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Nighttime Depression Episodes Classification using a Formal Method: Knowledge Discovery in Databases

机译:使用正式方法的夜间抑郁发作分类:数据库中的知识发现

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Depression is a disease that affects 7.5 % percent of global disability. Depression is now-days a common disorder that affects the state of mind and produces sleep disorders. Around 50% of depressive patients suffer from sleep disturbances. In this work, a data mining process to classified depressive and not depressive episodes during nighttime is carried out based on a formal method of data mining called Knowledge Discovery in Databases (KDD). This process guides the process of data mining with stages well established: Pre-KDD, Selection, Pre-processing, Transformation, Data Mining, Evaluation, and Post-KDD. The dataset used for this paper is DEPRESJON dataset which contains the motor activity of 23 unipolar and bipolar depressed patients and 32 healthy controls. The classification of depressive and not depressive episodes is deployed with the Random Forest method and a model constructed of 8 features. Results on specificity are equal to 0.9927 and sensitivity equal to 0.9991.
机译:抑郁症是一种疾病,会影响全球7.5%的残疾。如今,抑郁症是一种常见的疾病,会影响心理状态并导致睡眠障碍。大约50%的抑郁症患者患有睡眠障碍。在这项工作中,基于称为“数据库中的知识发现”(KDD)的正式数据挖掘方法,对夜间的抑郁和非抑郁发作进行了分类的数据挖掘过程。此过程以良好建立的阶段指导数据挖掘的过程:KDD之前,选择,预处理,转换,数据挖掘,评估和KDD后。本文使用的数据集是DEPRESJON数据集,其中包含23位单极和双相抑郁患者和32位健康对照者的运动活动。使用随机森林方法和由8个特征构成的模型来对抑郁发作和非抑郁发作进行分类。特异性结果等于0.9927,敏感性结果等于0.9991。

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