Xie Lei, Zhuang Zelin, Lin Xiaona, Shi Xiaoyan, Zheng Yanmin, Wu Kailuan, Ma Shuhua
Department of Radiology, the First Affiliated Hospital of Shantou University Medical College, Shantou, China.
Laboratory of Medical Molecular Imaging, the First Affiliated Hospital of Shantou University Medical College, Shantou, China.
Quant Imaging Med Surg. 2024 Oct 1;14(10):7279-7290. doi: 10.21037/qims-24-892. Epub 2024 Sep 26.
Irritable bowel syndrome (IBS) is a disorder characterized by signaling dysregulation between the brain and gut, leading to gastrointestinal dysfunction. Symptoms such as abdominal pain and constipation can manifest periodically or persistently, and negative emotions may exacerbate the symptoms. Previous studies have shown that the pathogenesis of IBS is closely related to the brain-gut axis and brain function, but there are still difficulties in disease diagnosis. Therefore, this study applied a machine-learning approach based on resting-state functional magnetic resonance imaging (rs-fMRI) whole-brain functional connectivity (FC) to distinguish IBS patients from healthy controls (HCs).
A total of 176 subjects, comprising 88 consecutive patients with IBS and 88 age-, sex- and education-matched HCs, were enrolled in this study between January 2020 and January 2024 at the First Affiliated Hospital of Shantou University Medical College. All the subjects underwent rs-fMRI and high-resolution anatomical T1-weighted imaging (T1WI) examinations. Following the preprocessing of the rs-fMRI image data, FC matrices between all regions of interest (ROIs) were extracted using automated anatomical labeling (AAL). Subsequently, supervised machine learning was performed using whole-brain FC for classification features to identify the best-performing model. Finally, weights of the optimal model's features were exported to confirm the neuroanatomical regions significantly influencing model establishment.
Compared with other supervised learning models, the support vector machine (SVM) model had significantly higher classification accuracy and performed significantly better than the other models (P<0.05) with a classification accuracy of 75% and an area under the curve (AUC) of 0.7788 (95% confidence interval [CI]: 0.6861-0.8715) (P<0.01). In addition, the FC features from the Rolandic operculum (ROL) to the anterior cingulate gyrus (ACG), the calcarine sulcus (CAL) to the triangular part of the inferior frontal gyrus (IFG), the gyrus rectus (REC) to the inferior occipital gyrus (IOG), the lingual gyrus (LING) to the putamen (PUT), and the IOG to the angular gyrus (ANG) were relatively important in the construction of the machine-learning models.
The SVM was the optimal machine-learning model for effectively classifying IBS patients and HCs based on whole-brain resting-state FC matrices. The FC features between the emotion-related brain regions significantly affected the construction of the machine-learning models. As a classification feature in machine learning, whole-brain resting-state FC holds the potential to achieve precision medicine in IBS and enhance disease diagnostic efficacy.
肠易激综合征(IBS)是一种以脑-肠信号调节失调为特征的疾病,可导致胃肠功能障碍。腹痛和便秘等症状可周期性或持续性出现,负面情绪可能会加重这些症状。既往研究表明,IBS的发病机制与脑-肠轴和脑功能密切相关,但疾病诊断仍存在困难。因此,本研究应用基于静息态功能磁共振成像(rs-fMRI)全脑功能连接(FC)的机器学习方法,以区分IBS患者和健康对照(HCs)。
2020年1月至2024年1月期间,汕头大学医学院第一附属医院共纳入176名受试者,包括88例连续的IBS患者和88名年龄、性别和教育程度匹配的HCs。所有受试者均接受rs-fMRI和高分辨率解剖T1加权成像(T1WI)检查。在对rs-fMRI图像数据进行预处理后,使用自动解剖标记(AAL)提取所有感兴趣区域(ROI)之间的FC矩阵。随后,使用全脑FC作为分类特征进行监督机器学习,以识别性能最佳的模型。最后,导出最佳模型特征的权重,以确认对模型建立有显著影响的神经解剖区域。
与其他监督学习模型相比,支持向量机(SVM)模型具有显著更高的分类准确率,且表现明显优于其他模型(P<0.05),分类准确率为75%,曲线下面积(AUC)为0.7788(95%置信区间[CI]:0.6861-0.8715)(P<0.01)。此外,从中央前回盖(ROL)到前扣带回(ACG)、距状沟(CAL)到额下回三角部(IFG)、直回(REC)到枕下回(IOG)、舌回(LING)到壳核(PUT)以及IOG到角回(ANG)的FC特征在机器学习模型构建中相对重要。
SVM是基于全脑静息态FC矩阵有效区分IBS患者和HCs的最佳机器学习模型。与情绪相关的脑区之间的FC特征显著影响机器学习模型的构建。作为机器学习中的一种分类特征,全脑静息态FC有潜力在IBS中实现精准医学并提高疾病诊断效能。