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The long noncoding RNA landscape of neuroendocrine prostate cancer and its clinical implications

机译:神经内分泌前列腺癌的长期非编码RNA格局及其临床意义

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Background Treatment-induced neuroendocrine prostate cancer (tNEPC) is an aggressive variant of late-stage metastatic castrate-resistant prostate cancer that commonly arises through neuroendocrine transdifferentiation (NEtD). Treatment options are limited, ineffective, and, for most patients, result in death in less than a year. We previously developed a first-in-field patient-derived xenograft (PDX) model of NEtD. Longitudinal deep transcriptome profiling of this model enabled monitoring of dynamic transcriptional changes during NEtD and in the context of androgen deprivation. Long non-coding RNA (lncRNA) are implicated in cancer where they can control gene regulation. Until now, the expression of lncRNAs during NEtD and their clinical associations were unexplored. Results We implemented a next-generation sequence analysis pipeline that can detect transcripts at low expression levels and built a genome-wide catalogue (n = 37,749) of lncRNAs. We applied this pipeline to 927 clinical samples and our high-fidelity NEtD model LTL331 and identified 821 lncRNAs in NEPC. Among these are 122 lncRNAs that robustly distinguish NEPC from prostate adenocarcinoma (AD) patient tumours. The highest expressed lncRNAs within this signature are H19, LINC00617, and SSTR5-AS1. Another 742 are associated with the NEtD process and fall into four distinct patterns of expression (NEtD lncRNA Class I, II, III, and IV) in our PDX model and clinical samples. Each class has significant (z-scores 2) and unique enrichment for transcription factor binding site (TFBS) motifs in their sequences. Enriched TFBS include (1) TP53 and BRN1 in Class I, (2) ELF5, SPIC, and HOXD1 in Class II, (3) SPDEF in Class III, (4) HSF1 and FOXA1 in Class IV, and (5) TWIST1 when merging Class III with IV. Common TFBS in all NEtD lncRNA were also identified and include E2F, REST, PAX5, PAX9, and STAF. Interrogation of the top deregulated candidates (n = 100) in radical prostatectomy adenocarcinoma samples with long-term follow-up (median 18 years) revealed significant clinicopathological associations. Specifically, we identified 25 that are associated with rapid metastasis following androgen deprivation therapy (ADT). Two of these lncRNAs (SSTR5-AS1 and LINC00514) stratified patients undergoing ADT based on patient outcome. Discussion To date, a comprehensive characterization of the dynamic landscape of lncRNAs during the NEtD process has not been performed. A temporal analysis of the PDX-based NEtD model has for the first time provided this dynamic landscape. TFBS analysis identified NEPC-related TF motifs present within the NEtD lncRNA sequences, suggesting functional roles for these lncRNAs in NEPC pathogenesis. Furthermore, select NEtD lncRNAs appear to be associated with metastasis and patients receiving ADT. Treatment-related metastasis is a clinical consequence of NEPC tumours. Top candidate lncRNAs FENDRR, H19, LINC00514, LINC00617, and SSTR5-AS1 identified in this study are implicated in the development of NEPC. We present here for the first time a genome-wide catalogue of NEtD lncRNAs that characterize the transdifferentiation process and a robust NEPC lncRNA patient expression signature. To accomplish this, we carried out the largest integrative study that applied a PDX NEtD model to clinical samples. These NEtD and NEPC lncRNAs are strong candidates for clinical biomarkers and therapeutic targets and warrant further investigation.
机译:背景技术治疗引起的神经内分泌前列腺癌(tNEPC)是晚期转移性去势抵抗性前列腺癌的一种侵略性变体,通常通过神经内分泌转分化(NEtD)引起。治疗选择是有限的,无效的,并且对于大多数患者而言,导致不到一年的死亡。我们先前开发了NEtD的第一个患者源性异种移植(PDX)模型。该模型的纵向深度转录组分析能够监测NEtD期间和雄激素剥夺情况下的动态转录变化。长非编码RNA(lncRNA)与癌症有关,它们可以控制基因调控。迄今为止,尚未研究NEtD期间lncRNA的表达及其临床关联性。结果我们实施了下一代序列分析管道,可以检测低表达水平的转录本,并建立了lncRNA的全基因组目录(n = 37,749)。我们将此管道应用于927个临床样品和我们的高保真NEtD模型LTL331,并在NEPC中鉴定出821个lncRNA。其中有122种lncRNA,可将NEPC与前列腺腺癌(AD)患者的肿瘤区分开来。在该标记内表达最高的lncRNA是H19,LINC00617和SSTR5-AS1。另外742个与NEtD过程相关,并在我们的PDX模型和临床样品中分为四种不同的表达模式(NEtD lncRNA I,II,III和IV类)。每个类别在其序列中均具有显着的(z分数> 2)和独特的转录因子结合位点(TFBS)图案富集。富集的TFBS包括(1)I类中的TP53和BRN1,(II)II类中的ELF5,SPIC和HOXD1,(III)III类中的SPDEF,(IV)IV类中的HSF1和FOXA1,以及(5)TWIST1将III类与IV类合并。还鉴定了所有NEtD lncRNA中的常见TFBS,包括E2F,REST,PAX5,PAX9和STAF。长期随访(中位18年)对根治性前列腺切除术腺癌样本中最失调的候选者(n = 100)进行的询问显示出显着的临床病理学关联。具体来说,我们确定了25例与雄激素剥夺治疗(ADT)后的快速转移有关。这些lncRNA中的两个(SSTR5-AS1和LINC00514)根据患者的结局将接受ADT的患者分层。讨论迄今为止,尚未对NEtD过程中lncRNA的动态格局进行全面表征。基于PDX的NEtD模型的时间分析首次提供了这种动态格局。 TFBS分析确定了NEtD lncRNA序列内存在的NEPC相关的TF基序,表明这些lncRNA在NEPC发病机理中的功能作用。此外,选择的NEtD lncRNAs似乎与转移和接受ADT的患者有关。与治疗有关的转移是NEPC肿瘤的临床结果。这项研究中确定的顶级候选lncRNA FENDRR,H19,LINC00514,LINC00617和SSTR5-AS1与NEPC的发展有关。我们在这里首次展示NEtD lncRNA的全基因组目录,该目录表征了转分化过程和强大的NEPC lncRNA患者表达特征。为此,我们进行了最大的整合研究,将PDX NEtD模型应用于临床样品。这些NEtD和NEPC lncRNAs是临床生物标志物和治疗靶标的强力候选者,值得进一步研究。

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