A Survey on Data Mining Algorithms and Techniques in Medicine
Medical Decision Support Systems (MDSS) industry collects a huge amount of data, which is not properly mined and not put to the optimum use. This data may contain valuable information that awaits extraction. The knowledge may be encapsulated in various patterns and regularities that may be hidden in...
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doaj-b3c234d1b65e42638ef7f0594633829b2020-11-25T01:46:33ZengPoliteknik Negeri PadangJOIV: International Journal on Informatics Visualization2549-96102549-99042017-06-0113617110.30630/joiv.1.3.2513A Survey on Data Mining Algorithms and Techniques in MedicineKasra Madadipouya0Asia Pacific University (APU)Medical Decision Support Systems (MDSS) industry collects a huge amount of data, which is not properly mined and not put to the optimum use. This data may contain valuable information that awaits extraction. The knowledge may be encapsulated in various patterns and regularities that may be hidden in the data. Such knowledge may prove to be priceless in future medical decision making. Available medical decision support systems are based on static data, which may be out of date. Thus, a medical decision support system that can learn the relationships between patient histories, diseases in the population, symptoms, pathology of a disease, family history, and test results, would be useful to physicians and hospitals. This paper provides an in-depth review of available data mining algorithms and techniques. In addition to that, data mining applications in medicine are discussed as well as techniques for evaluating them and available applications of performance metrics.http://joiv.org/index.php/joiv/article/view/25Data MiningClassificationDecision TreeNeural NetworkBayesian Network ClassifierEvaluation Metrics |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Kasra Madadipouya |
spellingShingle |
Kasra Madadipouya A Survey on Data Mining Algorithms and Techniques in Medicine JOIV: International Journal on Informatics Visualization Data Mining Classification Decision Tree Neural Network Bayesian Network Classifier Evaluation Metrics |
author_facet |
Kasra Madadipouya |
author_sort |
Kasra Madadipouya |
title |
A Survey on Data Mining Algorithms and Techniques in Medicine |
title_short |
A Survey on Data Mining Algorithms and Techniques in Medicine |
title_full |
A Survey on Data Mining Algorithms and Techniques in Medicine |
title_fullStr |
A Survey on Data Mining Algorithms and Techniques in Medicine |
title_full_unstemmed |
A Survey on Data Mining Algorithms and Techniques in Medicine |
title_sort |
survey on data mining algorithms and techniques in medicine |
publisher |
Politeknik Negeri Padang |
series |
JOIV: International Journal on Informatics Visualization |
issn |
2549-9610 2549-9904 |
publishDate |
2017-06-01 |
description |
Medical Decision Support Systems (MDSS) industry collects a huge amount of data, which is not properly mined and not put to the optimum use. This data may contain valuable information that awaits extraction. The knowledge may be encapsulated in various patterns and regularities that may be hidden in the data. Such knowledge may prove to be priceless in future medical decision making.
Available medical decision support systems are based on static data, which may be out of date. Thus, a medical decision support system that can learn the relationships between patient histories, diseases in the population, symptoms, pathology of a disease, family history, and test results, would be useful to physicians and hospitals.
This paper provides an in-depth review of available data mining algorithms and techniques. In addition to that, data mining applications in medicine are discussed as well as techniques for evaluating them and available applications of performance metrics. |
topic |
Data Mining Classification Decision Tree Neural Network Bayesian Network Classifier Evaluation Metrics |
url |
http://joiv.org/index.php/joiv/article/view/25 |
work_keys_str_mv |
AT kasramadadipouya asurveyondataminingalgorithmsandtechniquesinmedicine AT kasramadadipouya surveyondataminingalgorithmsandtechniquesinmedicine |
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1725018679167418368 |