Importance of Feature Weighing in Cervical Cancer Subtypes Identification

Madhumita Madhumita, Sushmita Paul
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Abstract

Cancer subtypes identification is very important for the advancement of precision cancer disease diagnosis and therapy. It is one of the important components of the personalized medicine framework. Cervical cancer (CC) is one of the leading gynecological cancers that causes deaths in women worldwide. However, there is a lack of studies to identify histological subtypes among the patients suffering from tumor of the uterine cervix. Hence, sub-typing of cancer can help in analyzing shared molecular profiles between different histological subtypes of solid tumors of uterine cervix. With the advancement in technology, large scale multi-omics data are generated. The integration of genomics data generated from different platforms helps in capturing complementary information about the patients. Several computational approaches have been developed that integrate muti-omics data for cancer sub-typing. In this study, mRNA (messenger RNA) and miRNA (microRNA) expression data are integrated to identify the histological subtypes of CC. In this regard, a method is proposed that ranks the biomarkers (mRNA and miRNA) on the basis of their varying expression across the samples. The ranking method generates a weight for every biomarker which is further used to identify the similarity between the samples. A well-known approach named Similarity Network Fusion (SNF) is then applied, followed by Spectral clustering, to identify groups of related samples. This study focuses on the role of weighing the biomarkers prior to their integration and application of the clustering algorithm. The weighing method proposed in this study is compared with some other methods and proved to be more efficient. The proposed method helps in identifying histological subtypes of CC and can also be applied to other types of cancer data where histological subtypes play a key role in designing treatments and therapies.
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特征加权在宫颈癌亚型鉴定中的重要性
肿瘤亚型识别对于推进肿瘤疾病的精准诊断和治疗具有重要意义。它是个性化医疗框架的重要组成部分之一。宫颈癌(CC)是导致全世界妇女死亡的主要妇科癌症之一。然而,目前还缺乏对宫颈肿瘤患者的组织学亚型进行鉴定的研究。因此,癌症的分型有助于分析子宫颈实体瘤不同组织学亚型之间的共同分子谱。随着技术的进步,产生了大规模的多组学数据。整合来自不同平台的基因组数据有助于获取有关患者的补充信息。已经开发了几种计算方法来整合癌症亚型的多组学数据。在本研究中,我们整合了mRNA(信使RNA)和miRNA (microRNA)的表达数据来鉴定CC的组织学亚型。为此,我们提出了一种基于生物标志物(mRNA和miRNA)在样本中的表达变化来对其进行排序的方法。排序方法为每个生物标志物生成一个权重,该权重进一步用于识别样本之间的相似性。然后应用了一种著名的方法,称为相似性网络融合(SNF),然后是光谱聚类,以识别相关样本组。本研究的重点是在生物标记物整合和应用聚类算法之前对其进行称重的作用。将本文提出的称重方法与其他方法进行了比较,证明了该方法的有效性。所提出的方法有助于识别CC的组织学亚型,也可以应用于其他类型的癌症数据,其中组织学亚型在设计治疗和疗法中起关键作用。
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