Data-driven subtyping of Parkinson’s disease: comparison of current methodologies and application to the Bochum PNS cohort
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Published:2023-03-31
Issue:6
Volume:130
Page:763-776
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ISSN:0300-9564
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Container-title:Journal of Neural Transmission
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language:en
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Short-container-title:J Neural Transm
Author:
Chen QiangORCID, Scherbaum RaphaelORCID, Gold RalfORCID, Pitarokoili KalliopiORCID, Mosig AxelORCID, Zella SamisORCID, Tönges LarsORCID
Abstract
AbstractConsiderable efforts have been made to better describe and identify Parkinson's disease (PD) subtypes. Cluster analyses have been proposed as an unbiased development approach for PD subtypes that could facilitate their identification, tracking of progression, and evaluation of therapeutic responses. A data-driven clustering analysis was applied to a PD cohort of 114 subjects enrolled at St. Josef-Hospital of the Ruhr University in Bochum (Germany). A wide spectrum of motor and non-motor scores including polyneuropathy-related measures was included into the analysis. K-means and hierarchical agglomerative clustering were performed to identify PD subtypes. Silhouette and Calinski–Harabasz Score Elbow were then employed as supporting evaluation metrics for determining the optimal number of clusters. Principal Component Analysis (PCA), analysis of variance (ANOVA), and analysis of covariance (ANCOVA) were conducted to determine the relevance of each score for the clusters’ definition. Three PD cluster subtypes were identified: early onset mild type, intermediate type, and late-onset severe type. The between-cluster analysis consistently showed highly significant differences (P < 0.01), except for one of the scores measuring polyneuropathy (Neuropathy Disability Score; P = 0.609) and Levodopa dosage (P = 0.226). Parkinson’s Disease Questionnaire (PDQ-39), Non-motor Symptom Questionnaire (NMSQuest), and the MDS-UPDRS Part II were found to be crucial factors for PD subtype differentiation. The present analysis identifies a specific set of criteria for PD subtyping based on an extensive panel of clinical and paraclinical scores. This analysis provides a foundation for further development of PD subtyping, including k-means and hierarchical agglomerative clustering.Trial registration: DRKS00020752, February 7, 2020, retrospectively registered.
Funder
Katholisches Klinikum Bochum gGmbh
Publisher
Springer Science and Business Media LLC
Subject
Biological Psychiatry,Psychiatry and Mental health,Neurology (clinical),Neurology
Reference63 articles.
1. Aggarwal CC, Reddy CK (2013) Data clustering. algorithms and applications, first edition. Chapman & Hall/CRC data mining and knowledge discovery series. Chapman and Hall/CRC, Boca Raton 2. Arthur D, Vassilvitskii S (2007) k-means++: the advantages of careful seeding. In: Proceedings of the 18th annual ACM-SIAM symposium on discrete algorithms. Society for Industrial and Applied Mathematics, Philadelphia, PA, USA, pp 1027–1035 3. Barone P, Antonini A, Colosimo C, Marconi R, Morgante L, Avarello TP, Bottacchi E, Cannas A, Ceravolo G, Ceravolo R, Cicarelli G, Gaglio RM, Giglia RM, Iemolo F, Manfredi M, Meco G, Nicoletti A, Pederzoli M, Petrone A, Pisani A, Pontieri FE, Quatrale R, Ramat S, Scala R, Volpe G, Zappulla S, Bentivoglio AR, Stocchi F, Trianni G, Del Dotto P (2009) The PRIAMO study: a multicenter assessment of nonmotor symptoms and their impact on quality of life in Parkinson’s disease. Mov Disord 24(11):1641–1649. https://doi.org/10.1002/mds.22643 4. Beiske AG, Loge JH, Rønningen A, Svensson E (2009) Pain in Parkinson’s disease: prevalence and characteristics. Pain 141(1–2):173–177. https://doi.org/10.1016/j.pain.2008.12.004 5. Chaudhuri KR, Martinez-Martin P, Schapira AHV, Stocchi F, Sethi K, Odin P, Brown RG, Koller W, Barone P, MacPhee G, Kelly L, Rabey M, MacMahon D, Thomas S, Ondo W, Rye D, Forbes A, Tluk S, Dhawan V, Bowron A, Williams AJ, Olanow CW (2006) International multicenter pilot study of the first comprehensive self-completed nonmotor symptoms questionnaire for Parkinson’s disease: the NMSQuest study. Mov Disord 21(7):916–923. https://doi.org/10.1002/mds.20844
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