Lee In-Seon, Yoon Da-Eun, Lee Seoyoung, Kang Jae-Hwan, Chae Younbyoung, Park Hi-Joon, Kim Junsuk
College of Korean Medicine, Kyung Hee University, Seoul, Republic of Korea.
Department of Physics and Computational Radiology, Division of Radiology and Nuclear Medicine, Oslo University Hospital, Oslo, Norway.
J Asthma Allergy. 2024 Apr 18;17:383-389. doi: 10.2147/JAA.S454807. eCollection 2024.
Only a few studies have focused on the brain mechanisms underlying the itch processing in AD patients, and a neural biomarker has never been studied in AD patients. We aimed to develop a deep learning model-based neural signature which can extract the relevant temporal dynamics, discriminate between AD and healthy control (HC), and between AD patients who responded well to acupuncture treatment and those who did not.
We recruited 41 AD patients (22 male, age mean ± SD: 24.34 ± 5.29) and 40 HCs (20 male, age mean ± SD: 26.4 ± 5.32), and measured resting-state functional MRI signals. After preprocessing, 38 functional regions of interest were applied to the functional MRI signals. A long short-term memory (LSTM) was used to extract the relevant temporal dynamics for classification and train the prediction model. Bootstrapping and 4-fold cross-validation were used to examine the significance of the models.
For the identification of AD patients and HC, we found that the supplementary motor area (SMA), posterior cingulate cortex (PCC), temporal pole, precuneus, and dorsolateral prefrontal cortex showed significantly greater prediction accuracy than the chance level. For the identification of high and low responder to acupuncture treatment, we found that the lingual-parahippocampal-fusiform gyrus, SMA, frontal gyrus, PCC and precuneus, paracentral lobule, and primary motor and somatosensory cortex showed significantly greater prediction accuracy than the chance level.
We developed and evaluated a deep learning model-based neural biomarker that can distinguish between AD and HC as well as between AD patients who respond well and those who respond less to acupuncture. Using the intrinsic neurological abnormalities, it is possible to diagnose AD patients and provide personalized treatment regimens.
仅有少数研究关注阿尔茨海默病(AD)患者瘙痒处理的脑机制,且从未对AD患者的神经生物标志物进行过研究。我们旨在开发一种基于深度学习模型的神经特征,该特征能够提取相关的时间动态变化,区分AD患者与健康对照(HC),以及对针灸治疗反应良好和反应不佳的AD患者。
我们招募了41例AD患者(22例男性,年龄均值±标准差:24.34±5.29)和40例HC(20例男性,年龄均值±标准差:26.4±5.32),并测量静息态功能磁共振成像(fMRI)信号。预处理后,将38个感兴趣功能区应用于fMRI信号。使用长短期记忆网络(LSTM)提取相关的时间动态变化以进行分类,并训练预测模型。采用自抽样法和4折交叉验证来检验模型的显著性。
对于AD患者和HC的鉴别,我们发现辅助运动区(SMA)、后扣带回皮质(PCC)、颞极、楔前叶和背外侧前额叶皮质的预测准确率显著高于随机水平。对于针灸治疗高反应者和低反应者的鉴别,我们发现舌-海马旁-梭状回、SMA、额回、PCC和楔前叶、中央旁小叶以及初级运动和躯体感觉皮质的预测准确率显著高于随机水平。
我们开发并评估了一种基于深度学习模型的神经生物标志物,其能够区分AD患者与HC,以及对针灸反应良好和反应较差的AD患者。利用内在的神经学异常,有可能诊断AD患者并提供个性化治疗方案。