Yang Ziwei, Liang Xiao, Ji Yuqi, Zeng Wei, Wang Yao, Zhang Yong, Zhou Fuqing
Jiangxi Provincial Key Laboratory for Precision Pathology and Intelligent Diagnosis, Department of Radiology, the First Affiliated Hospital, Jiangxi Medical College, Nanchang University, Nanchang, 330006, People's Republic of China.
Neuroradiology Laboratory, Jiangxi Province Medical Imaging Research Institute, Nanchang, 330006, People's Republic of China.
J Pain Res. 2025 Jan 20;18:271-282. doi: 10.2147/JPR.S484680. eCollection 2025.
To investigate whether functional radiomic features in bilateral hippocampi can identify the cognitively impaired patients from low-back-related leg pain (LBLP).
For this retrospective study, a total of 95 clinically definite LBLP patients (40 cognitively impaired patients and 45 cognitively preserved patients) were included, and all patients underwent functional MRI and clinical assessments. After calculating the amplitude of low-frequency fluctuations (ALFF), regional homogeneity (ReHo), voxel-mirrored homotopic connectivity (VMHC) and degree centrality (DC) imaging, the radiomic features (n = 819) of bilateral hippocampi were extracted from these images, respectively. After feature selection, machine learning models were trained. Finally, we further analyzed the relationship between the hippocampal functional radiomic features and clinical measures, to explore the clinical significance of these features.
The combined radiomic features model logistic regression algorithm superior performance in distinguishing cognitively impaired patients from LBLP (AUC = 0.970, accuracy = 92.3%, sensitivity = 92.3%, specificity = 92.3%) compared to the other models. Additionally, radiomic wavelet features were correlated with Montreal Cognitive Assessment (MoCA) and Hamilton Anxiety Scale, present pain intensity scores in cognitively impaired LBLP patients ( < 0.05, with Bonferroni correction).
Hippocampal functional radiomic features are valuable for diagnosing cognitively impaired patients from LBLP.
研究双侧海马的功能影像组学特征能否识别出与腰背痛相关的腿痛(LBLP)患者中的认知功能障碍患者。
在这项回顾性研究中,共纳入95例临床确诊的LBLP患者(40例认知功能障碍患者和45例认知功能正常患者),所有患者均接受了功能磁共振成像和临床评估。在计算低频振幅(ALFF)、局部一致性(ReHo)、体素镜像同伦连接性(VMHC)和中心度(DC)成像后,分别从这些图像中提取双侧海马的影像组学特征(n = 819)。经过特征选择后,训练机器学习模型。最后,我们进一步分析了海马功能影像组学特征与临床指标之间的关系,以探讨这些特征的临床意义。
与其他模型相比,联合影像组学特征模型的逻辑回归算法在区分LBLP患者中的认知功能障碍患者方面表现出卓越性能(AUC = 0.970,准确率 = 92.3%,灵敏度 = 92.3%,特异性 = 92.3%)。此外,影像组学小波特征与蒙特利尔认知评估量表(MoCA)和汉密尔顿焦虑量表、认知功能障碍LBLP患者的当前疼痛强度评分相关(P < 0.05,经Bonferroni校正)。
海马功能影像组学特征对于诊断LBLP患者中的认知功能障碍患者具有重要价值。