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Persistent Sheaf Laplacian Analysis of Protein Flexibility.
Pub Date : 2025-03-30
Nicole Hayes, Xiaoqi Wei, Hongsong Feng, Ekaterina Merkurjev, Guo-Wei Wei

Protein flexibility, measured by the B-factor or Debye-Waller factor, is essential for protein functions such as structural support, enzyme activity, cellular communication, and molecular transport. Theoretical analysis and prediction of protein flexibility are crucial for protein design, engineering, and drug discovery. In this work, we introduce the persistent sheaf Laplacian (PSL), an effective tool in topological data analysis, to model and analyze protein flexibility. By representing the local topology and geometry of protein atoms through the multiscale harmonic and non-harmonic spectra of PSLs, the proposed model effectively captures protein flexibility and provides accurate, robust predictions of protein B-factors. Our PSL model demonstrates an increase in accuracy of 32% compared to the classical Gaussian network model (GNM) in predicting B-factors for a dataset of 364 proteins. Additionally, we construct a blind machine learning prediction method utilizing global and local protein features. Extensive computations and comparisons validate the effectiveness of the proposed PSL model for B-factor predictions.

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引用次数: 0
Deep Learning of Proteins with Local and Global Regions of Disorder.
Pub Date : 2025-03-29
Oufan Zhang, Zi Hao Liu, Julie D Forman-Kay, Teresa Head-Gordon

Although machine learning has transformed protein structure prediction of folded protein ground states with remarkable accuracy, intrinsically disordered proteins and regions (IDPs/IDRs) are defined by diverse and dynamical structural ensembles that are predicted with low confidence by algorithms such as AlphaFold. We present a new machine learning method, IDPForge (Intrinsically Disordered Protein, FOlded and disordered Region GEnerator), that exploits a transformer protein language diffusion model to create all-atom IDP ensembles and IDR disordered ensembles that maintains the folded domains. IDPForge does not require sequence-specific training, back transformations from coarse-grained representations, nor ensemble reweighting, as in general the created IDP/IDR conformational ensembles show good agreement with solution experimental data, and options for biasing with experimental restraints are provided if desired. We envision that IDPForge with these diverse capabilities will facilitate integrative and structural studies for proteins that contain intrinsic disorder.

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引用次数: 0
Single-Cell Proteomics Using Mass Spectrometry.
Pub Date : 2025-03-29
Amanda Momenzadeh, Jesse G Meyer

Single-cell proteomics (SCP) is transforming our understanding of biological complexity by shifting from bulk proteomics, where signals are averaged over thousands of cells, to the proteome analysis of individual cells. This granular perspective reveals distinct cell states, population heterogeneity, and the underpinnings of disease pathogenesis that bulk approaches may obscure. However, SCP demands exceptional sensitivity, precise cell handling, and robust data processing to overcome the inherent challenges of analyzing picogram-level protein samples without amplification. Recent innovations in sample preparation, separations, data acquisition strategies, and specialized mass spectrometry instrumentation have substantially improved proteome coverage and throughput. Approaches that integrate complementary omics, streamline multi-step sample processing, and automate workflows through microfluidics and specialized platforms promise to further push SCP boundaries. Advances in computational methods, especially for data normalization and imputation, address the pervasive issue of missing values, enabling more reliable downstream biological interpretations. Despite these strides, higher throughput, reproducibility, and consensus best practices remain pressing needs in the field. This mini review summarizes the latest progress in SCP technology and software solutions, highlighting how closer integration of analytical, computational, and experimental strategies will facilitate deeper and broader coverage of single-cell proteomes.

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引用次数: 0
Time-resolved dynamic CBCT reconstruction using prior-model-free spatiotemporal Gaussian representation (PMF-STGR).
Pub Date : 2025-03-28
Jiacheng Xie, Hua-Chieh Shao, You Zhang

Time-resolved CBCT imaging, which reconstructs a dynamic sequence of CBCTs reflecting intra-scan motion (one CBCT per x-ray projection without phase sorting or binning), is highly desired for regular and irregular motion characterization, patient setup, and motion-adapted radiotherapy. Representing patient anatomy and associated motion fields as 3D Gaussians, we developed a Gaussian representation-based framework (PMF-STGR) for fast and accurate dynamic CBCT reconstruction. PMF-STGR comprises three major components: a dense set of 3D Gaussians to reconstruct a reference-frame CBCT for the dynamic sequence; another 3D Gaussian set to capture three-level, coarse-to-fine motion-basis-components (MBCs) to model the intra-scan motion; and a CNN-based motion encoder to solve projection-specific temporal coefficients for the MBCs. Scaled by the temporal coefficients, the learned MBCs will combine into deformation vector fields to deform the reference CBCT into projection-specific, time-resolved CBCTs to capture the dynamic motion. Due to the strong representation power of 3D Gaussians, PMF-STGR can reconstruct dynamic CBCTs in a 'one-shot' training fashion from a standard 3D CBCT scan, without using any prior anatomical or motion model. We evaluated PMF-STGR using XCAT phantom simulations and real patient scans. Metrics including the image relative error, structural-similarity-index-measure, tumor center-of-mass-error, and landmark localization error were used to evaluate the accuracy of solved dynamic CBCTs and motion. PMF-STGR shows clear advantages over a state-of-the-art, INR-based approach, PMF-STINR. Compared with PMF-STINR, PMF-STGR reduces reconstruction time by 50% while reconstructing less blurred images with better motion accuracy. With improved efficiency and accuracy, PMF-STGR enhances the applicability of dynamic CBCT imaging for potential clinical translation.

时间分辨 CBCT 成像可重建反映扫描内运动的动态 CBCT 序列(每个 X 射线投影一个 CBCT,不进行相位排序或分档),非常适用于规则和不规则运动特征描述、患者设置和运动适应放疗。我们将患者解剖结构和相关运动场表示为三维高斯,开发了基于高斯表示的框架(PMF-STGR),用于快速准确的动态 CBCT 重建。PMF-STGR 由三个主要部分组成:一个密集的三维高斯集,用于重建动态序列的参考帧 CBCT;另一个三维高斯集,用于捕捉三级、从粗到细的运动基础组件 (MBC),为扫描内运动建模;以及一个基于 CNN 的运动编码器,用于求解 MBC 的特定投影时间系数。通过时间系数缩放,学习到的 MBC 将组合成变形矢量场,将参考 CBCT 变形为特定投影的时间分辨 CBCT,以捕捉动态运动。由于三维高斯具有强大的表示能力,PMF-STGR 可以通过标准三维 CBCT 扫描,以 "一次性 "训练的方式重建动态 CBCT,而无需使用任何先前的解剖或运动模型。我们使用 XCAT 模型模拟和真实患者扫描对 PMF-STGR 进行了评估。包括图像相对误差、结构相似性指数测量、肿瘤中心误差和地标定位误差在内的指标被用来评估已解决的动态 CBCT 和运动的准确性。与基于 INR 的最先进方法 PMF-STINR 相比,PMF-STGR 显示出明显的优势。与 PMF-STINR 相比,PMF-STGR 的重建时间缩短了 50%,同时重建的图像模糊度更低,运动精度更高。PMF-STGR 提高了效率和准确性,增强了动态 CBCT 成像的适用性,有望应用于临床。
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引用次数: 0
Population Transformer: Learning Population-level Representations of Neural Activity. 群体转换器:学习颅内活动的群体级表征
Pub Date : 2025-03-28
Geeling Chau, Christopher Wang, Sabera Talukder, Vighnesh Subramaniam, Saraswati Soedarmadji, Yisong Yue, Boris Katz, Andrei Barbu

We present a self-supervised framework that learns population-level codes for arbitrary ensembles of neural recordings at scale. We address key challenges in scaling models with neural time-series data, namely, sparse and variable electrode distribution across subjects and datasets. The Population Transformer (PopT) stacks on top of pretrained temporal embeddings and enhances downstream decoding by enabling learned aggregation of multiple spatially-sparse data channels. The pretrained PopT lowers the amount of data required for downstream decoding experiments, while increasing accuracy, even on held-out subjects and tasks. Compared to end-to-end methods, this approach is computationally lightweight, while achieving similar or better decoding performance. We further show how our framework is generalizable to multiple time-series embeddings and neural data modalities. Beyond decoding, we interpret the pretrained and fine-tuned PopT models to show how they can be used to extract neuroscience insights from large amounts of data. We release our code as well as a pretrained PopT to enable off-the-shelf improvements in multi-channel intracranial data decoding and interpretability. Code is available at https://github.com/czlwang/PopulationTransformer.

我们提出了一种自监督框架,它可以大规模学习颅内神经记录的群体级编码,从而释放表征学习对神经科学记录模式的益处。Population Transformer (PopT) 降低了解码实验所需的数据量,同时提高了准确性,即使是在从未见过的科目和任务上也是如此。我们在开发 PopT 的过程中解决了两个关键难题:稀疏的电极分布和不同患者的电极位置。PopT 堆叠在预训练表征之上,通过对多个空间稀疏数据通道进行学习聚合,增强了下游任务的能力。除解码外,我们还对预训练的 PopT 和微调模型进行了解释,以展示如何利用它提供从海量数据中学到的神经科学见解。我们发布了经过预训练的 PopT,以实现对多通道颅内数据解码和可解释性的现成改进,代码可在 https://github.com/czlwang/PopulationTransformer 上获取。
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引用次数: 0
A Progressive Risk Formulation for Enhanced Deep Learning based Total Knee Replacement Prediction in Knee Osteoarthritis.
Pub Date : 2025-03-28
Haresh Rengaraj Rajamohan, Richard Kijowski, Kyunghyun Cho, Cem M Deniz

We developed deep learning models for predicting Total Knee Replacement (TKR) need within various time horizons in knee osteoarthritis patients, with a novel capability: the models can perform TKR prediction using a single scan, and furthermore when a previous scan is available, they leverage a progressive risk formulation to improve their predictions. Unlike conventional approaches that treat each scan of a patient independently, our method incorporates a constraint based on disease's progressive nature, ensuring that predicted TKR risk either increases or remains stable over time when multiple scans of a knee are available. This was achieved by enforcing a progressive risk formulation constraint during training with patients who have more than one available scan in the studies. Knee radiographs and MRIs from the Osteoarthritis Initiative (OAI) and Multicenter Osteoarthritis Study (MOST) were used in this work and deep learning models were trained to predict TKR within 1, 2, and 4-year time periods. The proposed approach, utilizing a dual-model risk constraint architecture, demonstrated superior performance compared to baseline - conventional models trained with standard binary cross entropy loss. It achieved an AUROC of 0.87 and AUPRC of 0.47 for 1-year TKR prediction on the OAI radiograph test set, considerably improving over the baseline AUROC of 0.79 and AUPRC of 0.34. For the MOST radiograph test set, the proposed approach achieved an AUROC of 0.77 and AUPRC of 0.25 for 1-year predictions, outperforming the baseline AUROC of 0.71 and AUPRC of 0.19. Similar trends were observed in the MRI testsets.

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引用次数: 0
Volumetric Material Decomposition Using Spectral Diffusion Posterior Sampling with a Compressed Polychromatic Forward Model.
Pub Date : 2025-03-28
Xiao Jiang, Grace J Gang, J Webster Stayman

We have previously introduced Spectral Diffusion Posterior Sampling (Spectral DPS) as a framework for accurate one-step material decomposition by integrating analytic spectral system models with priors learned from large datasets. This work extends the 2D Spectral DPS algorithm to 3D by addressing potentially limiting large-memory requirements with a pre-trained 2D diffusion model for slice-by-slice processing and a compressed polychromatic forward model to ensure accurate physical modeling. Simulation studies demonstrate that the proposed memory-efficient 3D Spectral DPS enables material decomposition of clinically significant volume sizes. Quantitative analysis reveals that Spectral DPS outperforms other deep-learning algorithms, such as InceptNet and conditional DDPM in contrast quantification, inter-slice continuity, and resolution preservation. This study establishes a foundation for advancing one-step material decomposition in volumetric spectral CT.

我们之前介绍过光谱扩散后验取样(Spectral DPS),它是一种通过将分析光谱系统模型与从大型数据集学习到的前验进行整合,从而实现一步精确材料分解的框架。这项研究将二维光谱 DPS 算法扩展到三维,利用预先训练的二维扩散模型进行逐片处理,并利用压缩多色前向模型确保精确的物理建模,从而解决了潜在的大内存限制要求。仿真研究表明,所提出的高效内存三维光谱 DPS 能够对具有临床意义的体积大小进行材料分解。定量分析显示,Spectral DPS 在对比度量化、切片间连续性和分辨率保持方面优于 InceptNet 和条件 DDPM 等其他深度学习算法。这项研究为在容积光谱 CT 中推进一步材料分解奠定了基础。
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引用次数: 0
Evaluation of a Novel Quantitative Multiparametric MR Sequence for Radiation Therapy Treatment Response Assessment.
Pub Date : 2025-03-28
Yuhao Yan, R Adam Bayliss, Florian Wiesinger, Jose de Arcos Rodriguez, Adam R Burr, Andrew M Baschnagel, Brett A Morris, Carri K Glide-Hurst

Purpose: To evaluate a Deep-Learning-enhanced MUlti-PArametric MR sequence (DL-MUPA) for treatment response assessment for brain metastases patients undergoing stereotactic radiosurgery (SRS) and head-and-neck (HnN) cancer patients undergoing conventionally fractionation adaptive radiation therapy.

Methods: DL-MUPA derives quantitative T1 and T2 maps from a single 4-6-minute scan denoised via DL method using dictionary fitting. Phantom benchmarking was performed on a NIST-ISMRM phantom. Longitudinal patient data were acquired on a 1.5T MR-simulator, including pre-treatment (PreTx) and every 3 months after SRS (PostTx) in brain, and PreTx, mid-treatment and 3 months PostTx in HnN. Changes of mean T1 and T2 values were calculated within gross tumor volumes (GTVs), residual disease (RD, HnN), parotids, and submandibular glands (HnN) for treatment response assessment. Uninvolved normal tissues (normal appearing white matter in brain, masseter in HnN) were evaluated to as control.

Results: Phantom benchmarking showed excellent inter-session repeatability (coefficient of variance <1% for T1, <7% for T2). Uninvolved normal tissue suggested acceptable in-vivo repeatability (brain |$Delta$|<5%, HnN |$Delta$T1|<7%, |$Delta$T2|<18% (4ms)). Remarkable changes were noted in resolved brain metastasis ($Delta$T1=14%) and necrotic settings ($Delta$T1=18-40%, $Delta$T2=9-41%). In HnN, two primary tumors showed T2 increase (PostTx GTV $Delta$T2>13%, RD $Delta$T2>18%). A nodal disease resolved PostTx (GTV $Delta$T1=-40%, $Delta$T2=-33%, RD $Delta$T1=-29%, $Delta$T2=-35%). Enhancement was found in involved parotids (PostTx $Delta$T1>12%, $Delta$T2>13%) and submandibular glands (PostTx $Delta$T1>15%, $Delta$T2>35%) while the uninvolved organs remained stable.

Conclusions: DL-MUPA shows promise for treatment response assessment and identifying potential endpoints for functional sparing.

{"title":"Evaluation of a Novel Quantitative Multiparametric MR Sequence for Radiation Therapy Treatment Response Assessment.","authors":"Yuhao Yan, R Adam Bayliss, Florian Wiesinger, Jose de Arcos Rodriguez, Adam R Burr, Andrew M Baschnagel, Brett A Morris, Carri K Glide-Hurst","doi":"","DOIUrl":"","url":null,"abstract":"<p><strong>Purpose: </strong>To evaluate a Deep-Learning-enhanced MUlti-PArametric MR sequence (DL-MUPA) for treatment response assessment for brain metastases patients undergoing stereotactic radiosurgery (SRS) and head-and-neck (HnN) cancer patients undergoing conventionally fractionation adaptive radiation therapy.</p><p><strong>Methods: </strong>DL-MUPA derives quantitative T1 and T2 maps from a single 4-6-minute scan denoised via DL method using dictionary fitting. Phantom benchmarking was performed on a NIST-ISMRM phantom. Longitudinal patient data were acquired on a 1.5T MR-simulator, including pre-treatment (PreTx) and every 3 months after SRS (PostTx) in brain, and PreTx, mid-treatment and 3 months PostTx in HnN. Changes of mean T1 and T2 values were calculated within gross tumor volumes (GTVs), residual disease (RD, HnN), parotids, and submandibular glands (HnN) for treatment response assessment. Uninvolved normal tissues (normal appearing white matter in brain, masseter in HnN) were evaluated to as control.</p><p><strong>Results: </strong>Phantom benchmarking showed excellent inter-session repeatability (coefficient of variance <1% for T1, <7% for T2). Uninvolved normal tissue suggested acceptable in-vivo repeatability (brain |$Delta$|<5%, HnN |$Delta$T1|<7%, |$Delta$T2|<18% (4ms)). Remarkable changes were noted in resolved brain metastasis ($Delta$T1=14%) and necrotic settings ($Delta$T1=18-40%, $Delta$T2=9-41%). In HnN, two primary tumors showed T2 increase (PostTx GTV $Delta$T2>13%, RD $Delta$T2>18%). A nodal disease resolved PostTx (GTV $Delta$T1=-40%, $Delta$T2=-33%, RD $Delta$T1=-29%, $Delta$T2=-35%). Enhancement was found in involved parotids (PostTx $Delta$T1>12%, $Delta$T2>13%) and submandibular glands (PostTx $Delta$T1>15%, $Delta$T2>35%) while the uninvolved organs remained stable.</p><p><strong>Conclusions: </strong>DL-MUPA shows promise for treatment response assessment and identifying potential endpoints for functional sparing.</p>","PeriodicalId":93888,"journal":{"name":"ArXiv","volume":" ","pages":""},"PeriodicalIF":0.0,"publicationDate":"2025-03-28","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11975303/pdf/","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"143805011","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":0,"RegionCategory":"","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"OA","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Structural and Practical Identifiability of Phenomenological Growth Models for Epidemic Forecasting.
Pub Date : 2025-03-27
Yuganthi R Liyanage, Gerardo Chowell, Gleb Pogudin, Necibe Tuncer

Phenomenological models are highly effective tools for forecasting disease dynamics using real world data, particularly in scenarios where detailed knowledge of disease mechanisms is limited. However, their reliability depends on the model parameters' structural and practical identifiability. In this study, we systematically analyze the identifiability of six commonly used growth models in epidemiology:the generalized growth model, the generalized logistic model, the Richards model, the generalized Richards model, the Gompertz model, and a modified SEIR model with inhomogeneous mixing. To address challenges posed by non-integer power exponents in these models, we reformulate them by introducing additional state variables. This enables rigorous structural identifiability analysis using the StructuralIdentifiability.jl package in JULIA. We validate the structural identifiability results by performing parameter estimation and forecasting using the GrowthPredict MATLAB toolbox. This toolbox is designed to fit and forecast time series trajectories based on phenomenological growth models. We applied it to three epidemiological datasets: weekly incidence data for monkeypox, COVID 19, and Ebola. Additionally, we assess practical identifiability through Monte Carlo simulations to evaluate parameter estimation robustness under varying levels of observational noise. Our results confirm that all six models are structurally identifiable under the proposed reformulation. Furthermore, practical identifiability analyses demonstrate that parameter estimates remain robust across different noise levels, though sensitivity varies by model and dataset. These findings provide critical insights into the strengths and limitations of phenomenological models to characterize epidemic trajectories, emphasizing their adaptability to real world challenges and their role in informing public health interventions.

{"title":"Structural and Practical Identifiability of Phenomenological Growth Models for Epidemic Forecasting.","authors":"Yuganthi R Liyanage, Gerardo Chowell, Gleb Pogudin, Necibe Tuncer","doi":"","DOIUrl":"","url":null,"abstract":"<p><p>Phenomenological models are highly effective tools for forecasting disease dynamics using real world data, particularly in scenarios where detailed knowledge of disease mechanisms is limited. However, their reliability depends on the model parameters' structural and practical identifiability. In this study, we systematically analyze the identifiability of six commonly used growth models in epidemiology:the generalized growth model, the generalized logistic model, the Richards model, the generalized Richards model, the Gompertz model, and a modified SEIR model with inhomogeneous mixing. To address challenges posed by non-integer power exponents in these models, we reformulate them by introducing additional state variables. This enables rigorous structural identifiability analysis using the StructuralIdentifiability.jl package in JULIA. We validate the structural identifiability results by performing parameter estimation and forecasting using the GrowthPredict MATLAB toolbox. This toolbox is designed to fit and forecast time series trajectories based on phenomenological growth models. We applied it to three epidemiological datasets: weekly incidence data for monkeypox, COVID 19, and Ebola. Additionally, we assess practical identifiability through Monte Carlo simulations to evaluate parameter estimation robustness under varying levels of observational noise. Our results confirm that all six models are structurally identifiable under the proposed reformulation. Furthermore, practical identifiability analyses demonstrate that parameter estimates remain robust across different noise levels, though sensitivity varies by model and dataset. These findings provide critical insights into the strengths and limitations of phenomenological models to characterize epidemic trajectories, emphasizing their adaptability to real world challenges and their role in informing public health interventions.</p>","PeriodicalId":93888,"journal":{"name":"ArXiv","volume":" ","pages":""},"PeriodicalIF":0.0,"publicationDate":"2025-03-27","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11957228/pdf/","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"143756438","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":0,"RegionCategory":"","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"OA","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Tracking the topology of neural manifolds across populations. 跨群体追踪神经流形的拓扑结构
Pub Date : 2025-03-26
Iris H R Yoon, Gregory Henselman-Petrusek, Yiyi Yu, Robert Ghrist, Spencer LaVere Smith, Chad Giusti

Neural manifolds summarize the intrinsic structure of the information encoded by a population of neurons. Advances in experimental techniques have made simultaneous recordings from multiple brain regions increasingly commonplace, raising the possibility of studying how these manifolds relate across populations. However, when the manifolds are nonlinear and possibly code for multiple unknown variables, it is challenging to extract robust and falsifiable information about their relationships. We introduce a framework, called the method of analogous cycles, for matching topological features of neural manifolds using only observed dissimilarity matrices within and between neural populations. We demonstrate via analysis of simulations and emph{in vivo} experimental data that this method can be used to correctly identify multiple shared circular coordinate systems across both stimuli and inferred neural manifolds. Conversely, the method rejects matching features that are not intrinsic to one of the systems. Further, as this method is deterministic and does not rely on dimensionality reduction or optimization methods, it is amenable to direct mathematical investigation and interpretation in terms of the underlying neural activity. We thus propose the method of analogous cycles as a suitable foundation for a theory of cross-population analysis via neural manifolds.

{"title":"Tracking the topology of neural manifolds across populations.","authors":"Iris H R Yoon, Gregory Henselman-Petrusek, Yiyi Yu, Robert Ghrist, Spencer LaVere Smith, Chad Giusti","doi":"","DOIUrl":"","url":null,"abstract":"<p><p>Neural manifolds summarize the intrinsic structure of the information encoded by a population of neurons. Advances in experimental techniques have made simultaneous recordings from multiple brain regions increasingly commonplace, raising the possibility of studying how these manifolds relate across populations. However, when the manifolds are nonlinear and possibly code for multiple unknown variables, it is challenging to extract robust and falsifiable information about their relationships. We introduce a framework, called the method of analogous cycles, for matching topological features of neural manifolds using only observed dissimilarity matrices within and between neural populations. We demonstrate via analysis of simulations and emph{in vivo} experimental data that this method can be used to correctly identify multiple shared circular coordinate systems across both stimuli and inferred neural manifolds. Conversely, the method rejects matching features that are not intrinsic to one of the systems. Further, as this method is deterministic and does not rely on dimensionality reduction or optimization methods, it is amenable to direct mathematical investigation and interpretation in terms of the underlying neural activity. We thus propose the method of analogous cycles as a suitable foundation for a theory of cross-population analysis via neural manifolds.</p>","PeriodicalId":93888,"journal":{"name":"ArXiv","volume":" ","pages":""},"PeriodicalIF":0.0,"publicationDate":"2025-03-26","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11975052/pdf/","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"143804999","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":0,"RegionCategory":"","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"OA","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
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