人工智能
深度学习
计算机科学
模式识别(心理学)
适应(眼睛)
极限(数学)
质谱法
计算机视觉
机器学习
图像分辨率
高分辨率
深层神经网络
人工神经网络
作者
Yinghao Cao,Yuting Tan,Chang Li,Erping Long,Lin‐Fa Wang
出处
期刊:Analyst
[Royal Society of Chemistry]
日期:2026-01-01
卷期号:151 (10): 2935-2944
摘要
Achieving high spatial resolution is critical for revealing tissue-specific metabolite distributions in mass spectrometry imaging (MSI), yet practical constraints often limit achievable resolution. While deep learning offers promising post-acquisition enhancement, the relative efficacy of different generative architectures for MSI data remains inadequately explored. This study establishes a comparative evaluation of three advanced deep learning architectures (SwinIR, MambaIR, and ResShift) against the established GAN-based model MOSR. Evaluated across three MSI datasets and six image quality metrics, MOSR and a bicubic pre-trained ResShift model demonstrated superior capacity in reconstructing complex textural details. Capitalizing on this, we developed a focused transfer-learning strategy to adapt the pretrained ResShift model using only ten mouse brain sagittal section images. The fine-tuned model achieved a 41.5% improvement in a composite performance score over its pre-trained state and a 14.0% improvement over MOSR. Remarkably, this model generalized effectively to distinct anatomical planes (horizontal brain sections) and entirely different tissue types (mouse kidney), as validated using multiple metabolites. Our work provides a benchmark for generative models in MSI super-resolution and proposes a practical, data-efficient fine-tuning framework that enhances image fidelity across diverse biological samples, offering a computational tool for spatially resolved metabolomics.
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