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Towards a consistent evaluation of miRNA-disease association prediction models

机译:朝向miRNA疾病关联预测模型的一致评价

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MicroRNA or miRNA is a class of non-coding RNA with a length of approximately 22 nucleotides that is involved in the regulation of gene expression. miRNA is becoming one of the promising drug targets in recent years. Identifying potential associations between miRNA and disease would help in clinical diagnosis, treatment, and drug development. Since wet-lab experiments are expensive and time-consuming, recent years have seen an upsurge in the number of proposed machine learning based computational approaches. Nevertheless, we discovered three issues most notably the data leakage problem in existing machine learning approaches. These issues lead to an overestimation of the methods' performance as well as an unfair comparison among the models which in-turn hinders the adoption of these methods. Besides presenting an in-depth study about those problems, we also propose our solutions and recommendations. We release all the code and datasets for reproducibility and fostering future development at https://git.13s.uni-hannover.de/dong/simp1ifyingmirna-disease.
机译:microRNA或miRNA是一类非编码RNA,其长度约为22个核苷酸,其参与基因表达的调节。 MiRNA近年来成为有希望的药物目标之一。识别miRNA和疾病之间的潜在关联将有助于临床诊断,治疗和药物发育。由于湿实验实验实验昂贵且耗时,近年来在基于机器学习的计算方法的数量中看到了升高。尽管如此,我们最特别发现了三个问题,最符合现有机器学习方法中的数据泄漏问题。这些问题导致过度高估了方法的表现以及模型之间的不公平比较,瞬间阻碍了这些方法的采用。除了对这些问题的深入研究外,我们还提出了我们的解决方案和建议。我们释放了所有代码和数据集,以便在https://git.13s.uni-hannover.de/dong/simp1ifymirna-disease上进行再现性和促进未来发展。

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