基于随机森林算法的基本特征、血清和成像生物标志物诊断轻度认知障碍的应用。

IF 1.8 4区 医学 Q3 CLINICAL NEUROLOGY Current Alzheimer research Pub Date : 2022-01-01 DOI:10.2174/1567205019666220128120927
Juan Yang, Haijing Sui, Ronghong Jiao, Min Zhang, Xiaohui Zhao, Lingling Wang, Wenping Deng, Xueyuan Liu
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引用次数: 1

摘要

背景:轻度认知障碍(MCI)被认为是阿尔茨海默病(AD)的早期阶段。本研究的目的是分析MCI患者的基本特征及血清和影像学生物标志物,为MCI患者的诊断提供更客观、准确的方法。方法:采用蒙特利尔认知测验对119例年龄≥65岁的患者进行测试。这些血清生物标志物被检测为餐前血糖、甘油三酯、总胆固醇、Aβ1-40、Aβ1-42和P-tau。所有受试者均采用1.5T MRI (GE Healthcare, WI, USA)扫描,获取DWI、DTI和ASL图像。DTI计算各向异性分数(FA), DWI计算表观扩散系数(ADC), ASL计算脑血流量(CBF)。然后将所有图像注册到蒙特利尔神经学研究所(MNI)的SPACE。在116个脑区,通过自动解剖标记提取FA、ADC和CBF的中位数。基本特征包括性别、文化程度、既往高血压、糖尿病、冠心病病史。数据随机分为训练集和测试集。将递归随机森林算法应用于MCI患者的诊断,并采用递归特征消除(RFE)方法筛选显著的基本特征和血清及影像学生物标志物。分别计算总体准确性、敏感性和特异性,并计算测试集的ROC曲线和曲线下面积(AUC)。结果:当MCI诊断模型的变量为影像学生物标志物时,随机森林的训练准确率为100%,测试正确率为86.23%,灵敏度为78.26%,特异性为100%。结合基本特征、血清和影像生物标志物作为MCI诊断模型的变量,发现随机森林的训练准确率为100%;检测准确率为97.23%,灵敏度为94.44%,特异性为100%。RFE分析显示,年龄、Aβ1-40和小脑_4_6分别是最重要的基本特征、血清生物标志物和成像生物标志物。结论:影像生物标志物可有效诊断轻度认知损伤。基础性状生物标志物或血清生物标志物对MCI的诊断能力有限,但与影像学生物标志物结合可提高MCI的诊断能力,本模型灵敏度为94.44%,特异性为100%。随机森林作为一种机器学习方法,可以有效地帮助诊断MCI,同时筛选出重要的影响因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Random-Forest-Algorithm-Based Applications of the Basic Characteristics and Serum and Imaging Biomarkers to Diagnose Mild Cognitive Impairment.

Background: Mild cognitive impairment (MCI) is considered the early stage of Alzheimer's Disease (AD). The purpose of our study was to analyze the basic characteristics and serum and imaging biomarkers for the diagnosis of MCI patients as a more objective and accurate approach.

Methods: The Montreal Cognitive Test was used to test 119 patients aged ≥65. Such serum biomarkers were detected as preprandial blood glucose, triglyceride, total cholesterol, Aβ1-40, Aβ1-42, and P-tau. All the subjects were scanned with 1.5T MRI (GE Healthcare, WI, USA) to obtain DWI, DTI, and ASL images. DTI was used to calculate the anisotropy fraction (FA), DWI was used to calculate the apparent diffusion coefficient (ADC), and ASL was used to calculate the cerebral blood flow (CBF). All the images were then registered to the SPACE of the Montreal Neurological Institute (MNI). In 116 brain regions, the medians of FA, ADC, and CBF were extracted by automatic anatomical labeling. The basic characteristics included gender, education level, and previous disease history of hypertension, diabetes, and coronary heart disease. The data were randomly divided into training sets and test ones. The recursive random forest algorithm was applied to the diagnosis of MCI patients, and the recursive feature elimination (RFE) method was used to screen the significant basic features and serum and imaging biomarkers. The overall accuracy, sensitivity, and specificity were calculated, respectively, and so were the ROC curve and the area under the curve (AUC) of the test set.

Results: When the variable of the MCI diagnostic model was an imaging biomarker, the training accuracy of the random forest was 100%, the correct rate of the test was 86.23%, the sensitivity was 78.26%, and the specificity was 100%. When combining the basic characteristics, the serum and imaging biomarkers as variables of the MCI diagnostic model, the training accuracy of the random forest was found to be 100%; the test accuracy was 97.23%, the sensitivity was 94.44%, and the specificity was 100%. RFE analysis showed that age, Aβ1-40, and cerebellum_4_6 were the most important basic feature, serum biomarker, imaging biomarker, respectively.

Conclusion: Imaging biomarkers can effectively diagnose MCI. The diagnostic capacity of the basic trait biomarkers or serum biomarkers for MCI is limited, but their combination with imaging biomarkers can improve the diagnostic capacity, as indicated by the sensitivity of 94.44% and the specificity of 100% in our model. As a machine learning method, a random forest can help diagnose MCI effectively while screening important influencing factors.

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来源期刊
Current Alzheimer research
Current Alzheimer research 医学-神经科学
CiteScore
4.00
自引率
4.80%
发文量
64
审稿时长
4-8 weeks
期刊介绍: Current Alzheimer Research publishes peer-reviewed frontier review, research, drug clinical trial studies and letter articles on all areas of Alzheimer’s disease. This multidisciplinary journal will help in understanding the neurobiology, genetics, pathogenesis, and treatment strategies of Alzheimer’s disease. The journal publishes objective reviews written by experts and leaders actively engaged in research using cellular, molecular, and animal models. The journal also covers original articles on recent research in fast emerging areas of molecular diagnostics, brain imaging, drug development and discovery, and clinical aspects of Alzheimer’s disease. Manuscripts are encouraged that relate to the synergistic mechanism of Alzheimer''s disease with other dementia and neurodegenerative disorders. Book reviews, meeting reports and letters-to-the-editor are also published. The journal is essential reading for researchers, educators and physicians with interest in age-related dementia and Alzheimer’s disease. Current Alzheimer Research provides a comprehensive ''bird''s-eye view'' of the current state of Alzheimer''s research for neuroscientists, clinicians, health science planners, granting, caregivers and families of this devastating disease.
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