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LncTx: A network-based method to repurpose drugs acting on the survival-related lncRNAs in lung cancer

机译:LNCTX:一种基于网络的方法可治于肺癌中生存相关的LNCRNA的药物

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摘要

Despite the fact that an increased amount of survival-related lncRNAs have been found in cancer, few drugs that target lncRNAs are approved for treatment. Here, we developed a network-based algorithm, LncTx, to repurpose the medications that potentially act on survival-related lncRNAs in lung cancer. We used eight survival-related lncRNAs derived from our previous study to test the efficacy of this method. LncTx calculates the shortest path length (proximity) between the drug targets and the lncRNA-correlated proteins in the protein–protein interaction network (interactome). LncTx contains seven different proximity measures, which are calculated in the unweighted or weighted interactome. First, to test the performance of LncTx in predicting correct indication of drugs, we benchmarked the proximity measures based on the accuracy of differentiating anticancer drugs from non-anticancer drugs. The closest proximity weighted by clustering coefficient (closestCC) has the best performance (AUC around 0.8) compared to other proximity measures across all survival-related lncRNAs. The majority of the other six proximity measures have decent performance as well, with AUC greater than 0.7. Second, to evaluate whether LncTx can repurpose the drugs effectively acting on the lncRNAs, we clustered the drugs according to their proximities by hierarchical clustering. The drugs with smaller proximity (proximal drugs) were proved to be more effective than the drugs with larger proximity (distal drugs). In conclusion, LncTx enables us to accurately identify anticancer drugs and can potentially be an index to repurpose effective agents acting on survival-related lncRNAs in lung cancer.
机译:尽管癌症中发现了增加的生存型LNCRNA,但少量靶向LNCRNA的药物被批准用于治疗。在这里,我们开发了一种基于网络的算法LNCTX,可以将可能对肺癌中生存相关的LNCRNA的药物进行释放的药物。我们使用了八个与我们以前的研究中的生存相关的LNCRNA来测试该方法的功效。 LNCTX计算药物靶标和蛋白质 - 蛋白质相互作用网络(互乱组)中的药物靶标和LNCRNA相关蛋白之间的最短路径长度(接近度)。 LNCTX包含七种不同的接近度措施,该措施是在未加权或加权互联互动子中计算的。首先,测试在预测药物正确指示LncTx的性能,基准基于非抗癌药物鉴别抗癌药物的准确度接近措施。与跨所有生存期相关的LNCRNA的其他接近度量相比,通过聚类系数(CloseStCC)的最接近的近距离(CloseStCC)具有最佳性能(AUC约为0.8)。其他六种近距离措施的大部分也具有体面的表现,AUC大于0.7。其次,评估LNCTX是否可以将有效作用于LNCRNA的药物,我们通过分层聚类根据其近距离聚集了药物。近距离(近端药物)的药物被证明比具有较大近似(远端药物)的药物更有效。总之,LNCTX使我们能够准确识别抗癌药物,并且可能是一种能够在肺癌中对生存相关的LNCRNA作用的有效药剂的指标。

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