| Literature DB >> 30128689 |
Amanda R Clark1,2,3, David Calligaris1, Michael S Regan1, Daniel Pomeranz Krummel4,5, Jeffrey N Agar6, Laura Kallay5, Tobey MacDonald4,7, Matthew Schniederjan8, Sandro Santagata9, Scott L Pomeroy10, Nathalie Y R Agar11,12,13,14,15, Soma Sengupta16,17,18,19.
Abstract
PURPOSE: Medulloblastoma, the most common primary pediatric malignant brain tumor, originates in the posterior fossa of the brain. Pineoblastoma, which originates within the pineal gland, is a rarer malignancy that also presents in the pediatric population. Medulloblastoma and pineoblastoma exhibit overlapping clinical features and have similar histopathological characteristics. Histopathological similarities confound rapid diagnoses of these two tumor types. We have conducted a pilot feasibility study analyzing the molecular profile of archived frozen human tumor specimens using mass spectrometry imaging (MSI) to identify potential biomarkers capable of classifying and distinguishing between medulloblastoma and pineoblastoma.Entities:
Keywords: Biomarkers; Brain tumors; Lipids; Mass spectrometry imaging; Medulloblastoma; Pineoblastoma
Mesh:
Year: 2018 PMID: 30128689 PMCID: PMC6244779 DOI: 10.1007/s11060-018-2978-2
Source DB: PubMed Journal: J Neurooncol ISSN: 0167-594X Impact factor: 4.130
Fig. 1Histological characterization of medulloblastoma and pineoblastoma compared to principal component analysis of the mass spectrometry imaging dataset. a Tissue sections were hematoxylin and eosin stained and optical images at ×40 magnification were assessed to delineate histopathological features, indicated by the dashed lines and arrows, where: tumor (T), differentiated tumor (DT), necrosis (N), hemorrhage (H), and cerebral cortex molecular layer (M). b Layout of specimens. c, d Display of the PCA results using a cool-to-warm intensity heat map for which the gradient blue-white-red represents negative-to-positive degrees of variance for the separate components. Component 1 (c), representative of the greatest variance of the MSI dataset, distinguished medulloblastoma from pineoblastoma as indicated by the overall abundance of red and blue present in the medulloblastoma specimens compared to white present in the pineoblastoma specimens. Component 2 (d), representative of the second greatest variance of the MSI dataset, also distinguished medulloblastoma from pineoblastoma observed by the overall red-white present in the medulloblastoma specimens compared to the blue gradient present in pineoblastoma
Fig. 2Single ion images generated from ions identified by principal component analysis (PCA) of the mass spectral imaging (MSI) dataset. Results demonstrate the capability of using potential biomarkers to discriminate between medulloblastoma and pineoblastoma tumor types. Important to note that the ion intensity scales were adjusted relative to each individual ion intensity. a Displays intensity of an ion detected at m/z 798.5479 that was detected with higher intensity in all subgroups of medulloblastoma when compared to pineoblastoma. b Displays the intensity of an additional ion (m/z 770.5152) that was detected with higher intensity in all subgroups of medulloblastoma when compared to pineoblastoma. c and d Displays intensities of two ions detected with higher intensity in pineoblastoma when compared to medulloblastoma with m/z of 788.6226 and m/z 810.6072, respectively
Fig. 3Distribution and intensity of top three ranked potential medulloblastoma classifiers based on receiver operating characteristics (ROC) analysis. a The highest ranked classifier for medulloblastoma, PG(38:5) (m/z 797.5336), displayed homogeneous distribution closely related to regions of dense tumor in all subgroups of medulloblastoma. b The second highest medulloblastoma classifier, PG(36:4) (m/z 771.5169), showed similar distribution to PG(38:5) as it was also present in regions of dense tumor in all medulloblastoma subgroups. c The third highest medulloblastoma classifier, PG(36:3) (m/z 773.5335), was also observed in all sections of medulloblastoma. The spatial distribution of these lipid species in medulloblastoma compared to pineoblastoma suggest their potential value as medulloblastoma biomarkers
Fig. 4Distribution and intensity of potential pineoblastoma classifiers based on receiver operating characteristics (ROC) analysis. The two identified classifiers of pineoblastoma, HexCer(t36:2) (m/z 742.5824) a and CerP(d47:2) (m/z 836.6292) b, displayed similar spatial distribution and intensity present in only the pineoblastoma specimens
Fig. 5Non-classifier ions indicative of histopathology rather than tumor type. The ion images of lipid species not discriminative of tumor type were investigated to determine if their distribution could be of interest to underlying biological similarities between medulloblastoma and pineoblastoma. a PC(34:2) (m/z 758.5702) displayed varying intensity across medulloblastoma and pineoblastoma tissue sections that more closely resembled areas of necrosis and hemorrhage rather than viable tumor. b PG(37:0(OH)) (m/z 809.5894) also displayed distribution in the tissue sections not indicative of viable tumor regions, but more related to potential necrosis, or hemorrhage. c PG(40:4) (m/z 827.5809) was observed in both medulloblastoma and pineoblastoma specimens and its distribution was more closely related to regions of viable tumor