Literature DB >> 32278980

Prediction of osteoporotic hip fracture in postmenopausal women through patient-specific FE analyses and machine learning.

E Villamor1, C Monserrat1, L Del Río2, J A Romero-Martín2, M J Rupérez3.   

Abstract

A great challenge in osteoporosis clinical assessment is identifying patients at higher risk of hip fracture. Bone Mineral Density (BMD) measured by Dual-Energy X-Ray Absorptiometry (DXA) is the current gold-standard, but its classification accuracy is limited to 65%. DXA-based Finite Element (FE) models have been developed to predict the mechanical failure of the bone. Yet, their contribution has been modest. In this study, supervised machine learning (ML) is applied in conjunction with clinical and computationally driven mechanical attributes. Through this multi-technique approach, we aimed to obtain a predictive model that outperforms BMD and other clinical data alone, as well as to identify the best-learned ML classifier within a group of suitable algorithms. A total number of 137 postmenopausal women (81.4 ± 6.95 years) were included in the study and separated into a fracture group (n = 89) and a control group (n = 48). A semi-automatic and patient-specific DXA-based FE model was used to generate mechanical attributes, describing the geometry, the impact force, bone structure and mechanical response of the bone after a sideways-fall. After preprocessing the whole dataset, 19 attributes were selected as predictors. Support Vector Machine (SVM) with radial basis function (RBF), Logistic Regression, Shallow Neural Networks and Random Forest were tested through a comprehensive validation procedure to compare their predictive performance. Clinical attributes were used alone in another experimental setup for the sake of comparison. SVM was confirmed to generate the best-learned algorithm for both experimental setups, including 19 attributes and only clinical attributes. The first, generated the best-learned model and outperformed BMD by 14pp. The results suggests that this approach could be easily integrated for effective prediction of hip fracture without interrupting the actual clinical workflow.
Copyright © 2020 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Clinical; Finite element; Hip fracture; Machine learning; Osteoporosis

Mesh:

Year:  2020        PMID: 32278980     DOI: 10.1016/j.cmpb.2020.105484

Source DB:  PubMed          Journal:  Comput Methods Programs Biomed        ISSN: 0169-2607            Impact factor:   5.428


  3 in total

1.  Development and Internal Validation of Supervised Machine Learning Algorithm for Predicting the Risk of Recollapse Following Minimally Invasive Kyphoplasty in Osteoporotic Vertebral Compression Fractures.

Authors:  Sheng-Tao Dong; Jieyang Zhu; Hua Yang; Guangyi Huang; Chenning Zhao; Bo Yuan
Journal:  Front Public Health       Date:  2022-05-02

2.  Application of Machine Learning to Identify Clinically Meaningful Risk Group for Osteoporosis in Individuals Under the Recommended Age for Dual-Energy X-Ray Absorptiometry.

Authors:  A Ram Hong; Yul Hwangbo; Hyun Woo Park; Hyojung Jung; Kyoung Yeon Back; Hyeon Ju Choi; Kwang Sun Ryu; Hyo Soung Cha; Eun Kyung Lee
Journal:  Calcif Tissue Int       Date:  2021-06-30       Impact factor: 4.333

3.  Predictors of adverse events after percutaneous pedicle screws fixation in patients with single-segment thoracolumbar burst fractures.

Authors:  Shengtao Dong; Zongyuan Li; Yuanyuan Zheng; Zhi-Ri Tang; Hua Yang; Qiuming Zeng
Journal:  BMC Musculoskelet Disord       Date:  2022-02-22       Impact factor: 2.362

  3 in total

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