| Literature DB >> 35457227 |
Yixuan Ma1, Sina Sender1, Anett Sekora1, Weibo Kong1,2, Peter Bauer1,3, Najim Ameziane3,4, Susann Krake3, Mandy Radefeldt3, Ruslan Al-Ali3, Frank Ulrich Weiss5, Markus M Lerch5,6, Alisha Parveen7, Dietmar Zechner7, Christian Junghanss1, Hugo Murua Escobar1.
Abstract
Casein kinase II (CK2) and cyclin-dependent kinases (CDKs) frequently interact within multiple pathways in pancreatic ductal adenocarcinoma (PDAC). Application of CK2- and CDK-inhibitors have been considered as a therapeutic option, but are currently not part of routine chemotherapy regimens. We investigated ten PDAC cell lines exposed to increasing concentrations of silmitasertib and dinaciclib. Cell proliferation, metabolic activity, biomass, and apoptosis/necrosis were evaluated, and bioinformatic clustering was used to classify cell lines into sensitive groups based on their response to inhibitors. Furthermore, whole exome sequencing (WES) and RNA sequencing (RNA-Seq) was conducted to assess recurrent mutations and the expression profile of inhibitor targets and genes frequently mutated in PDAC, respectively. Dinaciclib and silmitasertib demonstrated pronounced and limited cell line specific effects in cell death induction, respectively. WES revealed no genomic variants causing changes in the primary structure of the corresponding inhibitor target proteins. RNA-Seq demonstrated that the expression of all inhibitor target genes was higher in the PDAC cell lines compared to non-neoplastic pancreatic tissue. The observed differences in PDAC cell line sensitivity to silmitasertib or dinaciclib did not depend on target gene expression or the identified gene variants. For the PDAC hotspot genes kirsten rat sarcoma virus (KRAS) and tumor protein p53 (TP53), three and eight variants were identified, respectively. In conclusion, both inhibitors demonstrated in vitro efficacy on the PDAC cell lines. However, aberrations and expression of inhibitor target genes did not appear to affect the efficacy of the corresponding inhibitors. In addition, specific aberrations in TP53 and KRAS affected the efficacy of both inhibitors.Entities:
Keywords: KRAS; TP53; casein kinase II; cyclin dependent kinase; pancreatic ductal adenocarcinoma
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Year: 2022 PMID: 35457227 PMCID: PMC9031017 DOI: 10.3390/ijms23084409
Source DB: PubMed Journal: Int J Mol Sci ISSN: 1422-0067 Impact factor: 6.208
Figure 1IC50 values when assessing proliferation and cell biomass after 72 h to silmitasertib exposure in ten PDAC cell lines (a) as well as the classification of these cell lines by k-means++ (unsupervised machine learning algorithm) to a low (red), moderate (green), and high (blue) sensitivity group (b).
Figure 2IC50 values when assessing proliferation and cell biomass after 72 h dinaciclib exposure in ten PDAC cell lines (a) as well as the classification of these cell lines by k-means++ (unsupervised machine learning algorithm) to a low (red), moderate (green), and high (blue) sensitivity group (b).
Figure 3Gene expression levels of inhibitor target genes in the cell lines and control. The different sensitivity to silmitasertib (a) and dinaciclib (b) is indicated for each cell line. Gene expression levels are displayed as Log2 (TPM+1).
Figure 4Gene maps indicating the variant sites of KRAS and TP53 in different PDAC cell lines. GRCh37: Genome Reference Consortium Human Build 37, Chr: chromosome.
Figure 5Gene expression of KRAS in ten PDAC cell lines and the control. The sensitivity to silmitasertib (a) and dinaciclib (b) as well as the variants of KRAS are indicated for each cell lines. Gene expression levels are displayed as Log2 (TPM+1).
Figure 6Gene expression of TP53 in ten PDAC cell lines and the control. The sensitivity to silmitasertib (a) and dinaciclib (b) as well as the variants of TP53 are indicated for each cell lines. Gene expression levels are displayed as Log2 (TPM+1). Missense variants were associated with gene higher expression while frameshift variants were related to low gene expression.
Figure 7Filtering strategy of inhibitor target genes.