Methods Inf Med 2016; 55(05): 450-454
DOI: 10.3414/ME15-01-0137
Original Articles
Schattauer GmbH

To Explore Intracerebral Hematoma with a Hybrid Approach and Combination of Discriminative Factors

Hui-Chu Chiu
1   PhD Program of Technology Management, Chung-Hua University, Hsinchu, Taiwan
,
Deng-Yiv Chiu
2   Department of Information Management, Chung-Hua University, Hsinchu, Taiwan
,
Yao-Hsien Lee
3   Department of Finance, Chung-Hua University, Hsinchu, Taiwan
,
Chih-Cheng Wang
2   Department of Information Management, Chung-Hua University, Hsinchu, Taiwan
,
Chen-Shu Wang
4   Department of Information and Finance Management, National Taipei University of Technology, Taipei, Taiwan
,
Chi-Chung Lee
2   Department of Information Management, Chung-Hua University, Hsinchu, Taiwan
,
Ming-Hsiung Ying
2   Department of Information Management, Chung-Hua University, Hsinchu, Taiwan
,
Mei-Yu Wu
2   Department of Information Management, Chung-Hua University, Hsinchu, Taiwan
,
Wen-Chih Chang
2   Department of Information Management, Chung-Hua University, Hsinchu, Taiwan
› Author Affiliations
Further Information

Publication History

Received 19 October 2015

Accepted in revised form: 04 April 2016

Publication Date:
08 January 2018 (online)

Summary

Objectives: To find discriminative combination of influential factors of Intracerebral hematoma (ICH) to cluster ICH patients with similar features to explore relationship among influential factors and 30-day mortality of ICH. Methods: The data of ICH patients are collected. We use a decision tree to find discriminative combination of the influential factors. We cluster ICH patients with similar features using Fuzzy C-means algorithm (FCM) to construct a support vector machine (SVM) for each cluster to build a multi-SVM classifier. Finally, we designate each testing data into its appropriate cluster and apply the corresponding SVM classifier of the cluster to explore the relationship among impact factors and 30-day mortality. Results: The two influential factors chosen to split the decision tree are Glasgow coma scale (GCS) score and Hematoma size. FCM algorithm finds three centroids, one for high danger group, one for middle danger group, and the other for low danger group. The proposed approach outperforms benchmark experiments without FCM algorithm to cluster training data. Conclusions: It is appropriate to construct a classifier for each cluster with similar features. The combination of factors with significant discrimination as input variables should outperform that with only single discriminative factor as input variable.

* Supplementary material published on our web-site http://dx.doi.org/10.3414/ME15-01-0137


 
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