PL EN


Preferencje help
Widoczny [Schowaj] Abstrakt
Liczba wyników
Tytuł artykułu

Mining Therapeutic Patterns from Clinical Data for Juvenile Diabetes

Wybrane pełne teksty z tego czasopisma
Identyfikatory
Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
The disease of diabetes mellitus has spread in recent years across the world, and has thus become an even more important medical problem. Despite numerous solutions already proposed, the problem of management of glucose concentration in the blood of a diabetic patient still remains as a challenge and raises interest among researchers. The data-driven models of glucose-insulin interaction are one of the recent directions of research. In particular, a data-driven model can be constructed using the idea of sequential patterns as the knowledge representation method. In this paper a new hierarchical, template-based approach for mining sequential patterns is proposed. The paper proposes also to use functional abstractions for the representation and mining of clinical data. Due to the experts knowledge involved in the construction of functional abstractions and sequential templates, the discovered underlying template-based patters can be easily interpreted by physicians and are able to provide recommendations of medical therapy. The proposed methodology was validated by experiments using real clinical data of juvenile diabetes.
Słowa kluczowe
Wydawca
Rocznik
Strony
513--528
Opis fizyczny
Bibliogr. 20 poz., tab.
Twórcy
autor
  • Institute of Computer Science, University of Silesia, Bedzinska 39, Sosnowiec, Poland
autor
  • Department of Computer Science, Academy of Business, Cieplaka 1c, Dabrowa Gornicza, Poland
autor
  • Department of Pediatrics, Endocrinology and Diabetes, Medical University of Silesia, Katowice, Poland
Bibliografia
  • [1] ADA: American Diabetes Association, Standards of Medical Care in Diabetes-2012 Diabetes Care, doi: 10.2337/dc12-s011, 35, 2012, 11-63.
  • [2] Agrawal, R., Srikant, R.: Mining Sequential Patterns, Proceedings of the Eleventh International Conference on Data Engineering, IEEE Computer Society, 1995.
  • [3] Bangstad, H., Danne, T., Deeb, L., Jarosz-Chobot, P., Urakami, T., Hanas, R.: ISPAD Clinical Practice Consensus Guidelines. Insulin treatment in children and adolescents with diabetes., Pediatric Diabetes, 12, 2009, 92-99.
  • [4] Baralis, E., Bruno, G., Chiusano, S., Domenici, V C., Mahoto, N. A., Petrigni, C.: Analysis of Medical Pathways by Means of Frequent Closed Sequences, Lecture Notes in Computer Science, 6278, 2010, 418425.
  • [5] Concaro S, Sacchi L, B. R.: Temporal data mining methods for the analysis of the AHRQ archives, Proc Am Med Inform Assoc 2007Annu Symp., 2007.
  • [6] Couper, J., Donaghue, K.: ISPAD Clinical Practice Consensus Guidelines. Phases of diabetes in children and adolescents, Pediatric Diabetes, 12, 2009, 13-16.
  • [7] Deja, G., Jarosz-Chobot, P., Polanska, J.: The rate of improvement in metabolic control in children with diabetes mellitus type 1 on insulin glargine depends on age, Exp Clin Endocrinol Diabetes, 115(10), 2007, 662-8.
  • [8] Gani, A., Gribok, A. V., Lu, Y., Ward, W. K., Vigersky, R. A., Reifman, J.: Universal glucose models for predicting subcutaneous glucose concentration in humans, IEEE Transactions on Information Technology in Biomedicine, 14(1), 2010, 157-165.
  • [9] Georga, E., Protopappas, V., Polyzos, D.: Prediction of glucose concentration in type 1 diabetic patients using support vector regression, Information Technology and Applications in Biomedicine (ITAB), 2010.
  • [10] Georga, E. I., Protopappas, V C., Fotiadis, D. I.: Glucose Prediction in Type 1 and Type 2 Diabetic Patients Using Data Driven Techniques, Knowledge-Oriented Applications in Data Mining, in: Knowledge-Oriented Applications in Data Mining (P. K. Funatsu, Ed.), InTech, 2011, ISBN 978-953-307-154-1,277-295.
  • [11] Han, J., Cheng, H., Xin, D., Yan, X.: Frequent pattern mining: current status and future directions, Data Min. Knowl. Discov., 15(1), 2007, 55-86.
  • [12] Han, J., Pei, J., Mortazavi-Asl, B., Chen, Q., Dayal, U., Hsu, M.: FreeSpan: frequent pattern-projected sequential pattern mining, Proceedings of the sixth ACM SIGKDD international conference on Knowledge discovery and data mining, ACM, 2000.
  • [13] Huang, K.-Y., Chang, C.-H.: Efficient mining of frequent episodes from complex sequences, Inf. Syst., 33(1), 2008, 96-114.
  • [14] Loach, S. D.: A pilot study to stabilize normoglycemia during an educational camp for children and adolescents with type 1 diabetes mellitus, Insulin, 4(3), 2009, 158 - 168.
  • [15] Mannila, H., Toivonen, H., Verkamo, A. I.: Discovering Frequent Episodes in Sequences, KDD, 1995.
  • [16] Mitsa, T.: Temporal Data Mining, CRC Press, Taylor and Francis Group, 2010.
  • [17] Rahaman, S., Shashi, M.: Sequential Mining Equips e-Health with Knowledge for Managing Diabetes, International Journal of Information Processing and Management, 2(3), 2011.
  • [18] Stahl, F., Johansson, R.: Diabetes mellitus modeling and short-term prediction based on blood glucose measurements., Math Biosci, 217(2), 2009, 101-17, ISSN 0025-5564.
  • [19] Toussi, M., Lamy, J.-B., Toumelin, P. L., Venot, A.: Using data mining techniques to explore physicians’ therapeutic decisions when clinical guidelines do not provide recommendations: methods and example for type 2 diabetes., BMC medical informatics and decision making, 9(1), jun 2009, 12-28.
  • [20] WHO: Fact sheet no. 312, http://www.who.int/diabetes/en, 2011.
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-b1c8f5e5-332c-4949-a07e-e61d7bd55620
JavaScript jest wyłączony w Twojej przeglądarce internetowej. Włącz go, a następnie odśwież stronę, aby móc w pełni z niej korzystać.