RGIE: A Gene Selection Method Related to Radiotherapy Resistance in Head and Neck Squamous Cell Carcinoma.

IF 1.5 4区 医学 Q3 PHARMACOLOGY & PHARMACY Current radiopharmaceuticals Pub Date : 2024-01-01 DOI:10.2174/0118744710282465240315053136
Qingzhe Meng, Dunhui Liu, Junhong Huang, Xinjie Yang, Huan Li, Zihui Yang, Jun Wang, Wanpeng Gao, Yahui Li, Rong Liu, Liying Yang, Jianhua Wei
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Abstract

Background: Head and Neck Squamous Cell Carcinoma (HNSCC) is a malignant tumor with a high degree of malignancy, invasiveness, and metastasis rate. Radiotherapy, as an important adjuvant therapy for HNSCC, can reduce the postoperative recurrence rate and improve the survival rate. Identifying the genes related to HNSCC radiotherapy resistance (HNSCC-RR) is helpful in the search for potential therapeutic targets. However, identifying radiotherapy resistance-related genes from tens of thousands of genes is a challenging task. While interactions between genes are important for elucidating complex biological processes, the large number of genes makes the computation of gene interactions infeasible.

Methods: We propose a gene selection algorithm, RGIE, which is based on ReliefF, Gene Network Inference with Ensemble of Trees (GENIE3) and Feature Elimination. ReliefF was used to select a feature subset that is discriminative for HNSCC-RR, GENIE3 constructed a gene regulatory network based on this subset to analyze the regulatory relationship among genes, and feature elimination was used to remove redundant and noisy features.

Results: Nine genes (SPAG1, FIGN, NUBPL, CHMP5, TCF7L2, COQ10B, BSDC1, ZFPM1, GRPEL1) were identified and used to identify HNSCC-RR, which achieved performances of 0.9730, 0.9679, 0.9767, and 0.9885 in terms of accuracy, precision, recall, and AUC, respectively. Finally, qRT-PCR validated the differential expression of the nine signature genes in cell lines (SCC9, SCC9-RR).

Conclusion: RGIE is effective in screening genes related to HNSCC-RR. This approach may help guide clinical treatment modalities for patients and develop potential treatments.

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RGIE:一种与头颈部鳞状细胞癌放疗耐药性相关的基因筛选方法。
背景:头颈部鳞状细胞癌(HNSCC头颈部鳞状细胞癌(HNSCC)是一种恶性程度高、侵袭性强、转移率高的恶性肿瘤。放疗作为HNSCC的重要辅助治疗手段,可以降低术后复发率,提高生存率。鉴定与 HNSCC 放疗耐药(HNSCC-RR)相关的基因有助于寻找潜在的治疗靶点。然而,从数以万计的基因中找出与放疗耐药相关的基因是一项具有挑战性的任务。虽然基因之间的相互作用对于阐明复杂的生物过程非常重要,但基因数量庞大使得基因相互作用的计算变得不可行:方法:我们提出了一种基因选择算法 RGIE,它基于 ReliefF、基因网络推断与树集合(GENIE3)和特征消除。ReliefF用于选择对HNSCC-RR有鉴别作用的特征子集,GENIE3基于该子集构建基因调控网络,分析基因间的调控关系,特征消除用于去除冗余和噪声特征:结果:识别出了9个基因(SPAG1、FIGN、NUBPL、CHMP5、TCF7L2、COQ10B、BSDC1、ZFPM1、GRPEL1),并将其用于识别HNSCC-RR,其准确率、精确率、召回率和AUC分别达到了0.9730、0.9679、0.9767和0.9885。最后,qRT-PCR 验证了九个特征基因在细胞系(SCC9、SCC9-RR)中的差异表达:结论:RGIE能有效筛选与HNSCC-RR相关的基因。结论:RGIE能有效筛选与HNSCC-RR相关的基因,这种方法有助于指导患者的临床治疗模式和开发潜在的治疗方法。
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来源期刊
Current radiopharmaceuticals
Current radiopharmaceuticals PHARMACOLOGY & PHARMACY-
CiteScore
3.20
自引率
4.30%
发文量
43
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