Yearb Med Inform 2009; 18(01): 121-133
DOI: 10.1055/s-0038-1638651
Original Article
Georg Thieme Verlag KG Stuttgart

Clinical Data Mining: a Review

J. Iavindrasana
1   University and Hospitals of Geneva, Switzerland
,
G. Cohen
1   University and Hospitals of Geneva, Switzerland
,
A. Depeursinge
1   University and Hospitals of Geneva, Switzerland
,
H. Müller
1   University and Hospitals of Geneva, Switzerland
,
R. Meyer
1   University and Hospitals of Geneva, Switzerland
,
A. Geissbuhler
1   University and Hospitals of Geneva, Switzerland
› Author Affiliations
Further Information

Correspondence to

Jimison Iavindrasana
Division of Medical Informatics
University Hospitals and University of Geneva Rue Gabrielle-Perret-Gentil 4
CH-1211Geneva 14
Switzerland
Phone: +41 22 372 88 74   
Fax: +41 22 372 88 79   

Publication History

Publication Date:
07 March 2018 (online)

 

Summary

Objective Clinical data mining is the application of data mining techniques using clinical data. We review the literature in order to provide a general overview by identifying the status-of-practice and the challenges ahead.

Methods The nine data mining steps proposed by Fayyad in 1996 [4] were used as the main themes of the review. MEDLINE was used as primary source and 84 papers were retained based on our inclusion criteria.

Results Clinical data mining has three objectives: understanding the clinical data, assist healthcare professionals, and develop a data analysis methodology suitable for medical data. Classification is the most frequently used data mining function with a predominance of the implementation of Bayesian classifiers, neural networks, and SVMs (Support Vector Machines). A myriad of quantitative performance measures were proposed with a predominance of accuracy, sensitivity, specificity, and ROC curves. The latter are usually associated with qualitative evaluation.

Conclusion Clinical data mining respects its commitment to extracting new and previously unknown knowledge from clinical databases. More efforts are still needed to obtain a wider acceptance from the healthcare professionals and for generalization of the knowledge and reproducibility of its extraction process: better description of variables, systematic report of algorithm parameters including the method to obtain them, use of easy-to-understand models and comparisons of the efficiency of clinical data mining with traditional statistical analyses. More and more data will be available for data miners and they have to develop new methodologies and infrastructures to analyze the increasingly complex medical data.


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Correspondence to

Jimison Iavindrasana
Division of Medical Informatics
University Hospitals and University of Geneva Rue Gabrielle-Perret-Gentil 4
CH-1211Geneva 14
Switzerland
Phone: +41 22 372 88 74   
Fax: +41 22 372 88 79   

  • References

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  • 2 Obenshain MK. Application of data mining techniques to healthcare data. Infect Control Hosp Epidemiol 2004; 25: 690-5.
  • 3 Zhu X. Semi-Supervised Learning Literature Survey. University of Wisconsin-Madison. 2007
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  • 6 Olson DL, Delen D. Advanced data mining techniques. Springer; 2008
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  • 8 Smyth P. Data mining: data analysis on a grand scale. In: Statistical Methods in Medical Research. 2000; 309-327.
  • 9 Patel JL, Goyal RK. Applications of artificial neural networks in medical science. Curr Clin Pharmacol 2007; 02: 217-26.
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  • 11 Zhou L, Hripcsak G. Temporal reasoning with medical data—a review with emphasis on medical natural language processing. J Biomed Inform 2007; 40: 183-202.
  • 12 Stacey M, McGregor C. Temporal abstraction in intelligent clinical data analysis: A survey. Artif Intell Med 2007; 39 (01) 1-24.
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  • 18 Juhola M, Laurikkala J. On distance computation in space of mixed-type variables in medical data mining. Stud Health Technol Inform 2002; 90: 425-30.
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  • 20 Grant A, Moshyk A, Diab H, Caron P, de Lorenzi F, Bisson G. et al. Integrating feedback from a clinical data warehouse into practice organisation. Int J Med Inform 2006; 75: 232-9.
  • 21 Klimov D, Shahar Y. A framework for intelligent visualization of multiple time-oriented medical records. AMIA Annu Symp Proc 2005; : 405-9.
  • 22 Atzmueller M. Exploiting Background Knowledge for Knowledge-Intensive Subgroup Discovery. In: Proc. 19th International Joint Conference on Artificial Intelligence (IJCAI-05). 2005; 647-52.
  • 23 Kwasnicka H, Katejan S. Discovery of association rules from medical data classical and evolutionary approaches. In: XXI Autumn Meeting of Polish Information Processing Society. 2005; 163-77.
  • 24 Li J, Fu AW, Fahey P. Efficient discovery of risk patterns in medical data. Artif Intell Med 2009; 45 (01) 77-89.
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  • 30 Goodwin LK, Prather JC. Protecting patient privacy in clinical data mining. J Healthc Inf Manag 2002; 16: 62-67.
  • 31 Jannin P, Morandi X. Surgical models for computer-assisted neurosurgery. Neuroimage 2007; 37: 783-91.
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  • 34 Spangler WE, May JH, Strum DP, Vargas LG. A data mining approach to characterizing medical code usage patterns. J Med Syst 2002; 26: 255-75.
  • 35 Chapman WW, Dowling JN, Wagner MM. Fever detection from free-text clinical records for biosurveillance. J Biomed Inform 2004; 37: 120-7.
  • 36 Goldstein I, Arzrumtsyan A, Uzuner O. Three approaches to automatic assignment of ICD-9-CM codes to radiology reports. In: AMIA Annu Symp Proc 2007; 279-83.
  • 37 Shortliffe EH, Davis R, Axline SG, Buchanan BG, Green CC, Cohen SN. Computer-based consultations in clinical therapeutics: explanation and rule acquisition capabilities of the MYCIN system. Comput Biomed Res 1975; 08 (04) 303-20.
  • 38 Miller RA, Pople HE, Myers JD. INTERNIST-1: An experimental computer-based diagnostic consultant for general internal medecine. N Engl J Med 1982; 307: 468-76.
  • 39 Antonie M, Zaïane O, Coman A. Application of data mining techniques for medical image classification. In: Proceedings of Second International Workshop on Multimedia Data Mining (MDM/ KDD’2001); 2001; 94-101.
  • 40 Bohm N, Wales L, Dunckley M, Morgan R, Loftus I, Thompson M. Objective risk-scoring systems for repair of abdominal aortic aneurysms: applicability in endovascular repair?. Eur J Vasc Endovasc Surg 2008; 36: 172-7.
  • 41 Daemen A, Gevaert O, De Moor B. Integration of clinical and microarray data with kernel methods. Conf Proc IEEE Eng Med Biol Soc 2007; 5411-5.
  • 42 Dahlstrom O, Timpka T, Hass U, Skogh T, Thyberg I. A simple method for heuristic modeling of expert knowledge in chronic disease: identification of prognostic subgroups in rheumatology. Stud Health Technol Inform 2008; 136: 157-62.
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  • 44 Goletsis Y, Papaloukas C, Fotiadis DI, Likas A, Michalis LK. Automated ischemic beat classification using genetic algorithms and multicriteria decision analysis. IEEE Trans Biomed Eng 2004; 51: 1717-25.
  • 45 Jesneck JL, Nolte LW, Baker JA, Floyd CE, Lo JY. Optimized approach to decision fusion of heterogeneous data for breast cancer diagnosis. Med Phys 2006; 33: 2945-54.
  • 46 Pakhomov SV, Buntrock J, Chute CG. Prospective recruitment of patients with congestive heart failure using an ad-hoc binary classifier. J Biomed Inform 2005; 38: 145-53.
  • 47 Varpa K, Iltanen K, Juhola M. Machine learning method for knowledge discovery experimented with otoneurological data. Comput Methods Programs Biomed 2008; 91: 154-64.
  • 48 Lin JH, Haug PJ. Data preparation framework for preprocessing clinical data in data mining. AMIA Annu Symp Proc 2006; : 489-93.
  • 49 Alvarez SM, Poelstra BA, Burd RS. Evaluation of a Bayesian decision network for diagnosing pyloric stenosis. J Pediatr Surg 2000; 41: 155-61.
  • 50 Cohen G, Hilario M, Sax H, Hugo S, Geissbuhler A. Learning from imbalanced data in surveillance of nosocomial infection. Artif Intell Med 2006; 37: 7-18.
  • 51 Bellazzi R, Larizza C, Magni P, Bellazzi R. Temporal data mining for the quality assessment of hemodialysis services. Artif Intell Med 2005; 34 (01) 25-39.
  • 52 Nannings B, Bosman RJ, Abu-Hanna A. A subgroup discovery approach for scrutinizing blood glucose management guidelines by the identification of hyperglycemia determinants in ICU patients. Methods Inf Med 2008; 47 (06) 480-8.
  • 53 Jalloh OB, Waitman LR. Improving Computerized Provider Order Entry (CPOE) usability by data mining users’queries from access logs. AMIA Annu Symp Proc 2006; : 379-83.
  • 54 Korhonen M, Salo S, Suni J, Larmas M. Computed online determination of life-long mean index values for carious, extracted, and/or filled permanent teeth. Acta Odontol Scand 2007; 65: 214-8.
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