Utilizing random Forest QSAR models with optimized parameters for target identification and its application to target-fishing server

Título

Utilizing random Forest QSAR models with optimized parameters for target identification and its application to target-fishing server

Autor

Kyoungyeul Lee, Min-Ho Lee, Dong-Sup Kim

Descripción

Abstract Background The identification of target molecules is important for understanding the mechanism of “target deconvolution” in phenotypic screening and “polypharmacology” of drugs. Because conventional methods of identifying targets require time and cost, in-silico target identification has been considered an alternative solution. One of the well-known in-silico methods of identifying targets involves structure activity relationships (SARs). SARs have advantages such as low computational cost and high feasibility; however, the data dependency in the SAR approach causes imbalance of active data and ambiguity of inactive data throughout targets. Results We developed a ligand-based virtual screening model comprising 1121 target SAR models built using a random forest algorithm. The performance of each target model was tested by employing the ROC curve and the mean score using an internal five-fold cross validation. Moreover, recall rates for top-k targets were calculated to assess the performance of target ranking. A benchmark model using an optimized sampling method and parameters was examined via external validation set. The result shows recall rates of 67.6% and 73.9% for top-11 (1% of the total targets) and top-33, respectively. We provide a website for users to search the top-k targets for query ligands available publicly at http://rfqsar.kaist.ac.kr . Conclusions The target models that we built can be used for both predicting the activity of ligands toward each target and ranking candidate targets for a query ligand using a unified scoring scheme. The scores are additionally fitted to the probability so that users can estimate how likely a ligand–target interaction is active. The user interface of our web site is user friendly and intuitive, offering useful information and cross references.

Fecha

2017

Materia

virtual screening, target identification, SAR modeling, random forest, Extended connectivity fingerprint, Target fishing server

Identificador

DOI: 10.1186/s12859-017-1960-x

Fuente

BMC Bioinformatics

Editor

BMC

Cobertura

Biology (General), Computer applications to medicine. Medical informatics

Idioma

EN

Archivos

https://socictopen.socict.org/files/to_import/pdfs/article 1844.pdf

Colección

Citación

Kyoungyeul Lee, Min-Ho Lee, Dong-Sup Kim, “Utilizing random Forest QSAR models with optimized parameters for target identification and its application to target-fishing server,” SOCICT Open, consulta 21 de abril de 2026, https://socictopen.socict.org/items/show/1794.

Formatos de Salida

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