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A Practical Guide to Integrating Multimodal Machine Learning and Metabolic Modeling

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A Practical Guide to Integrating Multimodal Machine Learning and Metabolic Modeling. / Vijayakumar, Supreeta; Magazzù, Giuseppe; Moon, Pradip et al.
Computational Systems Biology in Medicine and Biotechnology: Methods and Protocols. ed. / Sonia Cortassa; Miguel A. Aon. New York: Humana Press, 2022. p. 87-122 (Methods in Molecular Biology ; Vol. 2399).

Research output: Contribution in Book/Report/Proceedings - With ISBN/ISSNChapter

Harvard

Vijayakumar, S, Magazzù, G, Moon, P, Occhipinti, A & Angione, C 2022, A Practical Guide to Integrating Multimodal Machine Learning and Metabolic Modeling. in S Cortassa & MA Aon (eds), Computational Systems Biology in Medicine and Biotechnology: Methods and Protocols. Methods in Molecular Biology , vol. 2399, Humana Press, New York, pp. 87-122. https://doi.org/10.1007/978-1-0716-1831-8_5

APA

Vijayakumar, S., Magazzù, G., Moon, P., Occhipinti, A., & Angione, C. (2022). A Practical Guide to Integrating Multimodal Machine Learning and Metabolic Modeling. In S. Cortassa, & M. A. Aon (Eds.), Computational Systems Biology in Medicine and Biotechnology: Methods and Protocols (pp. 87-122). (Methods in Molecular Biology ; Vol. 2399). Humana Press. https://doi.org/10.1007/978-1-0716-1831-8_5

Vancouver

Vijayakumar S, Magazzù G, Moon P, Occhipinti A, Angione C. A Practical Guide to Integrating Multimodal Machine Learning and Metabolic Modeling. In Cortassa S, Aon MA, editors, Computational Systems Biology in Medicine and Biotechnology: Methods and Protocols. New York: Humana Press. 2022. p. 87-122. (Methods in Molecular Biology ). doi: 10.1007/978-1-0716-1831-8_5

Author

Vijayakumar, Supreeta ; Magazzù, Giuseppe ; Moon, Pradip et al. / A Practical Guide to Integrating Multimodal Machine Learning and Metabolic Modeling. Computational Systems Biology in Medicine and Biotechnology: Methods and Protocols. editor / Sonia Cortassa ; Miguel A. Aon. New York : Humana Press, 2022. pp. 87-122 (Methods in Molecular Biology ).

Bibtex

@inbook{0df964261c254da19a286a292a276453,
title = "A Practical Guide to Integrating Multimodal Machine Learning and Metabolic Modeling",
abstract = "Complex, distributed, and dynamic sets of clinical biomedical data are collectively referred to as multimodal clinical data. In order to accommodate the volume and heterogeneity of such diverse data types and aid in their interpretation when they are combined with a multi-scale predictive model, machine learning is a useful tool that can be wielded to deconstruct biological complexity and extract relevant outputs. Additionally, genome-scale metabolic models (GSMMs) are one of the main frameworks striving to bridge the gap between genotype and phenotype by incorporating prior biological knowledge into mechanistic models. Consequently, the utilization of GSMMs as a foundation for the integration of multi-omic data originating from different domains is a valuable pursuit towards refining predictions. In this chapter, we show how cancer multi-omic data can be analyzed via multimodal machine learning and metabolic modeling. Firstly, we focus on the merits of adopting an integrative systems biology led approach to biomedical data mining. Following this, we propose how constraint-based metabolic models can provide a stable yet adaptable foundation for the integration of multimodal data with machine learning. Finally, we provide a step-by-step tutorial for the combination of machine learning and GSMMs, which includes: (i) tissue-specific constraint-based modeling; (ii) survival analysis using time-to-event prediction for cancer; and (iii) classification and regression approaches for multimodal machine learning. The code associated with the tutorial can be found at https://github.com/Angione-Lab/Tutorials_Combining_ML_and_GSMM.",
author = "Supreeta Vijayakumar and Giuseppe Magazz{\`u} and Pradip Moon and Annalisa Occhipinti and Claudio Angione",
year = "2022",
month = may,
day = "24",
doi = "10.1007/978-1-0716-1831-8_5",
language = "English",
isbn = "9781071618301",
series = "Methods in Molecular Biology ",
publisher = "Humana Press",
pages = "87--122",
editor = "Cortassa, {Sonia } and Aon, {Miguel A. }",
booktitle = "Computational Systems Biology in Medicine and Biotechnology",

}

RIS

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T1 - A Practical Guide to Integrating Multimodal Machine Learning and Metabolic Modeling

AU - Vijayakumar, Supreeta

AU - Magazzù, Giuseppe

AU - Moon, Pradip

AU - Occhipinti, Annalisa

AU - Angione, Claudio

PY - 2022/5/24

Y1 - 2022/5/24

N2 - Complex, distributed, and dynamic sets of clinical biomedical data are collectively referred to as multimodal clinical data. In order to accommodate the volume and heterogeneity of such diverse data types and aid in their interpretation when they are combined with a multi-scale predictive model, machine learning is a useful tool that can be wielded to deconstruct biological complexity and extract relevant outputs. Additionally, genome-scale metabolic models (GSMMs) are one of the main frameworks striving to bridge the gap between genotype and phenotype by incorporating prior biological knowledge into mechanistic models. Consequently, the utilization of GSMMs as a foundation for the integration of multi-omic data originating from different domains is a valuable pursuit towards refining predictions. In this chapter, we show how cancer multi-omic data can be analyzed via multimodal machine learning and metabolic modeling. Firstly, we focus on the merits of adopting an integrative systems biology led approach to biomedical data mining. Following this, we propose how constraint-based metabolic models can provide a stable yet adaptable foundation for the integration of multimodal data with machine learning. Finally, we provide a step-by-step tutorial for the combination of machine learning and GSMMs, which includes: (i) tissue-specific constraint-based modeling; (ii) survival analysis using time-to-event prediction for cancer; and (iii) classification and regression approaches for multimodal machine learning. The code associated with the tutorial can be found at https://github.com/Angione-Lab/Tutorials_Combining_ML_and_GSMM.

AB - Complex, distributed, and dynamic sets of clinical biomedical data are collectively referred to as multimodal clinical data. In order to accommodate the volume and heterogeneity of such diverse data types and aid in their interpretation when they are combined with a multi-scale predictive model, machine learning is a useful tool that can be wielded to deconstruct biological complexity and extract relevant outputs. Additionally, genome-scale metabolic models (GSMMs) are one of the main frameworks striving to bridge the gap between genotype and phenotype by incorporating prior biological knowledge into mechanistic models. Consequently, the utilization of GSMMs as a foundation for the integration of multi-omic data originating from different domains is a valuable pursuit towards refining predictions. In this chapter, we show how cancer multi-omic data can be analyzed via multimodal machine learning and metabolic modeling. Firstly, we focus on the merits of adopting an integrative systems biology led approach to biomedical data mining. Following this, we propose how constraint-based metabolic models can provide a stable yet adaptable foundation for the integration of multimodal data with machine learning. Finally, we provide a step-by-step tutorial for the combination of machine learning and GSMMs, which includes: (i) tissue-specific constraint-based modeling; (ii) survival analysis using time-to-event prediction for cancer; and (iii) classification and regression approaches for multimodal machine learning. The code associated with the tutorial can be found at https://github.com/Angione-Lab/Tutorials_Combining_ML_and_GSMM.

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M3 - Chapter

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T3 - Methods in Molecular Biology

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EP - 122

BT - Computational Systems Biology in Medicine and Biotechnology

A2 - Cortassa, Sonia

A2 - Aon, Miguel A.

PB - Humana Press

CY - New York

ER -