Qazi Arish A, Dam Erik B, Nielsen Mads, Karsdal Morten A, Pettersen Paola C, Christiansen Claus
Image Group, University of Copenhagen, Copenhagen, Denmark.
Acad Radiol. 2007 Oct;14(10):1209-20. doi: 10.1016/j.acra.2007.06.004.
Cartilage loss as determined by magnetic resonance imaging (MRI) or joint space narrowing as determined by x-ray is the result of cartilage erosion. However, metabolic processes within the cartilage that later result in cartilage loss may be a more sensitive assessment method for early changes. Recently, it was shown that cartilage homogeneity visualized by MRI representing the biochemical changes undergoing in the cartilage is a potential marker for early detection of knee osteoarthritis (OA) and is also able to significantly separate groups of healthy subjects from those with OA. The purpose of this study was twofold. First, we wished to evaluate whether the results on cartilage homogeneity from the previous study can be reproduced using an independent population. Second, based on the homogeneity framework, we present an automatic technique that partitions the region of interest in the cartilage that contributes most to discrimination between healthy and OA subjects and allows for identification of the most implicated areas in early OA. These findings may allow further investigation of whether cartilage homogeneity reveals a predisposition for OA or whether it evolves as a consequence to disease and thereby can be used as a progression biomarker.
A total of 283 right and left knees from 159 subjects aged 21 to 81 years were scanned using a Turbo 3D T1 sequence on a 0.18-T MRI Esaote scanner. The medial compartment of the tibial cartilage sheet was segmented using a fully automatic voxel classification scheme based on supervised learning. From the segmented cartilage sheet, homogeneity was quantified by measuring entropy from the distribution of signal intensities inside the compartment. Each knee was examined by radiography, and the knees were categorized by the Kellgren and Lawrence (KL) Index. Next, based on a gradient descent optimization technique, the cartilage region that contributed to the maximum statistical significance of homogeneity in separating healthy subjects from the diseased was partitioned. The generalizability of the region was evaluated by testing for overfitting. Three different regularization techniques were evaluated for reducing overfitting errors.
The P values for separating the different groups based on cartilage homogeneity were 2 x 10(-5) (KL 0 versus KL 1) and 1 x 10(-7) (KL 0 versus KL >0). Using the automatic gradient descent technique, the partitioned region was toward the peripheral part of the cartilage sheet. Using this region, the P values for separating the different groups based on homogeneity were 5 x 10(-9) (KL 0 versus KL 1) and 1 x 10(-15) (KL 0 versus KL >0). The precision of homogeneity for the partitioned region assessed as a test-retest root-mean-square coefficient of variation was 3.3%. Bootstrapping proved to be an effective regularization tool in reducing overfitting errors.
The validation study supported the use of cartilage homogeneity as a tool for the early detection of knee OA and for separating groups of healthy subjects from those who have disease. Our automatic, unbiased partitioning algorithm based on a general statistical framework outlined the cartilage region of interest that best separated healthy from OA conditions on the basis of homogeneity discrimination. We have shown that OA affects certain areas of the cartilage more distinctly, and these areas are located more toward the peripheral region of the cartilage. We propose that this region corresponds anatomically to cartilage covered by the meniscus in healthy subjects. This finding may provide valuable clues in the early detection and monitoring of OA and thus may improve treatment efficacy.
通过磁共振成像(MRI)测定的软骨损失或通过X射线测定的关节间隙变窄是软骨侵蚀的结果。然而,软骨内随后导致软骨损失的代谢过程可能是早期变化的更敏感评估方法。最近的研究表明,MRI显示的软骨同质性代表了软骨中正在发生的生化变化,是早期检测膝关节骨关节炎(OA)的潜在标志物,并且还能够显著区分健康受试者和OA患者群体。本研究的目的有两个。首先,我们希望评估使用独立人群是否能够重现先前研究中关于软骨同质性的结果。其次,基于同质性框架,我们提出一种自动技术,该技术可对软骨中对区分健康受试者和OA受试者贡献最大的感兴趣区域进行划分,并能够识别早期OA中最受影响的区域。这些发现可能有助于进一步研究软骨同质性是揭示OA的易感性,还是作为疾病的结果而演变,从而可作为疾病进展的生物标志物。
使用0.18-T MRI Esaote扫描仪上的Turbo 3D T1序列对159名年龄在21至81岁之间的受试者的总共283个左右膝关节进行扫描。基于监督学习,使用全自动体素分类方案对胫骨软骨板的内侧部分进行分割。从分割后的软骨板中,通过测量隔室内信号强度分布的熵来量化同质性。对每个膝关节进行X线检查,并根据Kellgren和Lawrence(KL)指数对膝关节进行分类。接下来,基于梯度下降优化技术,划分出在区分健康受试者和患病受试者时对同质性具有最大统计学意义的软骨区域。通过测试过拟合来评估该区域的可推广性。评估了三种不同的正则化技术以减少过拟合误差。
基于软骨同质性区分不同组别的P值分别为2×10⁻⁵(KL 0与KL 1)和1×10⁻⁷(KL 0与KL>0)。使用自动梯度下降技术,划分出的区域朝向软骨板的周边部分。使用该区域,基于同质性区分不同组别的P值分别为5×10⁻⁹(KL 0与KL 1)和1×10⁻¹⁵(KL 0与KL>0)。作为重测均方根变异系数评估的划分区域的同质性精度为3.3%。自举法被证明是减少过拟合误差的有效正则化工具。
验证研究支持将软骨同质性用作早期检测膝关节OA以及区分健康受试者和患病受试者群体的工具。我们基于一般统计框架的自动、无偏分割算法勾勒出了基于同质性区分在健康与OA状态下最能区分的感兴趣软骨区域。我们已经表明OA对软骨的某些区域影响更明显,并且这些区域更靠近软骨的周边区域。我们提出该区域在解剖学上对应于健康受试者中半月板覆盖的软骨。这一发现可能为OA的早期检测和监测提供有价值的线索,从而可能提高治疗效果。