Department of Child Health and Disease Nursing, Eskisehir Osmangazi University Health Sciences, Eskisehir, Turkey.
Department of Child Health and Disease Nursing, Eskisehir Osmangazi University, Eskisehir, Turkey.
J Eval Clin Pract. 2024 Sep;30(6):1000-1007. doi: 10.1111/jep.14009. Epub 2024 May 14.
Machine learning techniques (MLT) build models to detect complex patterns and solve new problems using big data.
The present study aims to create a prediction interface for mothers breastfeeding exclusively for the first 6 months using MLT.
All mothers who had babies aged 6-24 months between 15.09.2021 and 15.12.2021 and to whom the surveys could be delivered were included. 'Personal Information Form' created by the researchers was used as a data collection tool. Data from 514 mothers participating in the study were used for MLT. Data from 70% of mothers were used for educational purposes, and a prediction model was created. The data obtained from the remaining 30% of the mothers were used for testing.
The best MLT algorithm for predicting exclusive breastfeeding for the first 6 months was determined to be the Random Forest Classifier. The top five variables affecting the possibility of mothers breastfeeding exclusively for the first 6 months were as follows: "the mother not having any health problems during pregnancy," "there were no people who negatively affected the mother's morale about breastfeeding," "the amount of water the mother drinks in a day," "thinking that her milk supply is insufficient," "having no problems breastfeeding the baby".
Using created prediction model may allow early identification of mothers with a risk of not breastfeeding their babies exclusively for the first 6 months. In this way, mothers in the risk group can be closely monitored in the early period.
机器学习技术(MLT)利用大数据构建模型,以检测复杂模式和解决新问题。
本研究旨在使用 MLT 为纯母乳喂养至前 6 个月的母亲创建预测界面。
纳入 2021 年 9 月 15 日至 12 月 15 日期间年龄在 6-24 个月的所有婴儿母亲,以及可以进行调查的母亲。研究人员创建的“个人信息表”用作数据收集工具。对 514 名参与研究的母亲的数据进行 MLT 分析。将 70%的母亲的数据用于教育目的,并创建预测模型。剩余 30%母亲的数据用于测试。
预测纯母乳喂养前 6 个月的最佳 MLT 算法被确定为随机森林分类器。影响母亲纯母乳喂养前 6 个月可能性的前五个变量如下:“母亲在怀孕期间没有任何健康问题”“没有人对母亲母乳喂养的士气产生负面影响”“母亲每天喝的水量”“认为自己的奶量不足”“给婴儿喂奶没有问题”。
使用创建的预测模型可以早期识别出可能无法在前 6 个月内纯母乳喂养婴儿的母亲。这样,可以在早期密切监测处于风险组的母亲。