Orthopedics, The Second Hospital of Jilin University, No. 218, Ziqiang Street, Nanguan District, Changchun, 130000, Jilin, China.
Orthopedics, Changchun University of Chinese Medicine, No.1478, Gongnong Road, Chaoyang District, Changchun, 130117, Jilin, China.
J Orthop Surg Res. 2022 Jul 28;17(1):365. doi: 10.1186/s13018-022-03247-6.
Osteoarthritis, a common degenerative disease of articular cartilage, is characterized by degeneration of articular cartilage, changes in subchondral bone structure, and formation of osteophytes, with main clinical manifestations including increasingly serious swelling, pain, stiffness, deformity, and mobility deficits of the knee joints. With the advent of the big data era, the processing of mass data has evolved into a hot topic and gained a solid foundation from the steadily developed and improved machine learning algorithms. Aiming to provide a reference for the diagnosis and treatment of osteoarthritis, this paper using machine learning identifies the key feature genes of osteoarthritis and explores its relationship with immune infiltration, thereby revealing its pathogenesis at the molecular level.
From the GEO database, GSE55235 and GSE55457 data were derived as training sets and GSE98918 data as a validation set. Differential gene expressions of the training sets were analyzed, and the LASSO regression model and support vector machine model were established by applying machine learning algorithms. Moreover, their intersection genes were regarded as feature genes, the receiver operator characteristic (ROC) curve was drawn, and the results were verified using the validation set. In addition, the expression spectrum of osteoarthritis was analyzed by immunocyte infiltration and the co-expression correlation between feature genes and immunocytes was construed.
EPYC and KLF9 can be viewed as feature genes for osteoarthritis. The silencing of EPYC and the overexpression of KLF9 are associated with the occurrence of osteoarthritis and immunocyte infiltration.
骨关节炎是一种常见的关节软骨退行性疾病,其特征为关节软骨退变、软骨下骨结构改变和骨赘形成,主要临床表现包括膝关节肿胀、疼痛、僵硬、畸形和活动度下降逐渐加重。随着大数据时代的到来,海量数据的处理已成为热门话题,并得益于机器学习算法的稳步发展和不断完善,为其提供了坚实的基础。本文旨在为骨关节炎的诊断和治疗提供参考,使用机器学习方法识别骨关节炎的关键特征基因,并探讨其与免疫浸润的关系,从而在分子水平上揭示其发病机制。
从 GEO 数据库中获取 GSE55235 和 GSE55457 数据作为训练集,GSE98918 数据作为验证集。分析训练集的差异基因表达,应用机器学习算法建立 LASSO 回归模型和支持向量机模型。此外,将其交集基因视为特征基因,绘制受试者工作特征(ROC)曲线,并使用验证集进行验证。此外,通过免疫细胞浸润分析骨关节炎的表达谱,并构建特征基因与免疫细胞之间的共表达相关性。
EPYC 和 KLF9 可视为骨关节炎的特征基因。EPYC 的沉默和 KLF9 的过表达与骨关节炎的发生和免疫细胞浸润有关。