Abstract

Osteoporosis is treatable but often overlooked in clinical practice. We aimed to construct prediction models with machine learning algorithms to serve as screening tools for osteoporosis in adults over fifty years old. Additionally, we also compared the performance of newly developed models with traditional prediction models. Data were acquired from community-dwelling participants enrolled in health checkup programs at a medical center in Taiwan. A total of 3053 men and 2929 women were included. Models were constructed for men and women separately with artificial neural network (ANN), support vector machine (SVM), random forest (RF), k-nearest neighbor (KNN), and logistic regression (LoR) to predict the presence of osteoporosis. Area under receiver operating characteristic curve (AUROC) was used to compare the performance of the models. We achieved AUROC of 0.837, 0.840, 0.843, 0.821, 0.827 in men, and 0.781, 0.807, 0.811, 0.767, 0.772 in women, for ANN, SVM, RF, KNN, and LoR models, respectively. The ANN, SVM, RF, and LoR models in men, and the ANN, SVM, and RF models in women performed significantly better than the traditional Osteoporosis Self-Assessment Tool for Asians (OSTA) model. We have demonstrated that machine learning algorithms improve the performance of screening for osteoporosis. By incorporating the models in clinical practice, patients could potentially benefit from earlier diagnosis and treatment of osteoporosis.

Highlights

  • Osteoporosis is characterized by decreased bone density and architectural disruption of the bone tissue, leading to a susceptibility to fractures [1,2]

  • The artificial neural network (ANN), support vector machine (SVM), random forest (RF), logistic regression (LoR) models in men, and the ANN, SVM, RF models in women performed significantly better than the Osteoporosis Self-Assessment Tool for Asians (OSTA) model

  • The ANN, SVM, RF, and LoR models in men, and the ANN, SVM, and RF models in women performed significantly better than the well-established OSTA model

Read more

Summary

Introduction

Osteoporosis is characterized by decreased bone density and architectural disruption of the bone tissue, leading to a susceptibility to fractures [1,2]. Osteoporosis may cause disability and mortality in individuals [3], and is recognized as an important public health problem worldwide [4]. People diagnosed with osteoporosis is strikingly increasing and facing the greatest challenge to prevalence issues owing to the rapidly aging society [4,5,6]. The prevalence of osteoporosis and osteoporotic fractures among Taiwanese more than 50 years old increased from 17.4% in 2001 to 25.0% in 2011 [1]. 21–66% reduction in fracture risks in osteoporosis patients [7]. Early intervention to prevent fractures can be achieved through earlier osteoporosis detection

Objectives
Methods
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call