<p>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.</p>

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Data-driven clinical decision support tool for diagnosing mild cognitive impairment in Parkinson’s disease

  • Gabriel Martínez Tirado,
  • Patricia Martins Conde,
  • Stefano Sapienza,
  • Holger Fröhlich,
  • Claire Pauly,
  • Valerie E. Schröder,
  • Sonja Jónsdóttir,
  • Olena Tsurkalenko,
  • Rejko Krüger,
  • Jochen Klucken,
  • Anne Grünewald,
  • Armin Rauschenberger,
  • Clarissa P. C. Gomes,
  • Dheeraj Reddy Bobbili,
  • Ekaterina Soboleva,
  • Elisa Gómez De Lope,
  • Enrico Glaab,
  • Evi Wollscheid-Lengeling,
  • Francoise Meisch,
  • Giuseppe Arena,
  • Ibrahim Boussaad,
  • Jens Schwamborn,
  • Kirsten Roomp,
  • Maria Fernanda NIÑO Uribe,
  • Michael T. Heneka,
  • Michele Bassis,
  • Muhammad Ali,
  • Jade Jaber,
  • Patrick May,
  • Paul Wilmes,
  • Piotr Gawron,
  • Rebecca Ting Jiin Loo,
  • Reinhard Schneider,
  • Ruxandra Soare,
  • Sabine Schmitz,
  • Sarah Nickels,
  • Sascha Herzinger,
  • Sinthuja Pachchek,
  • Soumyabrata Ghosh,
  • Valentin Groues,
  • Venkata Satagopam,
  • Iñigo Yoldi Bergua,
  • Elodie Thiry,
  • Michel Mittelbronn,
  • Gelani Zelimkhanov,
  • Guy Berchem,
  • Liliana Vilas Boas,
  • Linda Hansen,
  • Martine Goergen,
  • Nancy De Bremaeker,
  • Nico Diederich,
  • Romain Nati,
  • Roxane Batutu,
  • Sylvia Herbrink,
  • Lukas Pavelka,
  • Marijus Giraitis,
  • Laure Pauly,
  • Achilleas Pexaras,
  • Alexander Hundt,
  • Alexia Mendibide,
  • Ana Festas Lopes,
  • Angelo Ferrari,
  • Brian Dewitt,
  • Carlos Gamio,
  • Estelle Henry,
  • Gaël Hammot,
  • Geeta Acharya,
  • Hermann Thien,
  • Ilsé Richard,
  • Johanna Trouet,
  • Kate Sokolowska,
  • Katy Beaumont,
  • Laura Georges,
  • Lorieza Castillo,
  • Lucie Remark,
  • Maeva Munsch,
  • Margaux Henry,
  • Maud Theresine,
  • Olga Kofanova,
  • Olivia Roland,
  • Pauline Lambert,
  • Saïda Mtimet,
  • Wim Ammerlann,
  • Jochen Ohnmacht,
  • Anne-Marie Hanff,
  • Carlos Vega,
  • Chouaib Mediouni,
  • Deborah Mcintyre,
  • Eduardo Rosales,
  • Fozia Noor,
  • Gessica Contesotto,
  • Gloria Aguayo,
  • Guilherme Marques,
  • Jérôme Graas,
  • Joëlle Fritz,
  • Magali Perquin,
  • Manon Gantenbein,
  • Maura Minelli,
  • Michel Vaillant,
  • Myriam Alexandre,
  • Myriam Menster,
  • Raquel Severino,
  • Sibylle Béchet,
  • Tainá M. Marques,
  • Ulf Nehrbass,
  • Victoria lorentz,
  • Zied Landoulsi,
  • David Bouvier,
  • Katrin Frauenknecht,
  • Alexandre Bisdorff,
  • Rene Dondelinger,
  • Roseline Lentz,
  • Mariella Graziano,
  • Nadine Jacoby,
  • Jean-Paul Nicolay

摘要

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.