Ruiz-España Silvia, Arana Estanislao, Moratal David
Center for Biomaterials and Tissue Engineering, Universitat Politècnica de València, 46022 Valencia, Spain.
Radiology Department, Fundación Instituto Valenciano de Oncología, Valencia, Spain.
Comput Biol Med. 2015 Jul;62:196-205. doi: 10.1016/j.compbiomed.2015.04.028. Epub 2015 Apr 25.
Computer-aided diagnosis (CAD) methods for detecting and classifying lumbar spine disease in Magnetic Resonance imaging (MRI) can assist radiologists to perform their decision-making tasks. In this paper, a CAD software has been developed able to classify and quantify spine disease (disc degeneration, herniation and spinal stenosis) in two-dimensional MRI.
A set of 52 lumbar discs from 14 patients was used for training and 243 lumbar discs from 53 patients for testing in conventional two-dimensional MRI of the lumbar spine. To classify disc degeneration according to the gold standard, Pfirrmann classification, a method based on the measurement of disc signal intensity and structure was developed. A gradient Vector Flow algorithm was used to extract disc shape features and for detecting contour abnormalities. Also, a signal intensity method was used for segmenting and detecting spinal stenosis. Novel algorithms have also been developed to quantify the severity of these pathologies. Variability was evaluated by kappa (k) and intra-class correlation (ICC) statistics.
Segmentation inaccuracy was below 1%. Almost perfect agreement, as measured by the k and ICC statistics, was obtained for all the analyzed pathologies: disc degeneration (k=0.81 with 95% CI=[0.75..0.88]) with a sensitivity of 95.8% and a specificity of 92.6%, disc herniation (k=0.94 with 95% CI=[0.87..1]) with a sensitivity of 60% and a specificity of 87.1%, categorical stenosis (k=0.94 with 95% CI=[0.90..0.98]) and quantitative stenosis (ICC=0.98 with 95% CI=[0.97..0.98]) with a sensitivity of 70% and a specificity of 81.7%.
The proposed methods are reproducible and should be considered as a possible alternative when compared to reference standards.
磁共振成像(MRI)中用于检测和分类腰椎疾病的计算机辅助诊断(CAD)方法可以帮助放射科医生完成决策任务。本文开发了一种CAD软件,能够在二维MRI中对脊柱疾病(椎间盘退变、突出和椎管狭窄)进行分类和定量分析。
在腰椎常规二维MRI中,使用来自14例患者的52个腰椎间盘进行训练,53例患者的243个腰椎间盘进行测试。为了根据金标准Pfirrmann分类法对椎间盘退变进行分类,开发了一种基于椎间盘信号强度和结构测量的方法。采用梯度向量流算法提取椎间盘形状特征并检测轮廓异常。此外,还使用信号强度法对椎管狭窄进行分割和检测。还开发了新的算法来量化这些病变的严重程度。通过kappa(k)统计和组内相关系数(ICC)统计评估变异性。
分割误差低于1%。对于所有分析的病变,通过k统计和ICC统计测量得到了几乎完美的一致性:椎间盘退变(k = 0.81,95%置信区间=[0.75..0.88]),灵敏度为95.8%,特异度为92.6%;椎间盘突出(k = 0.94,95%置信区间=[0.87..1]),灵敏度为60%,特异度为87.1%;分类椎管狭窄(k = 0.94, 95%置信区间=[0.90..0.98])和定量椎管狭窄(ICC = 0.98,95%置信区间=[0.97..0.98]),灵敏度为70%,特异度为81.7%。
与参考标准相比,所提出的方法具有可重复性,应被视为一种可能的替代方法。