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Intelligent predictor using cancer-related biologically information extraction from cancer transcriptomes

机译:使用癌症转录组中与癌症相关的生物学信息提取的智能预测因子

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This research includes cancer transcriptome which comprises of modifications in envoi RNAs while cancer genome involves DNA based alterations such as gene duplication and point mutations. Collectively, genome and transcriptome provide an overall view of individual patient’s cancer that would impact on clinical decision making. This development has motivated to develop ML-based intelligent models for cancer detection. In this paper, we built predictor to extract cancer-related information using RNA sequences. Here, in this work, an effective RNA bio-sequencing is used and a novel feature extraction technique is applied accordingly. The features are trained on different learning models namely XGBoost, SVM, AdaBoost, Bagging, Random Forest, Naive Bayes, and Linear Regression to extract cancer-related biological information from cancer transcriptomic data. The XGBoost classifier gives the best performance as it provides accuracy 91.67% and sensitivity 96.89% on a standard dataset and independent dataset. These models are useful for precision medicine, drug discovery and clinical oncology.
机译:这项研究包括癌症转录组,该转录组包括envoi RNA的修饰,而癌症基因组则涉及基于DNA的改变,例如基因重复和点突变。基因组和转录组共同提供了可能影响临床决策的个体患者癌症的总体视图。这一发展激励着开发用于癌症检测的基于ML的智能模型。在本文中,我们建立了预测因子,以使用RNA序列提取与癌症相关的信息。在这里,在这项工作中,使用了有效的RNA生物测序,并相应地应用了一种新颖的特征提取技术。这些功能在不同的学习模型上进行了训练,这些模型包括XGBoost,SVM,AdaBoost,Bagging,Random Forest,朴素贝叶斯和线性回归,以从癌症转录组数据中提取与癌症相关的生物学信息。 XGBoost分类器可提供最佳性能,因为它在标准数据集和独立数据集上的准确度为91.67%,灵敏度为96.89%。这些模型可用于精密医学,药物发现和临床肿瘤学。

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