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Analyze Informant-Based Questionnaire for The Early Diagnosis of Senile Dementia Using Deep Learning

机译:利用深度学习分析基于线人的痴呆症的早期诊断问卷

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Objective: This paper proposes a multiclass deep learning method for the classification of dementia using an informant-based questionnaire. Methods: A deep neural network classification model based on Keras framework is proposed in this paper. To evaluate the advantages of our proposed method, we compared the performance of our model with industry-standard machine learning approaches. We enrolled 6,701 individuals, which were randomly divided into training data sets (6030 participants) and test data sets (671 participants). We evaluated each diagnostic model in the test set using accuracy, precision, recall, and F1-Score. Results: Compared with the seven conventional machine learning algorithms, the DNN showed higher stability and achieved the best accuracy with 0.88, which also showed good results for identifying normal (F1-score = 0.88), mild cognitive impairment (MCI) (F1-score = 0.87), very mild dementia (VMD) (F1-score = 0.77) and Severe dementia (F1-score = 0.94). Conclusion: The deep neural network (DNN) classification model can effectively help doctors accurately screen patients who have normal cognitive function, mild cognitive impairment (MCI), very mild dementia (VMD), mild dementia (Mild), moderate dementia (Moderate), and severe dementia (Severe).
机译:目的:本文采用了一种使用信息的问卷的痴呆症分类的多级深度学习方法。方法:本文提出了一种基于Keras框架的深神经网络分类模型。为了评估我们提出的方法的优点,我们将模型与行业标准机器学习方法进行了比较了我们的模型。我们注册了6,701个个人,随机分为培训数据集(6030名参与者)和测试数据集(671名参与者)。我们使用精度,精度,召回和F1分数评估了测试集中的每个诊断模型。结果:与七种常规机器学习算法相比,DNN稳定性较高,实现了0.88的最佳精度,也显示出识别正常(F1-得分= 0.88),轻度认知障碍(MCI)的良好结果(F1分数= 0.87),非常温和的痴呆(VMD)(F1-得分= 0.77)和严重痴呆(F1-Score = 0.94)。结论:深神经网络(DNN)分类模型可以有效帮助医生准确筛选具有正常认知功能的患者,轻度认知障碍(MCI),非常轻微的痴呆(VMD),轻度痴呆(轻度),中度痴呆(中等),和严重的痴呆(严重)。

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