Ramalhete Luís, Araújo Rúben, Vieira Miguel Bigotte, Vigia Emanuel, Aires Inês, Ferreira Aníbal, Calado Cecília R C
Blood and Transplantation Center of Lisbon, Instituto Português do Sangue e da Transplantação, Alameda das Linhas de Torres, No. 117, 1769-001 Lisbon, Portugal.
NOVA Medical School, Universidade NOVA de Lisboa, 1169-056 Lisbon, Portugal.
J Clin Med. 2025 Jan 27;14(3):846. doi: 10.3390/jcm14030846.
: Kidney transplantation is a life-saving treatment for end-stage kidney disease, but allograft rejection remains a critical challenge, requiring accurate and timely diagnosis. The study aims to evaluate the integration of Fourier Transform Infrared (FTIR) spectroscopy and machine learning algorithms as a minimally invasive method to detect kidney allograft rejection and differentiate between T Cell-Mediated Rejection (TCMR) and Antibody-Mediated Rejection (AMR). Additionally, the goal is to discriminate these rejection types aiming to develop a reliable decision-making support tool. : This retrospective study included 41 kidney transplant recipients and analyzed 81 serum samples matched to corresponding allograft biopsies. FTIR spectroscopy was applied to pre-biopsy serum samples, and Naïve Bayes classification models were developed to distinguish rejection from non-rejection and classify rejection types. Data preprocessing involved, e.g., atmospheric compensation, second derivative, and feature selection using Fast Correlation-Based Filter for spectral regions 600-1900 cm and 2800-3400 cm. Model performance was assessed via area under the receiver operating characteristic curve (AUC-ROC), sensitivity, specificity, and accuracy. : The Naïve Bayes model achieved an AUC-ROC of 0.945 in classifying rejection versus non-rejection and AUC-ROC of 0.989 in distinguishing TCMR from AMR. Feature selection significantly improved model performance, identifying key spectral wavenumbers associated with rejection mechanisms. This approach demonstrated high sensitivity and specificity for both classification tasks. : The integration of FTIR spectroscopy with machine learning may provide a promising, minimally invasive method for early detection and precise classification of kidney allograft rejection. Further validation in larger, more diverse populations is needed to confirm these findings' reliability.
肾移植是终末期肾病的一种挽救生命的治疗方法,但同种异体移植排斥反应仍然是一个关键挑战,需要准确及时的诊断。本研究旨在评估傅里叶变换红外(FTIR)光谱学与机器学习算法相结合作为一种微创方法来检测肾移植排斥反应,并区分T细胞介导的排斥反应(TCMR)和抗体介导的排斥反应(AMR)。此外,目标是区分这些排斥反应类型,以开发一种可靠的决策支持工具。
这项回顾性研究纳入了41名肾移植受者,并分析了81份与相应同种异体移植活检匹配的血清样本。将FTIR光谱学应用于活检前的血清样本,并开发朴素贝叶斯分类模型以区分排斥反应与非排斥反应,并对排斥反应类型进行分类。数据预处理包括例如大气补偿、二阶导数以及使用基于快速相关性的滤波器对600 - 1900 cm和2800 - 3400 cm光谱区域进行特征选择。通过受试者工作特征曲线下面积(AUC - ROC)、敏感性、特异性和准确性来评估模型性能。
朴素贝叶斯模型在区分排斥反应与非排斥反应时的AUC - ROC为0.945,在区分TCMR与AMR时的AUC - ROC为0.989。特征选择显著提高了模型性能,确定了与排斥反应机制相关的关键光谱波数。该方法在两项分类任务中均表现出高敏感性和特异性。
FTIR光谱学与机器学习的结合可能为肾移植排斥反应的早期检测和精确分类提供一种有前景的微创方法。需要在更大、更多样化的人群中进行进一步验证,以确认这些发现的可靠性。