echemi logo
Product
  • Product
  • Supplier
  • Inquiry
    Home > Active Ingredient News > Study of Nervous System > HBM-Shang Huifang's research group used functional imaging technology to reveal markers of motor progress in Parkinson's disease

    HBM-Shang Huifang's research group used functional imaging technology to reveal markers of motor progress in Parkinson's disease

    • Last Update: 2022-11-04
    • Source: Internet
    • Author: User
    Search more information of high quality chemicals, good prices and reliable suppliers, visit www.echemi.com

    Written by - responsible editor - Wang Sizhen, Fang Yiyi Editor—Summer Leaf


    Parkinson's disease (PD) is one of the most common neurodegenerative diseases [1].

    Patients with PD develop a range of motor and non-motor symptoms, which have a significant negative impact on their quality of life and increase their socioeconomic burden
    .
    In addition,
    disease progression in PD is associated with increased disability and mortality [2].

    Therefore
    , reliable monitoring of PD progression is essential to develop effective interventions, and its predictors will also help in the early identification of patients with rapidly progressing PD that require attention
    .
    However, reliable biomarkers of PD progression are currently unknown
    .


    Magnetic resonance imaging (MRI) can be used to objectively measure changes in brain structure and function, and therefore help identify biomarkers of PD progression
    .
    Resting-state functional MRI (rs-fMRI) can reveal functional reorganization of neural pathways before neuronal death or brain atrophy occurs in the brain.
    Suggests the potential for early sensitivity [
    3].

    Among them,
    Fractional amplitude of low-frequency fluctuation (fALFF) analysis can be used to determine the intensity of spontaneous brain activity in each brain region of the neural pathway [4].

    。 A two-year longitudinal
    rs-fMRI study found that cerebellar fALFF values correlated with the Unified PD rating scale UPDRS) Part III score and score change were positively correlated, suggesting that the cerebellum may play an important role in PD motor progression [5]; Another study combined machine learning and fALFF analysis to propose a prediction algorithm that can establish UPDRS scores at future time points and capture robust statistical patterns [6].
    These findings suggest that fALFF values provide sufficient information about neurobiological changes and are of great value
    in prognostic prediction studies of PD.


    On October 17, 2022, Shang Huifang's research group from the Department of Neurology, West China Hospital of Sichuan University, published a speech entitled in Human Brain Mapping (HBM).
    "Motor progression marker for newly-diagnosed drug-naïve patients with Parkinson's disease: A resting-state functional MRI study" The baseline resting functional feature (i.
    e.
    , fALFF) is proposed to predict PD motor progression, and the caudate nucleus is the core brain region responsible for PD motor progression, which will help PD in clinical practice Development
    of strategies to prevent disease progression.



    By comparing whole-brain fALFF between the PD group and the healthy control (HC) group, the researchers found PD The fALFF values of the group were significantly reduced in the anterior central gyrus, posterior central gyrus, wedge lobe, lingual gyrus, and thalamus, while fALF values were significantly increased in the superior frontal gyrus and middle frontal gyrus (Figure 1A).

    。 In addition, reduced function of the anterior and posterior central gyrus was associated with more severe motor symptoms
    (UPDRS Part III score) at baseline (Figure 1B).


    Figure 1(A) Whole brain fALFF comparison results between PD group and HC group; (B) There was a significant negative correlation
    between fALFF values in bilateral sensorimotor zones and baseline UPDRS Part III motor scores in all PD patients.

    (Source: Hou, et al.
    , HBM, 2022
    ).


    The researchers further divided the brain into 116 cortical and subcortical regions of interest (ROI) through automated anatomical marker atlases [7], and extracted them for each subject The fALFF value
    of the ROI.
    In order to obtain
    the most critical image features to distinguish PD and HC, a minimum absolute shrinkage and selection operator was performed LASSO) regression analysis
    .
    LASSO regression is a regression analysis method that can be used to identify variables, estimate the corresponding regression coefficients, and build models
    with minimal error.
    This method can be used to address overfitting of variables and the performance of the model too high in explaining variability
    .


    It was found that a classification model could be constructed based on the image features of nine brain regions, including the superior frontal gyrus, mid-frontal gyrus, anterior central gyrus, posterior central gyrus, inferior temporal gyrus, inferior cerebellar lobe, and putamen (Fig.
    2A and 2B), and the coefficients of each variable in the model are shown in Fig.
    2C shown
    .
    Notably, the image features of the right shell nucleus and the anterior central gyrus show the highest coefficients
    .
    The area under the curve (AUC) of this model is 0.
    897
    (95% CI: 0.
    828-0.
    967
    ), sensitivity and specificity of 75.
    0% and 92.
    6%,
    respectively, with a cut-off of 0.
    65
    (Figure 2D
    。 The ability of the model was tested using random sampling of internal datasets, i.
    e.
    , random sampling 47 times with sample sizes of 28 to 74, randomly drawing the test set from the entire cohort, and subsequently evaluating the AUC in different random samples
    。 As shown in Figure
    2E, all AUCs fluctuate around the model AUC, demonstrating good predictive power
    .
    The calibration curve shows good probabilistic agreement
    (Figure 2F), Hosmer-Lemeshow (HL The goodness-of-fit test showed no significant difference between observed and predicted events (p=0.
    886
    ).


    Figure 2 Through LASSO regression analysis, the image features of 9 brain regions can be classified as a classification model

    (Source: Hou, et al.
    , HBM, 2022
    ).


    Using the same methods as above, the researchers found that predictive models could be constructed based on the image features of 12 brain regions, including the inferior frontal gyrus, olfactory cortex, hippocampus, temporal pole, superior occipital gyrus, upper and lower cerebellar lobes, thalamus, caudate nucleus, and putamen (Figures 3A and 3B).
    The coefficients for each variable in the model are shown in
    Figure 3C.
    It is also worth noting that the image features of the right superior occipital gyrus and bilateral caudate nuclei show the highest coefficients
    .
    The AUC for this model
    was 0.
    916 (95% CI: 0.
    834-0.
    999
    ), with sensitivity and specificity of 100.
    0%, respectively.
    and 87.
    0%
    with a cut-off of 0.
    50
    (Figure 3D).

    The ability of the model was tested using random sampling of internal datasets, i.
    e.
    ,
    24 random samples with sample sizes of 24 to 47, as shown in Figure 3E The model has demonstrated good predictive power
    .
    The calibration curve also shows good probabilistic agreement (Figure 3F), again the HL test did not produce significant deviations between observed and predicted events ().
    p=0.
    198


    Figure 3 Through LASSO regression analysis, the image features of 12 brain regions can build predictive models

    (Source: Hou, et al.
    , HBM, 2022
    ).


    Comparing the salient imaging features of the above model, the researchers found that relative to the HC group, the fALFF values in the putamen and sensorimotor regions were significantly reduced in the PD group, and fALFF in the frontal and temporal lobes Values are significantly elevated (Figure 4A).

    In addition, fALFF values were significantly lower in the supraoccipital gyrus of the PD subgroup with slow motor progression compared to the rapidly progressive PD subgroup, but fALFF in the caudate nucleus, hippocampus, and inferior frontal gyrus The value increases significantly (Figure 4B).

    In addition, the results of partial correlation analysis found a
    significant negative correlation between fALFF values of bilateral caudate nuclei and annual increase scores of UPDRS Part III scores in the PD group (right caudate nucleus: r=- 0.
    345
    p=0.
    019
    ; Left caudate nucleus; r=-0.
    34
    p=0.
    0019
    )
    (Figure 4C).


    Figure 4 Post-hoc analysis of salient image features of the model

    (Source: Hou, et al.
    , HBM, 2022
    ).


    Overall, the main findings of this study are: (1) Voxel-based analysis showed that Parkinson's disease (PD) was shown to be in the healthy control (HC) group Spontaneous neuronal activity in multiple brain regions was significantly impaired, and abnormal functional activities in sensorimotor areas were closely related to baseline motor symptoms in PD patients.
    (
    2) Two models composed of baseline brain region ratio low-frequency amplitude (fALFF) values were proposed.

    One is a classification model used to distinguish
    PD patients from HC, and the putamen and anterior central gyrus have the most significant imaging features.
    The second is a predictive model for assessing
    the potential deterioration of motor symptoms in PD patients in the future, and the superior occipital gyrus and caudate nucleus have the most significant imaging features.
    (
    3) Higher spontaneous neuronal activity in bilateral caudate nuclei is closely related to the lower annual progression rate of motor symptoms in all PD patients, and this study results suggest that caudate nucleus may be the core predictor of future motor symptom progression in patients with newly diagnosed PD, thereby promoting the pair An in-depth understanding
    of the underlying mechanisms of exacerbation of motor symptoms in PD.


    Of course, there are still some unanswered questions
    in this study.
    The generalizability of the findings may be affected by
    The limitations of the relatively small sample size of PD patients necessitate further studies
    of larger samples in the future.
    External validation
    of these models is also included.


    In conclusion, this study suggests that fALFF analysis based on resting state functional magnetic resonance imaging (rs-fMRI) data has important potential value in the identification of PD and prediction of motion progression, and researchers will continue to work hard to develop image-based prediction tools.
    This will not only improve clinical disease surveillance, but will also facilitate the development of
    more appropriate treatment strategies in clinical settings.


    Original link: style="margin-bottom: 0px;white-space: normal;text-align: center;">Corresponding authors: Shang Huifang (left), Gong Qiyong (middle); First author: Hou Yanbing (right)

    (Photo courtesy of: Shang Huifang/Gong Qiyong's team).


    Shang Huifang's project group photo

    (Provided from: Shang Huifang Research Group)


    About the author (swipe up and down to read).

    Corresponding author: Shang Huifang, Deputy Director of Department of Neurology, West China Hospital, Sichuan University, Master's/PhD Supervisor
    。 Later in charge of finance, member of the Committee of the International Parkinson's and Movement Disorders Association of the Asia-Pacific Region, chairman of the Neurodegenerative Disease Prevention and Control Branch of the Sichuan Preventive Medicine Association, head of the Parkinson's Disease and Movement Disorders Disease Group of the Neurology Committee of the Sichuan Medical Association, academic and technical leader of Sichuan Province, leading health talent of Sichuan Province and
    "Tianfu Famous Doctor" of the Tianfu Ten Thousand People Program Responsible for 6 National Natural Science Foundation projects, 3 provincial projects, and 1 key research and development plan of the Ministry of Science and Technology, mainly focusing on neurodegenerative diseases (Parkinson's disease, motor neuron disease, etc.
    ), Research on
    the genetics, pathogenesis, diagnosis and treatment of neurohereditary diseases and movement disorders.
    Associate
    Editor of Movement Disorders, a journal Frontiers in Neurology, Translational Neurodegeneration, Editorial board member of Parkison and Realted Disorders, European Journal of Neurology, etc.
    , as corresponding author in
    Movement Disorders , Neurology, Molecular Neurodegeneration and other journals have published more than 200 SCI papers


    Corresponding author: Gong Qiyong, President of West China Xiamen Hospital of Sichuan University, Vice President of West China Hospital, Master's/PhD Supervisor
    .
    Head of the "Mental Imaging" Innovation Unit of the Academy of Medical Sciences, Jie Qing, Changjiang Scholar, Innovation Group Leader of the Foundation Committee, Chief of the National Key R&D Program, Editor-in-Chief of the Journal of Psychoradiology, Am J Associate Editor
    of Psychiatry.
    He has long focused on the imaging research of mental and psychological diseases, put forward the theory of mental imaging, obtained a series of original achievements on this basis, and established a mental imaging system
    .
    As the first completer, he
    won the second prize of the National Natural Science Award and 4 provincial and ministerial first prizes (including the first prize of Chinese Medical Science and Technology Award), and won the National Innovation Competition Award and Wu Jieping Pharmaceutical Innovation Award
    .
    He
    has published 296 SCI papers in PNAS, JAMA Psychiatry, etc Index 96, Clarivate's "Global Highly Cited Scientist"; Editor-in-chief published the North American radiologist medical textbook "Psychoradiology", which is called "leader in the field of psychoradiology" by peers [citation RSNA 2019], opened up a new field of discipline and made important contributions
    to promoting China's radiology image to rank among the international first-class.


    First author: Hou Yanbing, postdoctoral fellow in the Department of Neurology, West China Hospital, Sichuan University, mainly focusing on neuroimaging research of neurodegenerative diseases, participated in a number of National Natural Science Foundation of China, provincial and ministerial projects, and published SCI papers as the first/co-first author More than 20 articles
    .




    A selection of past articles

    [1] Cell Rep—Song Jianren's research group revealed a new law of spinal cord circuit reconstruction after spinal cord injury

    [2] HBM-Song Yan/Sun Li's research group revealed the cognitive neural bases of the first ADHD children with implicit visuospatial coding disorder based on machine learning technology

    [3] Nat Neurosci – Breakthrough! Li Bo's research group at Cold Spring Harbor Laboratory revealed the neural mechanism of pan-amygdala structure regulating diet choice and energy metabolism

    [4] Nat Commun-Xing Dajun's research group revealed a new mechanism for micro-saccade direction-specific modulation of visual information coding

    [5] Sci Adv—Reinterprets the brain's processing of reward information

    [6] Brain Stimu-Rong Peijing's research group suggested that percutaneous ear stimulation improved cognitive function in patients with mild cognitive dysfunction

    [7] Neurobiol Dis—Li Chen/Li Wei research team revealed the sensitivity of IC→PVT→BNST neural circuits to regulate the pathogenesis of anxiety disorders

    【8】HBM | Highly connected and highly variable: supports the resting core brain network of propofol-induced loss of consciousness

    [9] NPP—Xu Yun's research group revealed that microalbumin-positive interneurons in the prefrontal cortex play an important role in the regulation of mood disorders in the early stage of Alzheimer's disease

    [10] Nat Neurosci Review—Overview of presynaptic optogenetic tools

    Recommended high-quality scientific research training courses [1] The 9th EEG Data Analysis Flight (Training Camp: 2022.
    11.
    23-12.
    24)
    Conference/Forum/Seminar Preview

    [1] Immune Zoom Seminar—Screening of B cells in the immune and nervous system (Professor Xu Heping)

    [2] Academic Conference - 2022 Symposium on Neural Circuit Tracing Technology and the Second Round of the Second Round of the 6th National Training Course on Neural Circuit Tracing Technology

    [3] Roundtable – Xu Fuqiang/Jia Yichang/Han Lanqing/Cai Lei et al.
    discussed gene therapy innovation for neurodegenerative diseases and ophthalmic diseases

    Welcome to "Logical Neuroscience"[1]" "Logical Neuroscience" Recruitment for Editor/Operation Positions ( Online Office)[2] Talent Recruitment - " Logical Neuroscience " Recruitment Article Interpretation/Writing Position ( Network Part-time, Online Office) References (swipe up and down to read).



    1.
    Dorsey ER, Constantinescu R, Thompson JP, et al.
    Projected number of people with Parkinson disease in the most populous nations, 2005 through 2030.
    Neurology 2007; 68:384-386.
    doi: 10.
    1212/01.
    wnl.
    0000247740.
    47667.
    03.

    2.
    Bloem BR, Okun MS, Klein C.
    Parkinson's disease.
    Lancet 2021; 397:2284-2303.
    doi: 10.
    1016/S0140-6736(21)00218-X.

    3.
    Filippi M, Basaia S, Sarasso E, et al.
    Longitudinal brain connectivity changes and clinical evolution in Parkinson's disease.
    Mol Psychiatry 2020.
    doi: 10.
    1038/s41380-020-0770-0.

    4.
    Zou QH, Zhu CZ, Yang Y, et al.
    An improved approach to detection of amplitude of low-frequency fluctuation (ALFF) for resting-state fMRI: fractional ALFF.
    J Neurosci Methods 2008; 172:137-141.
    doi: 10.
    1016/j.
    jneumeth.
    2008.
    04.
    012.

    5.
    Hu XF, Zhang JQ, Jiang XM, et al.
    Amplitude of low-frequency oscillations in Parkinson's disease: a 2-year longitudinal resting-state functional magnetic resonance imaging study.
    Chin Med J (Engl) 2015; 128:593-601.
    doi: 10.
    4103/0366-6999.
    151652.

    6.
    Nguyen KP, Raval V, Treacher A, et al.
    Predicting Parkinson's disease trajectory using clinical and neuroimaging baseline measures.
    Parkinsonism Relat Disord 2021; 85:44-51.
    doi: 10.
    1016/j.
    parkreldis.
    2021.
    02.
    026.

    7.
    Tzourio-Mazoyer N, Landeau B, Papathanassiou D, et al.
    Automated anatomical labeling of activations in SPM using a macroscopic anatomical parcellation of the MNI MRI single-subject brain.
    Neuroimage 2002; 15:273-289.
    doi: 10.
    1006/nimg.
    2001.
    0978.


    End of this article

    This article is an English version of an article which is originally in the Chinese language on echemi.com and is provided for information purposes only. This website makes no representation or warranty of any kind, either expressed or implied, as to the accuracy, completeness ownership or reliability of the article or any translations thereof. If you have any concerns or complaints relating to the article, please send an email, providing a detailed description of the concern or complaint, to service@echemi.com. A staff member will contact you within 5 working days. Once verified, infringing content will be removed immediately.

    Contact Us

    The source of this page with content of products and services is from Internet, which doesn't represent ECHEMI's opinion. If you have any queries, please write to service@echemi.com. It will be replied within 5 days.

    Moreover, if you find any instances of plagiarism from the page, please send email to service@echemi.com with relevant evidence.