Javascript must be enabled to continue!
Predicting substrates of the human breast cancer resistance protein using a support vector machine method
View through CrossRef
Abstract
Background
Human breast cancer resistance protein (BCRP) is an ATP-binding cassette (ABC) efflux transporter that confers multidrug resistance in cancers and also plays an important role in the absorption, distribution and elimination of drugs. Prediction as to if drugs or new molecular entities are BCRP substrates should afford a cost-effective means that can help evaluate the pharmacokinetic properties, efficacy, and safety of these drugs or drug candidates. At present, limited studies have been done to develop in silico prediction models for BCRP substrates.
In this study, we developed support vector machine (SVM) models to predict wild-type BCRP substrates based on a total of 263 known BCRP substrates and non-substrates collected from literature. The final SVM model was integrated to a free web server.
Results
We showed that the final SVM model had an overall prediction accuracy of ~73% for an independent external validation data set of 40 compounds. The prediction accuracy for wild-type BCRP substrates was ~76%, which is higher than that for non-substrates. The free web server (http://bcrp.althotas.com) allows the users to predict whether a query compound is a wild-type BCRP substrate and calculate its physicochemical properties such as molecular weight, logP value, and polarizability.
Conclusions
We have developed an SVM prediction model for wild-type BCRP substrates based on a relatively large number of known wild-type BCRP substrates and non-substrates. This model may prove valuable for screening substrates and non-substrates of BCRP, a clinically important ABC efflux drug transporter.
Springer Science and Business Media LLC
Title: Predicting substrates of the human breast cancer resistance protein using a support vector machine method
Description:
Abstract
Background
Human breast cancer resistance protein (BCRP) is an ATP-binding cassette (ABC) efflux transporter that confers multidrug resistance in cancers and also plays an important role in the absorption, distribution and elimination of drugs.
Prediction as to if drugs or new molecular entities are BCRP substrates should afford a cost-effective means that can help evaluate the pharmacokinetic properties, efficacy, and safety of these drugs or drug candidates.
At present, limited studies have been done to develop in silico prediction models for BCRP substrates.
In this study, we developed support vector machine (SVM) models to predict wild-type BCRP substrates based on a total of 263 known BCRP substrates and non-substrates collected from literature.
The final SVM model was integrated to a free web server.
Results
We showed that the final SVM model had an overall prediction accuracy of ~73% for an independent external validation data set of 40 compounds.
The prediction accuracy for wild-type BCRP substrates was ~76%, which is higher than that for non-substrates.
The free web server (http://bcrp.
althotas.
com) allows the users to predict whether a query compound is a wild-type BCRP substrate and calculate its physicochemical properties such as molecular weight, logP value, and polarizability.
Conclusions
We have developed an SVM prediction model for wild-type BCRP substrates based on a relatively large number of known wild-type BCRP substrates and non-substrates.
This model may prove valuable for screening substrates and non-substrates of BCRP, a clinically important ABC efflux drug transporter.
Related Results
Breast Carcinoma within Fibroadenoma: A Systematic Review
Breast Carcinoma within Fibroadenoma: A Systematic Review
Abstract
Introduction
Fibroadenoma is the most common benign breast lesion; however, it carries a potential risk of malignant transformation. This systematic review provides an ove...
Desmoid-Type Fibromatosis of The Breast: A Case Series
Desmoid-Type Fibromatosis of The Breast: A Case Series
Abstract
IntroductionDesmoid-type fibromatosis (DTF), also called aggressive fibromatosis, is a rare, benign, locally aggressive condition. Mammary DTF originates from fibroblasts ...
Abstract OI-1: OI-1 Decoding breast cancer predisposition genes
Abstract OI-1: OI-1 Decoding breast cancer predisposition genes
Abstract
Women with one or more first-degree female relatives with a history of breast cancer have a two-fold increased risk of developing breast cancer. This risk i...
Spanish Breast Cancer Research Group (GEICAM)
Spanish Breast Cancer Research Group (GEICAM)
This section provides current contact details and a summary of recent or ongoing clinical trials being coordinated by Spanish Breast Cancer Research Group (GEICAM). Clinical trials...
International Breast Cancer Study Group (IBCSG)
International Breast Cancer Study Group (IBCSG)
This section provides current contact details and a summary of recent or ongoing clinical trials being coordinated by International Breast Cancer Study Group (IBCSG). Clinical tria...
The impact of preoperative breast magnetic resonance imaging (MRI) on surgical decision-making in young patients with breast cancer.
The impact of preoperative breast magnetic resonance imaging (MRI) on surgical decision-making in young patients with breast cancer.
Abstract
Abstract #4012
Recent data suggests that breast MRI is a more sensitive diagnostic test for detecting invasive breast cancer than mammography...
Advanced Machine Learning Techniques for Prognostic Analysis in Breast Cancer
Advanced Machine Learning Techniques for Prognostic Analysis in Breast Cancer
Aims
The aim of this research is mainly to use machine learning methods for forecasting significant characteristics related to breast cancer using the data to f...
KNOWLEDGE OF BREAST CANCER, RELATED FACTORS AND RESULTS OF BREAST ULTRASOUND BY BIRADS ON WOMEN FROM 35 YEARS OLD AT THUA THIEN HUE PROVINCE
KNOWLEDGE OF BREAST CANCER, RELATED FACTORS AND RESULTS OF BREAST ULTRASOUND BY BIRADS ON WOMEN FROM 35 YEARS OLD AT THUA THIEN HUE PROVINCE
Introduction: Breast cancer is a malignant disease with the leading high morbidity and mortality rate among women. Having deep knowlege of breast cancer of breast cancer helps scre...

