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Performance Comparisons of AlexNet and GoogLeNet in Cell Growth Inhibition IC50 Prediction

Authors
Lee, YeeunNam, Seungyoon
Issue Date
Jul-2021
Publisher
MDPI
Keywords
Deep learning; Drug responsiveness; Machine learning; Pharmacogenomics
Citation
International Journal of Molecular Sciences, v.22, no.14, pp.7721 - 7721
Journal Title
International Journal of Molecular Sciences
Volume
22
Number
14
Start Page
7721
End Page
7721
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/81797
DOI
10.3390/ijms22147721
ISSN
1661-6596
Abstract
Drug responses in cancer are diverse due to heterogenous genomic profiles. Drug responsiveness prediction is important in clinical response to specific cancer treatments. Recently, multi-class drug responsiveness models based on deep learning (DL) models using molecular fingerprints and mutation statuses have emerged. However, for multi‐class models for drug responsiveness pre-diction, comparisons between convolution neural network (CNN) models (e.g., AlexNet and Goog‐ LeNet) have not been performed. Therefore, in this study, we compared the two CNN models, GoogLeNet and AlexNet, along with the least absolute shrinkage and selection operator (LASSO) model as a baseline model. We constructed the models by taking drug molecular fingerprints of drugs and cell line mutation statuses, as input, to predict high‐, intermediate‐, and low‐class for half‐maximal inhibitory concentration (IC50) values of the drugs in the cancer cell lines. Addition-ally, we compared the models in breast cancer patients as well as in an independent gastric cancer cell line drug responsiveness data. We measured the model performance based on the area under receiver operating characteristic (ROC) curves (AUROC) value. In this study, we compared CNN models for multi‐class drug responsiveness prediction. The AlexNet and GoogLeNet showed better performances in comparison to LASSO. Thus, DL models will be useful tools for precision oncology in terms of drug responsiveness prediction. © 2021 by the authors. Lcensee MDPI, Basel, Switzerland.
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