Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Jinglei Lv is active.

Publication


Featured researches published by Jinglei Lv.


Medical Image Analysis | 2015

Sparse representation of whole-brain fMRI signals for identification of functional networks

Jinglei Lv; Xi Jiang; Xiang Li; Dajiang Zhu; Hanbo Chen; Tuo Zhang; Shu Zhang; Xintao Hu; Junwei Han; Heng Huang; Jing Zhang; Lei Guo; Tianming Liu

There have been several recent studies that used sparse representation for fMRI signal analysis and activation detection based on the assumption that each voxels fMRI signal is linearly composed of sparse components. Previous studies have employed sparse coding to model functional networks in various modalities and scales. These prior contributions inspired the exploration of whether/how sparse representation can be used to identify functional networks in a voxel-wise way and on the whole brain scale. This paper presents a novel, alternative methodology of identifying multiple functional networks via sparse representation of whole-brain task-based fMRI signals. Our basic idea is that all fMRI signals within the whole brain of one subject are aggregated into a big data matrix, which is then factorized into an over-complete dictionary basis matrix and a reference weight matrix via an effective online dictionary learning algorithm. Our extensive experimental results have shown that this novel methodology can uncover multiple functional networks that can be well characterized and interpreted in spatial, temporal and frequency domains based on current brain science knowledge. Importantly, these well-characterized functional network components are quite reproducible in different brains. In general, our methods offer a novel, effective and unified solution to multiple fMRI data analysis tasks including activation detection, de-activation detection, and functional network identification.


IEEE Transactions on Biomedical Engineering | 2015

Holistic Atlases of Functional Networks and Interactions Reveal Reciprocal Organizational Architecture of Cortical Function

Jinglei Lv; Xi Jiang; Xiang Li; Dajiang Zhu; Shu Zhang; Shijie Zhao; Hanbo Chen; Tuo Zhang; Xintao Hu; Junwei Han; Jieping Ye; Lei Guo; Tianming Liu

For decades, it has been largely unknown to what extent multiple functional networks spatially overlap/interact with each other and jointly realize the total cortical function. Here, by developing novel sparse representation of whole-brain fMRI signals and by using the recently publicly released large-scale Human Connectome Project high-quality fMRI data, we show that a number of reproducible and robust functional networks, including both task-evoked and resting state networks, are simultaneously distributed in distant neuroanatomic areas and substantially spatially overlapping with each other, thus forming an initial collection of holistic atlases of functional networks and interactions (HAFNIs). More interestingly, the HAFNIs revealed two distinct patterns of highly overlapped regions and highly specialized regions and exhibited that these two patterns of areas are reciprocally localized, revealing a novel organizational principle of cortical function.


Cerebral Cortex | 2012

Axonal Fiber Terminations Concentrate on Gyri

Jingxin Nie; Lei Guo; Kaiming Li; Yonghua Wang; Guojun Chen; Longchuan Li; Hanbo Chen; Fan Deng; Xi Jiang; Tuo Zhang; Ling Huang; Carlos Faraco; Degang Zhang; Cong Guo; Pew Thian Yap; Xintao Hu; Gang Li; Jinglei Lv; Yixuan Yuan; Dajiang Zhu; Junwei Han; Dean Sabatinelli; Qun Zhao; L. Stephen Miller; Bingqian Xu; Ping Shen; Simon R. Platt; Dinggang Shen; Xiaoping Hu; Tianming Liu

Convoluted cortical folding and neuronal wiring are 2 prominent attributes of the mammalian brain. However, the macroscale intrinsic relationship between these 2 general cross-species attributes, as well as the underlying principles that sculpt the architecture of the cerebral cortex, remains unclear. Here, we show that the axonal fibers connected to gyri are significantly denser than those connected to sulci. In human, chimpanzee, and macaque brains, a dominant fraction of axonal fibers were found to be connected to the gyri. This finding has been replicated in a range of mammalian brains via diffusion tensor imaging and high-angular resolution diffusion imaging. These results may have shed some lights on fundamental mechanisms for development and organization of the cerebral cortex, suggesting that axonal pushing is a mechanism of cortical folding.


NeuroImage | 2014

Fusing DTI and FMRI Data: A Survey of Methods and Applications

Dajiang Zhu; Tuo Zhang; Xi Jiang; Xintao Hu; Hanbo Chen; Ning Yang; Jinglei Lv; Junwei Han; Lei Guo; Tianming Liu

The relationship between brain structure and function has been one of the centers of research in neuroimaging for decades. In recent years, diffusion tensor imaging (DTI) and functional magnetic resonance imaging (fMRI) techniques have been widely available and popular in cognitive and clinical neurosciences for examining the brains white matter (WM) micro-structures and gray matter (GM) functions, respectively. Given the intrinsic integration of WM/GM and the complementary information embedded in DTI/fMRI data, it is natural and well-justified to combine these two neuroimaging modalities together to investigate brain structure and function and their relationships simultaneously. In the past decade, there have been remarkable achievements of DTI/fMRI fusion methods and applications in neuroimaging and human brain mapping community. This survey paper aims to review recent advancements on methodologies and applications in incorporating multimodal DTI and fMRI data, and offer our perspectives on future research directions. We envision that effective fusion of DTI/fMRI techniques will play increasingly important roles in neuroimaging and brain sciences in the years to come.


NeuroImage | 2012

Visual analytics of brain networks.

Kaiming Li; Lei Guo; Carlos Faraco; Dajiang Zhu; Hanbo Chen; Yixuan Yuan; Jinglei Lv; Fan Deng; Xi Jiang; Tuo Zhang; Xintao Hu; Degang Zhang; L. Stephen Miller; Tianming Liu

Identification of regions of interest (ROIs) is a fundamental issue in brain network construction and analysis. Recent studies demonstrate that multimodal neuroimaging approaches and joint analysis strategies are crucial for accurate, reliable and individualized identification of brain ROIs. In this paper, we present a novel approach of visual analytics and its open-source software for ROI definition and brain network construction. By combining neuroscience knowledge and computational intelligence capabilities, visual analytics can generate accurate, reliable and individualized ROIs for brain networks via joint modeling of multimodal neuroimaging data and an intuitive and real-time visual analytics interface. Furthermore, it can be used as a functional ROI optimization and prediction solution when fMRI data is unavailable or inadequate. We have applied this approach to an operation span working memory fMRI/DTI dataset, a schizophrenia DTI/resting state fMRI (R-fMRI) dataset, and a mild cognitive impairment DTI/R-fMRI dataset, in order to demonstrate the effectiveness of visual analytics. Our experimental results are encouraging.


acm multimedia | 2010

Bridging low-level features and high-level semantics via fMRI brain imaging for video classification

Xintao Hu; Fan Deng; Kaiming Li; Tuo Zhang; Hanbo Chen; Xi Jiang; Jinglei Lv; Dajiang Zhu; Carlos Faraco; Degang Zhang; Arsham Mesbah; Junwei Han; Xian-Sheng Hua; Li Xie; L. Stephen Miller; Lei Guo; Tianming Liu

The multimedia content analysis community has made significant effort to bridge the gap between low-level features and high-level semantics perceived by human cognitive systems such as real-world objects and concepts. In the two fields of multimedia analysis and brain imaging, both topics of low-level features and high level semantics are extensively studied. For instance, in the multimedia analysis field, many algorithms are available for multimedia feature extraction, and benchmark datasets are available such as the TRECVID. In the brain imaging field, brain regions that are responsible for vision, auditory perception, language, and working memory are well studied via functional magnetic resonance imaging (fMRI). This paper presents our initial effort in marrying these two fields in order to bridge the gaps between low-level features and high-level semantics via fMRI brain imaging. Our experimental paradigm is that we performed fMRI brain imaging when university student subjects watched the video clips selected from the TRECVID datasets. At current stage, we focus on the three concepts of sports, weather, and commercial-/advertisement specified in the TRECVID 2005. Meanwhile, the brain regions in vision, auditory, language, and working memory networks are quantitatively localized and mapped via task-based paradigm fMRI, and the fMRI responses in these regions are used to extract features as the representation of the brains comprehension of semantics. Our computational framework aims to learn the most relevant low-level feature sets that best correlate the fMRI-derived semantics based on the training videos with fMRI scans, and then the learned models are applied to larger scale test datasets without fMRI scans for category classifications. Our result shows that: 1) there are meaningful couplings between brains fMRI responses and video stimuli, suggesting the validity of linking semantics and low-level features via fMRI; 2) The computationally learned low-level feature sets from fMRI-derived semantic features can significantly improve the classification of video categories in comparison with that based on original low-level features.


Psychiatry Research-neuroimaging | 2015

Assessing effects of prenatal alcohol exposure using group-wise sparse representation of fMRI data.

Jinglei Lv; Xi Jiang; Xiang Li; Dajiang Zhu; Shijie Zhao; Tuo Zhang; Xintao Hu; Junwei Han; Lei Guo; Zhihao Li; Claire D. Coles; Xiaoping Hu; Tianming Liu

Task-based fMRI activation mapping has been widely used in clinical neuroscience in order to assess different functional activity patterns in conditions such as prenatal alcohol exposure (PAE) affected brains and healthy controls. In this paper, we propose a novel, alternative approach of group-wise sparse representation of the fMRI data of multiple groups of subjects (healthy control, exposed non-dysmorphic PAE and exposed dysmorphic PAE) and assess the systematic functional activity differences among these three populations. Specifically, a common time series signal dictionary is learned from the aggregated fMRI signals of all three groups of subjects, and then the weight coefficient matrices (named statistical coefficient map (SCM)) associated with each common dictionary were statistically assessed for each group separately. Through inter-group comparisons based on the correspondence established by the common dictionary, our experimental results have demonstrated that the group-wise sparse coding strategy and the SCM can effectively reveal a collection of brain networks/regions that were affected by different levels of severity of PAE.


Human Brain Mapping | 2015

Sparse representation of HCP grayordinate data reveals novel functional architecture of cerebral cortex.

Xi Jiang; Xiang Li; Jinglei Lv; Tuo Zhang; Shuhong Zhang; Lei Guo; Tianming Liu

The recently publicly released Human Connectome Project (HCP) grayordinate‐based fMRI data not only has high spatial and temporal resolution, but also offers group‐corresponding fMRI signals across a large population for the first time in the brain imaging field, thus significantly facilitating mapping the functional brain architecture with much higher resolution and in a group‐wise fashion. In this article, we adopt the HCP grayordinate task‐based fMRI (tfMRI) data to systematically identify and characterize task‐based heterogeneous functional regions (THFRs) on cortical surface, i.e., the regions that are activated during multiple tasks conditions and contribute to multiple task‐evoked systems during a specific task performance, and to assess the spatial patterns of identified THFRs on cortical gyri and sulci by applying a computational framework of sparse representations of grayordinate brain tfMRI signals. Experimental results demonstrate that both consistent task‐evoked networks and intrinsic connectivity networks across all subjects and tasks in HCP grayordinate data are effectively and robustly reconstructed via the proposed sparse representation framework. Moreover, it is found that there are relatively consistent THFRs locating at bilateral parietal lobe, frontal lobe, and visual association cortices across all subjects and tasks. Particularly, those identified THFRs locate significantly more on gyral regions than on sulcal regions. These results based on sparse representation of HCP grayordinate data reveal novel functional architecture of cortical gyri and sulci, and might provide a foundation to better understand functional mechanisms of the human cerebral cortex in the future. Hum Brain Mapp 36:5301–5319, 2015.


IEEE Transactions on Medical Imaging | 2015

Supervised Dictionary Learning for Inferring Concurrent Brain Networks

Shijie Zhao; Junwei Han; Jinglei Lv; Xi Jiang; Xintao Hu; Yu Zhao; Bao Ge; Lei Guo; Tianming Liu

Task-based fMRI (tfMRI) has been widely used to explore functional brain networks via predefined stimulus paradigm in the fMRI scan. Traditionally, the general linear model (GLM) has been a dominant approach to detect task-evoked networks. However, GLM focuses on task-evoked or event-evoked brain responses and possibly ignores the intrinsic brain functions. In comparison, dictionary learning and sparse coding methods have attracted much attention recently, and these methods have shown the promise of automatically and systematically decomposing fMRI signals into meaningful task-evoked and intrinsic concurrent networks. Nevertheless, two notable limitations of current data-driven dictionary learning method are that the prior knowledge of task paradigm is not sufficiently utilized and that the establishment of correspondences among dictionary atoms in different brains have been challenging. In this paper, we propose a novel supervised dictionary learning and sparse coding method for inferring functional networks from tfMRI data, which takes both of the advantages of model-driven method and data-driven method. The basic idea is to fix the task stimulus curves as predefined model-driven dictionary atoms and only optimize the other portion of data-driven dictionary atoms. Application of this novel methodology on the publicly available human connectome project (HCP) tfMRI datasets has achieved promising results.


IEEE Transactions on Biomedical Engineering | 2013

FMRI Signal Analysis Using Empirical Mean Curve Decomposition

Fan Deng; Dajiang Zhu; Jinglei Lv; Lei Guo; Tianming Liu

Functional magnetic resonance imaging (fMRI) time series is nonlinear and composed of components at multiple temporal scales, which presents significant challenges to its analysis. In the literature, significant effort has been devoted into model-based fMRI signal analysis, while much less attention has been directed to data-driven fMRI signal analysis. In this paper, we present a novel data-driven multiscale signal decomposition framework named empirical mean curve decomposition (EMCD). Targeted on functional brain mapping, the EMCD optimizes mean envelopes from fMRI signals and iteratively extracts coarser-to-finer scale signal components. The EMCD framework was applied to infer meaningful low-frequency information from blood oxygenation level-dependent signals from resting-state fMRI, task-based fMRI, and natural stimulus fMRI, and promising results are obtained.

Collaboration


Dive into the Jinglei Lv's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar

Xi Jiang

University of Georgia

View shared research outputs
Top Co-Authors

Avatar

Lei Guo

Northwestern Polytechnical University

View shared research outputs
Top Co-Authors

Avatar

Xintao Hu

Northwestern Polytechnical University

View shared research outputs
Top Co-Authors

Avatar

Junwei Han

Northwestern Polytechnical University

View shared research outputs
Top Co-Authors

Avatar

Tuo Zhang

Northwestern Polytechnical University

View shared research outputs
Top Co-Authors

Avatar

Xiang Li

University of Georgia

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Shu Zhang

University of Georgia

View shared research outputs
Researchain Logo
Decentralizing Knowledge