From PDF to Practice: Difference between revisions

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Client to be confirmed - biko.jj.agozino@jpmorgan.com
Client at [[JP Morgan]] to be confirmed - could be biko.jj.agozino@jpmorgan.com


Many hospitals in the UK produce their own local guidance, regarding what medicines should be given to patients before and after operations (perioperative medication). Policy is buried in PDF documents, which combine descriptions of drug properties with factors that might result in different advice to different patients. Your task is to create a system that can automatically extract and compare a wide range of such advice, presenting it in a form such that clinicians can draw on both best practice and individual factors when advising a specific patient.
Many hospitals in the UK produce their own local guidance, regarding what medicines should be given to patients before and after operations (perioperative medication). Policy is buried in PDF documents, which combine descriptions of drug properties with factors that might result in different advice to different patients. Your task is to create a system that can automatically extract and compare a wide range of such advice, presenting it in a form such that clinicians can draw on both best practice and individual factors when advising a specific patient.

Revision as of 16:38, 2 November 2017

Client at JP Morgan to be confirmed - could be biko.jj.agozino@jpmorgan.com

Many hospitals in the UK produce their own local guidance, regarding what medicines should be given to patients before and after operations (perioperative medication). Policy is buried in PDF documents, which combine descriptions of drug properties with factors that might result in different advice to different patients. Your task is to create a system that can automatically extract and compare a wide range of such advice, presenting it in a form such that clinicians can draw on both best practice and individual factors when advising a specific patient.