CREAMMIST: an integrative probabilistic database for cancer drug response prediction

(database[TitleAbstract]) AND (Nucleic acids research[Journal]) 2023-02-15

Summary:

Extensive in vitro cancer drug screening datasets have enabled scientists to identify biomarkers and develop machine learning models for predicting drug sensitivity. While most advancements have focused on omics profiles, cancer drug sensitivity scores precalculated by the original sources are often used as-is, without consideration for variabilities between studies. It is well-known that significant inconsistencies exist between the drug sensitivity scores across datasets due to differences in...

Link:

https://pubmed.ncbi.nlm.nih.gov/36259664/?utm_source=Other&utm_medium=rss&utm_campaign=pubmed-2&utm_content=1VsHRGSo3HX0CgC40wRgBdaScQKv8CRE2sO_GaWJzhPEXTSQfX&fc=20220129230418&ff=20230215011356&v=2.17.9.post6+86293ac

From feeds:

📚BioDBS Bibliography » (database[TitleAbstract]) AND (Nucleic acids research[Journal])

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Authors:

Hatairat Yingtaweesittikul, Jiaxi Wu, Aanchal Mongia, Rafael Peres, Karrie Ko, Niranjan Nagarajan, Chayaporn Suphavilai

Date tagged:

02/15/2023, 01:15

Date published:

10/19/2022, 06:00