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利用多模态磁共振成像和认知评估的机器学习辅助轻度认知障碍个体诊断

Machine-learning Support to Individual Diagnosis of Mild Cognitive Impairment Using Multimodal MRI and Cognitive Assessments.

作者信息

De Marco Matteo, Beltrachini Leandro, Biancardi Alberto, Frangi Alejandro F, Venneri Annalena

机构信息

Departments of Neuroscience.

Electronic and Electrical Engineering, Centre for Computational Imaging and Simulation Technologies in Biomedicine (CISTIB).

出版信息

Alzheimer Dis Assoc Disord. 2017 Oct-Dec;31(4):278-286. doi: 10.1097/WAD.0000000000000208.

DOI:10.1097/WAD.0000000000000208
PMID:28891818
Abstract

BACKGROUND

Understanding whether the cognitive profile of a patient indicates mild cognitive impairment (MCI) or performance levels within normality is often a clinical challenge. The use of resting-state functional magnetic resonance imaging (RS-fMRI) and machine learning may represent valid aids in clinical settings for the identification of MCI patients.

METHODS

Machine-learning models were computed to test the classificatory accuracy of cognitive, volumetric [structural magnetic resonance imaging (sMRI)] and blood oxygen level dependent-connectivity (extracted from RS-fMRI) features, in single-modality and mixed classifiers.

RESULTS

The best and most significant classifier was the RS-fMRI+Cognitive mixed classifier (94% accuracy), whereas the worst performing was the sMRI classifier (∼80%). The mixed global (sMRI+RS-fMRI+Cognitive) had a slightly lower accuracy (∼90%), although not statistically different from the mixed RS-fMRI+Cognitive classifier. The most important cognitive features were indices of declarative memory and semantic processing. The crucial volumetric feature was the hippocampus. The RS-fMRI features selected by the algorithms were heavily based on the connectivity of mediotemporal, left temporal, and other neocortical regions.

CONCLUSION

Feature selection was profoundly driven by statistical independence. Some features showed no between-group differences, or showed a trend in either direction. This indicates that clinically relevant brain alterations typical of MCI might be subtle and not inferable from group analysis.

摘要

背景

了解患者的认知特征是表明存在轻度认知障碍(MCI)还是处于正常水平往往是一项临床挑战。使用静息态功能磁共振成像(RS-fMRI)和机器学习可能是临床环境中识别MCI患者的有效辅助手段。

方法

计算机器学习模型,以测试认知、体积[结构磁共振成像(sMRI)]和血氧水平依赖连接性(从RS-fMRI中提取)特征在单模态和混合分类器中的分类准确性。

结果

最佳且最显著的分类器是RS-fMRI+认知混合分类器(准确率94%),而表现最差的是sMRI分类器(约80%)。混合全局(sMRI+RS-fMRI+认知)的准确率略低(约90%),尽管与混合RS-fMRI+认知分类器无统计学差异。最重要的认知特征是陈述性记忆和语义处理指标。关键的体积特征是海马体。算法选择的RS-fMRI特征很大程度上基于中颞叶、左颞叶和其他新皮质区域的连接性。

结论

特征选择在很大程度上受统计独立性驱动。一些特征在组间无差异,或呈双向趋势。这表明MCI典型的临床相关脑改变可能很细微,无法从组分析中推断出来。

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