TY - JOUR
T1 - Data-driven clinical decision support tool for diagnosing mild cognitive impairment in Parkinson’s disease
AU - Sapienza, Stefano
AU - Pauly, Claire
AU - Schröder, Valerie E.
AU - Jónsdóttir, Sonja
AU - Tsurkalenko, Olena
AU - Krüger, Rejko
AU - Klucken, Jochen
AU - Bouvier, David
AU - Landoulsi, Zied
AU - lorentz, Victoria
AU - Nehrbass, Ulf
AU - Marques, Tainá M.
AU - Béchet, Sibylle
AU - Menster, Myriam
AU - Alexandre, Myriam
AU - Vaillant, Michel
AU - Gantenbein, Manon
AU - Perquin, Magali
AU - Fritz, Joëlle
AU - Graas, Jérôme
AU - Marques, Guilherme
AU - Aguayo, Gloria
AU - Contesotto, Gessica
AU - Noor, Fozia
AU - Mcintyre, Deborah
AU - Mediouni, Chouaib
AU - Vega, Carlos
AU - Hanff, Anne Marie
AU - Mtimet, Saïda
AU - Lambert, Pauline
AU - Roland, Olivia
AU - Kofanova, Olga
AU - Theresine, Maud
AU - Henry, Margaux
AU - Munsch, Maeva
AU - Remark, Lucie
AU - Georges, Laura
AU - Beaumont, Katy
AU - Sokolowska, Kate
AU - Trouet, Johanna
AU - Richard, Ilsé
AU - Thien, Hermann
AU - Acharya, Geeta
AU - Henry, Estelle
AU - Gamio, Carlos
AU - Ferrari, Angelo
AU - Lopes, Ana Festas
AU - Mendibide, Alexia
AU - Hundt, Alexander
AU - Pexaras, Achilleas
AU - Pauly, Laure
AU - Giraitis, Marijus
AU - Pavelka, Lukas
AU - Batutu, Roxane
AU - De Bremaeker, Nancy
AU - Berchem, Guy
AU - Zelimkhanov, Gelani
AU - Mittelbronn, Michel
AU - Nickels, Sarah
AU - Boussaad, Ibrahim
AU - Rauschenberger, Armin
AU - NCER-PD Consortium
N1 - © 2026. The Author(s).
PY - 2026/1/12
Y1 - 2026/1/12
N2 - Parkinson’s disease (PD) is a neurodegenerative condition that may affect both motor and cognitive function. Mild cognitive impairment (MCI) is a known risk factor for the progression to dementia in the later stages of the disease. Lengthy and time-consuming neuropsychological assessments, by trained experts, often make MCI diagnosis impractical in routine care. In this context, machine learning (ML) may offer promising support for MCI diagnosis. Thus, we analysed longitudinal data from 115 people with Parkinson’s disease (PwPD) and 226 healthy control participants from the Luxembourg Parkinson’s Study, combining ML with clinical data to support MCI diagnosis in PwPD. The data-driven model showed a non-inferior performance to the clinical diagnostic reference test (MDS PD-MCI Level II) and identified a subgroup of MCI individuals that was not captured by the clinical test. This finding suggests that ML models can complement clinical assessments, by facilitating the detection of MCI and complementing the diagnostic characterisation of PwPD.
AB - Parkinson’s disease (PD) is a neurodegenerative condition that may affect both motor and cognitive function. Mild cognitive impairment (MCI) is a known risk factor for the progression to dementia in the later stages of the disease. Lengthy and time-consuming neuropsychological assessments, by trained experts, often make MCI diagnosis impractical in routine care. In this context, machine learning (ML) may offer promising support for MCI diagnosis. Thus, we analysed longitudinal data from 115 people with Parkinson’s disease (PwPD) and 226 healthy control participants from the Luxembourg Parkinson’s Study, combining ML with clinical data to support MCI diagnosis in PwPD. The data-driven model showed a non-inferior performance to the clinical diagnostic reference test (MDS PD-MCI Level II) and identified a subgroup of MCI individuals that was not captured by the clinical test. This finding suggests that ML models can complement clinical assessments, by facilitating the detection of MCI and complementing the diagnostic characterisation of PwPD.
UR - https://www.scopus.com/pages/publications/105027780736
U2 - 10.1038/s41531-025-01222-6
DO - 10.1038/s41531-025-01222-6
M3 - Article
C2 - 41526401
AN - SCOPUS:105027780736
SN - 2373-8057
VL - 12
SP - 15
JO - npj Parkinson's Disease
JF - npj Parkinson's Disease
IS - 1
M1 - 15
ER -