基于小波能量熵和支持向量机的酒精中毒分析

Yan Yan, Dimas Lima
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引用次数: 1

摘要

酒精已经成为社交礼仪中常见的饮品,人们不注意自己的酒精摄入量,从而导致酗酒。在临床上,医生很难迅速确定病人是否有酗酒的危险,除非医生有足够的经验来实现快速诊断。但不明显的表现和潜在的危害没有得到及时解决,使患者往往错过了最佳调整期。在普通脑电图(EEG)的基础上,一些研究试图将成像与计算机辅助诊断相结合,以帮助医生完成更复杂的诊断。各种计算机辅助方法层出不穷,具有良好的潜在应用前景。本文提出了一种结合支持向量机分类器提取小波变换后的脑图像能量熵的新方法,用于酒精中毒检测。实验结果表明,该方法灵敏度为92.34±1.86%,特异度为92.72±1.00%,准确度为92.53±0.80%,与新技术相比具有更好的应用能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Alcoholism via wavelet energy entropy and support vector machine
Alcohol has become a common drink in social etiquette that people inattention to their alcohol intake, resulting in alcoholism. Clinically, it is difficult for the physician to quickly determine whether a patient is at risk for alcoholism unless the physician has sufficient experience to achieve a rapid diagnosis. However, the non-obvious manifestations and potential harms have not been solved in time, so that patients often miss the optimal adjustment period. Based on the common electroencephalogram (EEG), some studies have attempted to combine imaging with computer-aided diagnosis to assist physicians to complete a more sophisticated diagnosis. Various computer-aided methods emerge endlessly and bring good potential application prospects. In this paper, we propose a new method to extract the energy entropy of brain image after wavelet transformation, which combined with a support vector machine classifier for alcohol intoxication detection. In the experiment, our method obtained 92.34±1.86% sensitivity, 92.72±1.00% specificity and 92.53±0.80% accuracy, showing better application ability compared with the new technique.
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