Neuro-Computing & Neuro-Robotics Research Group, Complutense University of Madrid, 28040 Madrid, Spain.
Innovation Group, Institute for Health Research San Carlos Clinical Hospital (IdISSC), 28040 Madrid, Spain.
Int J Environ Res Public Health. 2022 Sep 1;19(17):10884. doi: 10.3390/ijerph191710884.
Parkinson's disease (PD) is an incurable neurodegenerative disorder which affects over 10 million people worldwide. Early detection and correct evaluation of the disease is critical for appropriate medication and to slow the advance of the symptoms. In this scenario, it is critical to develop clinical decision support systems contributing to an early, efficient, and reliable diagnosis of this illness. In this paper we present a feasibility study for a clinical decision support system for the diagnosis of PD based on the acoustic characteristics of laughter. Our decision support system is based on laugh analysis with speech recognition methods and automatic classification techniques. We evaluated different cepstral coefficients to identify laugh characteristics of healthy and ill subjects combined with machine learning classification models. The decision support system reached 83% accuracy rate with an AUC value of 0.86 for PD-healthy laughs classification in a database of 20,000 samples randomly generated from a pool of 120 laughs from healthy and PD subjects. Laughter could be employed for the efficient and reliable detection of PD; such a detection system can be achieved using speech recognition and automatic classification techniques; a clinical decision support system can be built using the above techniques. Significance: PD clinical decision support systems for the early detection of the disease will help to improve the efficiency of available and upcoming therapeutic treatments which, in turn, would improve life conditions of the affected people and would decrease costs and efforts in public and private healthcare systems.
帕金森病(PD)是一种无法治愈的神经退行性疾病,全球有超过 1000 万人受其影响。早期发现和正确评估疾病对于适当的药物治疗和减缓症状进展至关重要。在这种情况下,开发有助于早期、高效、可靠诊断该疾病的临床决策支持系统至关重要。本文介绍了一种基于笑声声学特征的 PD 临床决策支持系统的可行性研究。我们的决策支持系统基于语音识别方法和自动分类技术的笑声分析。我们评估了不同的倒谱系数,以识别健康和患病受试者的笑声特征,并结合机器学习分类模型进行分类。该决策支持系统在一个由 120 个健康和 PD 受试者的笑声组成的样本池中随机生成的 20000 个样本的数据库中,对 PD-健康笑声的分类达到了 83%的准确率,AUC 值为 0.86。笑声可以用于 PD 的高效和可靠检测;可以使用语音识别和自动分类技术实现这种检测系统;可以使用上述技术构建临床决策支持系统。意义:用于早期发现疾病的 PD 临床决策支持系统将有助于提高现有和即将推出的治疗方法的效率,从而改善受影响人群的生活条件,并降低公共和私人医疗保健系统的成本和工作量。