Journal of International Medical Research (Jul 2019)

Artificial neural network optimizes self-examination of osteoporosis risk in women

  • Jia Meng,
  • Ning Sun,
  • Yali Chen,
  • Zhangming Li,
  • Xiaomeng Cui,
  • Jingxue Fan,
  • Hailing Cao,
  • Wangping Zheng,
  • Qiying Jin,
  • Lihong Jiang,
  • Wenliang Zhu

DOI
https://doi.org/10.1177/0300060519850648
Journal volume & issue
Vol. 47

Abstract

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Objective This study aimed to investigate the application of an artificial neural network (ANN) in optimizing the Osteoporosis Self-Assessment Tool for Asians (OSTA) score. Methods OSTA score was calculated for each female participant that underwent dual-energy X-ray absorptiometry examination in two hospitals (one in each of two Chinese cities, Harbin and Ningbo). An ANN model was built using age and weight as input and femoral neck T-score as output. Osteoporosis risk screening by joint application of ANN and OSTA score was evaluated by receiver operating characteristic curve analysis. Results Nearly 90% of women with dual-energy X-ray absorptiometry-determined femoral neck osteoporosis were ≥60 years old. The ANN with age and weight as input and OSTA score both identified osteoporosis, with respective accuracy rates of 78.8% and 78.3%. However, both methods failed to identify osteoporosis in women 80 years old. Conclusions OSTA score-mediated osteoporosis risk screening should be restricted to women ≥60 years old. Joint application of ANN and OSTA improved osteoporosis risk screening among Chinese women > 80 years old.