Parkinson’s Disease Prediction Using Machine Learning Models

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Abstract

Parkinson's disease is a neurodegenerative condition that affects billions of persons worldwide. This abstract aims to shed light on the causes and consequences of this debilitating condition. The primary cause of Parkinson's disease is the progressive degeneration of dopaminergic neurons in the substantia nigra region of brain. This neuronal loss results in a depletion of dopamine, a crucial neurotransmitter responsible for regulating movement and coordination. Therefore, individuals with Parkinson's disease have symptoms like tremors, rigidity, bradykinesia, and postural instability. These signs profoundly impact the quality of life, causing difficulties with daily activities and reducing independence. In addition to motor symptoms, non-motor symptoms such as depression, cognitive impairment, and autonomic dysfunction often accompany the disease, further complicating the clinical picture. Research into the causes and consequences of Parkinson's disease is ongoing, with a focus on using efficient medications and refining the quality of life for those affected by this condition. Now by Using machine learning algorithms, we can predict whether a person has a specific disease based on input values like gender and age. These algorithms analyze patterns and relationships in data to get predictions about an individual's health status. This technology can assist in early disease detection and improve healthcare outcomes..
利用机器学习模型预测帕金森病
帕金森病是一种神经退行性疾病,影响着全球数十亿人。本摘要旨在阐明这种使人衰弱的疾病的原因和后果。帕金森病的主要病因是大脑黑质区域的多巴胺能神经元逐渐退化。多巴胺是一种负责调节运动和协调的重要神经递质。因此,帕金森病患者会出现震颤、僵直、运动迟缓和姿势不稳等症状。这些症状会严重影响患者的生活质量,给日常活动带来困难,并降低患者的独立性。除了运动症状外,抑郁、认知障碍和自主神经功能障碍等非运动症状也常常伴随着这种疾病,使临床症状更加复杂。对帕金森病的原因和后果的研究一直在进行,重点是使用高效药物和改善患者的生活质量。现在,通过使用机器学习算法,我们可以根据性别和年龄等输入值预测一个人是否患有某种疾病。这些算法会分析数据中的模式和关系,从而预测个人的健康状况。这项技术可以帮助早期发现疾病,改善医疗效果。
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