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Stratification of Parkinson Disease using python scikit-learn ML library

机译:使用python scikit-learn ML库将帕金森病分层

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Parkinson's disease is a disorder in the central nervous system which affects in the movement functions of the body. It is a chronic disease with the symptoms growing with time. It generally affects the older people when their symptoms gradually increase to a maximum. The disease can affect the basic functions of the body such as hearing, walking, talking etc. The analysis of this disease can be done with the help of generic machine learning algorithms which produce varying accuracies. Thus, the best one is chosen which will provide the highest accuracy in predicting if the disease is present in the patient or not. The dataset is taken from the UCI machine learning repository namely-Parkinson disease dataset with replicated acoustic features. There are 48 features present in the dataset pertaining to the disease for 240 patients. Various machine learning techniques that are utilized compared their efficiency in the classification. Thus, the best one is chosen with the highest accuracy since the applications in healthcare generally requires more accuracy and efficiencies cannot be compromised. The significant models that are used in this process are naaive bayes classifier, gradient boosting, support vector machines. These techniques can be very powerful for the doctors in order to predict the disease by analysing the features present in the patients.
机译:帕金森氏病是中枢神经系统疾病,会影响人体的运动功能。它是一种慢性疾病,其症状会随着时间而增长。当老年人的症状逐渐增加到最大程度时,它通常会影响老年人。该疾病可以影响身体的基本功能,例如听,走路,说话等。可以借助产生不同准确性的通用机器学习算法来分析该疾病。因此,选择最好的一种,它将在预测患者中是否存在该疾病方面提供最高的准确性。该数据集来自UCI机器学习存储库,即具有复制声学特征的帕金森病数据集。数据集中有48个与240例患者有关的疾病特征。所使用的各种机器学习技术在分类中比较了它们的效率。因此,由于在医疗保健中的应用通常需要更高的准确性,并且效率不会受到影响,因此选择具有最高准确性的最佳解决方案。在此过程中使用的重要模型是朴素贝叶斯分类器,梯度提升,支持向量机。这些技术对于医生来说非常强大,以便通过分析患者中存在的特征来预测疾病。

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