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Prediction of Cerebral Aneurysm Rupture Using Hemodynamic, Morphologic and Clinical Features: A Data Mining Approach

机译:利用血流动力学,形态学和临床特征预测脑动脉瘤破裂:数据挖掘方法

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Cerebral aneurysms pose a major clinical threat and the current practice upon diagnosis is a complex, lengthy, and costly, multi-criteria analysis, which to date is not fully understood. This paper reports the development of several classifiers predicting whether a given clinical case is likely to rupture taking into account available information of the patient and characteristics of the aneurysm. The dataset used included 157 cases, with 294 features each. The broad range of features include basic demographics and clinical information, morphological characteristics computed from the patient's medical images, as well as results gained from personalised blood flow simulations. In this premiere attempt the wealth of aneurysm-related information gained from multiple heterogeneous sources and complex simulation processes is used to systematically apply different data-mining algorithms and assess their predictive accuracy in this domain. The promising results show up to 95% classification accuracy. Moreover, the analysis also enables to confirm or reject risk factors commonly accepted or suspected in the domain.
机译:脑动脉瘤构成一个主要的临床威胁,目前的诊断实践是复杂,冗长,昂贵的,迄今为止的多标准分析尚未完全理解。本文报告了几种预测给定的临床案件是否可能破坏患者的可用信息和动脉瘤的特征的分类器的发展。使用的数据集包含157个案例,每个功能为294个功能。广泛的特征包括基本人口统计数据和临床信息,从患者的医学图像计算的形态特征,以及从个性化血液流量模拟中获得的结果。在这种首映式中,尝试从多个异构来源和复杂模拟过程中获得的动脉瘤相关信息的财富用于系统地应用不同的数据挖掘算法并评估其在该域中的预测精度。有希望的结果显示出高达95%的分类准确性。此外,分析还使得能够确认或拒绝域中常见或怀疑的风险因素。

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