1.Neuroimaging and artificial intelligence for assessment of chronic painful temporomandibular disorders-a comprehensive review.
International Journal of Oral Science 2023;15(1):58-58
Chronic Painful Temporomandibular Disorders (TMD) are challenging to diagnose and manage due to their complexity and lack of understanding of brain mechanism. In the past few decades' neural mechanisms of pain regulation and perception have been clarified by neuroimaging research. Advances in the neuroimaging have bridged the gap between brain activity and the subjective experience of pain. Neuroimaging has also made strides toward separating the neural mechanisms underlying the chronic painful TMD. Recently, Artificial Intelligence (AI) is transforming various sectors by automating tasks that previously required humans' intelligence to complete. AI has started to contribute to the recognition, assessment, and understanding of painful TMD. The application of AI and neuroimaging in understanding the pathophysiology and diagnosis of chronic painful TMD are still in its early stages. The objective of the present review is to identify the contemporary neuroimaging approaches such as structural, functional, and molecular techniques that have been used to investigate the brain of chronic painful TMD individuals. Furthermore, this review guides practitioners on relevant aspects of AI and how AI and neuroimaging methods can revolutionize our understanding on the mechanisms of painful TMD and aid in both diagnosis and management to enhance patient outcomes.
Humans
;
Facial Pain/diagnostic imaging*
;
Artificial Intelligence
;
Temporomandibular Joint Disorders/diagnostic imaging*
;
Neuroimaging/methods*
;
Pain Measurement/methods*
2.Alzheimer's disease classification based on nonlinear high-order features and hypergraph convolutional neural network.
An ZENG ; Bairong LUO ; Dan PAN ; Huabin RONG ; Jianfeng CAO ; Xiaobo ZHANG ; Jing LIN ; Yang YANG ; Jun LIU
Journal of Biomedical Engineering 2023;40(5):852-858
Alzheimer's disease (AD) is an irreversible neurodegenerative disorder that damages patients' memory and cognitive abilities. Therefore, the diagnosis of AD holds significant importance. The interactions between regions of interest (ROIs) in the brain often involve multiple areas collaborating in a nonlinear manner. Leveraging these nonlinear higher-order interaction features to their fullest potential contributes to enhancing the accuracy of AD diagnosis. To address this, a framework combining nonlinear higher-order feature extraction and three-dimensional (3D) hypergraph neural networks is proposed for computer-assisted diagnosis of AD. First, a support vector machine regression model based on the radial basis function kernel was trained on ROI data to obtain a base estimator. Then, a recursive feature elimination algorithm based on the base estimator was applied to extract nonlinear higher-order features from functional magnetic resonance imaging (fMRI) data. These features were subsequently constructed into a hypergraph, leveraging the complex interactions captured in the data. Finally, a four-dimensional (4D) spatiotemporal hypergraph convolutional neural network model was constructed based on the fMRI data for classification. Experimental results on the Alzheimer's Disease Neuroimaging Initiative (ADNI) database demonstrated that the proposed framework outperformed the Hyper Graph Convolutional Network (HyperGCN) framework by 8% and traditional two-dimensional (2D) linear feature extraction methods by 12% in the AD/normal control (NC) classification task. In conclusion, this framework demonstrates an improvement in AD classification compared to mainstream deep learning methods, providing valuable evidence for computer-assisted diagnosis of AD.
Humans
;
Alzheimer Disease/diagnostic imaging*
;
Neural Networks, Computer
;
Magnetic Resonance Imaging/methods*
;
Neuroimaging/methods*
;
Diagnosis, Computer-Assisted
;
Brain
;
Cognitive Dysfunction
3.Clinical Decision on Disorders of Consciousness After Acquired Brain Injury: Stepping Forward.
Rui-Zhe ZHENG ; Zeng-Xin QI ; Zhe WANG ; Ze-Yu XU ; Xue-Hai WU ; Ying MAO
Neuroscience Bulletin 2023;39(1):138-162
Major advances have been made over the past few decades in identifying and managing disorders of consciousness (DOC) in patients with acquired brain injury (ABI), bringing the transformation from a conceptualized definition to a complex clinical scenario worthy of scientific exploration. Given the continuously-evolving framework of precision medicine that integrates valuable behavioral assessment tools, sophisticated neuroimaging, and electrophysiological techniques, a considerably higher diagnostic accuracy rate of DOC may now be reached. During the treatment of patients with DOC, a variety of intervention methods are available, including amantadine and transcranial direct current stimulation, which have both provided class II evidence, zolpidem, which is also of high quality, and non-invasive stimulation, which appears to be more encouraging than pharmacological therapy. However, heterogeneity is profoundly ingrained in study designs, and only rare schemes have been recommended by authoritative institutions. There is still a lack of an effective clinical protocol for managing patients with DOC following ABI. To advance future clinical studies on DOC, we present a comprehensive review of the progress in clinical identification and management as well as some challenges in the pathophysiology of DOC. We propose a preliminary clinical decision protocol, which could serve as an ideal reference tool for many medical institutions.
Humans
;
Transcranial Direct Current Stimulation/methods*
;
Consciousness Disorders/etiology*
;
Brain Injuries/complications*
;
Consciousness
;
Neuroimaging
4.Research on classification method of multimodal magnetic resonance images of Alzheimer's disease based on generalized convolutional neural networks.
Zhiwei QIN ; Zhao LIU ; Yunmin LU ; Ping ZHU
Journal of Biomedical Engineering 2023;40(2):217-225
Alzheimer's disease (AD) is a progressive and irreversible neurodegenerative disease. Neuroimaging based on magnetic resonance imaging (MRI) is one of the most intuitive and reliable methods to perform AD screening and diagnosis. Clinical head MRI detection generates multimodal image data, and to solve the problem of multimodal MRI processing and information fusion, this paper proposes a structural and functional MRI feature extraction and fusion method based on generalized convolutional neural networks (gCNN). The method includes a three-dimensional residual U-shaped network based on hybrid attention mechanism (3D HA-ResUNet) for feature representation and classification for structural MRI, and a U-shaped graph convolutional neural network (U-GCN) for node feature representation and classification of brain functional networks for functional MRI. Based on the fusion of the two types of image features, the optimal feature subset is selected based on discrete binary particle swarm optimization, and the prediction results are output by a machine learning classifier. The validation results of multimodal dataset from the AD Neuroimaging Initiative (ADNI) open-source database show that the proposed models have superior performance in their respective data domains. The gCNN framework combines the advantages of these two models and further improves the performance of the methods using single-modal MRI, improving the classification accuracy and sensitivity by 5.56% and 11.11%, respectively. In conclusion, the gCNN-based multimodal MRI classification method proposed in this paper can provide a technical basis for the auxiliary diagnosis of Alzheimer's disease.
Humans
;
Alzheimer Disease/diagnostic imaging*
;
Neurodegenerative Diseases
;
Magnetic Resonance Imaging/methods*
;
Neural Networks, Computer
;
Neuroimaging/methods*
;
Cognitive Dysfunction/diagnosis*
5.Dissecting Psychiatric Heterogeneity and Comorbidity with Core Region-Based Machine Learning.
Qian LV ; Kristina ZELJIC ; Shaoling ZHAO ; Jiangtao ZHANG ; Jianmin ZHANG ; Zheng WANG
Neuroscience Bulletin 2023;39(8):1309-1326
Machine learning approaches are increasingly being applied to neuroimaging data from patients with psychiatric disorders to extract brain-based features for diagnosis and prognosis. The goal of this review is to discuss recent practices for evaluating machine learning applications to obsessive-compulsive and related disorders and to advance a novel strategy of building machine learning models based on a set of core brain regions for better performance, interpretability, and generalizability. Specifically, we argue that a core set of co-altered brain regions (namely 'core regions') comprising areas central to the underlying psychopathology enables the efficient construction of a predictive model to identify distinct symptom dimensions/clusters in individual patients. Hypothesis-driven and data-driven approaches are further introduced showing how core regions are identified from the entire brain. We demonstrate a broadly applicable roadmap for leveraging this core set-based strategy to accelerate the pursuit of neuroimaging-based markers for diagnosis and prognosis in a variety of psychiatric disorders.
Humans
;
Obsessive-Compulsive Disorder/epidemiology*
;
Brain/pathology*
;
Neuroimaging/methods*
;
Machine Learning
;
Comorbidity
;
Magnetic Resonance Imaging/methods*
6.MouseVenue3D: A Markerless Three-Dimension Behavioral Tracking System for Matching Two-Photon Brain Imaging in Free-Moving Mice.
Yaning HAN ; Kang HUANG ; Ke CHEN ; Hongli PAN ; Furong JU ; Yueyue LONG ; Gao GAO ; Runlong WU ; Aimin WANG ; Liping WANG ; Pengfei WEI
Neuroscience Bulletin 2022;38(3):303-317
Understanding the connection between brain and behavior in animals requires precise monitoring of their behaviors in three-dimensional (3-D) space. However, there is no available three-dimensional behavior capture system that focuses on rodents. Here, we present MouseVenue3D, an automated and low-cost system for the efficient capture of 3-D skeleton trajectories in markerless rodents. We improved the most time-consuming step in 3-D behavior capturing by developing an automatic calibration module. Then, we validated this process in behavior recognition tasks, and showed that 3-D behavioral data achieved higher accuracy than 2-D data. Subsequently, MouseVenue3D was combined with fast high-resolution miniature two-photon microscopy for synchronous neural recording and behavioral tracking in the freely-moving mouse. Finally, we successfully decoded spontaneous neuronal activity from the 3-D behavior of mice. Our findings reveal that subtle, spontaneous behavior modules are strongly correlated with spontaneous neuronal activity patterns.
Animals
;
Behavior, Animal
;
Brain/diagnostic imaging*
;
Imaging, Three-Dimensional/methods*
;
Mice
;
Neuroimaging
;
Rodentia
7.A Two-Step GRIN Lens Coating for In Vivo Brain Imaging.
Yupeng YANG ; Lifeng ZHANG ; Zhenni WANG ; Bo LIANG ; Giovanni BARBERA ; Casey MOFFITT ; Yun LI ; Da-Ting LIN
Neuroscience Bulletin 2019;35(3):419-424
The complex spatial and temporal organization of neural activity in the brain is important for information-processing that guides behavior. Hence, revealing the real-time neural dynamics in freely-moving animals is fundamental to elucidating brain function. Miniature fluorescence microscopes have been developed to fulfil this requirement. With the help of GRadient INdex (GRIN) lenses that relay optical images from deep brain regions to the surface, investigators can visualize neural activity during behavioral tasks in freely-moving animals. However, the application of GRIN lenses to deep brain imaging is severely limited by their availability. Here, we describe a protocol for GRIN lens coating that ensures successful long-term intravital imaging with commercially-available GRIN lenses.
Animals
;
Biocompatible Materials
;
Brain
;
physiology
;
Hippocampus
;
cytology
;
Lenses
;
Mice, Inbred C57BL
;
Mice, Transgenic
;
Microscopy, Fluorescence
;
methods
;
Neuroimaging
;
instrumentation
;
methods
;
Neurons
;
physiology
8.Diagnostic Neuroimaging in Headache Patients: A Systematic Review and Meta-Analysis
Ye Eun JANG ; Eun Young CHO ; Hee Yea CHOI ; Sun Mi KIM ; Hye Youn PARK
Psychiatry Investigation 2019;16(6):407-417
OBJECTIVE: Neuroimaging in headache patients identifies clinically significant neurological abnormalities and plays an important role in excluding secondary headache diagnoses. We performed a systematic review and meta-analysis of the existing guidelines and studies surrounding neuroimaging in headache patients. METHODS: The research question involved determining the prevalence of detecting clinically significant neurological abnormalities using neuroimaging in patients suspected of primary headache. Searches of the PubMed and Embase databases were conducted on English-language studies published from 1991 to 2016, and the reference lists of the retrieved articles were also checked manually. All headache subtypes and patients aged ≥15 years were included in the analysis. RESULTS: Ten studies met the selection criteria. The pooled prevalence of detecting clinically significant abnormalities in the neuroimaging of headache patients was 8.86% (95% confidence interval: 5.12–15.33%). Subsequently, diverse subgroup analyses were performed based on the detection method, headache type, study type, study region, age group, and disease type. CONCLUSION: The present findings indicate that limited neuroimaging methods should be carefully considered for headache diagnostic purposes when there are red flag symptoms. Limitations and suggested directions for future studies on neuroimaging in headache patients are described.
Diagnosis
;
Headache
;
Humans
;
Magnetic Resonance Imaging
;
Methods
;
Neuroimaging
;
Patient Selection
;
Prevalence
;
Tomography, X-Ray Computed
9.Amyloid PET Quantification Via End-to-End Training of a Deep Learning
Ji Young KIM ; Hoon Young SUH ; Hyun Gee RYOO ; Dongkyu OH ; Hongyoon CHOI ; Jin Chul PAENG ; Gi Jeong CHEON ; Keon Wook KANG ; Dong Soo LEE ;
Nuclear Medicine and Molecular Imaging 2019;53(5):340-348
PURPOSE: Although quantification of amyloid positron emission tomography (PET) is important for evaluating patients with cognitive impairment, its routine clinical use is hampered by complicated preprocessing steps and required MRI. Here, we suggested a one-step quantification based on deep learning using native-space amyloid PET images of different radiotracers acquired from multiple centers.METHODS: Amyloid PET data of the Alzheimer Disease Neuroimaging Initiative (ADNI) were used for this study. A training/validation consists of 850 florbetapir PET images. Three hundred sixty-six florbetapir and 89 florbetaben PET images were used as test sets to evaluate the model. Native-space amyloid PET images were used as inputs, and the outputs were standardized uptake value ratios (SUVRs) calculated by the conventional MR-based method.RESULTS: The mean absolute errors (MAEs) of the composite SUVR were 0.040, 0.060, and 0.050 of training/validation and test sets for florbetapir PETand a test set for florbetaben PET, respectively. The agreement of amyloid positivity measured by Cohen's kappa for test sets of florbetapir and florbetaben PET were 0.87 and 0.89, respectively.CONCLUSION: We suggest a one-step quantification method for amyloid PET via a deep learning model. The model is highly reliable to quantify the amyloid PET regardless of multicenter images and various radiotracers.
Alzheimer Disease
;
Amyloid
;
Cognition Disorders
;
Humans
;
Learning
;
Magnetic Resonance Imaging
;
Methods
;
Neuroimaging
;
Positron-Emission Tomography
10.Clinical, Neuroimaging, and Pathological Analyses of 13 Chinese Leigh Syndrome Patients with Mitochondrial DNA Mutations.
Xiao-Lin YU ; Chuan-Zhu YAN ; Kun-Qian JI ; Peng-Fei LIN ; Xue-Bi XU ; Ting-Jun DAI ; Wei LI ; Yu-Ying ZHAO
Chinese Medical Journal 2018;131(22):2705-2712
Background:
Leigh syndrome (LS) is a rare disease caused by mitochondrial defects and has high phenotypic and genotypic heterogeneity. We analyzed the clinical symptoms, neuroimaging, muscular histopathology, and genotypes of 13 Chinese LS patients with mitochondrial DNA (mtDNA) mutations.
Methods:
Mutations in mtDNA were identified by targeted sequencing. The brain imaging features on magnetic resonance imaging (MRI) were analyzed. The levels of lactate in fasting blood and cerebrospinal fluid (CSF) were routinely tested. The levels of urinary organic acids, plasma amino acids, and acylcarnitines were examined with gas chromatography-mass spectrometry and tandem mass spectrometry. The histopathological traits of skeletal muscles were analyzed under microscope.
Results:
Among 13 patients, mutations of MT-NDs (n = 8) and MT-ATP6 (n = 4) genes were most common. Strabismus (8/13), muscle weakness (8/13), and ataxia (5/13) were also common, especially for the patients with late-onset age after 2 years old. However, respiratory distress was common in patients with early-onset age before 2 years old. The most frequently affected brain area in these patients was the brain stem (12/13), particularly the dorsal part of midbrain, followed by basal ganglia (6/13), thalamus (6/13), cerebellum (5/13), and supratentorial white matter (2/13). Besides, the elevated lactate levels in CSF (6/6) were more common than those in serum (7/13). However, the analysis of abnormal plasma amino acid and urinary organic acid showed limited results (0/3 and 1/4, respectively). Muscular histopathology showed mitochondrial myopathy in the three late-onset patients but not in the early-onset ones.
Conclusions
Noninvasive genetic screening is recommended for mtDNA mutations in MT-NDs and MT-ATP6 genes in patients with ophthalmoplegia, muscle weakness, ataxia, and respiratory disorder. Furthermore, the lactate detection in CSF and the brain MRI scanning are suggested as the diagnosis methods for LS patients with mtDNA mutations.
Child
;
Child, Preschool
;
Creatine Kinase
;
blood
;
Cytochrome-c Oxidase Deficiency
;
DNA, Mitochondrial
;
genetics
;
Fasting
;
blood
;
cerebrospinal fluid
;
Female
;
Humans
;
Infant
;
Lactic Acid
;
blood
;
cerebrospinal fluid
;
Leigh Disease
;
diagnostic imaging
;
genetics
;
Magnetic Resonance Imaging
;
Male
;
Mutation
;
genetics
;
Neuroimaging
;
methods

Result Analysis
Print
Save
E-mail