分割
预处理器
合并(版本控制)
人工智能
质谱成像
模式识别(心理学)
计算机科学
维数之咒
尺度空间分割
化学
图像分割
质谱法
情报检索
色谱法
作者
Lei Guo,Xingxing Liu,Chao Zhao,Zengyun Hu,Xiangnan Xu,Kun Cheng,Peng Zhou,Xiao-Fang Yu,Mudassir Shah,Jingjing Xu,Jiyang Dong,Zongwei Cai
标识
DOI:10.1021/acs.analchem.2c01456
摘要
Spatial segmentation is a critical procedure in mass spectrometry imaging (MSI)-based biochemical analysis. However, the commonly used unsupervised MSI segmentation methods may lead to inappropriate segmentation results as the MSI data is characterized by high dimensionality and low signal-to-noise ratio. This process can be improved by the incorporation of precise prior knowledge, which is hard to obtain in most cases. In this study, we show that the incorporation of partial or coarse prior knowledge from different sources such as reference images or biological knowledge may also help to improve MSI segmentation results. Here, we propose a novel interactive segmentation strategy for MSI data called iSegMSI, which incorporates prior information in the form of scribble-regularization of the unsupervised model to fine-tune the segmentation results. By using two typical MSI data sets (including a whole-body mouse fetus and human thyroid cancer), the present results demonstrate the effectiveness of the iSegMSI strategy in improving the MSI segmentations. Specifically, the method can be used to subdivide a region into several subregions specified by the user-defined scribbles or to merge several subregions into a single region. Additionally, these fine-tuned results are highly tolerant to the imprecision of the scribbles. Our results suggest that the proposed iSegMSI method may be an effective preprocessing strategy to facilitate the analysis of MSI data.
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