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Page 29

Volume 3

Pulsus Journal of Surgical Research

Osteoporosis 2019

March 13-14, 2019

Osteoporosis, Arthritis and Musculoskeletal Disorders

March 13-14, 2019, London, UK

12

th

International Conference on

Classification algorithms for predicting the risk of osteoporotic fracture

Hyunjo Kim

Gachon University, South Korea

T

he information technology may provide alternative approaches to osteoporosis disease diagnosis. This systematic review was

performed to compare the diagnostic accuracy of vertebral fracture assessment. In this study, we examine the potential use of

classification techniques on a massive volume of healthcare data, particularly in prediction of patients that may have osteoporosis

through its risk factors. For this purpose, we propose to develop a new solution approach based on Random Forest decision tree

to identify the osteoporosis cases. There has been no research in using the afore-mentioned algorithm for osteoporosis patients’

prediction. The reduction of the attributes consists to enumerate dynamically the optimal subsets of the reduced attributes of high

interest by reducing the degree of complexity. A computer-aided system is developed for this purpose. The performance of the

proposed model in this study is analyzed and evaluated based on set of benchmark techniques applied in this classification problem.

hyunjo6763@gmail.com

Pulsus J Surg Res, Volume 3