| Literature DB >> 32517746 |
Harish N Vasudevan1,2, Maria R H Castro1,2, Julieann C Lee3, Javier E Villanueva-Meyer4, Nancy Ann Oberheim Bush2, Michael W McDermott2, David A Solomon3, Arie Perry3, Stephen T Magill5, David R Raleigh6,7.
Abstract
Meningiomas are the most common primary intracranial tumors, but meningioma metastases are rare. Accordingly, the clinical workup, diagnostic testing, and molecular classification of metastatic meningioma is incompletely understood. Here, we present a case report of multiply recurrent meningioma complicated by liver metastasis. We discuss the patient presentation, imaging findings, and conventional histopathologic characterization of both the intracranial lesion and the metastatic focus. Further, we perform multiplatform molecular profiling, comprised of DNA methylation arrays and RNA-sequencing, of six stereotactically-guided samples from the intracranial meningioma and a single ultrasound-guided liver metastasis biopsy. Our results show that DNA methylation clusters distinguish the liver metastasis from the intracranial meningioma samples, and identify a small focus of hepatocyte contamination with the liver biopsy. Nonetheless, DNA methylation-based classification accurately identifies the liver metastasis as a meningioma with high confidence. We also find that clustering of RNA-sequencing results distinguishes the liver metastasis from the intracranial meningiomas samples, but that differential gene expression classification is confounded by hepatocyte-specific gene expression programs in the liver metastasis. In sum, this case report sheds light on the comparative biology of intracranial and metastatic meningioma. Furthermore, our results support methylation-based classification as a robust method of diagnosing metastatic lesions, underscore the broad utility of DNA methylation array profiling in diagnostic pathology, and caution against the routine use of bulk RNA-sequencing for identifying tumor signatures in heterogeneous metastatic lesions.Entities:
Keywords: Case report; DNA methylation; Meningioma; Metastasis; RNA sequencing; RNA-seq
Mesh:
Year: 2020 PMID: 32517746 PMCID: PMC7285578 DOI: 10.1186/s40478-020-00952-3
Source DB: PubMed Journal: Acta Neuropathol Commun ISSN: 2051-5960 Impact factor: 7.801
Fig. 1Pre-operative magnetic resonance imaging and histopathology of intracranial and metastatic meningioma. a Post-contrast T1 axial MR images show the enlarging left parieto-occipital meningioma (red circle), and a stable parasagittal meningioma. b Post-contrast liver MRI shows a metastatic lesion in segment IVb (red circle). c Three-dimensional stereotactic meningioma sampling map for 6 intracranial meningioma samples reconstructed from preoperative magnetic resonance imaging. d H&E stain of the intracranial meningioma sample (10x). e H&E stain of the liver metastasis core biopsy (20x). f SSTR2A immunohistochemistry of the liver metastasis core biopsy (10x)
Fig. 2DNA methylation analysis reveals minimal contamination, conserved epigenetic classification, and concordant copy number variants in meningioma liver metastasis. a Hierarchical clustering of the top 2000 most variable DNA methylation probes segregates the liver metastasis from the intracranial meningioma samples. b Cell type deconvolution demonstrates ~ 10% hepatocyte composition within the liver metastasis, which is not identified in the intracranial samples. c Tumor purity analysis reveals no significant difference between intracranial and liver metastasis samples. d Random forest classification correctly identifies all six intracranial sites and the liver metastasis as meningioma with high confidence (classifier score = 0.99 for all samples). e Copy number variant (CNV) profiles show no significant private alterations in the liver metastasis compared to intracranial samples
Fig. 3RNA-sequencing analysis demonstrates that native hepatocytes drive the transcriptomic signature of meningioma liver metastasis. a Hierarchical clustering of the top 2000 most variable genes segregates the meningioma liver metastasis from the intracranial samples. b, c Gene ontology analysis of increased transcripts in intracranial meningioma samples shows (b) enrichment for SUZ12 and FOXM1 transcription factor pathways and (c) mitotic spindle function. d Gene ontology analysis of increased transcripts in the meningioma liver metastasis shows enrichment for liver specific processes, such as monocarboxylic acid transport, fatty acid processing, and LDL remodeling. e Analysis of tissue specific expression patterns demonstrates that gene sets enriched in the meningioma liver metastasis have liver-specific expression patterns