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DRPO: A Deep Learning Technique for Drug Response Prediction in Oncology Cell Lines

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DRPO: A Deep Learning Technique for Drug Response Prediction in Oncology Cell Lines. / Shahzad, Muhammad; Kadani, Adila Zain Ul Abedin; Tahir, Muhammad Atif et al.
In: Alexandria Engineering Journal, Vol. 105, 31.10.2024, p. 88-97.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Shahzad, M, Kadani, AZUA, Tahir, MA, Malick, RAS & Jiang, R 2024, 'DRPO: A Deep Learning Technique for Drug Response Prediction in Oncology Cell Lines', Alexandria Engineering Journal, vol. 105, pp. 88-97. https://doi.org/10.1016/j.aej.2024.06.052

APA

Shahzad, M., Kadani, A. Z. U. A., Tahir, M. A., Malick, R. A. S., & Jiang, R. (2024). DRPO: A Deep Learning Technique for Drug Response Prediction in Oncology Cell Lines. Alexandria Engineering Journal, 105, 88-97. https://doi.org/10.1016/j.aej.2024.06.052

Vancouver

Shahzad M, Kadani AZUA, Tahir MA, Malick RAS, Jiang R. DRPO: A Deep Learning Technique for Drug Response Prediction in Oncology Cell Lines. Alexandria Engineering Journal. 2024 Oct 31;105:88-97. Epub 2024 Jul 3. doi: 10.1016/j.aej.2024.06.052

Author

Shahzad, Muhammad ; Kadani, Adila Zain Ul Abedin ; Tahir, Muhammad Atif et al. / DRPO : A Deep Learning Technique for Drug Response Prediction in Oncology Cell Lines. In: Alexandria Engineering Journal. 2024 ; Vol. 105. pp. 88-97.

Bibtex

@article{ce19dc22526c43fa82549926e853f5dc,
title = "DRPO: A Deep Learning Technique for Drug Response Prediction in Oncology Cell Lines",
abstract = "With the invention of high-throughput screening technologies, innumerable drug sensitivity data for thousands of cancer cell lines and hundreds of compounds have been produced. Computational analysis of these data has opened a new horizon in the development of novel anti-cancer drugs. Previous deep-learning approaches to predict drug sensitivity showed drawbacks due to the casual integration of genomic features of cell lines and compound chemical features. The challenges addressed include the intricate interplay of diverse molecular features, interpretability of complex deep learning models, and the optimization of drug combinations for synergistic effects. Through the utilization of normalized discounted cumulative gain (NDCG) and root mean squared error (RMSE) as evaluation metrics, the models aim to concurrently assess the ranking quality of recommended drugs and the accuracy of predicted drug responses. The integration of the DRPO model into cancer drug response prediction not only tackles these challenges but also holds promise in facilitating more effective, personalized, and targeted cancer therapies.This paper proposes a new deep learning model, DRPO, for efficient integration of genomic and compound features in predicting the half maximal inhibitory concentrations (IC50). First, matrix factorization is used to map the drug and cell line into latent {\textquoteright}pharmacogenomic{\textquoteright} space with cell line-specific predicted drug responses. Using these drug responses, we next obtained the essential drugs using a Normalized Discounted Cumulative Gain (NDCG) score. Finally, the essential drugs and genomic features are integrated to predict drug sensitivity using a deep model. Experimental results with RMSE 0.39 and NDCG 0.98 scores on Genomics of drug sensitivity in cancer (GDSC1) datasets show that our proposed approach has outperformed the previous approaches, including DeepDSC, CaDRRes, and KMBF. These good results show great potential to use our new model to discover novel anti-cancer drugs for precision medicine.",
author = "Muhammad Shahzad and Kadani, {Adila Zain Ul Abedin} and Tahir, {Muhammad Atif} and Malick, {Rauf Ahmed Shams} and Richard Jiang",
year = "2024",
month = oct,
day = "31",
doi = "10.1016/j.aej.2024.06.052",
language = "English",
volume = "105",
pages = "88--97",
journal = "Alexandria Engineering Journal",
issn = "1110-0168",
publisher = "Alexandria University",

}

RIS

TY - JOUR

T1 - DRPO

T2 - A Deep Learning Technique for Drug Response Prediction in Oncology Cell Lines

AU - Shahzad, Muhammad

AU - Kadani, Adila Zain Ul Abedin

AU - Tahir, Muhammad Atif

AU - Malick, Rauf Ahmed Shams

AU - Jiang, Richard

PY - 2024/10/31

Y1 - 2024/10/31

N2 - With the invention of high-throughput screening technologies, innumerable drug sensitivity data for thousands of cancer cell lines and hundreds of compounds have been produced. Computational analysis of these data has opened a new horizon in the development of novel anti-cancer drugs. Previous deep-learning approaches to predict drug sensitivity showed drawbacks due to the casual integration of genomic features of cell lines and compound chemical features. The challenges addressed include the intricate interplay of diverse molecular features, interpretability of complex deep learning models, and the optimization of drug combinations for synergistic effects. Through the utilization of normalized discounted cumulative gain (NDCG) and root mean squared error (RMSE) as evaluation metrics, the models aim to concurrently assess the ranking quality of recommended drugs and the accuracy of predicted drug responses. The integration of the DRPO model into cancer drug response prediction not only tackles these challenges but also holds promise in facilitating more effective, personalized, and targeted cancer therapies.This paper proposes a new deep learning model, DRPO, for efficient integration of genomic and compound features in predicting the half maximal inhibitory concentrations (IC50). First, matrix factorization is used to map the drug and cell line into latent ’pharmacogenomic’ space with cell line-specific predicted drug responses. Using these drug responses, we next obtained the essential drugs using a Normalized Discounted Cumulative Gain (NDCG) score. Finally, the essential drugs and genomic features are integrated to predict drug sensitivity using a deep model. Experimental results with RMSE 0.39 and NDCG 0.98 scores on Genomics of drug sensitivity in cancer (GDSC1) datasets show that our proposed approach has outperformed the previous approaches, including DeepDSC, CaDRRes, and KMBF. These good results show great potential to use our new model to discover novel anti-cancer drugs for precision medicine.

AB - With the invention of high-throughput screening technologies, innumerable drug sensitivity data for thousands of cancer cell lines and hundreds of compounds have been produced. Computational analysis of these data has opened a new horizon in the development of novel anti-cancer drugs. Previous deep-learning approaches to predict drug sensitivity showed drawbacks due to the casual integration of genomic features of cell lines and compound chemical features. The challenges addressed include the intricate interplay of diverse molecular features, interpretability of complex deep learning models, and the optimization of drug combinations for synergistic effects. Through the utilization of normalized discounted cumulative gain (NDCG) and root mean squared error (RMSE) as evaluation metrics, the models aim to concurrently assess the ranking quality of recommended drugs and the accuracy of predicted drug responses. The integration of the DRPO model into cancer drug response prediction not only tackles these challenges but also holds promise in facilitating more effective, personalized, and targeted cancer therapies.This paper proposes a new deep learning model, DRPO, for efficient integration of genomic and compound features in predicting the half maximal inhibitory concentrations (IC50). First, matrix factorization is used to map the drug and cell line into latent ’pharmacogenomic’ space with cell line-specific predicted drug responses. Using these drug responses, we next obtained the essential drugs using a Normalized Discounted Cumulative Gain (NDCG) score. Finally, the essential drugs and genomic features are integrated to predict drug sensitivity using a deep model. Experimental results with RMSE 0.39 and NDCG 0.98 scores on Genomics of drug sensitivity in cancer (GDSC1) datasets show that our proposed approach has outperformed the previous approaches, including DeepDSC, CaDRRes, and KMBF. These good results show great potential to use our new model to discover novel anti-cancer drugs for precision medicine.

U2 - 10.1016/j.aej.2024.06.052

DO - 10.1016/j.aej.2024.06.052

M3 - Journal article

VL - 105

SP - 88

EP - 97

JO - Alexandria Engineering Journal

JF - Alexandria Engineering Journal

SN - 1110-0168

ER -