Department of Chemistry and Research Center for Chemical Biology and Omics Analysis, College of Science, Southern University of Science and Technology, Shenzhen, Guangdong, China.
State Key Laboratory of Quality Research in Chinese Medicine, Institute of Chinese Medical Sciences, University of Macau, Zhuhai, Macau SAR, China.
Nat Commun. 2023 Nov 24;14(1):7697. doi: 10.1038/s41467-023-43526-2.
Cellular activities are carried out vastly by protein complexes but large repertoire of protein complexes remains functionally uncharacterized which necessitate new strategies to delineate their roles in various cellular processes and diseases. Thermal proximity co-aggregation (TPCA) is readily deployable to characterize protein complex dynamics in situ and at scale. We develop a version termed Slim-TPCA that uses fewer temperatures increasing throughputs by over 3X, with new scoring metrics and statistical evaluation that result in minimal compromise in coverage and detect more relevant complexes. Less samples are needed, batch effects are minimized while statistical evaluation cost is reduced by two orders of magnitude. We applied Slim-TPCA to profile K562 cells under different duration of glucose deprivation. More protein complexes are found dissociated, in accordance with the expected downregulation of most cellular activities, that include 55S ribosome and respiratory complexes in mitochondria revealing the utility of TPCA to study protein complexes in organelles. Protein complexes in protein transport and degradation are found increasingly assembled unveiling their involvement in metabolic reprogramming during glucose deprivation. In summary, Slim-TPCA is an efficient strategy for characterization of protein complexes at scale across cellular conditions, and is available as Python package at https://pypi.org/project/Slim-TPCA/ .
细胞活动主要由蛋白质复合物来执行,但大量的蛋白质复合物的功能仍未被阐明,这就需要新的策略来描绘它们在各种细胞过程和疾病中的作用。热接近共聚集(TPCA)是一种易于应用的方法,可以原位和大规模地描述蛋白质复合物的动态变化。我们开发了一个名为 Slim-TPCA 的版本,它使用更少的温度,将通量提高了 3 倍以上,同时使用新的评分指标和统计评估方法,在覆盖范围上几乎没有折衷,并且可以检测到更多相关的复合物。所需的样本更少,批次效应最小化,同时统计评估成本降低了两个数量级。我们将 Slim-TPCA 应用于不同葡萄糖剥夺时间的 K562 细胞的分析。更多的蛋白质复合物被发现解离,这与大多数细胞活动的预期下调是一致的,其中包括核糖体 55S 和线粒体中的呼吸复合物,这表明 TPCA 可用于研究细胞器中的蛋白质复合物。在葡萄糖剥夺期间,参与代谢重编程的蛋白质转运和降解复合物的组装逐渐增加。总之,Slim-TPCA 是一种在细胞条件下大规模描述蛋白质复合物的有效策略,并且可以在 https://pypi.org/project/Slim-TPCA/ 上作为 Python 包获得。