Lozano-García Manuel, Estrada-Petrocelli Luis, Román Roger Rosselló, Jané Raimon, Trampuz Andrej, Morgenstern Christian
Universitat Politècnica de Catalunya-BarcelonaTech (UPC), Barcelona, Spain.
Institute for Bioengineering of Catalonia (IBEC), The Barcelona Institute of Science and Technology (BIST), Barcelona, Spain.
J Orthop Res. 2025 Oct;43(10):1855-1864. doi: 10.1002/jor.70024. Epub 2025 Jul 13.
Isothermal microcalorimetry (IMC) is a promising tool for diagnosing periprosthetic joint infection (PJI), based on real-time measurement of growth-related heat production of pathogens, and faster than conventional microbial cultures. However, the feasibility of identifying specific pathogens in clinical samples using IMC has yet to be proven. This study implements machine learning and transfer learning convolutional neural network (CNN) models to detect and identify pathogens causing PJI, using IMC data alone. IMC data were obtained from synovial fluid samples, including 174 aseptic samples and 239 PJI samples containing five different bacterial strains. XGBoost, multi-layer perceptron, support vector machine, random forest, and three transfer learning CNN models were implemented to detect PJI and identify five bacterial strains in PJI samples. The binary XGBoost classifier yielded a 100% accuracy in PJI detection, whereas the multiclass XGBoost classifier and the combined transfer learning CNN classifier reached an overall accuracy of 90.3% and 91.5%, respectively, in PJI identification, with biological significance of extracted features in the XGBoost model facilitating its interpretability and usage in clinical practice. The strain with the lowest recall (83.3%) was PA, whereas SE was the strain with the lowest precision (78.9%). The results demonstrate the feasibility of automatic detection and identification of pathogens causing PJI using their IMC growth patterns and machine learning models. This adds a critical missing feature to IMC, contributing to accelerating the diagnosis of PJI and the selection of antibiotic therapy.
等温微量热法(IMC)是一种很有前景的诊断人工关节周围感染(PJI)的工具,它基于对病原体生长相关产热的实时测量,且比传统微生物培养更快。然而,使用IMC在临床样本中鉴定特定病原体的可行性尚未得到证实。本研究仅使用IMC数据,实施机器学习和迁移学习卷积神经网络(CNN)模型来检测和鉴定导致PJI的病原体。IMC数据取自滑液样本,包括174份无菌样本和239份含有五种不同细菌菌株的PJI样本。实施了XGBoost、多层感知器、支持向量机、随机森林以及三种迁移学习CNN模型,以检测PJI并鉴定PJI样本中的五种细菌菌株。二元XGBoost分类器在PJI检测中准确率达到100%,而多类XGBoost分类器和组合迁移学习CNN分类器在PJI鉴定中的总体准确率分别达到90.3%和91.5%,XGBoost模型中提取特征的生物学意义有助于其在临床实践中的可解释性和应用。召回率最低(83.3%)的菌株是铜绿假单胞菌(PA),而金黄色葡萄球菌(SE)是精度最低(78.9%)的菌株。结果表明,利用病原体的IMC生长模式和机器学习模型自动检测和鉴定导致PJI的病原体是可行的。这为IMC增添了一项关键的缺失功能,有助于加快PJI的诊断和抗生素治疗的选择。