Liu Ye, Wang Xi-Xi, Wang Xu-Jun, Yin Min-Min, Tan Mo-Yao, Wang Chang-Peng, Feng Tie-Nan, Liu Jie, Wang Yu, Li Xuan, Peng Si-Jia, Zhang Xiao-Jin, Zhu Xiao-Ying, Feng Ya, Tan Eng-King, Wu Yun-Cheng
Department of Neurology, Shanghai General Hospital, Shanghai Jiao Tong University School of Medicine, China.
SJTU-Yale Joint Center for Biostatistics and Data Science, Shanghai Jiao Tong University, Shanghai, China.
Parkinsonism Relat Disord. 2025 Mar;132:107306. doi: 10.1016/j.parkreldis.2025.107306. Epub 2025 Jan 27.
Acoustic prosodic analysis is a novel approach that can be used to identify patients with mild cognitive impairment (MCI) and dementia in Alzheimer's disease (AD). We hypothesize that acoustic analysis can also differentiate cognitive impairment in Parkinson's disease (PD).
We investigated acoustic parameters in 90 subjects including 30 PD with normal cognition (PD-NC), 30 PD with mild cognitive impairment (PD-MCI) and 30 PD with dementia (PDD). The reading task "Supermarket Passage" and the picture description task "Cookie Theft" were used. Feature selection and modelling were then performed to systematically evaluate the importance and clinical implications of the acoustic parameters in identifying PD with cognitive impairment.
Analysis of covariance (ANCOVA) and mediation analysis revealed that acoustic parameters were independently associated with cognitive impairment including PDD and PD-MCI. These Acoustic parameters enabled the detection of PD with cognitive impairment with an area under the receiver operating characteristic curve (AUC) of 0.826. Compared with PD-NC, speech rate, pre-verb pause (≥1s), between-utterance pause (≥2s) in the "Cookie Theft" task were the two key cognitive impairment detection factors, which were frequently identified by LASSO model in both PDD and PD-MCI. FSD of interrogative sentence was often selected in PDD. In feature selection, AUC was 0.944 in discriminating PDD from PD-NC and AUC was 0.753 in discriminating PD-MCI from PD-NC.
We demonstrated that acoustic parameters are useful in differentiating PD patients with cognitive impairment from patients with normal cognition after adjusting variables such as age, which was also a significant contributor to cognitive decline. Acoustic parameters may be valuable for automated screening the risk of cognitive decline in PD patients. It deserves further investigation.
声学韵律分析是一种可用于识别阿尔茨海默病(AD)中轻度认知障碍(MCI)和痴呆患者的新方法。我们假设声学分析也可以区分帕金森病(PD)中的认知障碍。
我们调查了90名受试者的声学参数,其中包括30名认知正常的帕金森病患者(PD-NC)、30名轻度认知障碍的帕金森病患者(PD-MCI)和30名帕金森病痴呆患者(PDD)。使用了阅读任务“超市段落”和图片描述任务“偷饼干”。然后进行特征选择和建模,以系统评估声学参数在识别认知障碍帕金森病患者中的重要性和临床意义。
协方差分析(ANCOVA)和中介分析表明,声学参数与包括PDD和PD-MCI在内的认知障碍独立相关。这些声学参数能够检测出认知障碍的帕金森病患者,其受试者工作特征曲线(AUC)下面积为0.826。与PD-NC相比,“偷饼干”任务中的语速、动词前停顿(≥1秒)、话语间停顿(≥2秒)是两个关键的认知障碍检测因素,在PDD和PD-MCI中均经常被LASSO模型识别。疑问句的语调下降在PDD中经常被选中。在特征选择中,区分PDD与PD-NC时的AUC为0.944,区分PD-MCI与PD-NC时的AUC为0.753。
我们证明,在调整年龄等变量后,声学参数有助于区分认知障碍的帕金森病患者和认知正常的患者,年龄也是认知下降的一个重要因素。声学参数可能对自动筛查帕金森病患者认知下降风险具有重要价值。值得进一步研究。