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Prediction of Cerebral Aneurysm Rupture
Paris, France October 29-October 31
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ICTAI.2007.9819th IEEE International Conference on ...
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Cerebral aneurysms are weak or thin spots on blood ves- sels in the brain that balloon out. While the majority of aneurysms do not burst, those that do would lead to se- rious complications including hemorrhagic stroke, perma- nent nerve damage, or death. Yet, surgical options for treat- ing cerebral aneurysms carry high risk to the patient. It is vital for the doctors to accurately diagnose aneurysms that have high probabilities of rupturing. In this applica- tion, the patient dataset has many attributes, ranging from patient profile to results from diagnostic test and features extracted from brain images. Many of the attributes are dis- crete and have missing values. The dataset is also highly biased, with 15% unrupture cases and 85% rupture cases. Building a classifier that unerringly predicts the unrupture (rare) class is a challenge. In this paper, we describe a sys- tematic approach to build such a classifier through suitable combination of data mining algorithms. Our approach au- tomatically determines the optimal combination of these al- gorithms for a dataset. The system has an accuracy of 92% and is currently being deployed at the Huashan Hospital.
Citation:
Qiangfeng Peter Lau, Wynne Hsu, Mong Li Lee, Ying Mao, Liang Chen, "Prediction of Cerebral Aneurysm Rupture," ictai, vol. 1, pp.350-357, 19th IEEE International Conference on Tools with Artificial Intelligence - Vol.1 (ICTAI 2007), 2007
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