Aryaman Juvid, Johnston Iain G, Jones Nick S
Department of Mathematics, Imperial College London, London, U.K.
School of Biosciences, University of Birmingham, Birmingham, U.K.
Biochem J. 2017 Nov 24;474(23):4019-4034. doi: 10.1042/BCJ20170651.
Mitochondrial dysfunction is involved in a wide array of devastating diseases, but the heterogeneity and complexity of the symptoms of these diseases challenges theoretical understanding of their causation. With the explosion of omics data, we have the unprecedented opportunity to gain deep understanding of the biochemical mechanisms of mitochondrial dysfunction. This goal raises the outstanding need to make these complex datasets interpretable. Quantitative modelling allows us to translate such datasets into intuition and suggest rational biomedical treatments. Taking an interdisciplinary approach, we use a recently published large-scale dataset and develop a descriptive and predictive mathematical model of progressive increase in mutant load of the MELAS 3243A>G mtDNA mutation. The experimentally observed behaviour is surprisingly rich, but we find that our simple, biophysically motivated model intuitively accounts for this heterogeneity and yields a wealth of biological predictions. Our findings suggest that cells attempt to maintain wild-type mtDNA density through cell volume reduction, and thus power demand reduction, until a minimum cell volume is reached. Thereafter, cells toggle from demand reduction to supply increase, up-regulating energy production pathways. Our analysis provides further evidence for the physiological significance of mtDNA density and emphasizes the need for performing single-cell volume measurements jointly with mtDNA quantification. We propose novel experiments to verify the hypotheses made here to further develop our understanding of the threshold effect and connect with rational choices for mtDNA disease therapies.
线粒体功能障碍涉及一系列毁灭性疾病,但这些疾病症状的异质性和复杂性对其病因的理论理解提出了挑战。随着组学数据的爆炸式增长,我们有前所未有的机会深入了解线粒体功能障碍的生化机制。这一目标迫切需要使这些复杂的数据集具有可解释性。定量建模使我们能够将此类数据集转化为直观认识,并提出合理的生物医学治疗方法。我们采用跨学科方法,使用最近发表的一个大规模数据集,开发了一个关于MELAS 3243A>G线粒体DNA突变的突变负荷渐进增加的描述性和预测性数学模型。实验观察到的行为惊人地丰富,但我们发现,我们这个简单的、基于生物物理原理的模型直观地解释了这种异质性,并产生了大量生物学预测。我们的研究结果表明,细胞试图通过减小细胞体积,从而降低能量需求,来维持野生型线粒体DNA密度,直到达到最小细胞体积。此后,细胞从需求减少转变为供应增加,上调能量产生途径。我们的分析为线粒体DNA密度的生理意义提供了进一步证据,并强调了将单细胞体积测量与线粒体DNA定量联合进行的必要性。我们提出了新的实验来验证这里提出的假设,以进一步加深我们对阈值效应的理解,并与线粒体DNA疾病治疗的合理选择相联系。