Decision Support Methods in Diabetic Patient Management by Insulin Administration Neural Network vs. Induction Methods for Knowledge Classification
Diabetes mellitus is now recognised as a major worldwide public health problem. At present, about 100 million people are registered as diabetic patients. Many clinical, social and economic problems occur as a consequence of insulin-dependent diabetes. Treatment attempts to prevent or delay complicat...
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sg-smu-ink.sis_research-21462021-09-02T06:07:46Z Decision Support Methods in Diabetic Patient Management by Insulin Administration Neural Network vs. Induction Methods for Knowledge Classification AMBROSIADOU, B. V. Vadera, S. SHANKARAMAN, Venky Goulis, D. Gogou, G. Diabetes mellitus is now recognised as a major worldwide public health problem. At present, about 100 million people are registered as diabetic patients. Many clinical, social and economic problems occur as a consequence of insulin-dependent diabetes. Treatment attempts to prevent or delay complications by applying ‘optimal’ glycaemic control. Therefore, there is a continuous need for effective monitoring of the patient. Given the popularity of decision tree learning algorithms as well as neural networks for knowledge classification which is further used for decision support, this paper examines their relative merits by applying one algorithm from each family on a medical problem; that of recommending a particular diabetes regime. For the purposes of this study, OC1 a descendant of Quinlan’s ID3 algorithm was chosen as decision tree learning algorithm and a generating shrinking algorithm for learning arbitrary classifications as a neural network algorithm. These systems were trained on 646 cases derived from two countries in Europe and were tested on 100 cases which were different from the original 646 cases. 2000-05-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/1147 https://ink.library.smu.edu.sg/context/sis_research/article/2146/viewcontent/AmbrosiadouVadera_2000_Insulin.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University decision tree induction neural networks diabetes management Health Information Technology Software Engineering |
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decision tree induction neural networks diabetes management Health Information Technology Software Engineering AMBROSIADOU, B. V. Vadera, S. SHANKARAMAN, Venky Goulis, D. Gogou, G. Decision Support Methods in Diabetic Patient Management by Insulin Administration Neural Network vs. Induction Methods for Knowledge Classification |
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Diabetes mellitus is now recognised as a major worldwide public health problem. At present, about 100 million people are registered as diabetic patients. Many clinical, social and economic problems occur as a consequence of insulin-dependent diabetes. Treatment attempts to prevent or delay complications by applying ‘optimal’ glycaemic control. Therefore, there is a continuous need for effective monitoring of the patient. Given the popularity of decision tree learning algorithms as well as neural networks for knowledge classification which is further used for decision support, this paper examines their relative merits by applying one algorithm from each family on a medical problem; that of recommending a particular diabetes regime. For the purposes of this study, OC1 a descendant of Quinlan’s ID3 algorithm was chosen as decision tree learning algorithm and a generating shrinking algorithm for learning arbitrary classifications as a neural network algorithm. These systems were trained on 646 cases derived from two countries in Europe and were tested on 100 cases which were different from the original 646 cases. |
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text |
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AMBROSIADOU, B. V. Vadera, S. SHANKARAMAN, Venky Goulis, D. Gogou, G. |
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AMBROSIADOU, B. V. Vadera, S. SHANKARAMAN, Venky Goulis, D. Gogou, G. |
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AMBROSIADOU, B. V. |
title |
Decision Support Methods in Diabetic Patient Management by Insulin Administration Neural Network vs. Induction Methods for Knowledge Classification |
title_short |
Decision Support Methods in Diabetic Patient Management by Insulin Administration Neural Network vs. Induction Methods for Knowledge Classification |
title_full |
Decision Support Methods in Diabetic Patient Management by Insulin Administration Neural Network vs. Induction Methods for Knowledge Classification |
title_fullStr |
Decision Support Methods in Diabetic Patient Management by Insulin Administration Neural Network vs. Induction Methods for Knowledge Classification |
title_full_unstemmed |
Decision Support Methods in Diabetic Patient Management by Insulin Administration Neural Network vs. Induction Methods for Knowledge Classification |
title_sort |
decision support methods in diabetic patient management by insulin administration neural network vs. induction methods for knowledge classification |
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Institutional Knowledge at Singapore Management University |
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2000 |
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https://ink.library.smu.edu.sg/sis_research/1147 https://ink.library.smu.edu.sg/context/sis_research/article/2146/viewcontent/AmbrosiadouVadera_2000_Insulin.pdf |
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