| Literature DB >> 32992069 |
Elif Eyigoz1, Melody Courson2, Lucas Sedeño3, Katharina Rogg4, Juan Rafael Orozco-Arroyave5, Elmar Nöth6, Sabine Skodda7, Natalia Trujillo8, Mabel Rodríguez9, Jan Rusz10, Edinson Muñoz11, Juan F Cardona12, Eduar Herrera13, Eugenia Hesse14, Agustín Ibáñez15, Guillermo Cecchi1, Adolfo M García16.
Abstract
Embodied cognition research on Parkinson's disease (PD) points to disruptions of frontostriatal language functions as sensitive targets for clinical assessment. However, no existing approach has been tested for crosslinguistic validity, let alone by combining naturalistic tasks with machine-learning tools. To address these issues, we conducted the first classifier-based examination of morphological processing (a core frontostriatal function) in spontaneous monologues from PD patients across three typologically different languages. The study comprised 330 participants, encompassing speakers of Spanish (61 patients, 57 matched controls), German (88 patients, 88 matched controls), and Czech (20 patients, 16 matched controls). All subjects described the activities they perform during a regular day, and their monologues were automatically coded via morphological tagging, a computerized method that labels each word with a part-of-speech tag (e.g., noun, verb) and specific morphological tags (e.g., person, gender, number, tense). The ensuing data were subjected to machine-learning analyses to assess whether differential morphological patterns could classify between patients and controls and reflect the former's degree of motor impairment. Results showed robust classification rates, with over 80% of patients being discriminated from controls in each language separately. Moreover, the most discriminative morphological features were associated with the patients' motor compromise (as indicated by Pearson r correlations between predicted and collected motor impairment scores that ranged from moderate to moderate-to-strong across languages). Taken together, our results suggest that morphological patterning, an embodied frontostriatal domain, may be distinctively affected in PD across languages and even under ecological testing conditions.Entities:
Keywords: Automated speech analysis; Cross-linguistic validity; Linguistic assessments; Morphology; Parkinson's disease
Mesh:
Year: 2020 PMID: 32992069 PMCID: PMC7655620 DOI: 10.1016/j.cortex.2020.08.020
Source DB: PubMed Journal: Cortex ISSN: 0010-9452 Impact factor: 4.027