Feature Importance Analysis and Machine Learning for Alzheimer’s Disease Early Detection: Feature Fusion of the Hippocampus, Entorhinal Cortex, and Standardized Uptake Value Ratio

Q1 Computer Science
Aya Hassouneh, Bradley Bazuin, A. Danna-dos-Santos, Ilgin Acar, I. Abdel-Qader
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Abstract

Abstract Introduction Alzheimer’s disease (AD) is a progressive neurological disorder characterized by mild memory loss and ranks as a leading cause of mortality in the USA, accounting for approximately 120,000 deaths per year. It is also the primary form of dementia. Early detection is critical for timely intervention as the neurodegenerative process often starts 15–20 years before cognitive symptoms manifest. This study focuses on determining feature importance in AD classification using fused texture features from 3D magnetic resonance imaging hippocampal and entorhinal cortex and standardized uptake value ratio (SUVR) derived from positron emission tomography (PET) images. Methods To achieve this objective, we employed four distinct classifiers (Linear Support Vector Classification, Linear Discriminant Analysis, Logistic Regression, and Logistic Regression Classifier with Stochastic Gradient Descent Learning). These classifiers were used to derive both average and top-ranked importance scores for each feature based on their outputs. Our framework is designed to distinguish between two classes, AD-negative (or mild cognitive impairment stable [MCIs]) and AD-positive (or MCI conversion [MCIc]), using a probabilistic neural network classifier and the Alzheimer’s Disease Neuroimaging Initiative (ADNI) database. Results The findings from the feature importance highlight the crucial role of the GLCM texture features extracted from the hippocampus and entorhinal cortex, demonstrating their superior performance compared to the volume and SUVR. GLCM texture AD classification achieved approximately 90% sensitivity in identifying MCIc cases while maintaining low false positives (below 30%) when fused with other features. Moreover, the receiver operating characteristic curves validate the GLCMs’ superior performance in distinguishing between MCIs and MCIc. Additionally, fusing different types of features improved classification performance compared to relying solely on any single feature category. Conclusion Our study emphasizes the pivotal role of GLCM texture features in early Alzheimer’s detection.
用于阿尔茨海默病早期检测的特征重要性分析和机器学习:海马、内皮层和标准化摄取值比率的特征融合
摘要 引言 阿尔茨海默病(AD)是一种以轻度失忆为特征的进行性神经系统疾病,在美国是导致死亡的主要原因之一,每年约有 12 万人死于此病。它也是痴呆症的主要形式。由于神经退行性过程通常在认知症状出现前 15-20 年就已开始,因此早期发现对于及时干预至关重要。本研究的重点是利用三维磁共振成像海马和内侧皮层的融合纹理特征以及正电子发射断层扫描(PET)图像得出的标准化摄取值比(SUVR),确定特征在老年痴呆症分类中的重要性。方法 为了实现这一目标,我们采用了四种不同的分类器(线性支持向量分类、线性判别分析、逻辑回归和逻辑回归分类器与随机梯度下降学习)。这些分类器根据其输出结果为每个特征得出平均重要度分数和最高重要度分数。我们的框架旨在利用概率神经网络分类器和阿尔茨海默病神经影像倡议(ADNI)数据库区分两类患者,即 AD 阴性患者(或轻度认知障碍稳定型患者 [MCIs])和 AD 阳性患者(或 MCI 转换型患者 [MCIc])。结果 从特征重要性中得出的结论强调了从海马和内侧皮层中提取的 GLCM 纹理特征的关键作用,显示出其优于体积和 SUVR 的性能。GLCM 纹理 AD 分类在识别 MCIc 病例方面达到了约 90% 的灵敏度,同时在与其他特征融合时保持了较低的误报率(低于 30%)。此外,接收者操作特征曲线验证了 GLCM 在区分 MCIs 和 MCIc 方面的卓越性能。此外,与仅依赖单一特征类别相比,融合不同类型的特征可提高分类性能。结论 我们的研究强调了 GLCM 纹理特征在早期阿尔茨海默氏症检测中的关键作用。
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来源期刊
Digital Biomarkers
Digital Biomarkers Medicine-Medicine (miscellaneous)
CiteScore
10.60
自引率
0.00%
发文量
12
审稿时长
23 weeks
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