A temporal prognostic model based on dynamic Bayesian networks: mining medical insurance data

dc.contributor.advisorNgwenya, Mzabalazo
dc.contributor.authorMbaka, Sarah Kerubo
dc.date.accessioned2021-09-13T08:30:34Z
dc.date.available2021-09-13T08:30:34Z
dc.date.issued2021
dc.date.updated2021-09-10T07:25:25Z
dc.description.abstractA prognostic model is a formal combination of multiple predictors from which risk probability of a specific diagnosis can be modelled for patients. Prognostic models have become essential instruments in medicine. The models are used for prediction purposes of guiding doctors to make a smart diagnosis, patient-specific decisions or help in planning the utilization of resources for patient groups who have similar prognostic paths. Dynamic Bayesian networks theoretically provide a very expressive and flexible model to solve temporal problems in medicine. However, this involves various challenges due both to the nature of the clinical domain, and the nature of the DBN modelling and inference process itself. The challenges from the clinical domain include insufficient knowledge of temporal interactions of processes in the medical literature, the sparse nature and variability of medical data collection, and the difficulty in preparing and abstracting clinical data in a suitable format without losing valuable information in the process. Challenges about the DBN methodology and implementation include the lack of tools that allow easy modelling of temporal processes. Overcoming this challenge will help to solve various clinical temporal reasoning problems. In this thesis, we addressed these challenges while building a temporal network with explanations of the effects of predisposing factors, such as age and gender, and the progression information of all diagnoses using claims data from an insurance company in Kenya. We showed that our network could differentiate the possible probability exposure to a diagnosis given the age and gender and possible paths given a patient's history. We also presented evidence that the more patient history is provided, the better the prediction of future diagnosis.
dc.identifier.apacitationMbaka, S. K. (2021). <i>A temporal prognostic model based on dynamic Bayesian networks: mining medical insurance data</i>. (). ,Faculty of Science ,Department of Statistical Sciences. Retrieved from http://hdl.handle.net/11427/33856en_ZA
dc.identifier.chicagocitationMbaka, Sarah Kerubo. <i>"A temporal prognostic model based on dynamic Bayesian networks: mining medical insurance data."</i> ., ,Faculty of Science ,Department of Statistical Sciences, 2021. http://hdl.handle.net/11427/33856en_ZA
dc.identifier.citationMbaka, S.K. 2021. A temporal prognostic model based on dynamic Bayesian networks: mining medical insurance data. . ,Faculty of Science ,Department of Statistical Sciences. http://hdl.handle.net/11427/33856en_ZA
dc.identifier.ris TY - Master Thesis AU - Mbaka, Sarah Kerubo AB - A prognostic model is a formal combination of multiple predictors from which risk probability of a specific diagnosis can be modelled for patients. Prognostic models have become essential instruments in medicine. The models are used for prediction purposes of guiding doctors to make a smart diagnosis, patient-specific decisions or help in planning the utilization of resources for patient groups who have similar prognostic paths. Dynamic Bayesian networks theoretically provide a very expressive and flexible model to solve temporal problems in medicine. However, this involves various challenges due both to the nature of the clinical domain, and the nature of the DBN modelling and inference process itself. The challenges from the clinical domain include insufficient knowledge of temporal interactions of processes in the medical literature, the sparse nature and variability of medical data collection, and the difficulty in preparing and abstracting clinical data in a suitable format without losing valuable information in the process. Challenges about the DBN methodology and implementation include the lack of tools that allow easy modelling of temporal processes. Overcoming this challenge will help to solve various clinical temporal reasoning problems. In this thesis, we addressed these challenges while building a temporal network with explanations of the effects of predisposing factors, such as age and gender, and the progression information of all diagnoses using claims data from an insurance company in Kenya. We showed that our network could differentiate the possible probability exposure to a diagnosis given the age and gender and possible paths given a patient's history. We also presented evidence that the more patient history is provided, the better the prediction of future diagnosis. DA - 2021_ DB - OpenUCT DP - University of Cape Town KW - Data Science LK - https://open.uct.ac.za PY - 2021 T1 - A temporal prognostic model based on dynamic Bayesian networks: mining medical insurance data TI - A temporal prognostic model based on dynamic Bayesian networks: mining medical insurance data UR - http://hdl.handle.net/11427/33856 ER - en_ZA
dc.identifier.urihttp://hdl.handle.net/11427/33856
dc.identifier.vancouvercitationMbaka SK. A temporal prognostic model based on dynamic Bayesian networks: mining medical insurance data. []. ,Faculty of Science ,Department of Statistical Sciences, 2021 [cited yyyy month dd]. Available from: http://hdl.handle.net/11427/33856en_ZA
dc.language.rfc3066eng
dc.publisher.departmentDepartment of Statistical Sciences
dc.publisher.facultyFaculty of Science
dc.subjectData Science
dc.titleA temporal prognostic model based on dynamic Bayesian networks: mining medical insurance data
dc.typeMaster Thesis
dc.type.qualificationlevelMasters
dc.type.qualificationlevelMSc
Files
Original bundle
Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
thesis_sci_2021_mbaka sarah kerubo.pdf
Size:
2.89 MB
Format:
Adobe Portable Document Format
Description:
License bundle
Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
license.txt
Size:
0 B
Format:
Item-specific license agreed upon to submission
Description:
Collections