基于机器学习的轻度认知障碍分类的扭曲度和离散紧密度生物标志物

IF 4.9 2区 医学 Q1 ENGINEERING, BIOMEDICAL
Didier Torres Guzmán , José Daniel Pinzón Vivas , Eduardo Barbará Morales
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引用次数: 0

摘要

目的探讨扭曲度和离散紧致度指标在磁共振成像中区分健康对照者和轻度认知障碍患者的杏仁核形态学分析中的有效性。方法共74例受试者,其中健康对照37例,轻度认知障碍患者37例。影像数据来源于ADNI数据库。对杏仁核区域(两个半球)进行分割,并计算体积、归一化体积、离散紧致度和扭曲度的测量。对支持向量机、k近邻、随机森林和人工神经网络进行统计检验和自动分类器训练,发现组间差异显著。机器学习算法使用提出的指标进行训练,并将60-40个受试者划分为训练和测试对象。训练包括超参数优化和5倍交叉验证。结果统计分析显示,所有评估指标之间存在显著差异(p < 0.01),右半球内的离散致密性和扭曲性变化最为明显。先前描述的算法的应用表明,与传统的基于体积的度量相比,所提出的生物标记物-扭曲度和离散紧密度-提供了更大的判别能力。当纳入分类模型时,这些特征增强了性能,产生了82.14%的测试准确率,曲线下面积值在88.27%到91.33%之间,f分数在81.48%到83.87%之间。这些发现强调了弯曲度和离散致密度作为早期检测轻度认知障碍的敏感和强大的成像生物标志物的潜力。结论在轻度认知障碍患者中,扭曲度和离散紧密度比传统的基于体积的指标更敏感。当集成到机器学习模型(支持向量机,k近邻,随机森林和人工神经网络)中时,这些特征增强了分类性能,实现了82.14%的测试准确率,曲线下面积值在88.27%到91.33%之间,f分数范围在81.48%到83.87%之间。结果表明,弯曲度和离散致密度可以作为早期检测轻度认知障碍的可靠和信息丰富的成像生物标志物。它们在统计区分和机器学习分类方面优于传统形态学指标的能力突出了它们在计算机辅助诊断系统中的临床应用潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tortuosity and discrete compactness biomarkers for machine learning-based classification of mild cognitive impairment

Objective

This study aimed to assess the effectiveness of tortuosity and discrete compactness metrics in analyzing the amygdala’s morphology to differentiate healthy control individuals from patients diagnosed with mild cognitive impairment using magnetic resonance imaging.

Methods

The analysis included a total of 74 participants, comprising 37 healthy control subjects and 37 mild cognitive impairment patients. Imaging data were sourced from the ADNI database. The amygdala regions (both hemispheres) were segmented, and measurements for volume, normalized volume, discrete compactness, and tortuosity were computed. Statistical tests and automatic classifier training of Support Vector Machines, K-nearest Neighbors, Randon Forest and Artificial Neural Network were conducted to identify significant group differences. The machine learning algorithms were trained with the proposed metrics with a partition of 60–40 subjects for training and testing. The training consisted of hyperparameter optimization with a 5-fold cross validation.

Results

The statistical analysis revealed significant differences (p < 0.01) across all evaluated metrics, with the most pronounced alterations observed in discrete compactness and tortuosity within the right hemisphere.
The application of the previously described algorithms demonstrated that the proposed biomarkers—tortuosity and discrete compactness—offered greater discriminative power compared to traditional volume-based measures. When incorporated into the classification models, these features enhanced performance, yielding a test accuracy of 82.14 %, area under the curve values between 88.27 % and 91.33 %, and F-scores ranging from 81.48 % to 83.87 %. These findings underscore the potential of tortuosity and discrete compactness as sensitive and robust imaging biomarkers for the early detection of mild cognitive impairment.

Conclusions

These findings demonstrate that tortuosity and discrete compactness are more sensitive than conventional volume-based metrics in capturing morphological alterations of the amygdala in mild cognitive impairment. When integrated into machine learning models—Support Vector Machines, K-nearest Neighbors, Random Forest, and Artificial Neural Networks—these features enhanced classification performance, achieving a test accuracy of 82.14 %, area under the curve values between 88.27 % and 91.33 %, and F-scores ranging from 81.48 % to 83.87 %.

Significance

The results suggest that tortuosity and discrete compactness may serve as robust and informative imaging biomarkers for the early detection of mild cognitive impairment. Their ability to outperform traditional morphological metrics in both statistical discrimination and machine learning classification highlights their potential for clinical application in computer-aided diagnosis systems.
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来源期刊
Biomedical Signal Processing and Control
Biomedical Signal Processing and Control 工程技术-工程:生物医学
CiteScore
9.80
自引率
13.70%
发文量
822
审稿时长
4 months
期刊介绍: Biomedical Signal Processing and Control aims to provide a cross-disciplinary international forum for the interchange of information on research in the measurement and analysis of signals and images in clinical medicine and the biological sciences. Emphasis is placed on contributions dealing with the practical, applications-led research on the use of methods and devices in clinical diagnosis, patient monitoring and management. Biomedical Signal Processing and Control reflects the main areas in which these methods are being used and developed at the interface of both engineering and clinical science. The scope of the journal is defined to include relevant review papers, technical notes, short communications and letters. Tutorial papers and special issues will also be published.
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