Wang Chuan, Zhang Taomin, Wang Peng, Liu Xuan, Zheng Liming, Miao Lei, Zhou Deyu, Zhang Yibo, Hu Yezi, Yin Han, Jiang Qing, Jin Hui, Sun Jianfei
Naval Medical Center of PLA, Shanghai, China.
State Key Laboratory of Bioelectronics, Jiangsu Laboratory for Biomaterials and Devices, School of Biological Science and Medical Engineering, Southeast University, Nanjing, China.
Ann Transl Med. 2021 Feb;9(4):316. doi: 10.21037/atm-20-3388.
Diabetes has significant effects on bone metabolism. Both type 1 and type 2 diabetes can cause osteoporotic fracture. However, it remains challenging to diagnose osteoporosis in type 2 diabetes by bone mineral density which lacks regular changes. Seen another way, osteoporosis can be ascribed to the imbalance of bone metabolism, which is closely related to diabetes as well.
Here, to assist clinicians in diagnosing osteoporosis in type 2 diabetes, an efficient and simple SVM (support vector machine) model was established based on different combinations of biochemical indexes, which were collected from patients who did the test of bone turn-over markers (BTMs) from January 2016 to March 2018 in the department of endocrine, Zhongda Hospital affiliated to Southeast University. The classification was done based on a software package of machine learning in Python. The classification performance was measured by SKLearn program incorporated in the Python software package and compared with the clinical diagnostic results.
The predicting accuracy rate of final model was above 88%, with feature combination of sex, age, BMI (body mass index), TP1NP (total procollagen I N-terminal propeptide) and OSTEOC (osteocalcin).
Experimental results show that the model showed an anticipant result for early detection and daily monitoring on type 2 diabetic osteoporosis.
糖尿病对骨代谢有显著影响。1型和2型糖尿病均可导致骨质疏松性骨折。然而,通过缺乏规律变化的骨密度来诊断2型糖尿病患者的骨质疏松症仍然具有挑战性。从另一个角度看,骨质疏松症可归因于骨代谢失衡,而这也与糖尿病密切相关。
在此,为协助临床医生诊断2型糖尿病患者的骨质疏松症,基于生化指标的不同组合建立了一种高效且简单的支持向量机(SVM)模型,这些生化指标取自2016年1月至2018年3月在东南大学附属中大医院内分泌科进行骨转换标志物(BTMs)检测的患者。分类是基于Python中的一个机器学习软件包完成的。分类性能通过Python软件包中包含的SKLearn程序进行测量,并与临床诊断结果进行比较。
最终模型的预测准确率高于88%,其特征组合为性别、年龄、体重指数(BMI)、I型前胶原N端前肽(TP1NP)和骨钙素(OSTEOC)。
实验结果表明,该模型在2型糖尿病骨质疏松症的早期检测和日常监测方面显示出预期效果。