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김동혁

Kim, Donghyuk
Systems Biology and Machine Learning Lab.
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Computational Approaches to Study Metabolism for C1 Bioconversion

Author(s)
Kim, Donghyuk
Issued Date
2018-10-26
URI
https://scholarworks.unist.ac.kr/handle/201301/80627
Citation
한국화학공학회 2018년도 가을 총회 및 학술대회(국제 심포지엄)
Abstract
Fossil fuels have the finite reservation, which necessitated developing renewable energy sources. Bioenergy became one of powerful renewable energy sources with recent advances in synthetic biology encompassing systems biology and metabolic engineering. This enable us to engineer and/or create tailor made microorganisms to produce alternative biofuels for the future bio-era. The efficient transformation of biomass to bioenergy requires maximum performance of cellular metabolism to be designed and engineered. Toward this end, investigation of bacterial metabolism with systems biology became one of powerful tools. Here, genome-scale metabolic models for industrially relevant methylotroph and Clostridium will be covered on how these models can be used for explanatory and predictive capabilities in understanding and designing bacterial metabolism. In addition, machine-learning based investigation of uncharacterized transcription factors will be discussed. E. coli, the most-well studied microorganism, still has 20% of its transcription factors unknown of their functions. This gets worse for less studied or newly isolated bacteria, which include industrially relevant bioconversion bacteria. Combination of machine learning to identify transcription factor candidates from the genome annotation and experimental confirmation of those candidates with ChIP-exo and RNA-seq successfully proved in expanding the current knowledge of transcriptional regulatory network of E. coli including transcription factors for carbon metabolism and stress response. This integrated workflow can be applied to other bioconversion bacteria.
Publisher
한국화학공학회

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