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Tytuł pozycji:

Using machine learning to support healthcare professionals in making preauthorisation decisions.

Tytuł:
Using machine learning to support healthcare professionals in making preauthorisation decisions.
Autorzy:
Araújo FH; Campus Senador Helvídio Nunes de Barros, Federal University of Piauí, Picos, Piauí, Brazil. Electronic address: .
Santana AM; Department of Computing, Federal University of Piauí, Teresina, Piauí, Brazil. Electronic address: .
de A Santos Neto P; Department of Computing, Federal University of Piauí, Teresina, Piauí, Brazil. Electronic address: .
Źródło:
International journal of medical informatics [Int J Med Inform] 2016 Oct; Vol. 94, pp. 1-7. Date of Electronic Publication: 2016 Jun 16.
Typ publikacji:
Journal Article
Język:
English
Imprint Name(s):
Original Publication: Shannon, Co. Clare, Ireland : Elsevier Science Ireland Ltd., c1997-
MeSH Terms:
Algorithms*
Artificial Intelligence*
Clinical Decision-Making*
Health Personnel*
Machine Learning*
Bayes Theorem ; Humans ; Support Vector Machine
Contributed Indexing:
Keywords: Classification; Data mining; Ensemble; Machine learning; Prepaid health plans
Entry Date(s):
Date Created: 20160831 Date Completed: 20171121 Latest Revision: 20181202
Update Code:
20240104
DOI:
10.1016/j.ijmedinf.2016.06.007
PMID:
27573306
Czasopismo naukowe
Background: Preauthorisation is a control mechanism that is used by Health Insurance Providers (HIPs) to minimise wastage of resources through the denial of the procedures that were unduly requested. However, an efficient preauthorisation process requires the round-the-clock presence of a preauthorisation reviewer, which increases the operating expenses of the HIP. In this context, the aim of this study was to learn the preauthorisation process using the dental set from an existing database of a non-profit HIP.
Methods: Pre-processing data techniques as filtering algorithms, random under-sample and imputation were used to mitigate problems that arise from the selection of relevant attributes, class balancing and filling unknown data. The performance of classifiers Random Tree, Naive bayes, Support Vector Machine and Nearest Neighbor was evaluated according to kappa index and the best classifiers were combined by using ensembles.
Results: The number of attributes were reduced from 164 to 15 and also were created 12 new attributes from existing discrete data associated with the beneficiary's history. The final result was the development of a decision support mechanism that yielded hit rates above 96%.
Conclusions: It is possible to create a tool based on computational intelligence techniques to evaluate the requests of test/procedure with a high accuracy. This tool can be used to support the activities of the professionals and automatically evaluate less complex cases, like requests not involving risk to the life of patients.
(Copyright © 2016 Elsevier Ireland Ltd. All rights reserved.)

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