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A machine learning pipeline for predicting joint space narrowing in knee osteoarthritis patients

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Autor
Ntakolia C., Kokkotis C., Moustakidis S., Tsaopoulos D.
Fecha
2020
Language
en
DOI
10.1109/BIBE50027.2020.00158
Materia
Behavioral research
Bioinformatics
Classification (of information)
Clustering algorithms
Decision making
Diagnosis
Forecasting
Joints (anatomy)
Logistic regression
Magnetic resonance imaging
Pipelines
Predictive analytics
Support vector machines
Surveys
Turing machines
Classification algorithm
Clustering process
Decision making process
Embedded techniques
Joint space narrowing
Knee osteoarthritis
Prediction model
Robust feature selection
Learning systems
Institute of Electrical and Electronics Engineers Inc.
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Resumen
Osteoarthritis is the common form of arthritis in the knee (KOA). It is identified as one of the main causes of pain leading even to disability. To exploit the continuous increase in medical data concerning KOA, various studies employ big data and Artificial Intelligence analytics for KOA prognosis or treatment. However, most of the studies are limited to either specific groups of patients or specific groups of features, such as MRI, X-ray images or questionnaires. In this study, a machine learning pipeline is proposed to predict knee joint space narrowing (JSN) in KOA patients. The proposed methodology, that is based on multidisciplinary data from the osteoarthritis initiative (OAI) database, employs: (i) a clustering process to identify groups of people with progressing and non-progressing JSN; (ii) a robust feature selection process consisting of filter, wrapper and embedded techniques that identifies the most informative risk factors that contribute to JSN prediction; and (iii) a decision making process based on the evaluation and comparison of various classification algorithms towards the selection and development of the final prediction model for JSN. The evaluation was conducted with respect to model's overall performance, robustness and highest achieved accuracy. A 78.3% and 77.7% accuracy were achieved in left and right leg by Logistic Regression on the group of the 164 risk factors and SVM on the group of the 88 and 90 risk factors, respectively. © 2020 IEEE.
URI
http://hdl.handle.net/11615/77315
Colecciones
  • Δημοσιεύσεις σε περιοδικά, συνέδρια, κεφάλαια βιβλίων κλπ. [19735]
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