TY - JOUR
T1 - Empirical investigation of decision tree ensembles for monitoring cardiac complications of diabetes
AU - Kelarev, Andrei V.
AU - Abawajy, Jemal
AU - Stranieri, Andrew
AU - Jelinek, Herbert F.
N1 - Funding Information:
The authors are grateful to three referees for comments and corrections that have helped to improve the text, and for suggesting several interesting directions for future research work. H. F. Jelinek is on leave from Charles Sturt University. The source codes, data, screenshots and complete outputs of all tests can be downloaded from the IJDWM website on http://users.monash.edu/~dtaniar/IJDWM Andrei Kelarev is an author of two books, a volume of refereed conference proceedings and over 180 journal articles. Andrei has ten years of full-time teaching experience in the University of Wisconsin, University of Nebraska and University of Tasmania, and supervised to completion two PhD students. Andrei Kelarev was a Chief Investigator of a large Discovery grant from Australian Research Council, was a member of the program committees of several conferences and worked for many research grants at the University of Ballarat, Charles Sturt University and Deakin University. Jemal H. Abawajy is a Professor and the Director of the Parallel and Distributing Computing Lab at Deakin University, Australia. Prof. Abawajy is a senior member of IEEE and was a member of the organizing committees for over 100 international conferences serving in various capacities including chair, general co-chair, vice-chair, best paper award chair, publication chair, session chair and program committee member. Prof. Abawajy has published more than 200 refereed articles, supervised numerous PhD students to completion and is on the editorial boards of many journals. Andrew Stranieri is an Associate Professor and the Director of the Centre for Informatics and Applied Optimisation at the University of Ballarat. His research into cognitive models of argumentation and artificial intelligence was instrumental in modelling decision making in refugee law, copyright law, eligibility for legal aid and sentencing. His research in health informatics spans data mining in health, complementary and alternative medicine informatics, telemedicine and intelligent decision support systems. Andrew Stranieri is the author of over 120 peer reviewed journal and conference articles and has published two books. Herbert F. Jelinek is a Clinical Associate Professor with the Australian School of Advanced Medicine, Macquarie University, Sydney, Australia, and a member of the Centre for Research in Complex Systems, Charles Sturt University, Albury, Australia. Dr Jelinek is currently a visiting Associate Professor at Khalifa University of Science, Technolgy and Research, Abu Dhabi, UAE. Herbert Jelinek received the B.Sc. (Hons.) degree in human genetics from the University of New South Wales, Sydney, Australia, in 1984, followed by the Graduate Diploma in neuroscience from the Australian National University, Canberra, Australia, in 1986 and the Ph.D. degree in medicine from the University of Sydney, Sydney, Australia, in 1996. He is a member of the IEEE Biomedical Engineering Society and the Australian Diabetes Association.
PY - 2013
Y1 - 2013
N2 - Cardiac complications of diabetes require continuous monitoring since they may lead to increased morbidity or sudden death of patients. In order to monitor clinical complications of diabetes using wearable sensors, a small set of features have to be identified and effective algorithms for their processing need to be investigated. This article focuses on detecting and monitoring cardiac autonomic neuropathy (CAN) in diabetes patients. The authors investigate and compare the effectiveness of classifiers based on the following decision trees: ADTree, J48, NBTree, RandomTree, REPTree, and SimpleCart. The authors perform a thorough study comparing these decision trees as well as several decision tree ensembles created by applying the following ensemble methods: AdaBoost, Bagging, Dagging, Decorate, Grading, MultiBoost, Stacking, and two multi-level combinations of AdaBoost and MultiBoost with Bagging for the processing of data from diabetes patients for pervasive health monitoring of CAN. This paper concentrates on the particular task of applying decision tree ensembles for the detection and monitoring of cardiac autonomic neuropathy using these features. Experimental outcomes presented here show that the authorsà application of the decision tree ensembles for the detection and monitoring of CAN in diabetes patients achieved better performance parameters compared with the results obtained previously in the literature.
AB - Cardiac complications of diabetes require continuous monitoring since they may lead to increased morbidity or sudden death of patients. In order to monitor clinical complications of diabetes using wearable sensors, a small set of features have to be identified and effective algorithms for their processing need to be investigated. This article focuses on detecting and monitoring cardiac autonomic neuropathy (CAN) in diabetes patients. The authors investigate and compare the effectiveness of classifiers based on the following decision trees: ADTree, J48, NBTree, RandomTree, REPTree, and SimpleCart. The authors perform a thorough study comparing these decision trees as well as several decision tree ensembles created by applying the following ensemble methods: AdaBoost, Bagging, Dagging, Decorate, Grading, MultiBoost, Stacking, and two multi-level combinations of AdaBoost and MultiBoost with Bagging for the processing of data from diabetes patients for pervasive health monitoring of CAN. This paper concentrates on the particular task of applying decision tree ensembles for the detection and monitoring of cardiac autonomic neuropathy using these features. Experimental outcomes presented here show that the authorsà application of the decision tree ensembles for the detection and monitoring of CAN in diabetes patients achieved better performance parameters compared with the results obtained previously in the literature.
KW - Cardiac autonomic neuropathy (CAN)
KW - Decision tree ensembles
KW - Decision trees
KW - Diabetes
KW - Receiver operating characteristic (ROC) area
UR - http://www.scopus.com/inward/record.url?scp=84883620001&partnerID=8YFLogxK
U2 - 10.4018/ijdwm.2013100101
DO - 10.4018/ijdwm.2013100101
M3 - Article
AN - SCOPUS:84883620001
SN - 1548-3924
VL - 9
SP - 1
EP - 18
JO - International Journal of Data Warehousing and Mining
JF - International Journal of Data Warehousing and Mining
IS - 4
ER -