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基于ATAC-Seq和RNA-Seq综合分析鉴定子宫内膜非典型增生和子宫内膜样腺癌患者孕激素不敏感的潜在预测模型

Identification of potential models for predicting progestin insensitivity in patients with endometrial atypical hyperplasia and endometrioid endometrial cancer based on ATAC-Seq and RNA-Seq integrated analysis.

作者信息

Hu Jia-Li, Yierfulati Gulinazi, Wang Lu-Lu, Yang Bing-Yi, Lv Qiao-Ying, Chen Xiao-Jun

机构信息

Department of Gynecology, Obstetrics and Gynecology Hospital of Fudan University, Shanghai, China.

Shanghai Key Laboratory of Female Reproductive Endocrine Related Diseases, Shanghai, China.

出版信息

Front Genet. 2022 Aug 26;13:952083. doi: 10.3389/fgene.2022.952083. eCollection 2022.

Abstract

The aim of this study was to establish predictive models based on the molecular profiles of endometrial lesions, which might help identify progestin-insensitive endometrial atypical hyperplasia (EAH) or endometrioid endometrial cancer (EEC) patients before progestin-based fertility-preserving treatment initiation. Endometrial lesions from progestin-sensitive (PS, = 7) and progestin-insensitive (PIS, = 7) patients were prospectively collected before progestin treatment and then analyzed by ATAC-Seq and RNA-Seq. Potential chromatin accessibility and expression profiles were compared between the PS and PIS groups. Candidate genes were identified by bioinformatics analyses and literature review. Then expanded samples ( = 35) were used for validating bioinformatics data and conducting model establishment. ATAC-Seq and RNA-Seq data were separately analyzed and then integrated for the subsequent research. A total of 230 overlapping differentially expressed genes were acquired from ATAC-Seq and RNA-Seq integrated analysis. Further, based on GO analysis, REACTOME pathways, transcription factor prediction, motif enrichment, Cytoscape analysis and literature review, 25 candidate genes potentially associated with progestin insensitivity were identified. Finally, expanded samples were used for data verification, and based on these data, three predictive models comprising 9 genes (, , , , , , , , and ) were established with an overall predictive accuracy above 90%. This study provided potential predictive models that might help identify progestin-insensitive EAH and EEC patients before fertility-preserving treatment.

摘要

本研究的目的是基于子宫内膜病变的分子特征建立预测模型,这可能有助于在基于孕激素的保留生育功能治疗开始前识别对孕激素不敏感的子宫内膜非典型增生(EAH)或子宫内膜样腺癌(EEC)患者。在孕激素治疗前前瞻性收集孕激素敏感(PS,n = 7)和孕激素不敏感(PIS,n = 7)患者的子宫内膜病变,然后通过ATAC测序和RNA测序进行分析。比较PS组和PIS组之间潜在的染色质可及性和表达谱。通过生物信息学分析和文献综述确定候选基因。然后使用扩大样本(n = 35)来验证生物信息学数据并建立模型。分别分析ATAC测序和RNA测序数据,然后整合用于后续研究。从ATAC测序和RNA测序综合分析中总共获得230个重叠的差异表达基因。此外,基于基因本体(GO)分析、REACTOME通路、转录因子预测、基序富集、Cytoscape分析和文献综述,确定了25个可能与孕激素不敏感相关的候选基因。最后,使用扩大样本进行数据验证,并基于这些数据建立了包含9个基因(、、、、、、、和)的三个预测模型,总体预测准确率超过90%。本研究提供了潜在的预测模型,可能有助于在保留生育功能治疗前识别对孕激素不敏感的EAH和EEC患者。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9575/9459090/0c597a1caa8d/fgene-13-952083-g001.jpg

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