Zheng Shilei, Wang Han, Han Fang, Chu Jianyi, Zhang Fan, Zhang Xianglin, Shi Yuxiu, Zhang Lili
Department of Radiology, The First Affiliated Hospital of Jinzhou Medical University, Jinzhou, China.
Medical Imaging Center, Taian Central Hospital, Taian, China.
Front Psychiatry. 2022 Apr 21;13:805851. doi: 10.3389/fpsyt.2022.805851. eCollection 2022.
Radiomics is characterized by high-throughput extraction of texture features from medical images and the mining of information that can potentially be used to define neuroimaging markers in many neurological or psychiatric diseases. However, there have been few studies concerning MRI radiomics in post-traumatic stress disorder (PTSD). The study's aims were to appraise changes in microstructure of the medial prefrontal cortex (mPFC) in a PTSD animal model, specifically single-prolonged stress (SPS) rats, by using MRI texture analysis. The feasibility of using a radiomics approach to classify PTSD rats was examined.
Morris water maze and elevated plus maze were used to assess behavioral changes in the rats. Two hundred and sixty two texture features were extracted from each region of interest in T2-weighted images. Stepwise discriminant analysis (SDA) and LASSO regression were used to perform feature selection and radiomics signature building to identify mPFC radiomics signatures consisting of optimal features, respectively. Receiver operating characteristic curve plots were used to evaluate the classification performance. Immunofluorescence techniques were used to examine the expression of glial fibrillary acidic protein (GFAP) and neuronal nuclei (NeuN) in the mPFC. Nuclear pycnosis was detected using 4',6-diamidino-2-phenylindole (DAPI) staining.
Behavioral results indicated decreased learning and spatial memory performance and increased anxiety-like behavior after SPS stimulation. SDA analysis showed that the general non-cross-validated and cross-validated discrimination accuracies were 86.5% and 80.4%. After LASSO dimensionality reduction, 10 classification models were established. For classifying PTSD rats between the control and each SPS group, these models achieved AUCs of 0.944, 0.950, 0.959, and 0.936. Among four SPS groups, the AUCs were 0.927, 0.943, 0.967, 0.916, 0.932, and 0.893, respectively. The number of GFAP-positive cells and intensity of GFAP-IR within the mPFC increased 1 day after SPS treatment, and then decreased. The intensity of NeuN-IR and number of NeuN-positive cells significantly decreased from 1 to 14 days after SPS stimulation. The brightness levels of DAPI-stained nuclei increased in SPS groups.
Non-invasive MRI radiomics features present an efficient and sensitive way to detect microstructural changes in the mPFC after SPS stimulation, and they could potentially serve as a novel neuroimaging marker in PTSD diagnosis.
放射组学的特点是从医学图像中高通量提取纹理特征,并挖掘可能用于定义许多神经或精神疾病神经影像标志物的信息。然而,关于创伤后应激障碍(PTSD)的MRI放射组学研究很少。本研究的目的是通过MRI纹理分析评估PTSD动物模型,即单次长时间应激(SPS)大鼠内侧前额叶皮质(mPFC)的微观结构变化。研究了使用放射组学方法对PTSD大鼠进行分类的可行性。
采用Morris水迷宫和高架十字迷宫评估大鼠的行为变化。从T2加权图像中的每个感兴趣区域提取262个纹理特征。分别使用逐步判别分析(SDA)和LASSO回归进行特征选择和放射组学特征构建,以识别由最佳特征组成的mPFC放射组学特征。使用受试者工作特征曲线来评估分类性能。采用免疫荧光技术检测mPFC中胶质纤维酸性蛋白(GFAP)和神经元核(NeuN)的表达。使用4',6-二脒基-2-苯基吲哚(DAPI)染色检测核固缩。
行为学结果表明,SPS刺激后大鼠的学习和空间记忆能力下降,焦虑样行为增加。SDA分析显示,一般非交叉验证和交叉验证的判别准确率分别为86.5%和80.4%。经过LASSO降维后,建立了10个分类模型。对于在对照组和每个SPS组之间对PTSD大鼠进行分类,这些模型的曲线下面积(AUC)分别为0.944、0.950、0.959和0.936。在四个SPS组中,AUC分别为0.927、0.943、0.967、0.916、0.932和0.893。SPS处理1天后,mPFC内GFAP阳性细胞数量和GFAP免疫反应强度增加,然后下降。SPS刺激后1至14天,NeuN免疫反应强度和NeuN阳性细胞数量显著下降。SPS组中DAPI染色细胞核的亮度水平增加。
非侵入性MRI放射组学特征是检测SPS刺激后mPFC微观结构变化的一种有效且敏感的方法,它们有可能作为PTSD诊断中的一种新型神经影像标志物。