基因组
计算生物学
代谢网络
神经科学
脑癌
胶质瘤
比例(比率)
疾病
计算机科学
生物
癌症
医学
基因
遗传学
病理
物理
量子力学
作者
Ali Kishk,Maria Pires Pacheco,Tony Heurtaux,Lasse Sinkkonen,Jun Pang,Sabrina Fritah,Simone P. Niclou,Thomas Sauter
出处
期刊:Cells
[MDPI AG]
日期:2022-08-10
卷期号:11 (16): 2486-2486
被引量:5
标识
DOI:10.3390/cells11162486
摘要
Brain disorders represent 32% of the global disease burden, with 169 million Europeans affected. Constraint-based metabolic modelling and other approaches have been applied to predict new treatments for these and other diseases. Many recent studies focused on enhancing, among others, drug predictions by generating generic metabolic models of brain cells and on the contextualisation of the genome-scale metabolic models with expression data. Experimental flux rates were primarily used to constrain or validate the model inputs. Bi-cellular models were reconstructed to study the interaction between different cell types. This review highlights the evolution of genome-scale models for neurodegenerative diseases and glioma. We discuss the advantages and drawbacks of each approach and propose improvements, such as building bi-cellular models, tailoring the biomass formulations for glioma and refinement of the cerebrospinal fluid composition.
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