Jin Xuehua, Lai Ching Tat, Perrella Sharon L, Zhou Xiaojie, Hassan Ghulam Mubashar, McEachran Jacki L, Gridneva Zoya, Taylor Nicolas L, Wlodek Mary E, Geddes Donna T
School of Molecular Sciences, The University of Western Australia, Crawley, WA 6009, Australia.
UWA Centre for Human Lactation Research and Translation, Crawley, WA 6009, Australia.
Diagnostics (Basel). 2025 Jan 15;15(2):191. doi: 10.3390/diagnostics15020191.
The causes of low milk supply are multifactorial, including factors such as gene mutations, endocrine disorders, and infrequent milk removal. These factors affect the functional capacity of the mammary gland and, potentially, the concentrations of milk components. This study aimed to investigate the differences in milk composition between mothers with low and normal milk supply and develop predictive machine learning models for identifying low milk supply. Twenty-four-hour milk production measurements were conducted using the test-weigh method. An array of milk components was measured in 58 women with low milk supply (<600 mL/24 h) and 106 with normal milk supply (≥600 mL/24 h). Machine learning algorithms were employed to develop prediction models integrating milk composition and maternal and infant characteristics. Among the six machine learning algorithms tested, deep learning and gradient boosting machines methods had the best performance metrics. The best-performing model, incorporating 14 milk components and maternal and infant characteristics, achieved an accuracy of 87.9%, an area under the precision-recall curve (AUPRC) of 0.893, and an area under the receiver operating characteristic curve (AUC) of 0.917. Additionally, a simplified model, optimised for clinical applicability, maintained a reasonable accuracy of 78.8%, an AUPRC of 0.776, and an AUC of 0.794. These findings demonstrate the potential of machine learning models to predict low milk supply with high accuracy. Integrating milk composition and maternal and infant characteristics offers a practical approach to identify women at risk of low milk supply, facilitating timely interventions to support breastfeeding and ensure adequate infant nutrition.
乳汁分泌不足的原因是多方面的,包括基因突变、内分泌失调以及乳汁排出不频繁等因素。这些因素会影响乳腺的功能,进而可能影响乳汁成分的浓度。本研究旨在调查乳汁分泌不足和正常的母亲之间乳汁成分的差异,并开发用于识别乳汁分泌不足的预测机器学习模型。采用测试称重法进行24小时乳汁产量测量。对58名乳汁分泌不足(<600 mL/24小时)的女性和106名乳汁分泌正常(≥600 mL/24小时)的女性的一系列乳汁成分进行了测量。运用机器学习算法开发整合乳汁成分以及母婴特征的预测模型。在所测试的六种机器学习算法中,深度学习和梯度提升机方法具有最佳的性能指标。表现最佳的模型纳入了14种乳汁成分以及母婴特征,准确率达到87.9%,精确召回率曲线下面积(AUPRC)为0.893,受试者操作特征曲线下面积(AUC)为0.917。此外,为临床适用性进行优化的简化模型保持了78.8%的合理准确率、0.776的AUPRC以及0.794的AUC。这些发现表明机器学习模型具有高精度预测乳汁分泌不足的潜力。整合乳汁成分以及母婴特征为识别有乳汁分泌不足风险的女性提供了一种实用方法,有助于及时进行干预以支持母乳喂养并确保婴儿获得充足营养。