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卵巢癌中与生存相关的特征、信号通路和转录因子

Survival-related profile, pathways, and transcription factors in ovarian cancer.

作者信息

Crijns Anne P G, Fehrmann Rudolf S N, de Jong Steven, Gerbens Frans, Meersma Gert Jan, Klip Harry G, Hollema Harry, Hofstra Robert M W, te Meerman Gerard J, de Vries Elisabeth G E, van der Zee Ate G J

机构信息

Department of Gynecologic Oncology, University Medical Centre Groningen, University of Groningen, Groningen, The Netherlands.

出版信息

PLoS Med. 2009 Feb 3;6(2):e24. doi: 10.1371/journal.pmed.1000024.

Abstract

BACKGROUND

Ovarian cancer has a poor prognosis due to advanced stage at presentation and either intrinsic or acquired resistance to classic cytotoxic drugs such as platinum and taxoids. Recent large clinical trials with different combinations and sequences of classic cytotoxic drugs indicate that further significant improvement in prognosis by this type of drugs is not to be expected. Currently a large number of drugs, targeting dysregulated molecular pathways in cancer cells have been developed and are introduced in the clinic. A major challenge is to identify those patients who will benefit from drugs targeting these specific dysregulated pathways.The aims of our study were (1) to develop a gene expression profile associated with overall survival in advanced stage serous ovarian cancer, (2) to assess the association of pathways and transcription factors with overall survival, and (3) to validate our identified profile and pathways/transcription factors in an independent set of ovarian cancers.

METHODS AND FINDINGS

According to a randomized design, profiling of 157 advanced stage serous ovarian cancers was performed in duplicate using approximately 35,000 70-mer oligonucleotide microarrays. A continuous predictor of overall survival was built taking into account well-known issues in microarray analysis, such as multiple testing and overfitting. A functional class scoring analysis was utilized to assess pathways/transcription factors for their association with overall survival. The prognostic value of genes that constitute our overall survival profile was validated on a fully independent, publicly available dataset of 118 well-defined primary serous ovarian cancers. Furthermore, functional class scoring analysis was also performed on this independent dataset to assess the similarities with results from our own dataset. An 86-gene overall survival profile discriminated between patients with unfavorable and favorable prognosis (median survival, 19 versus 41 mo, respectively; permutation p-value of log-rank statistic = 0.015) and maintained its independent prognostic value in multivariate analysis. Genes that composed the overall survival profile were also able to discriminate between the two risk groups in the independent dataset. In our dataset 17/167 pathways and 13/111 transcription factors were associated with overall survival, of which 16 and 12, respectively, were confirmed in the independent dataset.

CONCLUSIONS

Our study provides new clues to genes, pathways, and transcription factors that contribute to the clinical outcome of serous ovarian cancer and might be exploited in designing new treatment strategies.

摘要

背景

卵巢癌由于就诊时处于晚期以及对铂类和紫杉类等经典细胞毒性药物存在内在或获得性耐药,预后较差。近期针对经典细胞毒性药物不同组合和给药顺序的大型临床试验表明,这类药物在预后方面不会有进一步显著改善。目前,大量针对癌细胞中失调分子通路的药物已研发出来并应用于临床。一个主要挑战是识别那些将从针对这些特定失调通路的药物中获益的患者。我们研究的目的是:(1)建立一个与晚期浆液性卵巢癌总生存期相关的基因表达谱;(2)评估通路和转录因子与总生存期的相关性;(3)在一组独立的卵巢癌中验证我们所确定的基因谱以及通路/转录因子。

方法与结果

按照随机设计,使用约35,000个70聚体寡核苷酸微阵列对157例晚期浆液性卵巢癌进行了一式两份的基因表达谱分析。构建了一个总生存期的连续预测模型,同时考虑了微阵列分析中诸如多重检验和过拟合等众所周知的问题。利用功能类评分分析来评估通路/转录因子与总生存期的相关性。构成我们总生存期基因谱的基因的预后价值在一个完全独立的、公开可用的包含118例明确的原发性浆液性卵巢癌的数据集上得到了验证。此外,也对这个独立数据集进行了功能类评分分析,以评估其与我们自己数据集结果的相似性。一个86基因的总生存期基因谱能够区分预后不良和预后良好的患者(中位生存期分别为19个月和41个月;对数秩统计量的置换P值 = 0.015),并且在多变量分析中保持其独立的预后价值。构成总生存期基因谱的基因在独立数据集中也能够区分两个风险组。在我们的数据集中,167条通路中的17条和111个转录因子中的13个与总生存期相关,其中分别有16条通路和12个转录因子在独立数据集中得到了证实。

结论

我们的研究为影响浆液性卵巢癌临床结局的基因、通路和转录因子提供了新线索,这些线索可能用于设计新的治疗策略。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1adb/2646771/5aec16045538/pmed.1000024.g001.jpg

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