Yan Zichun, Liu Huan, Chen Xiaoya, Zheng Qiao, Zeng Chun, Zheng Yineng, Ding Shuang, Peng Yuling, Li Yongmei
Department of Radiology, The First Affiliated Hospital of Chongqing Medical University, Chongqing, China.
GE Healthcare, Shanghai, China.
Front Neurosci. 2021 Dec 3;15:765634. doi: 10.3389/fnins.2021.765634. eCollection 2021.
To implement a machine learning model using radiomic features extracted from quantitative susceptibility mapping (QSM) in discriminating multiple sclerosis (MS) from neuromyelitis optica spectrum disorder (NMOSD). Forty-seven patients with MS (mean age = 40.00 ± 13.72 years) and 36 patients with NMOSD (mean age = 42.14 ± 12.34 years) who underwent enhanced gradient-echo T*-weighted angiography (ESWAN) sequence in 3.0-T MRI were included between April 2017 and October 2019. QSM images were reconstructed from ESWAN, and QSM-derived radiomic features were obtained from seven regions of interest (ROIs), including bilateral putamen, globus pallidus, head of the caudate nucleus, thalamus, substantia nigra, red nucleus, and dentate nucleus. A machine learning model (logistic regression) was applied to classify MS and NMOSD, which combined radiomic signatures and demographic information to assess the classification accuracy using the area under the receiver operating characteristic (ROC) curve (AUC). The radiomics-only models showed better discrimination performance in almost all deep gray matter (DGM) regions than the demographic information-only model, with the highest AUC in DN of 0.902 (95% CI: 0.840-0.955). Moreover, the hybrid model combining radiomic signatures and demographic information showed the highest discrimination performance which achieved the AUC of 0.927 (95% CI: 0.871-0.984) with fivefold cross-validation. The hybrid model based on QSM and powered with machine learning has the potential to discriminate MS from NMOSD.
利用从定量磁化率图谱(QSM)中提取的放射组学特征来实现一个机器学习模型,以区分多发性硬化症(MS)和视神经脊髓炎谱系障碍(NMOSD)。纳入了2017年4月至2019年10月期间在3.0-T磁共振成像(MRI)中接受增强梯度回波T*加权血管造影(ESWAN)序列检查的47例MS患者(平均年龄 = 40.00 ± 13.72岁)和36例NMOSD患者(平均年龄 = 42.14 ± 12.34岁)。从ESWAN重建QSM图像,并从七个感兴趣区域(ROI)获得QSM衍生的放射组学特征,包括双侧壳核、苍白球、尾状核头部、丘脑、黑质、红核和齿状核。应用机器学习模型(逻辑回归)对MS和NMOSD进行分类,该模型结合放射组学特征和人口统计学信息,使用受试者操作特征(ROC)曲线下面积(AUC)来评估分类准确性。仅基于放射组学的模型在几乎所有深部灰质(DGM)区域的鉴别性能均优于仅基于人口统计学信息的模型,在齿状核中的AUC最高,为0.902(95%置信区间:0.840 - 0.955)。此外,结合放射组学特征和人口统计学信息的混合模型显示出最高的鉴别性能,在五重交叉验证中AUC达到0.927(95%置信区间:0.871 - 0.984)。基于QSM并由机器学习驱动的混合模型有潜力区分MS和NMOSD。