School of Computer and Systems Sciences, Jawaharlal Nehru University, New Delhi, India.
BMC Med Inform Decis Mak. 2020 Feb 21;20(1):37. doi: 10.1186/s12911-020-1055-x.
The detection of Alzheimer's Disease (AD) in its formative stages, especially in Mild Cognitive Impairments (MCI), has the potential of helping the clinicians in understanding the condition. The literature review shows that the classification of MCI-converts and MCI-non-converts has not been explored profusely and the maximum classification accuracy reported is rather low. Thus, this paper proposes a Machine Learning approach for classifying patients of MCI into two groups one who converted to AD and the others who are not diagnosed with any signs of AD. The proposed algorithm is also used to distinguish MCI patients from controls (CN). This work uses the Structural Magnetic Resonance Imaging data.
This work proposes a 3-D variant of Local Binary Pattern (LBP), called LBP-20 for extracting features. The method has been compared with 3D-Discrete Wavelet Transform (3D-DWT). Subsequently, a combination of 3D-DWT and LBP-20 has been used for extracting features. The relevant features are selected using the Fisher Discriminant Ratio (FDR) and finally the classification has been carried out using the Support Vector Machine.
The combination of 3D-DWT with LBP-20 results in a maximum accuracy of 88.77. Similarly, the proposed combination of methods is also applied to distinguish MCI from CN. The proposed method results in the classification accuracy of 90.31 in this data.
The proposed combination is able to extract relevant distribution of microstructures from each component, obtained with the use of DWT and thereby improving the classification accuracy. Moreover, the number of features used for classification is significantly less as compared to those obtained by 3D-DWT. The performance of the proposed method is measured in terms of accuracy, specificity and sensitivity and is found superior in comparison to the existing methods. Thus, the proposed method may contribute to effective diagnosis of MCI and may prove advantageous in clinical settings.
在其形成阶段(尤其是在轻度认知障碍(MCI)中)检测阿尔茨海默病(AD)有可能帮助临床医生了解病情。文献综述表明,MCI 转化者和 MCI 非转化者的分类尚未得到充分探索,报告的最大分类准确率相当低。因此,本文提出了一种机器学习方法,用于将 MCI 患者分为两组,一组转化为 AD,另一组未被诊断出任何 AD 迹象。所提出的算法也用于将 MCI 患者与对照组(CN)区分开来。这项工作使用结构磁共振成像数据。
这项工作提出了一种称为 LBP-20 的 3D 局部二值模式(LBP)的变体,用于提取特征。该方法与 3D 离散小波变换(3D-DWT)进行了比较。随后,使用 3D-DWT 和 LBP-20 的组合来提取特征。使用 Fisher 判别比(FDR)选择相关特征,最后使用支持向量机进行分类。
3D-DWT 与 LBP-20 的组合可实现最高 88.77%的准确率。同样,也将提出的方法组合应用于区分 MCI 和 CN。在该数据中,该方法的分类准确率为 90.31%。
所提出的组合能够从使用 DWT 获得的每个分量中提取出相关的微观结构分布,从而提高分类准确率。此外,与 3D-DWT 获得的特征相比,用于分类的特征数量明显减少。所提出的方法的性能是根据准确性、特异性和敏感性来衡量的,与现有方法相比具有优势。因此,该方法可能有助于对 MCI 的有效诊断,并可能在临床环境中具有优势。