Shioji Mitsunori, Yamamoto Takehisa, Ibata Takeshi, Tsuda Takayuki, Adachi Kazushige, Yoshimura Noriko
Department of Gynecology, Minoh City Hospital, Minoh, 562-8562, Japan.
Department of Gynecology, Toyonaka Municipal Hospital, Toyonaka, 560-8565, Japan.
BMC Res Notes. 2017 Nov 10;10(1):590. doi: 10.1186/s13104-017-2910-4.
Predictions of the future bone mineral density and bone loss rate are important to tailor medicine for women with osteoporosis, because of the possible presence of personal risk factors affecting the severity of osteoporosis in the future. We investigated whether it was possible to predict bone mineral density and bone loss rate in the future using artificial neural networks.
A total of 135 women over 50 years old residing in T town of Wakayama Prefecture, Japan were analyzed to establish a statistical model. Artificial neural networks models were constructed using the two variables of bone mineral density and bone loss rate. The multiple correlation coefficients between the actual and measured values for lumbar and femoral bone mineral densities in 2003 showed R = 0.929 and R = 0.880, respectively, by linear regression analyses, while the values for bone loss rates in lumbar and femoral bone mineral densities were R = 0.694 and R = 0.609, respectively. Statistical models by artificial neural networks were superior to those by multiple regression analyses. The prediction of future bone mineral density values estimated by artificial neural networks was considered to be useful as a tool to tailor medicine for the early diagnosis of and intervention for women osteoporosis with women.
由于可能存在影响未来骨质疏松严重程度的个人风险因素,预测未来骨矿物质密度和骨丢失率对于为骨质疏松女性量身定制治疗方案很重要。我们研究了使用人工神经网络预测未来骨矿物质密度和骨丢失率是否可行。
对居住在日本和歌山县T镇的135名50岁以上女性进行分析以建立统计模型。使用骨矿物质密度和骨丢失率这两个变量构建人工神经网络模型。通过线性回归分析,2003年腰椎和股骨骨矿物质密度的实际值与测量值之间的多重相关系数分别为R = 0.929和R = 0.880,而腰椎和股骨骨矿物质密度骨丢失率的值分别为R = 0.694和R = 0.609。人工神经网络的统计模型优于多元回归分析的模型。人工神经网络估计的未来骨矿物质密度值的预测被认为是为女性骨质疏松症的早期诊断和干预量身定制治疗方案的有用工具。