TY - JOUR
T1 - Levodopa-induced dyskinesia in Parkinson's disease
T2 - Insights from cross-cohort prognostic analysis using machine learning
AU - the NCER-PD Consortium
AU - Loo, Rebecca Ting Jiin
AU - Tsurkalenko, Olena
AU - Klucken, Jochen
AU - Mangone, Graziella
AU - Khoury, Fouad
AU - Vidailhet, Marie
AU - Corvol, Jean Christophe
AU - Krüger, Rejko
AU - Glaab, Enrico
AU - Acharya, Geeta
AU - Aguayo, Gloria
AU - Alexandre, Myriam
AU - Ali, Muhammad
AU - Ammerlann, Wim
AU - Arena, Giuseppe
AU - Bassis, Michele
AU - Batutu, Roxane
AU - Beaumont, Katy
AU - Béchet, Sibylle
AU - Berchem, Guy
AU - Bisdorff, Alexandre
AU - Boussaad, Ibrahim
AU - Bouvier, David
AU - Castillo, Lorieza
AU - Contesotto, Gessica
AU - DE Bremaeker, Nancy
AU - Dewitt, Brian
AU - Diederich, Nico
AU - Dondelinger, Rene
AU - Ramia, Nancy E.
AU - Ferrari, Angelo
AU - Frauenknecht, Katrin
AU - Fritz, Joëlle
AU - Gamio, Carlos
AU - Gantenbein, Manon
AU - Gawron, Piotr
AU - Georges, Laura
AU - Ghosh, Soumyabrata
AU - Giraitis, Marijus
AU - Goergen, Martine
AU - Gómez DE Lope, Elisa
AU - Graas, Jérôme
AU - Graziano, Mariella
AU - Groues, Valentin
AU - Grünewald, Anne
AU - Hammot, Gaël
AU - Anne-Marie, H. A.N.F.F.
AU - Hansen, Linda
AU - Heneka, Michael
AU - Henry, Estelle
AU - Henry, Margaux
AU - Herbrink, Sylvia
AU - Herzinger, Sascha
AU - Hundt, Alexander
AU - Jacoby, Nadine
AU - Jónsdóttir, Sonja
AU - Kofanova, Olga
AU - Lambert, Pauline
AU - Landoulsi, Zied
AU - Lentz, Roseline
AU - Longhino, Laura
AU - Lopes, Ana Festas
AU - Lorentz, Victoria
AU - Marques, Tainá M.
AU - Marques, Guilherme
AU - Martins Conde, Patricia
AU - Patrick, M. A.Y.
AU - Mcintyre, Deborah
AU - Mediouni, Chouaib
AU - Meisch, Francoise
AU - Mendibide, Alexia
AU - Menster, Myriam
AU - Minelli, Maura
AU - Mittelbronn, Michel
AU - Mtimet, Saïda
AU - Munsch, Maeva
AU - Nati, Romain
AU - Nehrbass, Ulf
AU - Nickels, Sarah
AU - Nicolai, Beatrice
AU - Jean-Paul, N. I.C.O.L.A.Y.
AU - Noor, Fozia
AU - Gomes, Clarissa P.C.
AU - Pachchek, Sinthuja
AU - Pauly, Claire
AU - Pauly, Laure
AU - Pavelka, Lukas
AU - Perquin, Magali
AU - Pexaras, Achilleas
AU - Rauschenberger, Armin
AU - Rawal, Rajesh
AU - Reddy Bobbili, Dheeraj
AU - Remark, Lucie
AU - Richard, Ilsé
AU - Roland, Olivia
AU - Roomp, Kirsten
AU - Rosales, Eduardo
AU - Sapienza, Stefano
AU - Satagopam, Venkata
AU - Schmitz, Sabine
AU - Schneider, Reinhard
AU - Schwamborn, Jens
AU - Severino, Raquel
AU - Sharify, Amir
AU - Soare, Ruxandra
AU - Soboleva, Ekaterina
AU - Sokolowska, Kate
AU - Theresine, Maud
AU - Thien, Hermann
AU - Thiry, Elodie
AU - Ting Jiin Loo, Rebecca
AU - Trouet, Johanna
AU - Vaillant, Michel
AU - Vega, Carlos
AU - Vilas Boas, Liliana
AU - Wilmes, Paul
AU - Wollscheid-Lengeling, Evi
AU - Zelimkhanov, Gelani
N1 - Publisher Copyright:
© 2024 The Author(s)
PY - 2024/9
Y1 - 2024/9
N2 - Background: Prolonged levodopa treatment in Parkinson's disease (PD) often leads to motor complications, including levodopa-induced dyskinesia (LID). Despite continuous levodopa treatment, some patients do not develop LID symptoms, even in later stages of the disease. Objective: This study explores machine learning (ML) methods using baseline clinical characteristics to predict the development of LID in PD patients over four years, across multiple cohorts. Methods: Using interpretable ML approaches, we analyzed clinical data from three independent longitudinal PD cohorts (LuxPARK, n = 356; PPMI, n = 484; ICEBERG, n = 113) to develop cross-cohort prognostic models and identify potential predictors for the development of LID. We examined cohort-specific and shared predictive factors, assessing model performance and stability through cross-validation analyses. Results: Consistent cross-validation results for single and multiple cohort analyses highlighted the effectiveness of the ML models and identified baseline clinical characteristics with significant predictive value for the LID prognosis in PD. Predictors positively correlated with LID include axial symptoms, freezing of gait, and rigidity in the lower extremities. Conversely, the risk of developing LID was inversely associated with the occurrence of resting tremors, higher body weight, later onset of PD, and visuospatial abilities. Conclusions: This study presents interpretable ML models for dyskinesia prognosis with significant predictive power in cross-cohort analyses. The models may pave the way for proactive interventions against dyskinesia in PD by optimizing levodopa dosing regimens and adjunct treatments with dopamine agonists or MAO-B inhibitors, and by employing non-pharmacological interventions such as dietary adjustments affecting levodopa absorption for high-risk LID patients.
AB - Background: Prolonged levodopa treatment in Parkinson's disease (PD) often leads to motor complications, including levodopa-induced dyskinesia (LID). Despite continuous levodopa treatment, some patients do not develop LID symptoms, even in later stages of the disease. Objective: This study explores machine learning (ML) methods using baseline clinical characteristics to predict the development of LID in PD patients over four years, across multiple cohorts. Methods: Using interpretable ML approaches, we analyzed clinical data from three independent longitudinal PD cohorts (LuxPARK, n = 356; PPMI, n = 484; ICEBERG, n = 113) to develop cross-cohort prognostic models and identify potential predictors for the development of LID. We examined cohort-specific and shared predictive factors, assessing model performance and stability through cross-validation analyses. Results: Consistent cross-validation results for single and multiple cohort analyses highlighted the effectiveness of the ML models and identified baseline clinical characteristics with significant predictive value for the LID prognosis in PD. Predictors positively correlated with LID include axial symptoms, freezing of gait, and rigidity in the lower extremities. Conversely, the risk of developing LID was inversely associated with the occurrence of resting tremors, higher body weight, later onset of PD, and visuospatial abilities. Conclusions: This study presents interpretable ML models for dyskinesia prognosis with significant predictive power in cross-cohort analyses. The models may pave the way for proactive interventions against dyskinesia in PD by optimizing levodopa dosing regimens and adjunct treatments with dopamine agonists or MAO-B inhibitors, and by employing non-pharmacological interventions such as dietary adjustments affecting levodopa absorption for high-risk LID patients.
KW - Cross-cohort analysis
KW - Levodopa-induced dyskinesia
KW - Longitudinal cohorts
KW - Machine learning
KW - Predictive modeling
KW - Prognosis
UR - https://www.scopus.com/pages/publications/85198036170
U2 - 10.1016/j.parkreldis.2024.107054
DO - 10.1016/j.parkreldis.2024.107054
M3 - Article
C2 - 38991633
AN - SCOPUS:85198036170
SN - 1353-8020
VL - 126
JO - Parkinsonism and Related Disorders
JF - Parkinsonism and Related Disorders
M1 - 107054
ER -