Motivation: Combination therapies have emerged as a powerful treatment modality to overcome drug resistance and improve treatment efficacy. However, the number of possible drug combinations increases very rapidly with the number of individual drugs in consideration, which makes the comprehensive experimental screening infeasible in practice. Machine-learning models offer time- and cost-efficient means to aid this process by prioritizing the most effective drug combinations for further pre-clinical and clinical validation. However, the complexity of the underlying interaction patterns across multiple drug doses and in different cellular contexts poses challenges to the predictive modeling of drug combination effects. Results: We introduce co...
This repository contains the data used in [1] for predicting the responses of drug combinations in c...
In order to improve anti-cancer treatment, we need to better understand why some patients respond to...
Combination treatment has multiple advantages over traditional monotherapy in clinics, thus becoming...
Motivation: Combination therapies have emerged as a powerful treatment modality to overcome drug res...
AB Combination therapies have emerged as a powerful treatment modality to overcome drug resistance a...
Publisher Copyright: © 2021 The Author(s). Published by Oxford University Press.Motivation: Combinat...
We present comboFM, a machine learning framework for predicting the responses of drug combinations i...
Co-administration of drugs is a widely used strategy in cancer treatment to prevent drug resistance ...
In order to improve anti-cancer treatment, we need to better understand why some patients respond to...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/154605/1/cpt1773_am.pdfhttps://deepblu...
This repository contains the data used in [1] for predicting the responses of drug combinations in c...
This repository contains the data used in [1] for predicting the responses of drug combinations in c...
This repository contains the data used in [1] for predicting the responses of drug combinations in c...
This repository contains the data used in [1] for predicting the responses of drug combinations in c...
This repository contains the data used in [1] for predicting the responses of drug combinations in c...
This repository contains the data used in [1] for predicting the responses of drug combinations in c...
In order to improve anti-cancer treatment, we need to better understand why some patients respond to...
Combination treatment has multiple advantages over traditional monotherapy in clinics, thus becoming...
Motivation: Combination therapies have emerged as a powerful treatment modality to overcome drug res...
AB Combination therapies have emerged as a powerful treatment modality to overcome drug resistance a...
Publisher Copyright: © 2021 The Author(s). Published by Oxford University Press.Motivation: Combinat...
We present comboFM, a machine learning framework for predicting the responses of drug combinations i...
Co-administration of drugs is a widely used strategy in cancer treatment to prevent drug resistance ...
In order to improve anti-cancer treatment, we need to better understand why some patients respond to...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/154605/1/cpt1773_am.pdfhttps://deepblu...
This repository contains the data used in [1] for predicting the responses of drug combinations in c...
This repository contains the data used in [1] for predicting the responses of drug combinations in c...
This repository contains the data used in [1] for predicting the responses of drug combinations in c...
This repository contains the data used in [1] for predicting the responses of drug combinations in c...
This repository contains the data used in [1] for predicting the responses of drug combinations in c...
This repository contains the data used in [1] for predicting the responses of drug combinations in c...
In order to improve anti-cancer treatment, we need to better understand why some patients respond to...
Combination treatment has multiple advantages over traditional monotherapy in clinics, thus becoming...