Publication: Classification and regression Tree analysis for predicting visual outcome after open-globe injuries in Siriraj Hospital
Issued Date
2014-01-01
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ISSN
01252208
01252208
01252208
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2-s2.0-84914115802
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Mahidol University
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SCOPUS
Bibliographic Citation
Journal of the Medical Association of Thailand. Vol.97, No.9 (2014), 939-946
Suggested Citation
Nattapong Mekhasingharak, Chakrapong Namatra Classification and regression Tree analysis for predicting visual outcome after open-globe injuries in Siriraj Hospital. Journal of the Medical Association of Thailand. Vol.97, No.9 (2014), 939-946. Retrieved from: https://repository.li.mahidol.ac.th/handle/20.500.14594/34441
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Title
Classification and regression Tree analysis for predicting visual outcome after open-globe injuries in Siriraj Hospital
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Abstract
© 2014, Medical Association of Thailand. All rights reserved. Objective: To create a model for predicting visual outcome after open-globe injuries by using data of Siriraj Hospital.Material and Method: Retrospective data of patients presented with open-globe injuries between January 2007 and December 2010 were used to create prognostic model. Seventeen factors at initial presentation were collected and evaluated to develop the model by mean of Classification and Regression Tree analysis (CART). The prognostic tree was validated by using the sample of open-globe patients who presented between January 2011 and July 2011.Results: The information of 231 eyes from 230 patients was analyzed to create a classification tree model. The calculated model composed of the two greatest predictive factors, no light perception (NPL), and presence of relative afferent pupillary defect (RAPD). No patient with NPL at initial examination had vision at the six-month follow-up period. The other patients could be classified and predicted vision by using the presence of RAPD.Conclusion: The classification tree model developed in the present study is easy to calculate and has major significant predictive outcome for the open-globe injured patients.