Gajre Suhas S, Anand Sneh, Singh U, Saxena Rajendra K
Shri Guru Gobind Singhji Inst. of Eng. & Technol., Maharashtra, India.
Conf Proc IEEE Eng Med Biol Soc. 2006;2006:2207-10. doi: 10.1109/IEMBS.2006.260671.
Osteoarthritis (OA) of knee is the most commonly occurring non-fatal irreversible disease, mainly in the elderly population and particularly in female. Various invasive and non-invasive methods are reported for the diagnosis of this articular cartilage pathology. Well known techniques such as X-ray, computed tomography, magnetic resonance imaging, arthroscopy and arthrography are having their disadvantages, and diagnosis of OA in early stages with simple effective noninvasive method is still a biomedical engineering problem. Analyzing knee joint noninvasive signals around knee might give simple solution for diagnosis of knee OA. We used electrical impedance data from knees to compare normal and osteoarthritic subjects during the most common dynamic conditions of the knee, i.e. walking and knee swing. It was found that there is substantial difference in the properties of the walking cycle (WC) and knee swing cycle (KS) signals. In experiments on 90 pathological (combined for KS and WC signals) and 72 normal signals (combined), suitable features were drawn. Then signals were used to classify as normal or pathological. Artificial multilayer feed forward neural network was trained using back propagation algorithm for the classification. On a training data set of 54 signals for KS signals, the classification efficiency for a test set of 54 was 70.37% and 85.19% with and without normalization respectively wrt base impedance. Similarly, the training set of 27 WC signals and test set of 27 signals resulted in 77.78% and 66.67% classification efficiency. The results indicate that dynamic electrical impedance signals have potential to be used as a novel method for noninvasive diagnosis of knee OA.
膝关节骨关节炎(OA)是最常见的非致命性不可逆疾病,主要发生在老年人群中,尤其是女性。据报道,有多种侵入性和非侵入性方法可用于诊断这种关节软骨病变。诸如X射线、计算机断层扫描、磁共振成像、关节镜检查和关节造影等知名技术都有其缺点,而用简单有效的非侵入性方法在早期诊断OA仍然是一个生物医学工程问题。分析膝关节周围的非侵入性信号可能为膝关节OA的诊断提供简单的解决方案。我们使用来自膝盖的电阻抗数据,在膝关节最常见的动态状态(即行走和膝关节摆动)下比较正常人和骨关节炎患者。结果发现,行走周期(WC)和膝关节摆动周期(KS)信号的特性存在显著差异。在对90个病理信号(KS和WC信号合并)和72个正常信号(合并)进行的实验中,提取了合适的特征。然后将信号用于分类为正常或病理。使用反向传播算法训练人工多层前馈神经网络进行分类。对于KS信号的54个信号的训练数据集,54个测试集的分类效率在相对于基础阻抗进行归一化和未归一化时分别为70.37%和85.19%。同样,27个WC信号的训练集和27个信号的测试集的分类效率分别为77.78%和66.67%。结果表明,动态电阻抗信号有潜力作为一种用于膝关节OA非侵入性诊断的新方法。