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基于循环外泌体 miRNA panel 的乳腺癌预测模型。

A Breast Cancer Prediction Model Based on a Panel from Circulating Exosomal miRNAs.

机构信息

Precision Clinical Laboratory, Central People's Hospital of Zhanjiang, Zhanjiang, Guangdong, China.

Department of Hematology, First People's Hospital of Foshan, Foshan, Guangdong, China.

出版信息

Biomed Res Int. 2022 Oct 20;2022:5170261. doi: 10.1155/2022/5170261. eCollection 2022.

Abstract

Breast cancer (BC) has been a serious threat to women's health. Exosomes contain a variety of biomolecules, which is an excellent choice as disease diagnostic markers, but whether it could be applied as a noninvasive biomarker for BC diagnosis demands to be additional studied. In this study, we aimed at creating a predictive model and reveal the value of plasma exosomal miRNA (exo-miRNA) in early diagnosis of BC. Firstly, exosomes isolated from plasma were identified by Nanoparticle Tracking Analysis (NTA), Transmission Electron Microscope (TEM), and Western Blot. miRNA expression in plasma samples from 56 BC patients and 40 normal controls was analyzed by high-throughput sequencing. miRNAs with strong correlation characteristics were selected by Lasso logistic regression. Then, we built the training set and test set, evaluated the Lasso regression accuracy, and evaluated the performance of different models in the training set and test set. Finally, GO analysis, KEGG, and Reactome pathway enrichment analysis were used to understand the biological significance of 16 characteristic miRNAs. The successful separation of exosomes in serum was identified by NTA, TEM, and Western Blot. The training set data matrix containing 1962 miRNAs was obtained by sequencing for model construction, and 16 strongly correlated miRNAs were selected by Lasso logistic regression. The accuracy of Lasso regression in training set and test set were 97.22% and 95.83%, respectively. We built different models and evaluated the performance of each model in the training set and test set. The results showed that the AUC values of Lasso, SVM, GBDT, and Random Forest model in the training set were 1, and the AUC values in the test set were 0.979, 0.936, 0.971, and 0.979, respectively. Bioinformatics analysis showed that 16 signature miRNAs were significantly enriched in cancer-related pathways such as herpes simplex virus 1 infection, TGF- signaling, and Toll-like receptor family. The results of this study suggest that the 16 characteristic miRNAs screened from plasma exosomes can be used as a group of biomarkers, and the prediction model constructed based on this set of markers is expected to be used in the early diagnosis of BC.

摘要

乳腺癌(BC)一直是严重威胁女性健康的疾病。外泌体中含有多种生物分子,是疾病诊断标志物的绝佳选择,但它是否可以作为 BC 诊断的非侵入性生物标志物,还需要进一步研究。本研究旨在构建预测模型,揭示血浆外泌体 miRNA(exo-miRNA)在 BC 早期诊断中的价值。首先,通过纳米颗粒跟踪分析(NTA)、透射电子显微镜(TEM)和 Western blot 鉴定从血浆中分离的外泌体。采用高通量测序分析 56 例 BC 患者和 40 例正常对照者血浆样本中的 miRNA 表达。通过 Lasso 逻辑回归选择具有强相关特征的 miRNAs。然后,构建训练集和测试集,评估 Lasso 回归的准确性,并在训练集和测试集评估不同模型的性能。最后,GO 分析、KEGG 和 Reactome 通路富集分析用于了解 16 个特征 miRNA 的生物学意义。通过 NTA、TEM 和 Western blot 成功鉴定血清中外泌体的分离。测序获得包含 1962 个 miRNAs 的训练集数据矩阵,通过 Lasso 逻辑回归选择 16 个强相关 miRNAs。Lasso 回归在训练集和测试集的准确率分别为 97.22%和 95.83%。我们构建了不同的模型,并在训练集和测试集评估了每个模型的性能。结果表明,Lasso、SVM、GBDT 和随机森林模型在训练集的 AUC 值为 1,在测试集的 AUC 值分别为 0.979、0.936、0.971 和 0.979。生物信息学分析表明,16 个特征 miRNA 在癌症相关通路中显著富集,如单纯疱疹病毒 1 感染、TGF-信号和 Toll 样受体家族。本研究结果提示,从血浆外泌体中筛选出的 16 个特征 miRNA 可作为一组生物标志物,基于该组标志物构建的预测模型有望用于 BC 的早期诊断。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6f02/9615554/f069bda3f548/BMRI2022-5170261.001.jpg

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