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Improving Prognostic Prediction from Mild Cognitive Impairment to Alzheimer's Disease Using Genetic Algorithms

机译:利用遗传算法改善对alzheimer疾病的温和认知障碍的预后预测

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Alzheimer's disease is becoming a global epidemic. Its impact is devastating for patients', their families and the economy. As such, it is important to build good prognostic models that can predict conversion to dementia so that treatment measures could be taken. In this work, we applied a genetic algorithm to choose the most relevant neuropsychological and demographic features for prognostic prediction. The results show improvements over other feature selection methods, with our model being able to predict conversion to dementia with AUC and sensitivity of 88% . Moreover, we found that with only 7 features it is possible to achieve good classification results. These results could help physicians to adjust treatment and select which exams should be performed regularly to increase efficiency in clinical practice.
机译:阿尔茨海默病正成为全球流行病。它的影响对患者,家庭和经济造成毁灭性。因此,构建能够预测痴呆症的良好预后模型是重要的,因此可以采取治疗措施。在这项工作中,我们应用了一种遗传算法来选择预测预测的最相关的神经心理学和人口统计学特征。结果表明,对其他特征选择方法的改进,我们的模型能够将转化对痴呆症的转化为88%。此外,我们发现只有7个功能,可以实现良好的分类结果。这些结果可以帮助医生调整治疗,选择应定期进行哪些考试以提高临床实践的效率。

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