A Computational Data Mining Strategy to Identify the Common Genetic Markers of Temporomandibular Joint Disorders and Osteoarthritis

IF 1.2 Q4 GENETICS & HEREDITY
V. Jayaseelan, P. Arumugam
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引用次数: 1

Abstract

Statement of Problem  Prosthodontic planning in patients with temporomandibular joint disorders (TMDs) is a challenge for the clinicians. Purpose  A differential biomarker identification could aid in developing methods for early detection and confirmation of TMD from other related conditions. Materials and Methods  The present study identified candidate genes with possible association with TMDs. The observational study delineates genes from three datasets retrieved from DisGeNET database. The convergence of datasets identifies potential genes related to TMDs with associated complication such as osteoarthritis. Gene ontology analysis was also performed to identify the potential pathways associated with the genes belonging to each of the datasets. Results  The preliminary analysis revealed vascular endothelial growth factor A ( VEGFA ), interleukin 1 β ( IL1B , and estrogen receptor 1 ( ESR1 ) as the common genes associated with all three phenotypes assessed. The gene ontology analysis revealed functional pathways in which the genes of each dataset were clustered. The chemokine and cytokine signaling pathway, gonadotropin-releasing hormone receptor pathway, cholecystokinin receptors (CCKR) signaling, and tumor growth factor (TGF)-β signaling pathway were the pathways most commonly associated with the phenotypes. The genes CCL2, IL6 , and IL1B were found to be the common genes across temporomandibular joint (TMJ) and TMJ + osteoarthritis (TMJ-OA) datasets. Conclusion  Analysis through computational approach has revealed IL1B as the crucial candidate gene which could have a strong association with bone disorders. Nevertheless, several immunological pathways have also identified numerous genes showing putative association with TMJ and other related diseases. These genes have to be further validated using experimental approaches to acquire clarity on the mechanisms related to the pathogenesis.
识别颞下颌关节疾病和骨关节炎共同遗传标记的计算数据挖掘策略
问题陈述 颞下颌关节紊乱病患者的口腔修复计划是临床医生面临的挑战。意图 鉴别生物标志物有助于开发从其他相关条件中早期检测和确认TMD的方法。材料和方法 本研究确定了可能与TMDs相关的候选基因。这项观察性研究描绘了从DisGeNET数据库检索的三个数据集中的基因。数据集的融合确定了与TMDs相关的潜在基因,并伴有骨关节炎等相关并发症。还进行了基因本体分析,以确定与属于每个数据集的基因相关的潜在途径。后果 初步分析显示,血管内皮生长因子A(VEGFA)、白细胞介素1β(IL1B)和雌激素受体1(ESR1)是与所有三种表型相关的常见基因。基因本体论分析揭示了每个数据集的基因聚类的功能途径。趋化因子和细胞因子信号通路、促性腺激素释放激素受体通路、胆囊收缩素受体(CCKR)信号通路和肿瘤生长因子(TGF)-β信号通路是最常见的与表型相关的通路。CCL2、IL6和IL1B基因是颞下颌关节(TMJ)和颞下颌关节的常见基因 + 骨关节炎(TMJ-OA)数据集。结论 通过计算方法进行的分析表明,IL1B是关键的候选基因,可能与骨疾病有很强的相关性。然而,几种免疫途径也鉴定了许多基因,这些基因显示出与TMJ和其他相关疾病的假定关联。这些基因必须使用实验方法进行进一步验证,以明确与发病机制相关的机制。
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来源期刊
Global Medical Genetics
Global Medical Genetics GENETICS & HEREDITY-
自引率
11.80%
发文量
30
审稿时长
14 weeks
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