An Effective Machine Learning Techniques to Detect Parkinson's Disease

Narisetty Srinivasarao, Daram Anusha, Uravakonda Mayuri, Surisetti Eswar
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引用次数: 1

Abstract

Parkinson’s disease is one type of neurological disorders that affects the systema nervosum and causes unintended or uncontrollable movement in the body parts. More than 6 million people all over the world were affected by PD disease. It is difficult to identify the disease at its early stages. Signs of the disease may be can vary from person to person. Symptoms usually begin with a tremor in one hand and gradually start affecting the whole body. At present, there is no clinical equipment or process to recognize this disease at the beginning stage of Parkinson’s disease. Doctors usually diagnose the person by taking a previous medical history and MRI images of the person’s brain and also by observing the symptoms of the person manually which takes more time and cannot detect the disease at its early stages. This disease can be detected at early stages using a machine learning approach with high accuracy. Voice and spiral drawing dataset are collected from normal and PD-affected people and is given as input. 60% of the total dataset is used to train and build the model and the resting 40% dataset is used to test the model. By applying Linear regression and support vector machine and KNN algorithms on voice data sets, this system measures the deflections in the voice of a person. Accuracy with different algorithms is measured. Random forest and CNN algorithms are applied to the spiral data set. Random forest converts spiral drawings into pixels which are very helpful for classification. At the time of testing, the pixels of the current drawing are compared with the previously trained models to detect the disease. By combining the results of the voice dataset and spiral drawings dataset, the machine will detect the disease with high accuracy. The data of a person can be entered into the dataset to detect the disease.
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一种检测帕金森病的有效机器学习技术
帕金森氏症是一种神经系统疾病,它会影响神经系统,导致身体部位出现意外或无法控制的运动。全世界有超过600万人患有帕金森病。这种疾病在早期阶段很难确诊。这种疾病的症状可能因人而异。症状通常始于一只手的震颤,然后逐渐影响全身。目前,临床上还没有设备或流程可以在帕金森病的初期就识别出这种疾病。医生通常通过以往的病史和患者大脑的核磁共振成像图像来诊断患者,也通过人工观察患者的症状,这需要更多的时间,并且无法在早期阶段发现疾病。这种疾病可以使用高精度的机器学习方法在早期阶段检测到。声音和螺旋绘图数据集从正常和pd患者收集,并作为输入。总数据集的60%用于训练和构建模型,其余40%的数据集用于测试模型。该系统通过对语音数据集应用线性回归、支持向量机和KNN算法来测量人的语音偏转。测量了不同算法的精度。随机森林和CNN算法应用于螺旋数据集。随机森林将螺旋图形转换为像素,这对分类非常有帮助。在测试时,将当前绘制的像素与先前训练的模型进行比较,以检测疾病。通过结合语音数据集和螺旋图数据集的结果,机器将以较高的准确率检测疾病。一个人的数据可以输入数据集来检测疾病。
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