Department of Biomolecular Chemistry, University of Wisconsin-Madison , Madison, Wisconsin 53706, United States.
ACS Chem Biol. 2011 Feb 18;6(2):146-57. doi: 10.1021/cb100218d. Epub 2010 Nov 1.
Accumulating evidence suggests that reversible protein acetylation may be a major regulatory mechanism that rivals phosphorylation. With the recent cataloging of thousands of acetylation sites on hundreds of proteins comes the challenge of identifying the acetyltransferases and deacetylases that regulate acetylation levels. Sirtuins are a conserved family of NAD(+)-dependent protein deacetylases that are implicated in genome maintenance, metabolism, cell survival, and lifespan. SIRT3 is the dominant protein deacetylase in mitochondria, and emerging evidence suggests that SIRT3 may control major pathways by deacetylation of central metabolic enzymes. Here, to identify potential SIRT3 substrates, we have developed an unbiased screening strategy that involves a novel acetyl-lysine analogue (thiotrifluoroacetyl-lysine), SPOT-peptide libraries, machine learning, and kinetic validation. SPOT peptide libraries based on known and potential mitochondrial acetyl-lysine sites were screened for SIRT3 binding and then analyzed using machine learning to establish binding trends. These trends were then applied to the mitochondrial proteome as a whole to predict binding affinity of all lysine sites within human mitochondria. Machine learning prediction of SIRT3 binding correlated with steady-state kinetic k(cat)/K(m) values for 24 acetyl-lysine peptides that possessed a broad range of predicted binding. Thus, SPOT peptide-binding screens and machine learning prediction provides an accurate and efficient method to evaluate sirtuin substrate specificity from a relatively small learning set. These analyses suggest potential SIRT3 substrates involved in several metabolic pathways such as the urea cycle, ATP synthesis, and fatty acid oxidation.
越来越多的证据表明,可逆蛋白质乙酰化可能是一种与磷酸化相媲美的主要调控机制。随着最近对数以千计的蛋白质上的乙酰化位点进行编目,鉴定调节乙酰化水平的乙酰基转移酶和去乙酰化酶成为了一项挑战。Sirtuins 是一种保守的 NAD(+)-依赖性蛋白质去乙酰化酶家族,与基因组维护、代谢、细胞存活和寿命有关。SIRT3 是线粒体中主要的蛋白质去乙酰化酶,新出现的证据表明,SIRT3 可能通过对中央代谢酶的去乙酰化来控制主要途径。在这里,为了鉴定潜在的 SIRT3 底物,我们开发了一种无偏筛选策略,该策略涉及一种新的乙酰-赖氨酸类似物(三氟乙酰-赖氨酸)、SPOT 肽文库、机器学习和动力学验证。基于已知和潜在的线粒体乙酰-赖氨酸位点的 SPOT 肽文库被筛选用于 SIRT3 结合,然后使用机器学习进行分析以建立结合趋势。然后将这些趋势应用于整个线粒体蛋白质组,以预测人类线粒体中所有赖氨酸位点的结合亲和力。SIRT3 结合的机器学习预测与具有广泛预测结合的 24 个乙酰-赖氨酸肽的稳态动力学 k(cat)/K(m) 值相关。因此,SPOT 肽结合筛选和机器学习预测为从相对较小的学习集中评估 sirtuin 底物特异性提供了一种准确、高效的方法。这些分析表明,涉及几个代谢途径的潜在 SIRT3 底物,如尿素循环、ATP 合成和脂肪酸氧化。