Chen Hongyi, Liu Xueling, Luo Xiao, Fu Junyan, Zhou Kun, Wang Na, Li Yuxin, Geng Daoying
Academy for Engineering and Technology, Fudan University, Shanghai, China.
Department of Radiology, Huashan Hospital, Fudan University, Shanghai, China.
Front Aging Neurosci. 2024 May 20;16:1397896. doi: 10.3389/fnagi.2024.1397896. eCollection 2024.
The altered neuromelanin in substantia nigra pars compacta (SNpc) is a valuable biomarker in the detection of early-stage Parkinson's disease (EPD). Diagnosis via visual inspection or single radiomics based method is challenging. Thus, we proposed a novel hybrid model that integrates radiomics and deep learning methodologies to automatically detect EPD based on neuromelanin-sensitive MRI, namely short-echo-time Magnitude (setMag) reconstructed from quantitative susceptibility mapping (QSM).
In our study, we collected QSM images including 73 EPD patients and 65 healthy controls, which were stratified into training-validation and independent test sets with an 8:2 ratio. Twenty-four participants from another center were included as the external validation set. Our framework began with the detection of the brainstem utilizing YOLO-v5. Subsequently, a modified LeNet was applied to obtain deep learning features. Meanwhile, 1781 radiomics features were extracted, and 10 features were retained after filtering. Finally, the classified models based on radiomics features, deep learning features, and the hybrid of both were established through machine learning algorithms, respectively. The performance was mainly evaluated using accuracy, net reclassification improvement (NRI), and integrated discrimination improvement (IDI). The saliency map was used to visualize the model.
The hybrid feature-based support vector machine (SVM) model showed the best performance, achieving ACC of 96.3 and 95.8% in the independent test set and external validation set, respectively. The model established by hybrid features outperformed the one radiomics feature-based (NRI: 0.245, IDI: 0.112). Furthermore, the saliency map showed that the bilateral "swallow tail" sign region was significant for classification.
The integration of deep learning and radiomic features presents a potent strategy for the computer-aided diagnosis of EPD. This study not only validates the accuracy of our proposed model but also underscores its interpretability, evidenced by differential significance across various anatomical sites.
黑质致密部(SNpc)中改变的神经黑色素是早期帕金森病(EPD)检测中有价值的生物标志物。通过目视检查或基于单一放射组学的方法进行诊断具有挑战性。因此,我们提出了一种新颖的混合模型,该模型整合了放射组学和深度学习方法,以基于神经黑色素敏感的MRI(即从定量磁化率映射(QSM)重建的短回波时间幅度(setMag))自动检测EPD。
在我们的研究中,我们收集了QSM图像,包括73例EPD患者和65名健康对照,以8:2的比例分层为训练验证集和独立测试集。来自另一个中心的24名参与者被纳入作为外部验证集。我们的框架首先利用YOLO-v5检测脑干。随后,应用改进的LeNet获取深度学习特征。同时,提取了1781个放射组学特征,过滤后保留了10个特征。最后,分别通过机器学习算法建立了基于放射组学特征、深度学习特征以及两者混合的分类模型。主要使用准确率、净重新分类改善(NRI)和综合判别改善(IDI)来评估性能。显著性图用于可视化模型。
基于混合特征的支持向量机(SVM)模型表现最佳,在独立测试集和外部验证集中分别达到96.3%和95.8%的ACC。由混合特征建立的模型优于基于单一放射组学特征的模型(NRI:0.245,IDI:0.112)。此外,显著性图显示双侧“燕尾”征区域对分类具有重要意义。
深度学习和放射组学特征的整合为EPD的计算机辅助诊断提供了一种有效的策略。本研究不仅验证了我们提出模型的准确性,还强调了其可解释性,不同解剖部位的差异显著性证明了这一点。