TY - JOUR
T1 - HC StratoMineR: A Web-Based Tool for the Rapid Analysis of High-Content Datasets
T2 - A Web-Based Tool for the Rapid Analysis of High-Content Datasets
AU - Omta, Wienand A.
AU - Van Heesbeen, Roy G.
AU - Pagliero, Romina J.
AU - Van Der Velden, Lieke M.
AU - Lelieveld, Daphne
AU - Nellen, Mehdi
AU - Kramer, Maik
AU - Yeong, Marley
AU - Saeidi, Amir M.
AU - Medema, Rene H.
AU - Spruit, Marco
AU - Brinkkemper, Sjaak
AU - Klumperman, Judith
AU - Egan, David A.
N1 - Publisher Copyright:
© 2016, Mary Ann Liebert, Inc.
PY - 2016/10/1
Y1 - 2016/10/1
N2 - High-content screening (HCS) can generate large multidimensional datasets and when aligned with the appropriate data mining tools, it can yield valuable insights into the mechanism of action of bioactive molecules. However, easy-to-use data mining tools are not widely available, with the result that these datasets are frequently underutilized. Here, we present HC StratoMineR, a web-based tool for high-content data analysis. It is a decision-supportive platform that guides even non-expert users through a high-content data analysis workflow. HC StratoMineR is built by using My Structured Query Language for storage and querying, PHP: Hypertext Preprocessor as the main programming language, and jQuery for additional user interface functionality. R is used for statistical calculations, logic and data visualizations. Furthermore, C++ and graphical processor unit power is diffusely embedded in R by using the rcpp and rpud libraries for operations that are computationally highly intensive. We show that we can use HC StratoMineR for the analysis of multivariate data from a high-content siRNA knock-down screen and a small-molecule screen. It can be used to rapidly filter out undesirable data; to select relevant data; and to perform quality control, data reduction, data exploration, morphological hit picking, and data clustering. Our results demonstrate that HC StratoMineR can be used to functionally categorize HCS hits and, thus, provide valuable information for hit prioritization.
AB - High-content screening (HCS) can generate large multidimensional datasets and when aligned with the appropriate data mining tools, it can yield valuable insights into the mechanism of action of bioactive molecules. However, easy-to-use data mining tools are not widely available, with the result that these datasets are frequently underutilized. Here, we present HC StratoMineR, a web-based tool for high-content data analysis. It is a decision-supportive platform that guides even non-expert users through a high-content data analysis workflow. HC StratoMineR is built by using My Structured Query Language for storage and querying, PHP: Hypertext Preprocessor as the main programming language, and jQuery for additional user interface functionality. R is used for statistical calculations, logic and data visualizations. Furthermore, C++ and graphical processor unit power is diffusely embedded in R by using the rcpp and rpud libraries for operations that are computationally highly intensive. We show that we can use HC StratoMineR for the analysis of multivariate data from a high-content siRNA knock-down screen and a small-molecule screen. It can be used to rapidly filter out undesirable data; to select relevant data; and to perform quality control, data reduction, data exploration, morphological hit picking, and data clustering. Our results demonstrate that HC StratoMineR can be used to functionally categorize HCS hits and, thus, provide valuable information for hit prioritization.
KW - Datamining
KW - HCS
KW - multiparametric
KW - workflow
UR - https://www.mendeley.com/catalogue/6da24121-0a9d-3959-a47f-1764bf3a542d/
U2 - 10.1089/adt.2016.726
DO - 10.1089/adt.2016.726
M3 - Article
C2 - 27636821
SN - 1557-8127
VL - 14
SP - 439
EP - 452
JO - Assay and Drug Development Technologies
JF - Assay and Drug Development Technologies
IS - 8
ER -