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Evolutionary Diagnosis of non-synonymous variants involved in differential drug response

机译:涉及差异药物反应的非同义变体的进化诊断

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Background Many pharmaceutical drugs are known to be ineffective or have negative side effects in a substantial proportion of patients. Genomic advances are revealing that some non-synonymous single nucleotide variants (nsSNVs) may cause differences in drug efficacy and side effects. Therefore, it is desirable to evaluate nsSNVs of interest in their ability to modulate the drug response. Results We found that the available data on the link between drug response and nsSNV is rather modest. There were only 31 distinct drug response-altering (DR-altering) and 43 distinct drug response-neutral (DR-neutral) nsSNVs in the whole Pharmacogenomics Knowledge Base (PharmGKB). However, even with this modest dataset, it was clear that existing bioinformatics tools have difficulties in correctly predicting the known DR-altering and DR-neutral nsSNVs. They exhibited an overall accuracy of less than 50%, which was not better than random diagnosis. We found that the underlying problem is the markedly different evolutionary properties between positions harboring nsSNVs linked to drug responses and those observed for inherited diseases. To solve this problem, we developed a new diagnosis method, Drug-EvoD, which was trained on the evolutionary properties of nsSNVs associated with drug responses in a sparse learning framework. Drug-EvoD achieves a TPR of 84% and a TNR of 53%, with a balanced accuracy of 69%, which improves upon other methods significantly. Conclusions The new tool will enable researchers to computationally identify nsSNVs that may affect drug responses. However, much larger training and testing datasets are needed to develop more reliable and accurate tools.
机译:背景技术已知许多药物在相当大比例的患者中无效或具有副作用。基因组学方面的进展表明,某些非同义的单核苷酸变异体(nsSNV)可能会导致药物疗效和副作用不同。因此,需要评估感兴趣的nsSNV调节药物应答的能力。结果我们发现药物反应和nsSNV之间的联系的可用数据相当有限。在整个药物基因组学知识库(PharmGKB)中,只有31种不同的药物反应改变(DR改变)和43种不同的药物反应改变(DR中性)nsSNV。但是,即使具有适度的数据集,也很明显,现有的生物信息学工具难以正确预测已知的DR改变和DR中性nsSNV。他们表现出的总体准确性低于50%,这并不比随机诊断好。我们发现潜在的问题是包含与药物反应相关的nsSNV的位置与针对遗传性疾病观察到的位置之间的进化特性显着不同。为解决此问题,我们开发了一种新的诊断方法Drug-EvoD,该方法在稀疏的学习框架中接受了与药物反应相关的nsSNV进化特性的培训。 Drug-EvoD的TPR达到84%,TNR达到53%,平衡精度达到69%,与其他方法相比有了显着提高。结论该新工具将使研究人员能够通过计算机识别可能影响药物反应的nsSNV。但是,需要更大的培训和测试数据集来开发更可靠,更准确的工具。

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