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Parkinson’s Disease Diagnosis Using Machine Learning and Voice

机译:使用机器学习和声音帕金森病的疾病诊断

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Biomarkers derived from human voice can offer in-sight into neurological disorders, such as Parkinson's disease (PD), because of their underlying cognitive and neuromuscular function. PD is a progressive neurodegenerative disorder that affects about one million people in the the United States, with approximately sixty thousand new clinical diagnoses made each year [1]. Historically, PD has been difficult to quantity and doctors have tended to focus on some symptoms while ignoring others, relying primarily on subjective rating scales [2]. Due to the decrease in motor control that is the hallmark of the disease, voice can be used as a means to detect and diagnose PD. With advancements in technology and the prevalence of audio collecting devices in daily lives, reliable models that can translate this audio data into a diagnostic tool for healthcare professionals would potentially provide diagnoses that are cheaper and more accurate. We provide evidence to validate this concept here using a voice dataset collected from people with and without PD. This paper explores the effectiveness of using supervised classification algorithms, such as deep neural networks, to accurately diagnose individuals with the disease. Our peak accuracy of 85% provided by the machine learning models exceed the average clinical diagnosis accuracy of non-experts (73.8%) and average accuracy of movement disorder specialists (79.6% without follow-up, 83.9% after follow-up) with pathological post-mortem examination as ground truth [3].
机译:由于其潜在的认知和神经肌肉功能,源自人类声音的生物标志物可以入视为神经系统障碍,例如帕金森病(PD)。 PD是一种渐进神经退行性疾病,影响美国约一百万人,每年大约六千次新的临床诊断[1]。从历史上看,PD难以数量,医生们倾向于关注一些症状,同时忽略他人,主要依赖于主观评级尺度[2]。由于电机控制的降低,即疾病的标志,声音可以用作检测和诊断PD的手段。在技​​术的进步和日常生活中的音频收集设备的进步,可靠的模型可以将该音频数据转化为医疗专业人士的诊断工具,可能会提供更便宜和更准确的诊断。我们提供有证据来使用从有和没有PD的人收集的语音数据集验证此概念。本文探讨了使用监督分类算法(如深神经网络)的有效性,以准确地诊断疾病的个体。我们的峰值精度为85%的机器学习模型超过了非专家的平均临床诊断准确性(73.8%)和运动障碍专家的平均准确性(79.6%,随访后83.9%)具有病理学验尸检查作为地面真相[3]。

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