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基于母体脂质组学分析预测新生儿痤疮

Prediction of neonatal acne based on maternal lipidomic profiling.

作者信息

Wang Hecong, Wang Jiateng, Zhou Mingyue, Jia Yan, Yang Ming, He Congfen

机构信息

Beijing Technology and Business University, Beijing, China.

Capital Institute of Paediatrics, Beijing, China.

出版信息

J Cosmet Dermatol. 2020 Oct;19(10):2759-2766. doi: 10.1111/jocd.13320. Epub 2020 Feb 6.

Abstract

BACKGROUND

Neonatal acne occurs in the first few weeks after birth. Some lesions are more serious and leave scars. Maternal surface skin lipids (SSL) have a strong correlation with SSL of infants. The establishment of prediction rank model based on maternal SSL is essential to the prevention and treatment of neonatal acne.

METHOD

Surface skin lipids samples were collected from the mothers (M) of 56 neonatal acne patients and the mothers (HM) of 19 healthy infants. Surface skin lipids from the right forehead were collected using a noninvasive method. UPLC-QTOF-MS was applied to detect SSL. Partial least squares discriminant analysis and receiver operating characteristic (ROC) analysis were performed to screen and validate potential lipids. Random forest (RF) and ROC analysis were used to establish a prediction model and evaluate its accuracy.

RESULTS

Sixteen altered potential lipids belonging to fatty acids, sphingomyelins, and glycerides were associated with M. M had less lipids than HM. Spearman's correlation of 16 lipids revealed 9 with high correlation. They were chosen as characteristic values of the RF prediction model. And the model showed an average accuracy of 98% in the validation set.

CONCLUSION

We have established an RF model for predicting neonatal acne and have shown that high skin barrier-related lipids were markers for predicting neonatal acne.

摘要

背景

新生儿痤疮在出生后的头几周出现。一些皮损较为严重并会留下疤痕。母体体表皮肤脂质(SSL)与婴儿的SSL密切相关。基于母体SSL建立预测等级模型对于新生儿痤疮的防治至关重要。

方法

收集56例新生儿痤疮患者的母亲(M)和19例健康婴儿的母亲(HM)的体表皮肤脂质样本。采用无创方法收集右前额的体表皮肤脂质。应用超高效液相色谱-四极杆飞行时间质谱(UPLC-QTOF-MS)检测SSL。进行偏最小二乘判别分析和受试者工作特征(ROC)分析以筛选和验证潜在脂质。使用随机森林(RF)和ROC分析建立预测模型并评估其准确性。

结果

16种改变的潜在脂质,属于脂肪酸、鞘磷脂和甘油酯,与M相关。M的脂质比HM少。16种脂质的斯皮尔曼相关性显示9种具有高度相关性。它们被选为RF预测模型的特征值。该模型在验证集中显示出98%的平均准确率。

结论

我们建立了一个用于预测新生儿痤疮的RF模型,并表明与皮肤屏障相关的高脂质是预测新生儿痤疮的标志物。

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