A deep learning model for cell growth inhibition IC50 prediction and its application for gastric cancer patients

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dc.contributor.authorM Joo-
dc.contributor.authorA Park-
dc.contributor.authorK Kim-
dc.contributor.authorW J Son-
dc.contributor.authorH S Lee-
dc.contributor.authorGyu Tae Lim-
dc.contributor.authorJinhyuk Lee-
dc.contributor.authorD H Lee-
dc.contributor.authorJ An-
dc.contributor.authorJ H Kim-
dc.contributor.authorT Ahn-
dc.contributor.authorS Nam-
dc.date.accessioned2020-02-07T16:30:49Z-
dc.date.available2020-02-07T16:30:49Z-
dc.date.issued2019-
dc.identifier.issn1422-0067-
dc.identifier.uri10.3390/ijms20246276ko
dc.identifier.urihttps://oak.kribb.re.kr/handle/201005/19216-
dc.description.abstractHeterogeneity in intratumoral cancers leads to discrepancies in drug responsiveness, due to diverse genomics profiles. Thus, prediction of drug responsiveness is critical in precision medicine. So far, in drug responsiveness prediction, drugs' molecular "fingerprints", along with mutation statuses, have not been considered. Here, we constructed a 1-dimensional convolution neural network model, DeepIC50, to predict three drug responsiveness classes, based on 27,756 features including mutation statuses and various drug molecular fingerprints. As a result, DeepIC50 showed better cell viability IC50 prediction accuracy in pan-cancer cell lines over two independent cancer cell line datasets. Gastric cancer (GC) is not only one of the lethal cancer types in East Asia, but also a heterogeneous cancer type. Currently approved targeted therapies in GC are only trastuzumab and ramucirumab. Responsive GC patients for the drugs are limited, and more drugs should be developed in GC. Due to the importance of GC, we applied DeepIC50 to a real GC patient dataset. Drug responsiveness prediction in the patient dataset by DeepIC50, when compared to the other models, were comparable to responsiveness observed in GC cell lines. DeepIC50 could possibly accurately predict drug responsiveness, to new compounds, in diverse cancer cell lines, in the drug discovery process.-
dc.publisherMDPI-
dc.titleA deep learning model for cell growth inhibition IC50 prediction and its application for gastric cancer patients-
dc.title.alternativeA deep learning model for cell growth inhibition IC50 prediction and its application for gastric cancer patients-
dc.typeArticle-
dc.citation.titleInternational Journal of Molecular Sciences-
dc.citation.number0-
dc.citation.endPage6276-
dc.citation.startPage6276-
dc.citation.volume20-
dc.contributor.affiliatedAuthorGyu Tae Lim-
dc.contributor.affiliatedAuthorJinhyuk Lee-
dc.contributor.alternativeName주민재-
dc.contributor.alternativeName박아론-
dc.contributor.alternativeName김경덕-
dc.contributor.alternativeName손원준-
dc.contributor.alternativeName이효석-
dc.contributor.alternativeName임규태-
dc.contributor.alternativeName이진혁-
dc.contributor.alternativeName이대호-
dc.contributor.alternativeName안정석-
dc.contributor.alternativeName김정호-
dc.contributor.alternativeName안태진-
dc.contributor.alternativeName남승윤-
dc.identifier.bibliographicCitationInternational Journal of Molecular Sciences, vol. 20, pp. 6276-6276-
dc.identifier.doi10.3390/ijms20246276-
dc.subject.keywordartificial intelligence-
dc.subject.keyworddrug discovery-
dc.subject.keyworddrug responsiveness prediction-
dc.subject.localArtificial intelligence-
dc.subject.localartificial intelligence-
dc.subject.localartificial intelliegence-
dc.subject.localArtificial Intelligence-
dc.subject.localDrug discovery-
dc.subject.localdrug discovery-
dc.subject.localDrug Discovery-
dc.subject.localdrug responsiveness prediction-
dc.description.journalClassY-
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Synthetic Biology and Bioengineering Research Institute > Genome Editing Research Center > 1. Journal Articles
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