Fan Zheng, Wu Tong, Wang Yang, Jin Zhuoru, Wang Tong, Liu Da
Department of Orthopedics, Shengjing Hospital of China Medical University, Shenyang, People's Republic of China.
Department of Orthopedics, China Medical University Shenyang Fourth People's Hospital, Shenyang, People's Republic of China.
J Multidiscip Healthc. 2024 Dec 7;17:5831-5851. doi: 10.2147/JMDH.S493302. eCollection 2024.
The aim of this study is to develop and validate a deep-learning radiomics model for predicting surgical risk factors for lumbar disc herniation (LDH) in young patients to assist clinicians in identifying surgical candidates, alleviating symptoms, and improving prognosis.
A retrospective analysis of patients from two medical centers was conducted. From sagittal and axial MR images, the regions of interest were handcrafted to extract radiomics features. Various machine-learning algorithms were employed and combined with clinical features, resulting in the development of a deep-learning radiomics nomogram (DLRN) to predict surgical risk factors for LDH in young adults. The efficacy of the different models and the clinical benefits of the model were compared.
We derived six sets of features, including clinical features, radiomics features (Rad_SAG and Rad_AXI) and deep learning features (DL_SAG and DL_AXI) from sagittal and axial MR images, as well as fused deep-learning radiomics (DLR) features. The support vector machine(SVM) algorithm exhibited the best performance. The area under the curve (AUC) of DLR in the training and testing cohorts of 0.991 and 0.939, respectively, were significantly better than those of the models developed with radiomics(Rad_SAG=0.914 and 0.863, Rad_AXI=0.927 and 0.85) and deep-learning features(DL_SAG=0.959 and 0.818, DL_AXI=0.960 and 0.811). The AUC of DLRN coupled with clinical features(ODI, Pfirrmann grade, SLRT, MMFI, and MSU classification) were 0.994 and 0.941 in the training and testing cohorts, respectively. Analysis of the calibration and decision curves demonstrated good agreement between the predicted and observed outcomes, and the use of the DLRN to predict the need for surgical treatment of LDH demonstrated significant clinical benefits.
The DLRN established based on clinical and DLR features effectively predicts surgical risk factors for LDH in young adults, offering valuable insights for diagnosis and treatment.
本研究旨在开发并验证一种深度学习放射组学模型,用于预测年轻患者腰椎间盘突出症(LDH)的手术风险因素,以协助临床医生识别手术候选者、缓解症状并改善预后。
对来自两个医疗中心的患者进行回顾性分析。从矢状位和轴位MR图像中手工绘制感兴趣区域以提取放射组学特征。采用多种机器学习算法并结合临床特征,开发出一种深度学习放射组学列线图(DLRN),用于预测年轻成年人LDH的手术风险因素。比较了不同模型的疗效以及该模型的临床益处。
我们从矢状位和轴位MR图像中得出了六组特征,包括临床特征、放射组学特征(Rad_SAG和Rad_AXI)和深度学习特征(DL_SAG和DL_AXI),以及融合的深度学习放射组学(DLR)特征。支持向量机(SVM)算法表现出最佳性能。DLR在训练队列和测试队列中的曲线下面积(AUC)分别为0.991和0.939,显著优于基于放射组学(Rad_SAG = 0.914和0.863,Rad_AXI = 0.927和0.85)和深度学习特征(DL_SAG = 0.959和0.818,DL_AXI = 0.960和0.811)开发的模型。结合临床特征(ODI、Pfirrmann分级、SLRT、MMFI和MSU分类)的DLRN在训练队列和测试队列中的AUC分别为0.994和0.941。校准分析和决策曲线表明预测结果与观察结果之间具有良好的一致性,并且使用DLRN预测LDH手术治疗需求显示出显著的临床益处。
基于临床和DLR特征建立的DLRN能够有效预测年轻成年人LDH的手术风险因素,为诊断和治疗提供有价值的见解。