Logo des Repositoriums
 

Predictive analytics for data driven decision support in health and care

dc.contributor.authorHayn, Dieter
dc.contributor.authorVeeranki, Sai
dc.contributor.authorKropf, Martin
dc.contributor.authorEggerth, Alphons
dc.contributor.authorKreiner, Karl
dc.contributor.authorKramer, Diether
dc.contributor.authorSchreier, Günter
dc.date.accessioned2021-06-21T10:12:43Z
dc.date.available2021-06-21T10:12:43Z
dc.date.issued2018
dc.description.abstractDue to an ever-increasing amount of data generated in healthcare each day, healthcare professionals are more and more challenged with information. Predictive models based on machine learning algorithms can help to quickly identify patterns in clinical data. Requirements for data driven decision support systems for health and care ( DS4H ) are similar in many ways to applications in other domains. However, there are also various challenges which are specific to health and care settings. The present paper describes a) healthcare specific requirements for DS4H and b) how they were addressed in our Predictive Analytics Toolset for Health and care ( PATH ). PATH supports the following process: objective definition, data cleaning and pre-processing, feature engineering, evaluation, result visualization, interpretation and validation and deployment. The current state of the toolset already allows the user to switch between the various involved levels, i. e. raw data (ECG), pre-processed data (averaged heartbeat), extracted features (QT time), built models (to classify the ECG into a certain rhythm abnormality class) and outcome evaluation (e. g. a false positive case) and to assess the relevance of a given feature in the currently evaluated model as a whole and for the individual decision. This allows us to gain insights as a basis for improvements in the various steps from raw data to decisions.en
dc.identifier.doi10.1515/itit-2018-0004
dc.identifier.pissn2196-7032
dc.identifier.urihttps://dl.gi.de/handle/20.500.12116/36614
dc.language.isoen
dc.publisherDe Gruyter
dc.relation.ispartofit - Information Technology: Vol. 60, No. 4
dc.subjectClinical decision support
dc.subjectMachine learning
dc.subjectPredictive modelling
dc.subjectFeature engineering
dc.titlePredictive analytics for data driven decision support in health and careen
dc.typeText/Journal Article
gi.citation.endPage194
gi.citation.publisherPlaceBerlin
gi.citation.startPage183

Dateien