Supreeta Vijayakumar
Supreeta Vijayakumar
Lancaster Environment Centre, Lancaster University
Email verificata su - Home page
Citata da
Citata da
Machine and deep learning meet genome-scale metabolic modeling
G Zampieri, S Vijayakumar, E Yaneske, C Angione
PLoS computational biology 15 (7), e1007084, 2019
A mechanism-aware and multiomic machine-learning pipeline characterizes yeast cell growth
C Culley, S Vijayakumar, G Zampieri, C Angione
Proceedings of the National Academy of Sciences 117 (31), 18869-18879, 2020
Seeing the wood for the trees: a forest of methods for optimisation and omic-network integration in metabolic modelling
S Vijayakumar, M Conway, P Liˇ, C Angione
Briefings in Bioinformatics, 2017
A Hybrid Flux Balance Analysis and Machine Learning Pipeline Elucidates Metabolic Adaptation in Cyanobacteria
S Vijayakumar, P Rahman, C Angione
iScience 23 (12), 101818, 2020
Optimization of multi-omic genome-scale models: Methodologies, hands-on tutorial, and perspectives
S Vijayakumar, M Conway, P Liˇ, C Angione
Metabolic Network Reconstruction and Modeling: Methods and Protocols, 389-408, 2018
Social dynamics modeling of chrono-nutrition
A Di Stefano, M ScatÓ, S Vijayakumar, C Angione, A La Corte, P Li˛
PLoS Computational Biology 15 (1), 1-25, 2019
Protocol for hybrid flux balance, statistical, and machine learning analysis of multi-omic data from the cyanobacterium Synechococcus sp. PCC 7002
S Vijayakumar, C Angione
STAR Protocols 2 (4), 100837, 2021
Role of Cyanobacteria in Biodeterioration of Historical Monuments—A Review
S Vijayakumar
BMR Microbiol 1 (1), 1-13, 2014
Potential applications of cyanobacteria in industrial effluents-a review. J Bioremed Biodeg 3: 1–6
S Vijayakumar
Multi-omic Data Integration Elucidates Synechococcus Adaptation Mechanisms to Fluctuations in Light Intensity and Salinity
S Vijayakumar, C Angione
Bioinformatics and Biomedical Engineering: 5th International Work-Conferenceá…, 2017
A Practical Guide to Integrating Multimodal Machine Learning and Metabolic Modeling
S Vijayakumar, G Magazz¨, P Moon, A Occhipinti, C Angione
Computational Systems Biology in Medicine and Biotechnology 2399, 87-122, 2022
Kinetic modeling identifies targets for engineering improved photosynthetic efficiency in potato (Solanum tuberosum cv. Solara)
S Vijayakumar, Y Wang, G Lehretz, S Taylor, E Carmo‐Silva, S Long
The Plant Journal 117 (2), 561-572, 2024
Combining metabolic modelling with machine learning accurately predicts yeast growth rate
C Culley, S Vijayakumar, G Zampieri, C Angione
11th International Workshop on Bio-Design Automation, 2019
Poly-omic statistical methods describe cyanobacterial metabolic adaptation to fluctuating environments
S Vijayakumar, C Angione
IWBDA 2017: 9th International Workshop on Bio-Design Automation, 2017
Il sistema al momento non pu˛ eseguire l'operazione. Riprova pi¨ tardi.
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