6 research outputs found
High-throughput single-cell analysis reveals progressive mitochondrial DNA mosaicism throughout life
Cell lineage-specific mitochondrial resilience during mammalian organogenesis
Mitochondrial activity differs markedly between organs, but it is not known how and when this arises. Here we show that cell lineage-specific expression profiles involving essential mitochondrial genes emerge at an early stage in mouse development, including tissue-specific isoforms present before organ formation. However, the nuclear transcriptional signatures were not independent of organelle function. Genetically disrupting intra-mitochondrial protein synthesis with two different mtDNA mutations induced cell lineage-specific compensatory responses, including molecular pathways not previously implicated in organellar maintenance. We saw downregulation of genes whose expression is known to exacerbate the effects of exogenous mitochondrial toxins, indicating a transcriptional adaptation to mitochondrial dysfunction during embryonic development. The compensatory pathways were both tissue and mutation specific and under the control of transcription factors which promote organelle resilience. These are likely to contribute to the tissue specificity which characterizes human mitochondrial diseases and are potential targets for organ-directed treatments
Confidence in protein interaction networks
Protein interaction networks are a commonly used tool in bioinformatics, e.g. for the purposes of gene function prediction or drug target identification. They are built from often heterogeneous and error-prone protein-protein interaction data. In this thesis we study the effects of data uncertainty on the structure of protein interaction networks and on downstream network analysis.
Some databases provide confidence scores for protein-protein interactions, and networks are built from the data after a minimum score cut-off, or threshold, is applied. We study the effects of threshold choice on network structure. We argue that robust, biologically-relevant network analysis results should be replicated across networks obtained at different thresholds, and develop a methodology for quantifying this robustness in the context of node metrics. Our results indicate that the same node metrics are robust across a range of protein interaction networks, but are not necessarily robust in synthetic networks.
We further investigate uncertain networks as a possible approach to incorporating confidence scores explicitly into network analysis. Uncertain networks are a way of conceptualising the difference between the "true" network of biologically-relevant protein-protein interactions and the observed scored data. We show that any inference on the structure of the "true" network is strongly influenced by assumptions made about the dependence - or lack thereof - between edges in the scored network.
Finally, we focus on networks constructed from gene co-expression data. Gene co-expression can be measured in a number of different ways. Moreover, when networks are constructed, different thresholds can be applied to the co-expression values. It is not always clear which network construction method should be preferred. We develop a software package, COGENT, designed to aid network construction choice without the need for external validation data.</p
COGENT: evaluating the consistency of gene co-expression networks
Gene co-expression networks can be constructed in multiple different ways, both in the use of different measures of co-expression, and in the thresholds applied to the calculated co-expression values, from any given dataset. It is often not clear which co-expression network construction method should be preferred. COGENT provides a set of tools designed to aid the choice of network construction method without the need for any external validation data