Lilikoi V2.0: A deep learning-enabled, personalized pathway-based R package for diagnosis and prognosis predictions using metabolomics data

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Abstract

Background: previously we developed Lilikoi, a personalized pathway-based method to classify diseases using metabolomics data. Given the new trends of computation in the metabolomics field, it is important to update Lilikoi software. Results: here we report the next version of Lilikoi as a significant upgrade. The new Lilikoi v2.0 R package has implemented a deep learning method for classification, in addition to popular machine learning methods. It also has several new modules, including the most significant addition of prognosis prediction, implemented by Cox-proportional hazards model and the deep learning-based Cox-nnet model. Additionally, Lilikoi v2.0 supports data preprocessing, exploratory analysis, pathway visualization, and metabolite pathway regression. Conculsion: Lilikoi v2.0 is a modern, comprehensive package to enable metabolomics analysis in R programming environment.

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Fang, X., Liu, Y., Ren, Z., Du, Y., Huang, Q., & Garmire, L. X. (2021). Lilikoi V2.0: A deep learning-enabled, personalized pathway-based R package for diagnosis and prognosis predictions using metabolomics data. GigaScience, 10(1). https://doi.org/10.1093/gigascience/giaa162

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