Anwar, Naveed, Oakes, Michael, Wermter, Stefan and Heinrich, Stefan (2010) Clustering audiology data. In: 19th Annual Machine Learning Conference of Belgium and The Netherlands, 27-28 May 2010, Leuven.
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Abstract
In this paper we describe new results of statistical and neural data mining of audiology patient records, with the ultimate aim of looking for factors influencing which patients would most benefit from being fitted with a hearing aid. We describe how a combination of neural and statistical techniques can usefully subdivide a set of patients into clusters, based on their hearing thresholds at six different frequencies, and then label the clusters with meaningful text labels. In our first experiment, we cluster the patients based on similarities between their audiograms using k-means clustering, resulting in two main clusters. We then use the chi-squared test to label each cluster with the keywords selected from the text comment, diagnosis and hearing aid type associated with each patient which are most typical (and atypical) of each cluster. In our second experiment, we again cluster the patients based on similarities between their audiograms, but this time using a self-organizing
map (SOM). Here the locations in the resulting map, corresponding to individual patients, are labeled with the type of hearing aid selected for each patient. We demonstrate that this automatic textual labeling addresses well the heterogeneous character of medical
audiology records, since they consist of numeric, structured and free text data.
Item Type: | Conference or Workshop Item (Paper) |
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Uncontrolled Keywords: | audiology, k-means, chi-squared, SOM |
Subjects: | G400 Computer Science |
Department: | Faculties > Engineering and Environment > Mathematics, Physics and Electrical Engineering |
Related URLs: | |
Depositing User: | Naveed Anwar |
Date Deposited: | 24 Apr 2015 14:39 |
Last Modified: | 17 Dec 2023 16:36 |
URI: | https://nrl.northumbria.ac.uk/id/eprint/22205 |
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