Li Wei, Liu Jin, Xiao Zhongli, Zhu Dantian, Liao Jianwei, Yu Wenjun, Feng Jiaxin, Qian Baoxin, Fang Yijie, Li Shaolin
Department of Radiology, The Fifth Affiliated Hospital of Sun Yat-sen University, Zhuhai, Guangdong Province, China.
Huiying Medical Technology (Beijing), Huiying Medical Technology Co., Ltd., Room A206, B2, Dongsheng Science and Technology Park, Haidian District, Beijing, 100192, China.
Insights Imaging. 2024 Jun 13;15(1):143. doi: 10.1186/s13244-024-01719-3.
To establish a radiomics-based automatic grading model for knee osteoarthritis (OA) and evaluate the influence of different body positions on the model's effectiveness.
Plain radiographs of a total of 473 pairs of knee joints from 473 patients (May 2020 to July 2021) were retrospectively analyzed. Each knee joint included anteroposterior (AP) and lateral (LAT) images which were randomly assigned to the training cohort and the testing cohort at a ratio of 7:3. First, an assessment of knee OA severity was done by two independent radiologists with Kallgren-Lawrence grading scale. Then, another two radiologists independently delineated the region of interest for radiomic feature extraction and selection. The radiomic classification features were dimensionally reduced and a machine model was conducted using logistic regression (LR). Finally, the classification efficiency of the model was evaluated using receiver operating characteristic curves and the area under the curve (AUC).
The AUC (macro/micro) of the model using a combination of AP and LAT (AP&LAT) images were 0.772/0.778, 0.818/0.799, and 0.864/0.879, respectively. The radiomic features from the combined images achieved better classification performance than the individual position image (p < 0.05). The overall accuracy of the radiomic model with AP&LAT images was 0.727 compared to 0.712 and 0.417 for radiologists with 4 years and 2 years of musculoskeletal diagnostic experience.
A radiomic model constructed by combining the AP&LAT images of the knee joint can better grade knee OA and assist clinicians in accurate diagnosis and treatment.
A radiomic model based on plain radiographs accurately grades knee OA severity. By utilizing the LR classifier and combining AP&LAT images, it improves accuracy and consistency in grading, aiding clinical decision-making, and treatment planning.
Radiomic model performed more accurately in K/L grading of knee OA than junior radiologists. Radiomic features from the combined images achieved better classification performance than the individual position image. A radiomic model can improve the grading of knee OA and assist in diagnosis and treatment.
建立基于放射组学的膝关节骨关节炎(OA)自动分级模型,并评估不同体位对该模型有效性的影响。
回顾性分析了2020年5月至2021年7月期间473例患者的473对膝关节的X线平片。每个膝关节包括前后位(AP)和侧位(LAT)图像,这些图像以7:3的比例随机分配到训练队列和测试队列。首先,由两名独立的放射科医生使用卡尔格伦-劳伦斯分级量表对膝关节OA严重程度进行评估。然后,另外两名放射科医生独立勾勒出用于放射组学特征提取和选择的感兴趣区域。对放射组学分类特征进行降维,并使用逻辑回归(LR)建立机器学习模型。最后,使用受试者工作特征曲线和曲线下面积(AUC)评估模型的分类效率。
使用前后位和侧位(AP&LAT)图像组合的模型的AUC(宏观/微观)分别为0.772/0.778、0.818/0.799和0.864/0.879。组合图像的放射组学特征比单个体位图像具有更好的分类性能(p<0.05)。使用AP&LAT图像的放射组学模型的总体准确率为0.727,而具有4年和2年肌肉骨骼诊断经验的放射科医生的准确率分别为0.712和0.417。
通过组合膝关节的前后位和侧位图像构建的放射组学模型可以更好地对膝关节OA进行分级,并协助临床医生进行准确的诊断和治疗。
基于X线平片的放射组学模型可准确分级膝关节OA的严重程度。通过使用LR分类器并结合前后位和侧位图像,提高了分级的准确性和一致性,有助于临床决策和治疗规划。
放射组学模型在膝关节OA的K/L分级中比初级放射科医生表现更准确。组合图像的放射组学特征比单个体位图像具有更好的分类性能。放射组学模型可以改善膝关节OA的分级,并协助诊断和治疗。