Wang Li, Peng Fei, Li Zhen Hua, Deng Yu Fei, Ruan Meng Na, Mao Zhi Guo, Li Lin
Department of Nephrology, Changzheng Hospital, Naval Medical University, Shanghai, China.
Department of Cardiology, Jinshan Hospital of Fudan University, Shanghai, China.
Front Med (Lausanne). 2023 May 24;10:1195678. doi: 10.3389/fmed.2023.1195678. eCollection 2023.
Acute kidney injury can be mitigated if detected early. There are limited biomarkers for predicting acute kidney injury (AKI). In this study, we used public databases with machine learning algorithms to identify novel biomarkers to predict AKI. In addition, the interaction between AKI and clear cell renal cell carcinoma (ccRCC) remain elusive.
Four public AKI datasets (GSE126805, GSE139061, GSE30718, and GSE90861) treated as discovery datasets and one (GSE43974) treated as a validation dataset were downloaded from the Gene Expression Omnibus (GEO) database. Differentially expressed genes (DEGs) between AKI and normal kidney tissues were identified using the R package limma. Four machine learning algorithms were used to identify the novel AKI biomarkers. The correlations between the seven biomarkers and immune cells or their components were calculated using the R package ggcor. Furthermore, two distinct ccRCC subtypes with different prognoses and immune characteristics were identified and verified using seven novel biomarkers.
Seven robust AKI signatures were identified using the four machine learning methods. The immune infiltration analysis revealed that the numbers of activated CD4 T cells, CD56 natural killer cells, eosinophils, mast cells, memory B cells, natural killer T cells, neutrophils, T follicular helper cells, and type 1 T helper cells were significantly higher in the AKI cluster. The nomogram for prediction of AKI risk demonstrated satisfactory discrimination with an Area Under the Curve (AUC) of 0.919 in the training set and 0.945 in the testing set. In addition, the calibration plot demonstrated few errors between the predicted and actual values. In a separate analysis, the immune components and cellular differences between the two ccRCC subtypes based on their AKI signatures were compared. Patients in the CS1 had better overall survival, progression-free survival, drug sensitivity, and survival probability.
Our study identified seven distinct AKI-related biomarkers based on four machine learning methods and proposed a nomogram for stratified AKI risk prediction. We also confirmed that AKI signatures were valuable for predicting ccRCC prognosis. The current work not only sheds light on the early prediction of AKI, but also provides new insights into the correlation between AKI and ccRCC.
急性肾损伤若能早期发现,病情可得到缓解。预测急性肾损伤(AKI)的生物标志物有限。在本研究中,我们使用公共数据库和机器学习算法来识别预测AKI的新型生物标志物。此外,AKI与透明细胞肾细胞癌(ccRCC)之间的相互作用仍不明确。
从基因表达综合数据库(GEO)下载四个公共AKI数据集(GSE126805、GSE139061、GSE30718和GSE90861)作为发现数据集,一个数据集(GSE43974)作为验证数据集。使用R包limma识别AKI与正常肾组织之间的差异表达基因(DEG)。使用四种机器学习算法识别新型AKI生物标志物。使用R包ggcor计算七种生物标志物与免疫细胞或其成分之间的相关性。此外,使用七种新型生物标志物识别并验证了两种具有不同预后和免疫特征的不同ccRCC亚型。
使用四种机器学习方法识别出七种强大的AKI特征。免疫浸润分析显示,在AKI组中,活化的CD4 T细胞、CD56自然杀伤细胞、嗜酸性粒细胞、肥大细胞、记忆B细胞、自然杀伤T细胞、中性粒细胞、滤泡辅助性T细胞和1型辅助性T细胞的数量显著更高。预测AKI风险的列线图在训练集中的曲线下面积(AUC)为0.919,在测试集中为0.945,显示出令人满意的区分度。此外,校准图显示预测值与实际值之间的误差很小。在单独的分析中,比较了基于AKI特征的两种ccRCC亚型之间的免疫成分和细胞差异。CS1组患者的总生存期、无进展生存期、药物敏感性和生存概率更好。
我们的研究基于四种机器学习方法识别出七种不同的AKI相关生物标志物,并提出了一个用于分层AKI风险预测的列线图。我们还证实,AKI特征对于预测ccRCC预后很有价值。目前的工作不仅为AKI的早期预测提供了线索,也为AKI与ccRCC之间的相关性提供了新的见解。