Henan Provincial Engineering Research Center of Intelligent Data Processing, Henan University, Kaifeng, Henan, People's Republic of China.
J Neural Eng. 2024 Sep 18;21(5). doi: 10.1088/1741-2552/ad788b.
. The clinical diagnosis of Parkinson's disease (PD) relying on medical history, clinical symptoms, and signs is subjective and lacks sensitivity. Resting-state fMRI (rs-fMRI) has been demonstrated to be an effective biomarker for diagnosing PD.This study proposes a deep learning approach for the automatic diagnosis of PD using rs-fMRI, named PD-ARnet. Specifically, PD-ARnet utilizes Amplitude of Low Frequency Fluctuations and Regional Homogeneity extracted from rs-fMRI as inputs. The inputs are then processed through a developed dual-branch 3D feature extractor to perform advanced feature extraction. During this process, a Correlation-Driven weighting module is applied to capture complementary information from both features. Subsequently, the Attention-Enhanced fusion module is developed to effectively merge two types of features, and the fused features are input into a fully connected layer for automatic diagnosis classification.Using 145 samples from the PPMI dataset to evaluate the detection performance of PD-ARnet, the results indicated an average classification accuracy of 91.6% (95% confidence interval [CI]: 90.9%, 92.4%), precision of 94.7% (95% CI: 94.2%, 95.1%), recall of 86.2% (95% CI: 84.9%, 87.4%), F1 score of 90.2% (95% CI: 89.3%, 91.1%), and AUC of 92.8% (95% CI: 91.1%, 95.0%).The proposed method has the potential to become a clinical auxiliary diagnostic tool for PD, reducing subjectivity in the diagnostic process, and enhancing diagnostic efficiency and consistency.
. 基于病史、临床症状和体征的帕金森病 (PD) 的临床诊断具有主观性,并且缺乏敏感性。静息态 fMRI(rs-fMRI) 已被证明是诊断 PD 的有效生物标志物。本研究提出了一种使用 rs-fMRI 自动诊断 PD 的深度学习方法,称为 PD-ARnet。具体来说,PD-ARnet 使用从 rs-fMRI 中提取的振幅低频波动和区域同质性作为输入。然后,输入通过开发的双分支 3D 特征提取器进行处理,以执行高级特征提取。在此过程中,应用了相关驱动加权模块,以从两种特征中捕获互补信息。然后,开发了注意力增强融合模块,以有效地融合两种类型的特征,并将融合后的特征输入全连接层进行自动诊断分类。使用来自 PPMI 数据集的 145 个样本评估 PD-ARnet 的检测性能,结果表明平均分类准确率为 91.6%(95%置信区间[CI]:90.9%,92.4%),精度为 94.7%(95% CI:94.2%,95.1%),召回率为 86.2%(95% CI:84.9%,87.4%),F1 得分为 90.2%(95% CI:89.3%,91.1%),AUC 为 92.8%(95% CI:91.1%,95.0%)。该方法有望成为 PD 的临床辅助诊断工具,减少诊断过程中的主观性,提高诊断效率和一致性。