4.6 Article

PWN: enhanced random walk on a warped network for disease target prioritization

Journal

BMC BIOINFORMATICS
Volume 24, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s12859-023-05227-x

Keywords

Disease-target identification; Protein-protein interaction; Random walk; Machine learning

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Researchers propose a new random walk algorithm named PWN, which enhances the effectiveness of high-throughput data analysis by employing a warped network structure. PWN consistently achieves the best performance among several other known methods.
BackgroundExtracting meaningful information from unbiased high-throughput data has been a challenge in diverse areas. Specifically, in the early stages of drug discovery, a considerable amount of data was generated to understand disease biology when identifying disease targets. Several random walk-based approaches have been applied to solve this problem, but they still have limitations. Therefore, we suggest a new method that enhances the effectiveness of high-throughput data analysis with random walks.ResultsWe developed a new random walk-based algorithm named prioritization with a warped network (PWN), which employs a warped network to achieve enhanced performance. Network warping is based on both internal and external features: graph curvature and prior knowledge.ConclusionsWe showed that these compositive features synergistically increased the resulting performance when applied to random walk algorithms, which led to PWN consistently achieving the best performance among several other known methods. Furthermore, we performed subsequent experiments to analyze the characteristics of PWN.

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