Semantic text mining in early drug discovery for type 2 diabetes.
Lena K HanssonRasmus Borup HansenSune Pletscher-FrankildRudolfs BerzinsDaniel Hvidberg HansenDennis MadsenSten B ChristensenMalene Revsbech ChristiansenUlrika BoulundXenia Asbæk WolfSonny Kim KjærulffMartijn van de BuntSøren TulinThomas Skøt JensenRasmus WernerssonJan Nygaard JensenPublished in: PloS one (2020)
We show that T2D relevant papers, even those not mentioning T2D explicitly, were prioritised by relevant semantic concepts. Well known T2D proteins were therefore enriched among the top scoring proteins. Our 'high jumpers' identified important past developments in the apprehension of how certain key proteins relate to T2D, indicating that our method will make us aware of future breakthroughs. In summary, this project facilitated keeping up with current T2D research by repeatedly providing short lists of potential novel targets into our early drug discovery pipeline.