) framework to mitigate it. RNS incorporates both the Rician expectation and the effective post-processing noise variance into simulated training signals. The Rician expectation was modelled using a noise standard deviation estimated with MPPCA, while the effective standard deviation was derived from spherical harmonic residuals of preprocessed data. The method was evaluated using the cylinder-zeppelin and the SANDI models on simulated datasets across multiple SNR levels and on in vivo diffusion data with repeated acquisitions. Sensitivity to noise misestimation was also assessed. Ignoring magnitude-induced noise effects during training produced systematic, SNR-dependent parameter bias, particularly at low SNR. Incorporating the Rician expectation substantially reduced bias to the level of noise-aware nonlinear least-squares fitting. Modelling the effective standard deviation further improved precision. Performance was largely independent of regression architecture but sensitive to accurate noise estimation. These findings demonstrate that realistic noise modelling in simulated training data mitigates signal-domain covariate shift and is essential for unbiased supervised microstructure estimation, particularly in low-SNR regimes associated with high b-values or high spatial resolution.

顶级标签: medical machine learning
详细标签: diffusion mri noise synthesis microstructure estimation covariate shift supervised learning 或 搜索:

真实噪声合成减少偏差并提升基于监督学习的组织微结构估计 / Realistic noise synthesis reduces bias and improves tissue microstructure estimation with supervised machine learning


1️⃣ 一句话总结

本研究提出一种名为真实噪声合成(RNS)的方法,通过在训练数据中模拟与真实扫描相似的噪声模式,有效减少了因数据噪声不匹配导致的估算偏差,显著提升了利用扩散MRI进行脑组织微结构估计的准确性,尤其适用于高分辨率或高b值等低信噪比场景。

源自 arXiv: 2606.02044