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Classification of Benign Paroxysmal Positioning Vertigo Types from Dizziness Handicap Inventory using Machine Learning Techniques

机译:使用机器学习技术从头晕障碍库存中分类良性阵发性定位眩晕类型

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Benign Paroxysmal Positioning Vertigo (BPPV) is one of the causes of vertigo which extremely affects the daily life of patients. Different types of BPPV are treated in a different way. Physicians differentiate the BPPV types using nystagmus characteristics. However, some patients have unclear nystagmus, so their treatments are delayed due to the difficulty of diagnosis. Dizziness Handicap Inventory (DHI) is a tool to assess the severity of dizziness before a patient is diagnosed by a physician. The use of DHI can distinguish BPPV types which can help physicians decide what treatments would be suitable for patients. This research aims to study the ability of using DHI for diferrential diagnosis of Posterior canal - Benign Paroxysmal Positioning Vertigo (PC-BPPV) and Horizontal canal - Benign Paroxysmal Positioning Vertigo (HC-BPPV) via machine learning techniques. We used feature selection techniques and feature engineering to increase the power of machine learning algorithms. Random Forest, Support vector machine, K-Nearest Neighbor and Na?ve Bayes were used to develop predictive models from DHI features that have statistically significant. Accuracy, precision, recall, and F1-score were used to evaluate the performance of each model. It reveals that F7+E23, age and P8 are the top three important features and the model using Gaussian Na?ve Bayes is the best model to discriminate HC-BPPV and PC-BPPV with 73.91% accuracy, 66.67% precision, 80.00% recall and 72.73% F1-score. In conclusion, the models that were created from DHI score can predict BPPV types at a certain level, but still not very good. Physicians have to use patient's medical history and nystagmus observation for diagnosis. In the future, if we can collect more data or features, we may reduce the overfitting problem and have a better performance model.
机译:良性阵发性定位眩晕(BPPV)是极端影响患者日常生活的眩晕原因之一。不同类型的BPPV以不同的方式处理。医生使用眼球震颤特性区分BPPV类型。然而,一些患者尚不清楚的眼球菌症,因此由于诊断难度,它们的治疗被延迟。头晕障碍库存(DHI)是一种评估医生诊断前的头晕严重程度的工具。使用DHI可以区分BPPV类型,可以帮助医生决定患者适合的治疗方法。本研究旨在研究使用DHI对后管道 - 良性阵发性定位眩晕(PC-BPPV)和水平管道 - 良性阵发性定位眩晕(HC-BPPV)的能力。我们使用了特征选择技术和功能工程来增加机器学习算法的力量。随机森林,支持向量机,K-最近的邻居和NA?Ve Bayes用于开发从具有统计意义的DHI功能的预测模型。准确性,精度,召回和F1分数用于评估每个模型的性能。它揭示了F7 + E23,年龄和P8是使用高斯Na've贝斯的前三个重要特征和模型,是鉴别HC-BPPV和PC-BPPV的最佳模型,精度为73.91%,精度为66.67%,80.00%召回和72.73%f1分数。总之,从DHI得分创建的模型可以在一定程度上预测BPPV类型,但仍然不是很好。医生必须使用患者的病史和眼球震颤观察诊断。将来,如果我们可以收集更多的数据或功能,我们可能会降低过度装备的问题并具有更好的性能模型。

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