Harnessing machine learning technique to authenticate differentially expressed genes in oral squamous cell carcinoma.

IF 2 3区 医学 Q2 DENTISTRY, ORAL SURGERY & MEDICINE
Amisha Patel, Saswati Mahapatra, Ashok Kumar Bishoyi, Abhishek Sharma, Abhijit Makwana, Tripti Swarnkar, Anubha Gupta, Prasan Kumar Sahoo, Sejal Shah
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引用次数: 0

Abstract

Objective: Advancements in early detection of the disease, prognosis and the development of therapeutic strategies necessitate tumor-specific biomarkers. Despite continuous efforts, no molecular marker has been proven to be an effective therapeutic tool for the early detection of cancer. The study aims to determine diagnostic and prognostic signature genes that may be involved in cancer pathology and hence, may serve as molecular markers.

Study design: Eight candidate genes were selected based on our prior study of transcriptomic sequencing and validated in 100 matched pair samples of oral squamous cell carcinoma (OSCC). We further utilized machine learning approaches and examined the diagnostic presentation and predictive ability of the OSCC genes retrieved from publicly available The Cancer Genome Atlas (TCGA) database and compared with our results.

Results: We conducted qPCR analysis to validate the expression of each gene and observed that each gene was present in the majority of OSCC samples. The predictive ability of selected genes was stable (with an average accuracy of 84%) across different classifiers. However, on validation with our dataset, it showed 75% accuracy, which might be because of the demographic variation of the samples.

Conclusions: The present research outlines cancer-associated molecular biomarkers that might eventually contribute to an enhanced prognosis of cancer patient by identifying novel therapeutic targets.

利用机器学习技术鉴别口腔鳞状细胞癌中的差异表达基因
目的:要在疾病的早期检测、预后判断和治疗策略的开发方面取得进展,就必须要有肿瘤特异性生物标记物。尽管人们一直在努力,但还没有任何分子标记物被证明是早期检测癌症的有效治疗工具。本研究旨在确定可能参与癌症病理的诊断和预后特征基因,从而将其作为分子标记物:研究设计:我们根据之前的转录组测序研究选出了八个候选基因,并在 100 个配对的口腔鳞状细胞癌(OSCC)样本中进行了验证。我们进一步利用机器学习方法,检查了从公开的癌症基因组图谱(TCGA)数据库中检索到的 OSCC 基因的诊断表现和预测能力,并与我们的结果进行了比较:我们对每个基因的表达进行了qPCR分析验证,发现每个基因都存在于大多数OSCC样本中。在不同的分类器中,所选基因的预测能力是稳定的(平均准确率为 84%)。然而,在对我们的数据集进行验证时,准确率仅为 75%,这可能是由于样本的人口统计学差异造成的:本研究概述了与癌症相关的分子生物标记物,这些标记物最终可能会通过确定新的治疗靶点来改善癌症患者的预后。
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来源期刊
Oral Surgery Oral Medicine Oral Pathology Oral Radiology
Oral Surgery Oral Medicine Oral Pathology Oral Radiology DENTISTRY, ORAL SURGERY & MEDICINE-
CiteScore
3.80
自引率
6.90%
发文量
1217
审稿时长
2-4 weeks
期刊介绍: Oral Surgery, Oral Medicine, Oral Pathology and Oral Radiology is required reading for anyone in the fields of oral surgery, oral medicine, oral pathology, oral radiology or advanced general practice dentistry. It is the only major dental journal that provides a practical and complete overview of the medical and surgical techniques of dental practice in four areas. Topics covered include such current issues as dental implants, treatment of HIV-infected patients, and evaluation and treatment of TMJ disorders. The official publication for nine societies, the Journal is recommended for initial purchase in the Brandon Hill study, Selected List of Books and Journals for the Small Medical Library.
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