Integrative subcellular proteomic analysis allows accurate prediction of human disease-causing genes

Proteomic profiling on subcellular fractions provides invaluable information regarding both protein abundance and subcellular localization. When integrated with other data sets, it can greatly enhance our ability to predict gene function genome-wide. In this study, we performed a comprehensive prote...

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Veröffentlicht in:Genome research 2016-05, Vol.26 (5), p.660-669
Hauptverfasser: Zhao, Li, Chen, Yiyun, Bajaj, Amol Onkar, Eblimit, Aiden, Xu, Mingchu, Soens, Zachry T, Wang, Feng, Ge, Zhongqi, Jung, Sung Yun, He, Feng, Li, Yumei, Wensel, Theodore G, Qin, Jun, Chen, Rui
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Sprache:eng
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Zusammenfassung:Proteomic profiling on subcellular fractions provides invaluable information regarding both protein abundance and subcellular localization. When integrated with other data sets, it can greatly enhance our ability to predict gene function genome-wide. In this study, we performed a comprehensive proteomic analysis on the light-sensing compartment of photoreceptors called the outer segment (OS). By comparing with the protein profile obtained from the retina tissue depleted of OS, an enrichment score for each protein is calculated to quantify protein subcellular localization, and 84% accuracy is achieved compared with experimental data. By integrating the protein OS enrichment score, the protein abundance, and the retina transcriptome, the probability of a gene playing an essential function in photoreceptor cells is derived with high specificity and sensitivity. As a result, a list of genes that will likely result in human retinal disease when mutated was identified and validated by previous literature and/or animal model studies. Therefore, this new methodology demonstrates the synergy of combining subcellular fractionation proteomics with other omics data sets and is generally applicable to other tissues and diseases.
ISSN:1088-9051
1549-5469
DOI:10.1101/gr.198911.115