Aminimoghaddam Soheila, Barzin Tond Saeedeh, Mahmoudi Nahavandi Alireza, Mahmoudzadeh Ahmadreza, Barzin Tond Sepideh
School of Medicine, Iran University of Medical Sciences, Tehran, Iran.
Department of Color Imaging and Color Image Processing, Institute for Color Science and Technology, Tehran, Iran.
Med J Islam Repub Iran. 2020 Apr 11;34:32. doi: 10.34171/mjiri.34.32. eCollection 2020.
This study investigates the possibility of predicting preterm labor by utilizing serum Magnesium level, BMI, and muscular cramp. In this case-control study, 75 preterm and 75 term labor women are included. Different factors such as serum magnesium level, mother's age, infant's sex, mother's Body Mass Index (BMI), infant's weight, gravid, and muscular cramp experience are measured. Preterm labor is predicted by developing a linear discriminant model using Matlab, and the prediction accuracy is also computed. The results show that each of the studied variables has a significant correlation with preterm labor. The p-value between BMI and preterm labor is 0.005, and by including the muscular cramp, it becomes less than 0.001. The correlation between serum magnesium level and the preterm labor is less than 0.0001. Using these three significant variables, a linear discriminant function is developed, which improves the accuracy of predicting preterm labor. The prediction error of preterm labor decreases from 31% (using only serum magnesium level) to 24% using the new proposed discriminant function. Based on this, it is suggested to use the optimized linear discriminant function to enhance the prediction of preterm labor, since the serum magnesium level cannot predict the preterm labor accurately.
本研究探讨了利用血清镁水平、体重指数(BMI)和肌肉痉挛来预测早产的可能性。在这项病例对照研究中,纳入了75例早产产妇和75例足月产产妇。测量了不同因素,如血清镁水平、母亲年龄、婴儿性别、母亲体重指数(BMI)、婴儿体重、妊娠次数和肌肉痉挛经历。通过使用Matlab开发线性判别模型来预测早产,并计算预测准确率。结果表明,每个研究变量与早产均具有显著相关性。BMI与早产之间的p值为0.005,纳入肌肉痉挛因素后,该值小于0.001。血清镁水平与早产之间的相关性小于0.0001。利用这三个显著变量开发了一个线性判别函数,提高了早产预测的准确性。早产的预测误差从31%(仅使用血清镁水平时)降至使用新提出的判别函数时的24%。基于此,建议使用优化的线性判别函数来加强早产预测,因为血清镁水平不能准确预测早产。