An explainable machine learning model of cognitive decline derived from speech
Permanent lenke
https://hdl.handle.net/10037/32486Dato
2023-11-27Type
Journal articleTidsskriftartikkel
Peer reviewed
Forfatter
Chandler, Chelsea; Diaz-Asper, Catherine; Turner, Raymond S.; Reynolds, Brigid; Elvevåg, BritaSammendrag
Methods: Speech collected over the telephone from 91 older participants who were cognitively healthy (n = 29) or had diagnoses of AD (n = 30) or amnestic MCI (aMCI; n = 32) was analyzed with multimodal natural language and speech processing methods. An explainable ensemble decision tree classifier for the multiclass prediction of cognitive decline was created.
Results: This approach was 75% accurate overall—an improvement over traditional speech-based screening tools and a unimodal language-based model. We include a dashboard for the examination of the results, allowing for novel ways of interpreting such data.
Discussion: This work provides a foundation for a meaningful change in medicine as clinical translation, scalability, and user friendliness were core to the methodologies.