皮肤微生物组与皮肤成像表型之间的隐秘联系

Mingyue Cheng, Hong Zhou, Haobo Zhang, Xinchao Zhang, Shuting Zhang, Hong Bai, Yugo Zha, Dan Luo, Dan Chen, Siyuan Chen, Kang Ning, Wei Liu
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引用次数: 0

摘要

尽管皮肤微生物组与皮肤健康和疾病有关,但其在调节人体皮肤外观方面的作用仍未得到充分研究。利用总共 1244 个面部成像表型组和 246 个面颊元基因组,我们首先通过机器学习建立了三个皮肤年龄指数,包括皮肤表型年龄(SPA)、皮肤微生物组年龄(SMA)和皮肤整合年龄(SIA),分别作为表型衰老、微生物衰老及其组合的代用指标。此外,我们还发现,除了衰老和性别这些内在因素外,皮肤微生物组也可能在形成皮肤成像表型(SIPs)方面发挥作用。皮肤分类和功能α多样性与黑色素、毛孔、色素和紫外线斑水平呈正相关,但与皮脂、美白和卟啉水平呈负相关。此外,某些物种还与特定的 SIPs 相关,如皮脂和美白水平与马氏棒状杆菌、头癣葡萄球菌和血清链球菌呈负相关。值得注意的是,我们证明了皮肤微生物在预测 SIPs 方面的潜力,其中变白水平的误差最小,仅为 1.8%。最后,我们提供了皮肤微生物群调整 SIP 的潜在机制,包括主要由痤疮棒状杆菌驱动的钴胺素和血红素合成途径对毛孔、皱纹和皮脂水平的调节。这项开创性的研究揭示了皮肤微生物组与皮肤成像表型之间的隐性联系,为了解皮肤微生物组如何塑造皮肤外观及其健康老化提供了新的视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hidden Links Between Skin Microbiome and Skin Imaging Phenome
Despite the skin microbiome has been linked to skin health and diseases, its role in modulating human skin appearance remains understudied. Using a total of 1244 face imaging phenomes and 246 cheek metagenomes, we first established three skin age indices by machine learning including skin phenotype age (SPA), skin microbiota age (SMA), and skin integration age (SIA) as surrogates of phenotypic aging, microbial aging, and their combination, respectively. Moreover, we found that besides aging and gender as intrinsic factors, skin microbiome might also play a role in shaping skin imaging phenotypes (SIPs). Skin taxonomic and functional α diversity was positively linked to melanin, pore, pigment, and ultraviolet spot levels, but negatively linked to sebum, lightening, and porphyrins levels. Furthermore, certain species were correlated with specific SIPs, such as sebum and lightening levels negatively correlated with Corynebacterium matruchotii, Staphylococcus capitis, and Streptococcus sanguinis. Notably, we demonstrated skin microbial potential in predicting SIPs, among which the lightening level presented the least error of 1.8%. Lastly, we provided a reservoir of potential mechanisms through which skin microbiome adjusted the SIPs, including the modulation of pore, wrinkle, and sebum levels by cobalamin and heme synthesis pathways, predominantly driven by Cutibacterium acnes. This pioneering study unveils the paradigm for the hidden links between skin microbiome and skin imaging phenome, providing novel insights into how skin microbiome shapes skin appearance and its healthy aging.
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