TY - JOUR
T1 - Automated Classification of Cognitive Decline and Probable Alzheimer’s Dementia Across Multiple Speech and Language Domains
AU - He, Rui
AU - Chapin, Kayla
AU - Al-Tamimi, Jalal
AU - Bel, Núria
AU - Marquié, Marta
AU - Rosende-Roca, Maitee
AU - Pytel, Vanesa
AU - Tartari, Juan Pablo
AU - Alegret, Montse
AU - Sanabria, Angela
AU - Ruiz, Agustín
AU - Boada, Mercè
AU - Valero, Sergi
AU - Hinzena, Wolfram
N1 - Publisher Copyright:
© 2023 The Authors.
PY - 2023/9
Y1 - 2023/9
N2 - Background: Decline in language has emerged as a new potential biomarker for the early detection of Alzheimer’s disease (AD). It remains unclear how sensitive language measures are across different tasks, language domains, and languages, and to what extent changes can be reliably detected in early stages such as subjective cognitive decline (SCD) and mild cognitive impairment (MCI). Method: Using a scene construction task for speech elicitation in a new Spanish/Catalan speaking cohort (N = 119), we automatically extracted features across seven domains, three acoustic (spectral, cepstral, and voice quality), one prosodic, and three from text (morpholexical, semantic, and syntactic). They were forwarded to a random forest classifier to evaluate the discriminability of participants with probable AD dementia, amnestic and nonamnestic MCI, SCD, and cognitively healthy controls. Repeated-measures analyses of variance and paired-samples Wilcoxon signed-ranks test were used to assess whether and how performance differs significantly across groups and linguistic domains. Results: The performance scores of the machine learning classifier were generally satisfactorily high, with the highest scores over.9. Model performance was signifi-cantly different for linguistic domains (p <.001), and speech versus text (p =.043), with speech features outperforming textual features, and voice quality performing best. High diagnostic classification accuracies were seen even within both cogni-tively healthy (controls vs. SCD) and MCI (amnestic and nonamnestic) groups. Conclusion: Speech-based machine learning is powerful in detecting cognitive decline and probable AD dementia across a range of different feature domains, though important differences exist between these domains as well. Supplemental Material: https://doi.org/10.23641/asha.23699733
AB - Background: Decline in language has emerged as a new potential biomarker for the early detection of Alzheimer’s disease (AD). It remains unclear how sensitive language measures are across different tasks, language domains, and languages, and to what extent changes can be reliably detected in early stages such as subjective cognitive decline (SCD) and mild cognitive impairment (MCI). Method: Using a scene construction task for speech elicitation in a new Spanish/Catalan speaking cohort (N = 119), we automatically extracted features across seven domains, three acoustic (spectral, cepstral, and voice quality), one prosodic, and three from text (morpholexical, semantic, and syntactic). They were forwarded to a random forest classifier to evaluate the discriminability of participants with probable AD dementia, amnestic and nonamnestic MCI, SCD, and cognitively healthy controls. Repeated-measures analyses of variance and paired-samples Wilcoxon signed-ranks test were used to assess whether and how performance differs significantly across groups and linguistic domains. Results: The performance scores of the machine learning classifier were generally satisfactorily high, with the highest scores over.9. Model performance was signifi-cantly different for linguistic domains (p <.001), and speech versus text (p =.043), with speech features outperforming textual features, and voice quality performing best. High diagnostic classification accuracies were seen even within both cogni-tively healthy (controls vs. SCD) and MCI (amnestic and nonamnestic) groups. Conclusion: Speech-based machine learning is powerful in detecting cognitive decline and probable AD dementia across a range of different feature domains, though important differences exist between these domains as well. Supplemental Material: https://doi.org/10.23641/asha.23699733
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U2 - 10.1044/2023_AJSLP-22-00403
DO - 10.1044/2023_AJSLP-22-00403
M3 - Article
C2 - 37486774
AN - SCOPUS:85170582282
SN - 1058-0360
VL - 32
SP - 2075
EP - 2086
JO - American Journal of Speech-Language Pathology
JF - American Journal of Speech-Language Pathology
IS - 5
ER -