Literature DB >> 18216396

Median absolute deviation to improve hit selection for genome-scale RNAi screens.

Namjin Chung1, Xiaohua Douglas Zhang, Anthony Kreamer, Louis Locco, Pei-Fen Kuan, Steven Bartz, Peter S Linsley, Marc Ferrer, Berta Strulovici.   

Abstract

High-throughput screening (HTS) of large-scale RNA interference (RNAi) libraries has become an increasingly popular method of functional genomics in recent years. Cell-based assays used for RNAi screening often produce small dynamic ranges and significant variability because of the combination of cellular heterogeneity, transfection efficiency, and the intrinsic nature of the genes being targeted. These properties make reliable hit selection in the RNAi screen a difficult task. The use of robust methods based on median and median absolute deviation (MAD) has been suggested to improve hit selection in such cases, but mean and standard deviation (SD)-based methods are still predominantly used in many RNAi HTS. In an experimental approach to compare these 2 methods, a genome-scale small interfering RNA (siRNA) screen was performed, in which the identification of novel targets increasing the therapeutic index of the chemotherapeutic agent mitomycin C (MMC) was sought. MAD values were resistant to the presence of outliers, and the hits selected by the MAD-based method included all the hits that would be selected by SD-based method as well as a significant number of additional hits. When retested in triplicate, a similar percentage of these siRNAs were shown to genuinely sensitize cells to MMC compared with the hits shared between SD- and MAD-based methods. Confirmed hits were enriched with the genes involved in the DNA damage response and cell cycle regulation, validating the overall hit selection strategy. Finally, computer simulations showed the superiority and generality of the MAD-based method in various RNAi HTS data models. In conclusion, the authors demonstrate that the MAD-based hit selection method rescued physiologically relevant false negatives that would have been missed in the SD-based method, and they believe it to be the desirable 1st-choice hit selection method for RNAi screen results.

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Year:  2008        PMID: 18216396     DOI: 10.1177/1087057107312035

Source DB:  PubMed          Journal:  J Biomol Screen        ISSN: 1087-0571


  84 in total

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6.  Factors affecting reproducibility between genome-scale siRNA-based screens.

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7.  Functional genomics identifies therapeutic targets for MYC-driven cancer.

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9.  Defining a standard and weighted mathematical index for maturation of dendritic cells.

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10.  Large-scale screening identifies a novel microRNA, miR-15a-3p, which induces apoptosis in human cancer cell lines.

Authors:  Aliaksandr Druz; Yu-Chi Chen; Rajarshi Guha; Michael Betenbaugh; Scott E Martin; Joseph Shiloach
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