Disparities in the diagnostic efficacy of radiomics models in predicting various degrees of cognitive impairment in patients with cerebral small vessel disease.

IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING BMC Medical Imaging Pub Date : 2024-09-27 DOI:10.1186/s12880-024-01431-0
Bingqin Huang, Wei Zheng, Ronghua Mu, Peng Yang, Xin Li, Fuzhen Liu, Xiaoyan Qin, Xiqi Zhu
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Abstract

Background: Aim to validate the diagnostic efficacy of radiomics models for predicting various degrees of cognitive impairment in patients with cerebral small vessel disease (CSVD).

Methods: Participants were divided into mild cognitive impairment group (mild-CSVD group) and sever cognitive impairment group (sever-CSVD group) according to Montreal Cognitive Assessment (MoCA) performance, 98 gender-age-education matched subjects served as normal controls. Radiomic features were extracted from the segmented hippocampus using PyRadiomics. The feature preprocessing involved replacing missing values with the mean, applying stratified random sampling to allocate subjects into training (80%) and testing (20%) sets, ensuring balance among the three classes (normal controls, mild-CSVD group, and sever-CSVD group). A feature selection method was applied to identify discriminative radiomic features, with the optimal texture feature chosen for developing diagnostic models. Performance was evaluated in both the training and testing sets using receiver operating characteristic (ROC) curve analysis.

Results: The radiomics model achieved an accuracy of 0.625, an AUC of 0.593, a sensitivity of 0.828, and a specificity of 0.316 in distinguishing mild-CSVD group from normal controls. When distinguishing mild-CSVD group from sever-CSVD group, the radiomics model reached an accuracy of 0.683, an AUC of 0.660, a sensitivity of 0.167, and a specificity of 0.897. Similarly, in distinguishing sever-CSVD group from normal controls, the radiomics model exhibited an accuracy of 0.781, an AUC of 0.818, a sensitivity of 0.538, and a specificity of 0.947.

Conclusion: Radiomics model based on hippocampal texture had disparities in the diagnostic efficacy of radiomics models in predicting various degrees of cognitive impairment in patients with CSVD.

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放射组学模型在预测脑小血管疾病患者不同程度认知障碍方面的诊断效果差异。
背景:旨在验证放射组学模型对预测脑小血管疾病(CSVD)患者不同程度认知障碍的诊断效果:目的:验证放射组学模型预测脑小血管疾病(CSVD)患者不同程度认知功能障碍的诊断效果:根据蒙特利尔认知评估(MoCA)结果,将参与者分为轻度认知障碍组(mild-CSVD组)和重度认知障碍组(severe-CSVD组),98名性别-年龄-教育匹配的受试者作为正常对照。使用 PyRadiomics 从分割的海马中提取放射组学特征。特征预处理包括用平均值替换缺失值,应用分层随机抽样将受试者分为训练集(80%)和测试集(20%),确保三个类别(正常对照组、轻度-CSVD 组和重度-CSVD 组)之间的平衡。采用特征选择方法来识别具有鉴别力的放射学特征,并选择最佳纹理特征来开发诊断模型。利用接收器操作特征曲线(ROC)分析评估了训练集和测试集的性能:放射组学模型在区分轻度 CSVD 组和正常对照组方面的准确率为 0.625,AUC 为 0.593,灵敏度为 0.828,特异性为 0.316。在区分轻度-CSVD 组和严重-CSVD 组时,放射组学模型的准确度为 0.683,AUC 为 0.660,灵敏度为 0.167,特异度为 0.897。同样,在区分严重-CSVD 组和正常对照组时,放射组学模型的准确度为 0.781,AUC 为 0.818,灵敏度为 0.538,特异度为 0.947:基于海马纹理的放射组学模型在预测CSVD患者不同程度的认知功能障碍方面的诊断效果存在差异。
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来源期刊
BMC Medical Imaging
BMC Medical Imaging RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.60
自引率
3.70%
发文量
198
审稿时长
27 weeks
期刊介绍: BMC Medical Imaging is an open access journal publishing original peer-reviewed research articles in the development, evaluation, and use of imaging techniques and image processing tools to diagnose and manage disease.
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