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      Learning metabolic dynamics from irregular observations by Bidirectional Time-Series State Transfer Network

      research-article
      1 , 2 , 1 , 1 , 1 , 2 ,
      mSystems
      American Society for Microbiology
      metabolic dynamics, neural network, time-series modeling, irregular observation, bidirectional time-series state transfer network

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          ABSTRACT

          Modeling microbial metabolic dynamics is important for the rational optimization of both biosynthetic systems and industrial processes to facilitate green and efficient biomanufacturing. Classical approaches utilize explicit equation systems to represent metabolic networks, enabling the quantification of pathway fluxes to identify metabolic bottlenecks. However, these white-box models, despite their diverse applications, have limitations in simulating metabolic dynamics and are intrinsically inaccurate for industrial strains that lack information on network structures and kinetic parameters. On the other hand, black-box models do not rely on prior mechanistic knowledge of strains but are built upon observed time-series trajectories of biosynthetic systems in action. In practice, these observations are typically irregular, with discontinuously observed time points across multiple independent batches, each time point potentially containing missing measurements. Learning from such irregular data remains challenging for existing approaches. To address this issue, we present the Bidirectional Time-Series State Transfer Network (BTSTN) for modeling metabolic dynamics directly from irregular observations. Using evaluation data sets derived from both ideal dynamic systems and a real-world fermentation process, we demonstrate that BTSTN accurately reconstructs dynamic behaviors and predicts future trajectories. This approach exhibits enhanced robustness against missing measurements and noise, as compared to the state-of-the-art methods.

          IMPORTANCE

          Industrial biosynthetic systems often involve strains with unclear genetic backgrounds, posing challenges in modeling their distinct metabolic dynamics. In such scenarios, white-box models, which commonly rely on inferred networks, are thereby of limited applicability and accuracy. In contrast, black-box models, such as statistical models and neural networks, are directly fitted or learned from observed time-series trajectories of biosynthetic systems in action. These methods typically assume regular observations without missing time points or measurements. If the observations are irregular, a pre-processing step becomes necessary to obtain a fully filled data set for subsequent model training, which, at the same time, inevitably introduces errors into the resulting models. BTSTN is a novel approach that natively learns from irregular observations. This distinctive feature makes it a unique addition to the current arsenal of technologies modeling metabolic dynamics.

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          Most cited references56

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          Attention Is All You Need

          The dominant sequence transduction models are based on complex recurrent or convolutional neural networks in an encoder-decoder configuration. The best performing models also connect the encoder and decoder through an attention mechanism. We propose a new simple network architecture, the Transformer, based solely on attention mechanisms, dispensing with recurrence and convolutions entirely. Experiments on two machine translation tasks show these models to be superior in quality while being more parallelizable and requiring significantly less time to train. Our model achieves 28.4 BLEU on the WMT 2014 English-to-German translation task, improving over the existing best results, including ensembles by over 2 BLEU. On the WMT 2014 English-to-French translation task, our model establishes a new single-model state-of-the-art BLEU score of 41.8 after training for 3.5 days on eight GPUs, a small fraction of the training costs of the best models from the literature. We show that the Transformer generalizes well to other tasks by applying it successfully to English constituency parsing both with large and limited training data. 15 pages, 5 figures
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            Multiple imputation by chained equations: what is it and how does it work?

            Multivariate imputation by chained equations (MICE) has emerged as a principled method of dealing with missing data. Despite properties that make MICE particularly useful for large imputation procedures and advances in software development that now make it accessible to many researchers, many psychiatric researchers have not been trained in these methods and few practical resources exist to guide researchers in the implementation of this technique. This paper provides an introduction to the MICE method with a focus on practical aspects and challenges in using this method. A brief review of software programs available to implement MICE and then analyze multiply imputed data is also provided.
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              A protocol for generating a high-quality genome-scale metabolic reconstruction.

              Network reconstructions are a common denominator in systems biology. Bottom-up metabolic network reconstructions have been developed over the last 10 years. These reconstructions represent structured knowledge bases that abstract pertinent information on the biochemical transformations taking place within specific target organisms. The conversion of a reconstruction into a mathematical format facilitates a myriad of computational biological studies, including evaluation of network content, hypothesis testing and generation, analysis of phenotypic characteristics and metabolic engineering. To date, genome-scale metabolic reconstructions for more than 30 organisms have been published and this number is expected to increase rapidly. However, these reconstructions differ in quality and coverage that may minimize their predictive potential and use as knowledge bases. Here we present a comprehensive protocol describing each step necessary to build a high-quality genome-scale metabolic reconstruction, as well as the common trials and tribulations. Therefore, this protocol provides a helpful manual for all stages of the reconstruction process.
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                Author and article information

                Contributors
                Role: Editor
                Journal
                mSystems
                mSystems
                msystems
                mSystems
                American Society for Microbiology (1752 N St., N.W., Washington, DC )
                2379-5077
                August 2024
                26 July 2024
                26 July 2024
                : 9
                : 8
                : e00697-24
                Affiliations
                [1 ]School of Basic Medical Sciences and the First Affiliated Hospital Department of Radiation Oncology, Zhejiang University School of Medicine; , Hangzhou, China
                [2 ]Zhejiang Provincial Key Laboratory for Microbial Biochemistry and Metabolic Engineering; , Hangzhou, China
                CNRS Delegation Bretagne et Pays de Loire; , Nantes, France
                Author notes
                Address correspondence to Xin Chen, xinchen@ 123456zju.edu.cn

                Shaohua Xu and Ting Xu contributed equally to this article. Author order was determined both alphabetically and in order of increasing seniority.

                The authors declare no conflict of interest.

                Author information
                https://orcid.org/0000-0002-1196-6826
                Article
                msystems00697-24 msystems.00697-24
                10.1128/msystems.00697-24
                11334518
                39057922
                3caa86d0-ca2b-4bd1-8b23-951b71f6afd2
                Copyright © 2024 Xu et al.

                This is an open-access article distributed under the terms of the Creative Commons Attribution 4.0 International license.

                History
                : 21 May 2024
                : 03 July 2024
                Page count
                supplementary-material: 1, authors: 4, Figures: 7, Equations: 7, References: 56, Pages: 20, Words: 10599
                Funding
                Funded by: National Key Research and Development Program of China;
                Award ID: 2021YFC2100600
                Award Recipient :
                Funded by: National Natural Science Foundation of China;
                Award ID: 32330057
                Award Recipient :
                Funded by: Medical and Health Science and Technology Plan of Zhejiang Province;
                Award ID: 2022KY1402,2023KY1338
                Award Recipient :
                Categories
                Research Article
                computational-biology, Computational Biology
                Custom metadata
                August 2024

                metabolic dynamics,neural network,time-series modeling,irregular observation,bidirectional time-series state transfer network

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