posted on 2014-02-19, 00:00authored byDavid Mayerich, Michael Walsh, Matthew Schulmerich, Rohit Bhargava
Background: Vibrational spectroscopic imaging is now used in several fields to acquire molecular information from
microscopically heterogeneous systems. Recent advances have led to promising applications in tissue analysis for
cancer research, where chemical information can be used to identify cell types and disease. However, recorded
spectra are affected by the morphology of the tissue sample, making identification of chemical structures difficult.
Results: Extracting features that can be used to classify tissue is a cumbersome manual process which limits this
technology from wide applicability. In this paper, we describe a method for interactive data mining of spectral
features using GPU-based manipulation of the spectral distribution.
Conclusions: This allows researchers to quickly identify chemical features corresponding to cell type. These features
are then applied to tissue samples in order to visualize the chemical composition of the tissue without the use of
chemical stains.
Funding
This work was funded in part by the Beckman Institute for Advanced Science
and Technology, the National Institutes of Health (NIH) via grant number
1R01CA138882, the National Science Foundation (NSF) Division of Chemistry
(CHE) via 0957849, and the Congressionally Directed Medical Research
Program Postdoctoral Fellowship via BC101112.