Comparison of distance metrics for hierarchical data in medical databases

Hassan, Diman, Aickelin, Uwe and Wagner, Christian (2014) Comparison of distance metrics for hierarchical data in medical databases. In: Proceedings of the 2014 World Congress on Computational Intelligence (WCCI 2014), 6-11 July 2014, Beijing, China.

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Abstract

Distance metrics are broadly used in different research areas and applications, such as bio-informatics, data mining and many other fields. However, there are some metrics, like pg-gram and Edit Distance used specifically for data with a hierarchical structure. Other metrics used for non-hierarchical data are the geometric and Hamming metrics. We have applied these metrics to The Health Improvement Network (THIN) database which has some hierarchical data. The THIN data has to be converted into a tree-like structure for the first group of metrics. For the second group of metrics, the data are converted into a frequency table or matrix, then for all metrics, all distances are found and normalised. Based on this particular data set, our research question: which of these metrics is useful for THIN data?. This paper compares the metrics, particularly the pogram metric on finding the similarities of patients' data. It also investigates the similar patients who have the same close distances as well as the metrics suitability for clustering the whole patient population. Our results show that the two groups of metrics perform differently as they represent different structures of the data. Nevertheless, all the metrics could represent some similar data of patients as well as discriminate sufficiently well in clustering the patient population using k-means clustering algorithm.

Item Type: Conference or Workshop Item (Paper)
RIS ID: https://nottingham-repository.worktribe.com/output/737014
Additional Information: Published in: 2014 International Joint Conference on Neural Networks (IJCNN). Piscataway, NJ : IEEE,2014. (ISBN: 9781479966271), pp. 3636-3643 (doi: 10.1109/IJCNN.2014.6889554), © IEEE 2014.
Keywords: Biomedical Informatics, Data Mining, Machine Learning
Schools/Departments: University of Nottingham, UK > Faculty of Science > School of Computer Science
Depositing User: Aickelin, Professor Uwe
Date Deposited: 30 Sep 2014 10:32
Last Modified: 04 May 2020 16:54
URI: https://eprints.nottingham.ac.uk/id/eprint/3349

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