Title of article :
A New Clustering Method for Knee Movement Impairments using Partitioning Around Medoids Model
Author/Authors :
Farazdaghi, Mohammad Reza Department of Physical Therapy - School of Rehabilitation Sciences - Shiraz University of Medical Sciences, Iran , Razeghi, Mohsen Department of Physical Therapy - School of Rehabilitation Sciences - Shiraz University of Medical Sciences, Iran , Sobhani, Sobhan Department of Physical Therapy - School of Rehabilitation Sciences - Shiraz University of Medical Sciences, Iran , Raeisi Shahraki, Hadi Department of Epidemiology and Biostatistics - School of Health - Shahrekord University of Medical Sciences, Iran , Motealleh, Alireza Department of Physical Therapy - School of Rehabilitation Sciences - Shiraz University of Medical Sciences, Iran
Abstract :
Background: The movement system impairment (MSI) model is
a clinical model that can be used for the classification, diagnosis,
and treatment of knee impairments. By using the partitioning
around medoids (PAM) clustering method, patients can be easily
clustered in homogeneous groups through the determination of
the most discriminative variables. The present study aimed to
reduce the number of clinical examination variables, determine
the important variables, and simplify the MSI model using the
PAM clustering method.
Methods: The present cross-sectional study was performed in
Shiraz, Iran, during February-December 2018. A total of 209
patients with knee pain were recruited. Patients’ knee, femoral
and tibial movement impairments, and the perceived pain
level were examined in quiet standing, sitting, walking, partial
squatting, single-leg stance (both sides), sit-to-stand transfer,
and stair ambulation. The tests were repeated after correction for
impairments. Both the pain pattern and the types of impairment
were subsequently used in the PAM clustering analysis.
Results: PAM clustering analysis categorized the patients
in two main clusters (valgus and non-valgus) based on the
presence or absence of valgus impairment. Secondary analysis
of the valgus cluster identified two sub-clusters based on the
presence of hypomobility. Analysis of the non-valgus cluster
showed four sub-clusters with different characteristics. PAM
clustering organized important variables in each analysis and
showed that only 23 out of the 41 variables were essential in the
sub-clustering of patients with knee pain.
Conclusion: A new direct knee examination method is
introduced for the organization of important discriminative
tests, which requires fewer clinical examination variables.
Keywords :
Movement system impairment model , Knee , Cluster analysis , Classification , Syndrom
Journal title :
Iranian Journal of Medical Sciences (IJMS)