Bilateral BBSRC-NSF/BIO Collaborative Research: ABI Development: A Critical Assessment of Protein Function Annotation
BBSRC-NSF/BIO 双边合作研究:ABI 开发:蛋白质功能注释的批判性评估
基本信息
- 批准号:1854685
- 负责人:
- 金额:$ 8.26万
- 依托单位:
- 依托单位国家:美国
- 项目类别:Standard Grant
- 财政年份:2018
- 资助国家:美国
- 起止时间:2018-08-27 至 2019-08-31
- 项目状态:已结题
- 来源:
- 关键词:
项目摘要
Biologists are deluged with sequence data yet have derived comparatively little biological information from it. The accurate annotation of protein function is key to understanding life, but experimentally determining what each protein does is costly and difficult, and cannot scale up to accommodate the vast amount of sequence data already available. Therefore discovering protein protein function by computational, rather than experimental means, is of primary importance. Genomic sequence data are available from thousands of species, and those are coupled with massive high-throughput experimental data. Together, these data have created new opportunities as well as challenges for computational function prediction. As a result, many computational annotation methods have been developed by research groups worldwide, but their accuracy and applicability need to be improved upon. The mission of the Automated Function Prediction Special Interest Group (AFP-SIG) is to bring together computational biologists, experimental biologists and biocurators who are dealing with the important problem of predicting protein function, to share ideas, and create collaborations. To improve computational function prediction methods, the Critical Assessment of protein Function Annotation algorithms (CAFA) was established as an ongoing experiment. CAFA was designed to provide a large-scale assessment of computational methods dedicated to predicting protein function. By challenging dozens of research groups worldwide to develop and provide their best software for function prediction, the researchers involved in the AFP-SIG will improve the ability of biologists to understand life at the molecular level. The AFP-SIG researchers will also generate experimental data from fruit-flies, fungi and bacteria to be used as benchmarks to test the software participating in CAFA, and a deeper understanding of these model organisms. It is now possible to collect data that comprehensively profile many different states of complex biological systems. Using these data it should be possible to understand and explain the underlying systems, but significant challenges remain. One of the primary challenges is that, as researchers collect more data from many different organisms in many different systems, they discover more and different genes. Assigning functions to these newly discovered genes represents a key step towards interpretation of high-throughput data. This leads to a critical need to assess the quality of the function prediction methods that researchers have developed in recent years. The mission of the Automated Function Prediction Special Interest Group (AFP-SIG), founded in 2005, is to bring together bioinformaticians and biologists who are addressing this key challenge of gene function prediction. In addition to sharing ideas and creating collaboration, AFP-SIG has created CAFA: the Critical Assessment of (protein) Function Annotation. CAFA is a community-driven challenge to assess the performance of protein function prediction software, and it has been carried out twice since 2010. The investigators will provide the following outcomes: (1) robust open-source software to be used in function prediction and assessment of function prediction methods, incorporated into the high-profile annotation pipelines of UniProt-GOA; (2) expansion of the AFP community by engaging bioinformaticians, biocurators and experimentalists, thereby improving the quality and relevance of function prediction methods; (3) large-scale experimental screens in Drosophila, Candida and Pseudomonas for novel associations of targeted functional terms with genes; (4) an expanded CAFA event, incorporating both the curated annotations from the literature and our own experimental screens, in the last two years of the project. The progress of the AFP-SIG and CAFA will be available from http://BioFunctionPrediction.org
Biologists are deluged with sequence data yet have derived comparatively little biological information from it. The accurate annotation of protein function is key to understanding life, but experimentally determining what each protein does is costly and difficult, and cannot scale up to accommodate the vast amount of sequence data already available. Therefore discovering protein protein function by computational, rather than experimental means, is of primary importance. Genomic sequence data are available from thousands of species, and those are coupled with massive high-throughput experimental data. Together, these data have created new opportunities as well as challenges for computational function prediction. As a result, many computational annotation methods have been developed by research groups worldwide, but their accuracy and applicability need to be improved upon. The mission of the Automated Function Prediction Special Interest Group (AFP-SIG) is to bring together computational biologists, experimental biologists and biocurators who are dealing with the important problem of predicting protein function, to share ideas, and create collaborations. To improve computational function prediction methods, the Critical Assessment of protein Function Annotation algorithms (CAFA) was established as an ongoing experiment. CAFA was designed to provide a large-scale assessment of computational methods dedicated to predicting protein function. By challenging dozens of research groups worldwide to develop and provide their best software for function prediction, the researchers involved in the AFP-SIG will improve the ability of biologists to understand life at the molecular level. The AFP-SIG researchers will also generate experimental data from fruit-flies, fungi and bacteria to be used as benchmarks to test the software participating in CAFA, and a deeper understanding of these model organisms. It is now possible to collect data that comprehensively profile many different states of complex biological systems. Using these data it should be possible to understand and explain the underlying systems, but significant challenges remain. One of the primary challenges is that, as researchers collect more data from many different organisms in many different systems, they discover more and different genes. Assigning functions to these newly discovered genes represents a key step towards interpretation of high-throughput data. This leads to a critical need to assess the quality of the function prediction methods that researchers have developed in recent years. The mission of the Automated Function Prediction Special Interest Group (AFP-SIG), founded in 2005, is to bring together bioinformaticians and biologists who are addressing this key challenge of gene function prediction. In addition to sharing ideas and creating collaboration, AFP-SIG has created CAFA: the Critical Assessment of (protein) Function Annotation. CAFA is a community-driven challenge to assess the performance of protein function prediction software, and it has been carried out twice since 2010. The investigators will provide the following outcomes: (1) robust open-source software to be used in function prediction and assessment of function prediction methods, incorporated into the high-profile annotation pipelines of UniProt-GOA; (2) expansion of the AFP community by engaging bioinformaticians, biocurators and experimentalists, thereby improving the quality and relevance of function prediction methods; (3) large-scale experimental screens in Drosophila, Candida and Pseudomonas for novel associations of targeted functional terms with genes; (4) an expanded CAFA event, incorporating both the curated annotations from the literature and our own experimental screens, in the last two years of the project. The progress of the AFP-SIG and CAFA will be available from http://BioFunctionPrediction.org
项目成果
期刊论文数量(0)
专著数量(0)
科研奖励数量(0)
会议论文数量(0)
专利数量(0)
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Predrag Radivojac其他文献
Assessing the predicted impact of single amino acid substitutions in MAPK proteins for CAGI6 challenges
- DOI:
10.1007/s00439-024-02724-8 - 发表时间:
2025-02-20 - 期刊:
- 影响因子:3.600
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Paola Turina;Maria Petrosino;Carlos A. Enriquez Sandoval;Leonore Novak;Alessandra Pasquo;Emil Alexov;Muttaqi Ahmad Alladin;David B. Ascher;Giulia Babbi;Constantina Bakolitsa;Rita Casadio;Jianlin Cheng;Piero Fariselli;Lukas Folkman;Akash Kamandula;Panagiotis Katsonis;Minghui Li;Dong Li;Olivier Lichtarge;Sajid Mahmud;Pier Luigi Martelli;Debnath Pal;Shailesh Kumar Panday;Douglas E. V. Pires;Stephanie Portelli;Fabrizio Pucci;Carlos H. M. Rodrigues;Marianne Rooman;Castrense Savojardo;Martin Schwersensky;Yang Shen;Alexey V. Strokach;Yuanfei Sun;Junwoo Woo;Predrag Radivojac;Steven E. Brenner;Roberta Chiaraluce;Valerio Consalvi;Emidio Capriotti - 通讯作者:
Emidio Capriotti
Calibration of additional computational tools expands ClinGen recommendation options for variant classification with PP3/BP4 criteria
对其他计算工具的校准扩展了ClinGen针对具有PP3/BP4标准的变异分类的推荐选项
- DOI:
10.1016/j.gim.2025.101402 - 发表时间:
2025-06-01 - 期刊:
- 影响因子:6.200
- 作者:
Timothy Bergquist;Sarah L. Stenton;Emily A.W. Nadeau;Alicia B. Byrne;Marc S. Greenblatt;Steven M. Harrison;Sean V. Tavtigian;Anne O'Donnell-Luria;Leslie G. Biesecker;Predrag Radivojac;Steven E. Brenner;Vikas Pejaver;Ahmad A. Tayoun;Anne O’Donnell-Luria;Garry R. Cutting;Heidi L. Rehm;Izabela Karbassi;Jessica Mester;Jonathan S. Berg;Leslie G. Biesecker;Tina Pesaran - 通讯作者:
Tina Pesaran
Assessing the predicted impact of single amino acid substitutions in calmodulin for CAGI6 challenges
- DOI:
10.1007/s00439-024-02720-y - 发表时间:
2024-12-23 - 期刊:
- 影响因子:3.600
- 作者:
Paola Turina;Giuditta Dal Cortivo;Carlos A. Enriquez Sandoval;Emil Alexov;David B. Ascher;Giulia Babbi;Constantina Bakolitsa;Rita Casadio;Piero Fariselli;Lukas Folkman;Akash Kamandula;Panagiotis Katsonis;Dong Li;Olivier Lichtarge;Pier Luigi Martelli;Shailesh Kumar Panday;Douglas E. V. Pires;Stephanie Portelli;Fabrizio Pucci;Carlos H. M. Rodrigues;Marianne Rooman;Castrense Savojardo;Martin Schwersensky;Yang Shen;Alexey V. Strokach;Yuanfei Sun;Junwoo Woo;Predrag Radivojac;Steven E. Brenner;Daniele Dell’Orco;Emidio Capriotti - 通讯作者:
Emidio Capriotti
Evaluating predictors of kinase activity of STK11 variants identified in primary human non-small cell lung cancers
- DOI:
10.1007/s00439-025-02726-0 - 发表时间:
2025-02-12 - 期刊:
- 影响因子:3.600
- 作者:
Yile Chen;Kyoungyeul Lee;Junwoo Woo;Dong-wook Kim;Changwon Keum;Giulia Babbi;Rita Casadio;Pier Luigi Martelli;Castrense Savojardo;Matteo Manfredi;Yang Shen;Yuanfei Sun;Panagiotis Katsonis;Olivier Lichtarge;Vikas Pejaver;David J. Seward;Akash Kamandula;Constantina Bakolitsa;Steven E. Brenner;Predrag Radivojac;Anne O’Donnell-Luria;Sean D. Mooney;Shantanu Jain - 通讯作者:
Shantanu Jain
Predrag Radivojac的其他文献
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{{ truncateString('Predrag Radivojac', 18)}}的其他基金
Bilateral BBSRC-NSF/BIO Collaborative Research: ABI Development: A Critical Assessment of Protein Function Annotation
BBSRC-NSF/BIO 双边合作研究:ABI 开发:蛋白质功能注释的批判性评估
- 批准号:
1458477 - 财政年份:2015
- 资助金额:
$ 8.26万 - 项目类别:
Standard Grant
CAREER: Bioinformatics of Protein Post-Translational Modifications
职业:蛋白质翻译后修饰的生物信息学
- 批准号:
0644017 - 财政年份:2007
- 资助金额:
$ 8.26万 - 项目类别:
Continuing Grant
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