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Application of learning vector quantization for localization of myocardial infarction

机译:学习矢量量化在心肌梗死本地化中的应用

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In this study myocardial infarction was localised by a Learning Vector Quantization (LVQ) classifier. Only information about ST-elevations in all 12 leads of the standard ECG were used. The significance of proper initialisation is demonstrated. A total classification accuracy of 85.6% was achieved by a classifier trained with the optimized-learning rate LVQ1 and 50% of the 769 patients. When the classifier was further trained with the LVQ2.1 and the LVQ3 algorithms no significant improvement in the classification accuracy was observed.
机译:在本研究中,心肌梗死通过学习矢量量化(LVQ)分类器定位。仅使用了关于标准ECG的所有12个引导率的ST-EXTATION的信息。证明了适当初始化的重要性。总分类准确性为85.6%,通过培训的分类器,具有优化的学习率LVQ1和769名患者的50%。当使用LVQ2.1进一步训练分类器时,观察到LVQ3算法没有显着改善分类准确性。

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