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Optimization of cognitive assessment in Parkinsonisms by applying artificial intelligence to a comprehensive screening test.
Ortelli, Paola; Ferrazzoli, Davide; Versace, Viviana; Cian, Veronica; Zarucchi, Marianna; Gusmeroli, Anna; Canesi, Margherita; Frazzitta, Giuseppe; Volpe, Daniele; Ricciardi, Lucia; Nardone, Raffaele; Ruffini, Ingrid; Saltuari, Leopold; Sebastianelli, Luca; Baranzini, Daniele; Maestri, Roberto.
Afiliação
  • Ortelli P; Department of Neurorehabilitation, Hospital of Vipiteno (SABES-ASDAA), Vipiteno-Sterzing, Italy. paola.ortelli@sabes.it.
  • Ferrazzoli D; Department of Parkinson's disease and Movement disorders Rehabilitation, Fresco Parkinson Center, "Moriggia-Pelascini" Hospital, Gravedona ed Uniti, Italy. paola.ortelli@sabes.it.
  • Versace V; Department of Neurorehabilitation, Hospital of Vipiteno (SABES-ASDAA), Vipiteno-Sterzing, Italy.
  • Cian V; Department of Parkinson's disease and Movement disorders Rehabilitation, Fresco Parkinson Center, "Moriggia-Pelascini" Hospital, Gravedona ed Uniti, Italy.
  • Zarucchi M; Department of Neurorehabilitation, Hospital of Vipiteno (SABES-ASDAA), Vipiteno-Sterzing, Italy.
  • Gusmeroli A; Department of Parkinson's disease and Movement disorders Rehabilitation, Fresco Parkinson Center, "Moriggia-Pelascini" Hospital, Gravedona ed Uniti, Italy.
  • Canesi M; Department of Parkinson's disease and Movement disorders Rehabilitation, Fresco Parkinson Center, "Moriggia-Pelascini" Hospital, Gravedona ed Uniti, Italy.
  • Frazzitta G; Department of Parkinson's disease and Movement disorders Rehabilitation, Fresco Parkinson Center, "Moriggia-Pelascini" Hospital, Gravedona ed Uniti, Italy.
  • Volpe D; Department of Parkinson's disease and Movement disorders Rehabilitation, Fresco Parkinson Center, "Moriggia-Pelascini" Hospital, Gravedona ed Uniti, Italy.
  • Ricciardi L; MIRT ParkProject, Livorno, Italy.
  • Nardone R; Fresco Parkinson Center, "Villa Margherita", S. Stefano Riabilitazione, Arcugnano, Italy.
  • Ruffini I; Neurosciences Research Centre, Molecular and Clinical Sciences Research Institute, St George's University of London, London, UK.
  • Saltuari L; MRC Brain Network Dynamics Unit, Nuffield Department of Clinical Neurosciences, Oxford, UK.
  • Sebastianelli L; Department of Neurology, Franz Tappeiner Hospital (SABES-ASDAA), Merano-Meran, Italy.
  • Baranzini D; Department of Neurology, Christian Doppler Medical Center, Paracelsus University Salzburg, Salzburg, Austria.
  • Maestri R; Department of Geriatrics, Memory Clinic, Franz Tappeiner Hospital (SABES-ASDAA), Merano-Meran, Italy.
NPJ Parkinsons Dis ; 8(1): 42, 2022 Apr 11.
Article em En | MEDLINE | ID: mdl-35410449
The assessment of cognitive deficits is pivotal for diagnosis and management in patients with parkinsonisms. Low levels of correspondence are observed between evaluations assessed with screening cognitive tests in comparison with those assessed with in-depth neuropsychological batteries. A new tool, we named CoMDA (Cognition in Movement Disorders Assessment), was composed by merging Mini-Mental State Examination (MMSE), Montreal Cognitive Assessment (MoCA), and Frontal Assessment Battery (FAB). In total, 500 patients (400 with Parkinson's disease, 41 with vascular parkinsonism, 31 with progressive supranuclear palsy, and 28 with multiple system atrophy) underwent CoMDA (level 1-L1) and in-depth neuropsychological battery (level 2-L2). Machine learning was developed to classify the CoMDA score and obtain an accurate prediction of the cognitive profile along three different classes: normal cognition (NC), mild cognitive impairment (MCI), and impaired cognition (IC). The classification accuracy of CoMDA, assessed by ROC analysis, was compared with MMSE, MoCA, and FAB. The area under the curve (AUC) of CoMDA was significantly higher than that of MMSE, MoCA and FAB (p < 0.0001, p = 0.028 and p = 0.0007, respectively). Among 15 different algorithmic methods, the Quadratic Discriminant Analysis algorithm (CoMDA-ML) showed higher overall-metrics performance levels in predictive performance. Considering L2 as a 3-level continuous feature, CoMDA-ML produces accurate and generalizable classifications: micro-average ROC curve, AUC = 0.81; and AUC = 0.85 for NC, 0.67 for MCI, and 0.83 for IC. CoMDA and COMDA-ML are reliable and time-sparing tools, accurate in classifying cognitive profile in parkinsonisms.This study has been registered on ClinicalTrials.gov (NCT04858893).

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Diagnostic_studies / Prognostic_studies / Screening_studies Idioma: En Ano de publicação: 2022 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Diagnostic_studies / Prognostic_studies / Screening_studies Idioma: En Ano de publicação: 2022 Tipo de documento: Article