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Classification of malignant gliomas by infrared spectroscopic imaging and linear discriminant analysis.
- Source :
-
Analytical and bioanalytical chemistry [Anal Bioanal Chem] 2007 Mar; Vol. 387 (5), pp. 1669-77. Date of Electronic Publication: 2006 Nov 14. - Publication Year :
- 2007
-
Abstract
- Infrared (IR) spectroscopy provides a sensitive molecular fingerprint for tissue without external markers. Supervised classification models can be trained to identify the tissue type based on the spectroscopic fingerprint. Infrared imaging spectrometers equipped with multi-channel detectors combine the spectral and spatial information. Tissue areas of 4 x 4 mm(2) can be analyzed within a few minutes in the macroscopic imaging mode. An approach is described to apply this methodology to human astrocytic gliomas, which are graded according to their malignancy from one to four. Multiple IR images of three tissue sections from one patient with a malignant glioma are acquired and assigned to the six classes normal brain tissue, astrocytoma grade II, astrocytoma grade III, glioblastoma multiforme grade IV, hemorrhage, and other tissue by a linear discriminant analysis model which was trained by data from a single-channel detector. Before the model is applied here, the spectra are shown to be virtually identical. The first specimen contained approximately 95% malignant glioma regions, that means astrocytoma grade III or glioblastoma. The smaller percentage of 12-34% malignant glioma in the second specimen is consistent with its location at the tumor periphery. The detection of less than 0.2% malignant glioma in the third specimen points to a location outside the tumor. The results were correlated with the cellularity of the tissue which was obtained from the histopathologic gold standard. Potential applications of IR spectroscopic imaging as a rapid tool to complement established diagnostic methods are discussed.
- Subjects :
- Brain Neoplasms classification
Computer Simulation
Discriminant Analysis
Glioblastoma classification
Humans
Linear Models
Microscopy methods
Models, Biological
Pattern Recognition, Automated methods
Reproducibility of Results
Sensitivity and Specificity
Artificial Intelligence
Brain Neoplasms diagnosis
Brain Neoplasms metabolism
Diagnosis, Computer-Assisted methods
Glioblastoma diagnosis
Glioblastoma metabolism
Spectrophotometry, Infrared methods
Subjects
Details
- Language :
- English
- ISSN :
- 1618-2642
- Volume :
- 387
- Issue :
- 5
- Database :
- MEDLINE
- Journal :
- Analytical and bioanalytical chemistry
- Publication Type :
- Academic Journal
- Accession number :
- 17103151
- Full Text :
- https://doi.org/10.1007/s00216-006-0892-5