1 research outputs found
Two-Phase and Graph-Based Clustering Methods for Accurate and Efficient Segmentation of Large Mass Spectrometry Images
Clustering
is widely used in MSI to segment anatomical features
and differentiate tissue types, but existing approaches are both CPU
and memory-intensive, limiting their application to small, single
data sets. We propose a new approach that uses a graph-based algorithm
with a two-phase sampling method that overcomes this limitation. We
demonstrate the algorithm on a range of sample types and show that
it can segment anatomical features that are not identified using commonly
employed algorithms in MSI, and we validate our results on synthetic
MSI data. We show that the algorithm is robust to fluctuations in
data quality by successfully clustering data with a designed-in variance
using data acquired with varying laser fluence. Finally, we show that
this method is capable of generating accurate segmentations of large
MSI data sets acquired on the newest generation of MSI instruments
and evaluate these results by comparison with histopathology