Determining the critical success factors of oral cancer susceptibility prediction in Malaysia using fuzzy models

The aim of the study was to determine the success factors of oral cancer susceptibility prediction using fuzzy models. Three fuzzy prediction models including fuzzy logic, fuzzy neural network and fuzzy linear regression models were constructed and applied to a Malaysian oral cancer data set for can...

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Published in:Sains Malaysiana
Main Author: Dom R.M.; Abidin B.; Kareem S.A.; Ismail S.M.; Daud N.M.
Format: Article
Language:English
Published: 2012
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-84860603446&partnerID=40&md5=2289150300fa8675c43b827184b926d8
id 2-s2.0-84860603446
spelling 2-s2.0-84860603446
Dom R.M.; Abidin B.; Kareem S.A.; Ismail S.M.; Daud N.M.
Determining the critical success factors of oral cancer susceptibility prediction in Malaysia using fuzzy models
2012
Sains Malaysiana
41
5

https://www.scopus.com/inward/record.uri?eid=2-s2.0-84860603446&partnerID=40&md5=2289150300fa8675c43b827184b926d8
The aim of the study was to determine the success factors of oral cancer susceptibility prediction using fuzzy models. Three fuzzy prediction models including fuzzy logic, fuzzy neural network and fuzzy linear regression models were constructed and applied to a Malaysian oral cancer data set for cancer susceptibility prediction. The three models' prediction performances were evaluated and compared. All the three fuzzy models were found to have 64% prediction accuracies for 1-input and 2-input predictor sets. However, when the number of input predictor set was increased to 3-input and 4-input, both fuzzy neural networks' and fuzzy linear regression's prediction accuracies increased to 80%, while fuzzy logic prediction accuracy remains at 64%. Fuzzy linear regression model was found to have the capability of quantifying the relationships between input predictors and the predicted outcomes and also suitable for small sample size. Fuzzy neural network model on the other hand, handles ambiguous relationship between variables well but lacks the ability to describe input-output association. The third model, fuzzy logic, is easy to construct but highly dependent on human expert-input. The outcome of this study is a computer-based prediction tool which can be used in cancer screening programs.

1266039
English
Article

author Dom R.M.; Abidin B.; Kareem S.A.; Ismail S.M.; Daud N.M.
spellingShingle Dom R.M.; Abidin B.; Kareem S.A.; Ismail S.M.; Daud N.M.
Determining the critical success factors of oral cancer susceptibility prediction in Malaysia using fuzzy models
author_facet Dom R.M.; Abidin B.; Kareem S.A.; Ismail S.M.; Daud N.M.
author_sort Dom R.M.; Abidin B.; Kareem S.A.; Ismail S.M.; Daud N.M.
title Determining the critical success factors of oral cancer susceptibility prediction in Malaysia using fuzzy models
title_short Determining the critical success factors of oral cancer susceptibility prediction in Malaysia using fuzzy models
title_full Determining the critical success factors of oral cancer susceptibility prediction in Malaysia using fuzzy models
title_fullStr Determining the critical success factors of oral cancer susceptibility prediction in Malaysia using fuzzy models
title_full_unstemmed Determining the critical success factors of oral cancer susceptibility prediction in Malaysia using fuzzy models
title_sort Determining the critical success factors of oral cancer susceptibility prediction in Malaysia using fuzzy models
publishDate 2012
container_title Sains Malaysiana
container_volume 41
container_issue 5
doi_str_mv
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-84860603446&partnerID=40&md5=2289150300fa8675c43b827184b926d8
description The aim of the study was to determine the success factors of oral cancer susceptibility prediction using fuzzy models. Three fuzzy prediction models including fuzzy logic, fuzzy neural network and fuzzy linear regression models were constructed and applied to a Malaysian oral cancer data set for cancer susceptibility prediction. The three models' prediction performances were evaluated and compared. All the three fuzzy models were found to have 64% prediction accuracies for 1-input and 2-input predictor sets. However, when the number of input predictor set was increased to 3-input and 4-input, both fuzzy neural networks' and fuzzy linear regression's prediction accuracies increased to 80%, while fuzzy logic prediction accuracy remains at 64%. Fuzzy linear regression model was found to have the capability of quantifying the relationships between input predictors and the predicted outcomes and also suitable for small sample size. Fuzzy neural network model on the other hand, handles ambiguous relationship between variables well but lacks the ability to describe input-output association. The third model, fuzzy logic, is easy to construct but highly dependent on human expert-input. The outcome of this study is a computer-based prediction tool which can be used in cancer screening programs.
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language English
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