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Inference of kinase-signaling networks in human myeloid cell line models by Phosphoproteomics using kinase activity enrichment analysis (KAEA)

机译:使用激酶活性富集分析(KAEA)通过磷蛋白酶科学对人髓细胞系模型激酶信号网络推断(KAEA)

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Despite the introduction of targeted therapies, most patients with myeloid malignancies will not be cured and progress. Genomics is useful to elucidate the mutational landscape but remains limited in the prediction of therapeutic outcome and identification of targets for resistance. Dysregulation of phosphorylation-based signaling pathways is a hallmark of cancer, and therefore, kinase-inhibitors are playing an increasingly important role as targeted treatments. Untargeted phosphoproteomics analysis pipelines have been published but show limitations in inferring kinase-activities and identifying potential biomarkers of response and resistance. We developed a phosphoproteomics workflow based on titanium dioxide phosphopeptide enrichment with subsequent analysis by liquid chromatography tandem mass spectrometry (LC-MS). We applied a novel Kinase-Activity Enrichment Analysis (KAEA) pipeline on differential phosphoproteomics profiles, which is based on the recently published SetRank enrichment algorithm with reduced false positive rates. Kinase activities were inferred by this algorithm using an extensive reference database comprising five experimentally validated kinase-substrate meta-databases complemented with the NetworKIN in-silico prediction tool. For the proof of concept, we used human myeloid cell lines (K562, NB4, THP1, OCI-AML3, MOLM13 and MV4–11) with known oncogenic drivers and exposed them to clinically established kinase-inhibitors. Biologically meaningful over- and under-active kinases were identified by KAEA in the unperturbed human myeloid cell lines (K562, NB4, THP1, OCI-AML3 and MOLM13). To increase the inhibition signal of the driving oncogenic kinases, we exposed the K562 (BCR-ABL1) and MOLM13/MV4–11 (FLT3-ITD) cell lines to either Nilotinib or Midostaurin kinase inhibitors, respectively. We observed correct detection of expected direct (ABL, KIT, SRC) and indirect (MAPK) targets of Nilotinib in K562 as well as indirect (PRKC, MAPK, AKT, RPS6K) targets of Midostaurin in MOLM13/MV4–11, respectively. Moreover, our pipeline was able to characterize unexplored kinase-activities within the corresponding signaling networks. We developed and validated a novel KAEA pipeline for the analysis of differential phosphoproteomics MS profiling data. We provide translational researchers with an improved instrument to characterize the biological behavior of kinases in response or resistance to targeted treatment. Further investigations are warranted to determine the utility of KAEA to characterize mechanisms of disease progression and treatment failure using primary patient samples.
机译:尽管有针对性疗法引入,但大多数骨髓恶性肿瘤患者都不会被治愈和进展。基因组学可用于阐明突变景观,但在预测治疗结果和抗性靶标的靶标中仍然有限。基于磷酸化信号通路的失调是癌症的标志,因此,激酶抑制剂扮演针对性的治疗越来越重要的角色。无目标磷酸化蛋白质组学分析管线已公布,但节目局限性推断激酶的活动,并确定应对和抵抗的潜在生物标志物。工作流程基于与通过液相色谱串联质谱法(LC-MS)的后续分析的二氧化钛磷酸富集我们开发了磷酸化蛋白质组学。我们在差动磷蛋白质谱上应用了一种新的激酶活性富集分析(KAEA)管道,其基于最近发表的SEDRANK富集算法,减少了假阳性率。激酶活性通过使用广泛的参考数据库包括与所述网络在在计算机芯片预测工具补充5实验验证激酶底物的元数据库,该算法推断。对于概念证明,我们使用具有已知的致癌司机的人髓细胞系(K562,NB4,THP1,OCI-AML3,MOLM13和MV4-11)并将其暴露于临床建立的激酶抑制剂。通过kaea在不受干扰的人髓细胞系中鉴定生物学意义的过活性激酶(K562,NB4,THP1,OCI-AML3和MOLM13)。为了增加驱动致力生成激酶的抑制信号,我们将K562(BCR-Abl1)和Molm13 / MV4-11(FLT3-ITD)细胞系暴露于尼洛替尼或骨髓属激酶抑制剂。我们观察到K562中Nileotinib的预期直接(ABL,kit,SRC)和间接(MAPK)靶标分别在K562中的间接(PRKC,MAPK,AKT,RPS6K)分别分别在MOLM13 / MV4-11中的间接(PRKC,MAPK,AKT,RPS6K)靶标。此外,我们的管道能够在相应的信令网络中表征未探索的激酶活动。我们开发并验证了一种新的KAEA管道,用于分析差分磷蛋白质MS分析数据。我们提供改进仪器的翻译研究人员,以表征激酶的生物行为,以反应或抗靶向治疗。进一步的调查是必要的,以确定KAEA的效用来表征使用初级患者样品疾病进展和治疗失败的机理。

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