Palmirotta Cinzia, Aresta Simona, Battista Petronilla, Tagliente Serena, Lagravinese Gianvito, Mongelli Davide, Gelao Christian, Fiore Pietro, Castiglioni Isabella, Minafra Brigida, Salvatore Christian
Istituti Clinici Scientifici Maugeri IRCCS, Laboratory of Neuropsychology, Bari Institute, 70124 Bari, Italy.
Istituti Clinici Scientifici Maugeri IRCCS, Neurorehabilitation Unit of Bari Institute, 70124 Bari, Italy.
Brain Sci. 2024 Jan 28;14(2):137. doi: 10.3390/brainsci14020137.
While extensive research has documented the cognitive changes associated with Parkinson's disease (PD), a relatively small portion of the empirical literature investigated the language abilities of individuals with PD. Recently, artificial intelligence applied to linguistic data has shown promising results in predicting the clinical diagnosis of neurodegenerative disorders, but a deeper investigation of the current literature available on PD is lacking. This systematic review investigates the nature of language disorders in PD by assessing the contribution of machine learning (ML) to the classification of patients with PD. A total of 10 studies published between 2016 and 2023 were included in this review. Tasks used to elicit language were mainly structured or unstructured narrative discourse. Transcriptions were mostly analyzed using Natural Language Processing (NLP) techniques. The classification accuracy (%) ranged from 43 to 94, sensitivity (%) ranged from 8 to 95, specificity (%) ranged from 3 to 100, AUC (%) ranged from 32 to 97. The most frequent optimal linguistic measures were lexico-semantic (40%), followed by NLP-extracted features (26%) and morphological consistency features (20%). Artificial intelligence applied to linguistic markers provides valuable insights into PD. However, analyzing measures derived from narrative discourse can be time-consuming, and utilizing ML requires specialized expertise. Moving forward, it is important to focus on facilitating the integration of both narrative discourse analysis and artificial intelligence into clinical practice.
虽然大量研究记录了与帕金森病(PD)相关的认知变化,但实证文献中相对较少一部分研究了PD患者的语言能力。最近,应用于语言数据的人工智能在预测神经退行性疾病的临床诊断方面显示出了有前景的结果,但目前缺乏对现有PD文献的更深入研究。本系统评价通过评估机器学习(ML)对PD患者分类的贡献,来研究PD语言障碍的本质。本评价纳入了2016年至2023年间发表的共10项研究。用于引出语言的任务主要是结构化或非结构化叙述性话语。转录内容大多使用自然语言处理(NLP)技术进行分析。分类准确率(%)在43至94之间,敏感度(%)在8至95之间,特异度(%)在3至100之间,曲线下面积(AUC,%)在32至97之间。最常见的最佳语言测量指标是词汇语义(40%),其次是NLP提取的特征(26%)和形态一致性特征(20%)。应用于语言标记的人工智能为PD提供了有价值的见解。然而,分析从叙述性话语中得出的测量指标可能很耗时,并且利用ML需要专业知识。展望未来,重要的是专注于促进将叙述性话语分析和人工智能整合到临床实践中。