Particularities of data mining in medicine: lessons learned from patient medical time series data analysis

被引:0
作者
Shadi Aljawarneh
Aurea Anguera
John William Atwood
Juan A. Lara
David Lizcano
机构
[1] Jordan University of Science and Technology,Faculty of Computer and Information Technology
[2] Technical University of Madrid,School of Computer Science, Campus de Montegancedo
[3] Concordia University,High Speed Protocols Laboratory
[4] Madrid Open University,UDIMA, School of Computer Science
来源
EURASIP Journal on Wireless Communications and Networking | / 2019卷
关键词
KDD; Data mining; Physiological signals; Medical data mining; Lessons learned; EEG; Stabilometry; Sensors;
D O I
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中图分类号
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摘要
Nowadays, large amounts of data are generated in the medical domain. Various physiological signals generated from different organs can be recorded to extract interesting information about patients’ health. The analysis of physiological signals is a hard task that requires the use of specific approaches such as the Knowledge Discovery in Databases process. The application of such process in the domain of medicine has a series of implications and difficulties, especially regarding the application of data mining techniques to data, mainly time series, gathered from medical examinations of patients. The goal of this paper is to describe the lessons learned and the experience gathered by the authors applying data mining techniques to real medical patient data including time series. In this research, we carried out an exhaustive case study working on data from two medical fields: stabilometry (15 professional basketball players, 18 elite ice skaters) and electroencephalography (100 healthy patients, 100 epileptic patients). We applied a previously proposed knowledge discovery framework for classification purpose obtaining good results in terms of classification accuracy (greater than 99% in both fields). The good results obtained in our research are the groundwork for the lessons learned and recommendations made in this position paper that intends to be a guide for experts who have to face similar medical data mining projects.
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