Zhu Liujing, Huang Zuyan, Chen Yan, Li Guangqiu, Liu Liwen
Department of Galactophore, Liuzhou Hospital, Guangzhou Women and Children's Medical Center, Liuzhou, Guangxi, China.
Department of Galactophore, Liuzhou Maternity and Child Healthcare Hospital, Liuzhou, Guangxi, China.
Sci Rep. 2025 Aug 22;15(1):30922. doi: 10.1038/s41598-025-16473-9.
Acute lactational mastitis is a frequently occurring complication for lactating women, exerting a certain degree of influence on their physical condition, breastfeeding, mental health, and daily life. The etiology of this disease is complex, and the early symptoms lack typicality. Delayed diagnosis often occurs, which further progresses to abscess or more severe infections, adversely affecting the therapeutic effect and eventually leading to a prolonged recovery process and triggering other complications. Nevertheless, currently, the research regarding the risk factors of acute mastitis that occurs during lactation remains unfinished. This study employed a retrospective case-control study approach and collected relevant data from 369 patients with acute mastitis and 447 healthy controls. The involved data covered indicators such as age, parity, history of breast surgery, etc. By using machine learning (ML) algorithms (Logistic Regression (LR), Naive Bayes (NB), XGBoost, Multilayer Perceptron (MLP)) to train and validate the above data, it aimed to construct a predictive model of the risk factors for the occurrence of acute mastitis in lactating women, and simultaneously analyzed the other influences and effects of these factors on acute mastitis. The ML model demonstrated high accuracy in differentiating patients with acute mastitis from non-patients. We evaluated twelve indicators, namely age, primiparity, history of breast surgery, cracked, external breast trauma, puerperium, gestational diabetes, C-reactive protein (CRP), procalcitonin (PCT), neutrophils (NE), white blood cells (WBC), and abnormal nipple discharge, to determine their influence on the occurrence of acute mastitis in lactating women. Prediction models were established using four different ML algorithms. Through analysis, when comparing the four distinct ML models on the test set, the MLP model performed optimally across various evaluation metrics, including the highest area under the receiver operating characteristic (ROC) curve (AUROC) (0.898), sensitivity (0.820), test specificity (0.863), and F1 score (0.849), with an accuracy of 0.840. Decision Curve Analysis (DCA) indicates that within the majority of threshold ranges, the MLP can achieve the highest net benefit. Among these twelve indicators, five are significantly related to the occurrence of acute mastitis, namely age, cracked, CRP, NE, and WBC. We have successfully developed a prediction model for acute lactational mastitis and identified five key indicators closely related to its occurrence. This study effectively predicts the occurrence of acute lactational mastitis and provides a reference for the timely implementation of targeted clinical interventions as well as accurate diagnosis and treatment.
急性哺乳期乳腺炎是哺乳期女性常见的并发症,对其身体状况、母乳喂养、心理健康及日常生活均有一定程度的影响。该病病因复杂,早期症状缺乏典型性,常出现诊断延误,进而发展为脓肿或更严重的感染,对治疗效果产生不利影响,最终导致恢复过程延长并引发其他并发症。然而,目前关于哺乳期急性乳腺炎危险因素的研究仍未完善。本研究采用回顾性病例对照研究方法,收集了369例急性乳腺炎患者和447例健康对照的相关数据。所涉及的数据涵盖年龄、产次、乳房手术史等指标。通过使用机器学习(ML)算法(逻辑回归(LR)、朴素贝叶斯(NB)、极端梯度提升(XGBoost)、多层感知器(MLP))对上述数据进行训练和验证,旨在构建哺乳期女性急性乳腺炎发生危险因素的预测模型,同时分析这些因素对急性乳腺炎的其他影响和作用。ML模型在区分急性乳腺炎患者和非患者方面表现出较高的准确性。我们评估了十二个指标,即年龄、初产、乳房手术史、皲裂、乳房外部创伤、产褥期、妊娠期糖尿病、C反应蛋白(CRP)、降钙素原(PCT)、中性粒细胞(NE)、白细胞(WBC)和乳头异常溢液,以确定它们对哺乳期女性急性乳腺炎发生的影响。使用四种不同的ML算法建立了预测模型。通过分析,在测试集上比较这四种不同的ML模型时,MLP模型在各种评估指标上表现最佳,包括最高的受试者工作特征(ROC)曲线下面积(AUROC)(0.898)、敏感性(0.820)、测试特异性(0.863)和F1分数(0.849),准确率为0.840。决策曲线分析(DCA)表明在大多数阈值范围内,MLP可以实现最高的净效益。在这十二个指标中,有五个与急性乳腺炎的发生显著相关,即年龄、皲裂、CRP、NE和WBC。我们成功开发了急性哺乳期乳腺炎的预测模型,并确定了与其发生密切相关的五个关键指标。本研究有效地预测了急性哺乳期乳腺炎的发生,为及时实施有针对性的临床干预以及准确的诊断和治疗提供了参考。