Matches in SemOpenAlex for { <https://semopenalex.org/work/W4285008608> ?p ?o ?g. }
- W4285008608 abstract "Many machine learning techniques provide a simple prediction for drug-drug interactions (DDIs). However, a systematically constructed database with pharmacokinetic (PK) DDI information does not exist, nor is there a machine learning model that numerically predicts PK fold change (FC) with it. Therefore, we propose a PK DDI prediction (PK-DDIP) model for quantitative DDI prediction with high accuracy, while constructing a highly reliable PK-DDI database. Reliable information of 3,627 PK DDIs was constructed from 3,587 drugs using 38,711 Food and Drug Administration (FDA) drug labels. This PK-DDIP model predicted the FC of the area under the time-concentration curve (AUC) within ± 0.5959. The prediction proportions within 0.8-1.25-fold, 0.67-1.5-fold, and 0.5-2-fold of the AUC were 75.77, 86.68, and 94.76%, respectively. Two external validations confirmed good prediction performance for newly updated FDA labels and FC from patients'. This model enables potential DDI evaluation before clinical trials, which will save time and cost." @default.
- W4285008608 created "2022-07-12" @default.
- W4285008608 creator A5006334513 @default.
- W4285008608 creator A5044392908 @default.
- W4285008608 creator A5061392624 @default.
- W4285008608 creator A5063662656 @default.
- W4285008608 creator A5071666938 @default.
- W4285008608 creator A5081852574 @default.
- W4285008608 creator A5090443665 @default.
- W4285008608 date "2022-07-11" @default.
- W4285008608 modified "2023-09-26" @default.
- W4285008608 title "Machine learning-based quantitative prediction of drug exposure in drug-drug interactions using drug label information" @default.
- W4285008608 cites W1018047830 @default.
- W4285008608 cites W1786430425 @default.
- W4285008608 cites W1990267967 @default.
- W4285008608 cites W1991684478 @default.
- W4285008608 cites W1994861329 @default.
- W4285008608 cites W2008876617 @default.
- W4285008608 cites W2018544251 @default.
- W4285008608 cites W2024985940 @default.
- W4285008608 cites W2068650301 @default.
- W4285008608 cites W2106417713 @default.
- W4285008608 cites W2109482131 @default.
- W4285008608 cites W2117446654 @default.
- W4285008608 cites W2119002393 @default.
- W4285008608 cites W2120317715 @default.
- W4285008608 cites W2128043538 @default.
- W4285008608 cites W2134845326 @default.
- W4285008608 cites W2135037015 @default.
- W4285008608 cites W2166801934 @default.
- W4285008608 cites W2171437346 @default.
- W4285008608 cites W2200548835 @default.
- W4285008608 cites W2216626484 @default.
- W4285008608 cites W2369444444 @default.
- W4285008608 cites W2469049024 @default.
- W4285008608 cites W2469279958 @default.
- W4285008608 cites W2570516417 @default.
- W4285008608 cites W2608081584 @default.
- W4285008608 cites W2610522479 @default.
- W4285008608 cites W2622157970 @default.
- W4285008608 cites W2767891136 @default.
- W4285008608 cites W2798133167 @default.
- W4285008608 cites W2799720196 @default.
- W4285008608 cites W2802200505 @default.
- W4285008608 cites W2811036446 @default.
- W4285008608 cites W2885287860 @default.
- W4285008608 cites W2890036065 @default.
- W4285008608 cites W2904451610 @default.
- W4285008608 cites W2906028817 @default.
- W4285008608 cites W2922901737 @default.
- W4285008608 cites W2945591540 @default.
- W4285008608 cites W2945833576 @default.
- W4285008608 cites W2946438679 @default.
- W4285008608 cites W2965993245 @default.
- W4285008608 cites W2972392269 @default.
- W4285008608 cites W2974658886 @default.
- W4285008608 cites W2995738274 @default.
- W4285008608 cites W2996315557 @default.
- W4285008608 cites W2999886378 @default.
- W4285008608 cites W3005232784 @default.
- W4285008608 cites W3005363097 @default.
- W4285008608 cites W3006679905 @default.
- W4285008608 cites W3009406900 @default.
- W4285008608 cites W3022124687 @default.
- W4285008608 cites W3024894285 @default.
- W4285008608 cites W3039265083 @default.
- W4285008608 cites W3094497296 @default.
- W4285008608 cites W3095775920 @default.
- W4285008608 cites W3127950502 @default.
- W4285008608 cites W3164864805 @default.
- W4285008608 cites W3193719766 @default.
- W4285008608 cites W3199399339 @default.
- W4285008608 cites W4233492645 @default.
- W4285008608 cites W4250755387 @default.
- W4285008608 cites W4296300888 @default.
- W4285008608 cites W73222560 @default.
- W4285008608 doi "https://doi.org/10.1038/s41746-022-00639-0" @default.
- W4285008608 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/35817846" @default.
- W4285008608 hasPublicationYear "2022" @default.
- W4285008608 type Work @default.
- W4285008608 citedByCount "8" @default.
- W4285008608 countsByYear W42850086082022 @default.
- W4285008608 countsByYear W42850086082023 @default.
- W4285008608 crossrefType "journal-article" @default.
- W4285008608 hasAuthorship W4285008608A5006334513 @default.
- W4285008608 hasAuthorship W4285008608A5044392908 @default.
- W4285008608 hasAuthorship W4285008608A5061392624 @default.
- W4285008608 hasAuthorship W4285008608A5063662656 @default.
- W4285008608 hasAuthorship W4285008608A5071666938 @default.
- W4285008608 hasAuthorship W4285008608A5081852574 @default.
- W4285008608 hasAuthorship W4285008608A5090443665 @default.
- W4285008608 hasBestOaLocation W42850086081 @default.
- W4285008608 hasConcept C112705442 @default.
- W4285008608 hasConcept C119857082 @default.
- W4285008608 hasConcept C154945302 @default.
- W4285008608 hasConcept C2780035454 @default.
- W4285008608 hasConcept C2910466267 @default.
- W4285008608 hasConcept C3018890749 @default.
- W4285008608 hasConcept C41008148 @default.
- W4285008608 hasConcept C71924100 @default.