用于 LncRNA 与癌症关联预测的机器学习方法的最新进展

Ruobing Wang, Lingyu Meng, Jianjun Tan
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引用次数: 0

摘要

近年来,长非编码 RNA(lncRNA)在各种生物学过程中发挥了重要作用。lncRNA的突变和调控与许多人类癌症密切相关。预测潜在的lncRNA-癌症关联有助于了解癌症的发病机制,并为癌症的预防、治疗和诊断提供新的思路和方法。基于计算方法预测lncRNA与癌症的关联有助于开展系统的生物学研究,其中机器学习方法备受关注,并被广泛用于解决这些问题。因此,人们提出了许多机器学习计算模型,以提高预测性能,实现癌症的精确诊断和有效治疗。本综述概述了利用机器学习方法预测 lncRNA 与癌症关联的现有模型。简要介绍了每个模型的评价指标,分析了这些模型的优势和局限性。我们还对所列的两种癌症进行了案例研究总结。最后,讨论了用机器学习方法预测 lncRNA 与癌症关联的挑战和未来趋势。
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Recent Advances in Machine Learning Methods for LncRNA-Cancer Associations Prediction
In recent years, long non-coding RNAs (lncRNAs) have played important roles in various biological processes. Mutations and regulation of lncRNAs are closely associated with many human cancers. Predicting potential lncRNA-cancer associations helps to understand cancer's pathogenesis and provides new ideas and approaches for cancer prevention, treatment and diagnosis. Predicting lncRNA-cancer associations based on computational methods helps systematic biological studies. In particular, machine learning methods have received much attention and are commonly used to solve these problems. Therefore, many machine learning computational models have been proposed to improve the prediction performance and achieve accurate diagnosis and effective treatment of cancer. This review provides an overview of existing models for predicting lncRNA-cancer associations by machine learning methods. The evaluation metrics of each model are briefly described, analyzed the advantages and limitations of these models are analyzed. We also provide a case study summary of the two cancers listed. Finally, the challenges and future trends of predicting lncRNA-cancer associations with machine learning methods are discussed.
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