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A tissue-informed deep learning-based method for positron range correction in preclinical 68Ga PET imaging. 基于组织信息的深度学习方法用于临床前68Ga PET成像正电子距离校正。
Pub Date : 2026-02-06
Nerea Encina-Baranda, Robert J Paneque-Yunta, Javier Lopez-Rodriguez, Edwin C Pratt, Trong Nghia Nguyen, Jan Grimm, Alejandro Lopez-Montes, Joaquin L Herraiz

Positron range (PR) limits spatial resolution and quantitative accuracy in PET imaging, particularly for high-energy positron-emitting radionuclides like 68Ga. We propose a deep learning method using 3D residual encoder-decoder convolutional neural networks (3D RED-CNNs), incorporating tissue-dependent anatomical information through a u-map-dependent loss function. Models were trained with realistic simulations and, using initial PET and CT data, generated positron range corrected images. We validated the models in simulations and real acquisitions. Three 3D RED-CNN architectures, Single-channel, Two-channel, and DualEncoder, were trained on simulated PET datasets and evaluated on synthetic and real PET acquisitions from 68Ga-FH and 68Ga-PSMA-617 mouse studies. Performance was compared to a standard Richardson-Lucy-based positron range correction (RL-PRC) method using metrics such as mean absolute error (MAE), structural similarity index (SSIM), contrast recovery (CR), and contrast-to-noise ratio (CNR). CNN-based methods achieved up to 19 percent SSIM improvement and 13 percent MAE reduction compared to RL-PRC. The Two-Channel model achieved the highest CR and CNR, recovering lung activity with 97 percent agreement to ground truth versus 77 percent for RL-PRC. Noise levels remained stable for CNN models (approximately 5.9 percent), while RL-PRC increased noise by 5.8 percent. In preclinical acquisitions, the Two-Channel model achieved the highest CNR across tissues while maintaining the lowest noise level (9.6 percent). Although no ground truth was available for real data, tumor delineation and spillover artifacts improved with the Two-Channel model. These findings highlight the potential of CNN-based PRC to enhance quantitative PET imaging, particularly for 68Ga. Future work will improve model generalization through domain adaptation and hybrid training strategies.

正电子距离(PR)限制了PET成像的空间分辨率和定量精度,特别是对于像68Ga这样的高能正电子发射放射性核素。我们提出了一种使用3D残差编码器-解码器卷积神经网络(3D red - cnn)的深度学习方法,通过u-map依赖的损失函数结合组织相关的解剖信息。模型经过真实模拟训练,并使用初始PET和CT数据生成正电子距离校正图像。我们在模拟和实际采集中验证了这些模型。我们在模拟PET数据集上训练了三种3D RED-CNN架构(单通道、双通道和双通道),并对68Ga-FH和68Ga-PSMA-617小鼠的合成和真实PET采集结果进行了评估。使用平均绝对误差(MAE)、结构相似指数(SSIM)、对比度恢复(CR)和对比噪声比(CNR)等指标,将性能与标准richardson - lucon -based正电子范围校正(RL-PRC)方法进行比较。与RL-PRC相比,基于cnn的方法实现了高达19%的SSIM改进和13%的MAE降低。双通道模型获得了最高的CR和CNR,恢复肺活动的一致性为97%,而RL-PRC为77%。CNN模型的噪声水平保持稳定(约5.9%),而RL-PRC模型的噪声水平增加了5.8%。在临床前采集中,双通道模型在保持最低噪声水平(9.6%)的同时,实现了跨组织的最高CNR。尽管没有真实数据的基础真相,但双通道模型改善了肿瘤描绘和溢出伪影。这些发现强调了基于cnn的PRC增强定量PET成像的潜力,特别是对68Ga。未来的工作将通过领域自适应和混合训练策略来改进模型泛化。
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引用次数: 0
Age-Dependent Causal Effects of Mandibular Dose on Osteoradionecrosis Risk After Head and Neck Radiotherapy. 头颈部放疗后下颌骨剂量对骨坏死风险的年龄相关性影响。
Pub Date : 2026-02-05
Jingyuan Chen, Yunze Yang, Olivia M Muller, Lei Zeng, Zhengliang Liu, Tianming Liu, Robert L, Foote, Daniel J, Ma, Samir H, Patel, Zhong Liu, Wei Liu

Distinguishing causal relationships from statistical correlations remains a fundamental challenge in clinical research, limiting the translation of observational findings into interventional treatment guidelines. Here we apply causal machine learning to establish causal effects of radiation dose parameters on mandibular osteoradionecrosis (ORN) in 931 head and neck cancer patients treated with volumetric-modulated arc therapy. Using generalized random forests, we demonstrate that all examined dosimetric factors exhibit significant positive causal effects on ORN development (average treatment effects: 0.092-0.141). Integration with explainable machine learning reveals substantial treatment effect heterogeneity, with patients aged 50-60 years showing the strongest causal dose-response relationships (conditional average treatment effects up to 0.229), while patients over 70 years demonstrate minimal effects. These results suggest that age-stratified treatment optimization and personalized treatment planning for the dosimetric factors could reduce ORN risk. Our findings demonstrate that causal inference methods can transform clinical retrospective radiotherapy data into personalized treatment recommendations, providing a methodological framework applicable to toxicity prediction across oncology and other clinical domains where treatment decisions depend on complex dose-response relationships.

区分因果关系和统计相关性仍然是临床研究中的一个基本挑战,限制了观察结果转化为介入治疗指南。在这里,我们应用因果机器学习来建立辐射剂量参数对931例接受体积调节电弧治疗的头颈癌患者下颌骨放射性坏死(ORN)的因果效应。使用广义随机森林,我们证明了所有检测的剂量学因素对ORN的发展表现出显著的正因果效应(平均治疗效应:0.092-0.141)。结合可解释的机器学习揭示了大量的治疗效果异质性,50-60岁的患者表现出最强的因果剂量-反应关系(条件平均治疗效果高达0.229),而70岁以上的患者表现出最小的效果。这些结果表明,针对剂量学因素的年龄分层治疗优化和个性化治疗计划可以降低ORN的风险。我们的研究结果表明,因果推理方法可以将临床回顾性放疗数据转化为个性化治疗建议,为肿瘤和其他临床领域的毒性预测提供了一种方法框架,在这些领域,治疗决策取决于复杂的剂量-反应关系。
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引用次数: 0
Transformer brain encoders explain human high-level visual responses. 变压器大脑编码器解释了人类高级视觉反应。
Pub Date : 2026-02-05
Hossein Adeli, Sun Minni, Nikolaus Kriegeskorte

A major goal of neuroscience is to understand brain computations during visual processing in naturalistic settings. A dominant approach is to use image-computable deep neural networks trained with different task objectives as a basis for linear encoding models. However, in addition to requiring estimation of a large number of linear encoding parameters, this approach ignores the structure of the feature maps both in the brain and the models. Recently proposed alternatives factor the linear mapping into separate sets of spatial and feature weights, thus finding static receptive fields for units, which is appropriate only for early visual areas. In this work, we employ the attention mechanism used in the transformer architecture to study how retinotopic visual features can be dynamically routed to category-selective areas in high-level visual processing. We show that this computational motif is significantly more powerful than alternative methods in predicting brain activity during natural scene viewing, across different feature basis models and modalities. We also show that this approach is inherently more interpretable as the attention-routing signals for different high-level categorical areas can be easily visualized for any input image. Given its high performance at predicting brain responses to novel images, the model deserves consideration as a candidate mechanistic model of how visual information from retinotopic maps is routed in the human brain based on the relevance of the input content to different category-selective regions.

神经科学的一个主要目标是了解在自然环境下视觉处理过程中的大脑计算。一种主流的方法是使用经过不同任务目标训练的图像可计算深度神经网络作为线性编码模型的基础。然而,除了需要估计大量的线性编码参数外,这种方法还忽略了大脑和模型中特征映射的结构。最近提出的替代方案将线性映射纳入单独的空间和特征权重集,从而为单元找到静态接受域,这只适用于早期视觉区域。在这项工作中,我们采用变压器架构中使用的注意机制来研究视网膜定位视觉特征如何在高级视觉处理中动态路由到类别选择区域。我们发现,在不同的特征基础模型和模式下,这种计算基序在预测自然场景观看期间的大脑活动方面比其他方法要强大得多。我们还表明,这种方法本质上更具可解释性,因为对于任何输入图像,不同高级分类区域的注意路由信号都可以很容易地可视化。鉴于其在预测大脑对新图像的反应方面的高性能,该模型值得考虑作为一个候选的机制模型,如何根据输入内容与不同类别选择区域的相关性,将来自视网膜定位图的视觉信息在人脑中路由。
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引用次数: 0
Mesoscale tissue properties and electric fields in brain stimulation: Bridging the macroscopic and microscopic scales using layer-specific cortical conductivity. 中尺度组织特性和脑刺激中的电场——连接宏观和微观尺度。
Pub Date : 2026-02-04
Boshuo Wang, Torge H Worbs, Minhaj A Hussain, Aman S Aberra, Axel Thielscher, Warren M Grill, Angel V Peterchev

Accurate simulations of electric fields (E-fields) in neural stimulation depend on tissue conductivity representations that link underlying microscopic tissue structure with macroscopic assumptions. Mesoscale conductivity variations can produce meaningful changes in E-fields and neural activation thresholds but remain largely absent from standard macroscopic models. Conductivity variations within the cortex are expected given the differences in cell density and volume fraction across layers. We review recent efforts modeling microscopic and mesoscopic E-fields and outline approaches that bridge micro- and macroscales to derive consistent mesoscale conductivity distributions. Using simplified microscopic models, effective tissue conductivity was estimated as a function of volume fraction of extracellular space, and the conductivities of different cortical layers were interpolated based on experimental volume fraction. The effective tissue conductivities were monotonically decreasing convex functions of the cell volume fraction. With decreasing cell volume fraction, the conductivity of cortical layers increased with depth from layer 2 to 6. Although the variation of conductivity within the cortex was small when compared to the conductivity of extracellular fluid (9% to 15%), the conductivity difference was considerably larger when compared between layers, e.g., with layer 3 and 6 being 20% and 50% more conductive than layer 2, respectively. The review and analysis provide a foundation for accurate multiscale models of E-fields and neural stimulation. Using layer-specific conductivity values within the cortex could improve the accuracy of estimations of thresholds and distributions of neural activation in E-field models of brain stimulation.

脑刺激中电场(E-fields)的精确模拟依赖于组织电导率表征,这种表征将宏观假设与潜在的微观组织结构联系起来。中尺度电导率变化可以产生有意义的电场和神经激活阈值变化,但在标准宏观模型中仍然存在很大的缺失。最近的微观模型表明存在大量的局部电场扰动,并且原则上可以为中尺度电导率提供信息。然而,显微模型的定量有效性受到固定相关组织畸变和不完整的细胞外空间重建的限制。我们概述了连接宏观和微观尺度以获得一致的中尺度电导率分布的方法,为精确的多尺度电场模型和脑刺激中的神经激活提供了基础。
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引用次数: 0
Unlocking hidden biomolecular conformational landscapes in diffusion models at inference time. 在推理时间解锁扩散模型中隐藏的生物分子构象景观。
Pub Date : 2026-02-04
Daniel D Richman, Jessica Karaguesian, Carl-Mikael Suomivuori, Ron O Dror

The function of biomolecules such as proteins depends on their ability to interconvert between a wide range of structures or "conformations." Researchers have endeavored for decades to develop computational methods to predict the distribution of conformations, which is far harder to determine experimentally than a static folded structure. We present ConforMix, an inference-time algorithm that enhances sampling of conformational distributions using a combination of classifier guidance, filtering, and free energy estimation. Our approach upgrades diffusion models -- whether trained for static structure prediction or conformational generation -- to enable more efficient discovery of conformational variability without requiring prior knowledge of major degrees of freedom. ConforMix is orthogonal to improvements in model pretraining and would benefit even a hypothetical model that perfectly reproduced the Boltzmann distribution. Remarkably, when applied to a diffusion model trained for static structure prediction, ConforMix captures structural changes including domain motion, cryptic pocket flexibility, and transporter cycling, while avoiding unphysical states. Case studies of biologically critical proteins demonstrate the scalability, accuracy, and utility of this method.

蛋白质等生物分子的功能取决于它们在多种结构或“构象”之间相互转化的能力。几十年来,研究人员一直在努力开发计算方法来预测构象的分布,这比静态折叠结构更难通过实验确定。我们提出了conix,这是一种推理时间算法,它使用分类器引导、滤波和自由能估计的组合来增强构象分布的采样。我们的方法升级了扩散模型,无论是静态结构预测还是构象生成,都可以更有效地发现构象变异性,而不需要事先了解主要自由度。conix与模型预训练的改进是正交的,即使是完美再现玻尔兹曼分布的假设模型也会受益。值得注意的是,当应用于用于静态结构预测的扩散模型时,conix捕获了结构变化,包括结构域运动、隐口袋灵活性和转运体循环,同时避免了非物理状态。生物关键蛋白的案例研究证明了该方法的可扩展性、准确性和实用性。
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引用次数: 0
Multi-Integration of Labels across Categories for Component Identification (MILCCI). 跨类别标签的多集成组件识别(MILCCI)。
Pub Date : 2026-02-04
Noga Mudrik, Yuxi Chen, Gal Mishne, Adam S Charles

Many fields collect large-scale temporal data through repeated measurements (trials), where each trial is labeled with a set of metadata variables spanning several categories. For example, a trial in a neuroscience study may be linked to a value from category (a): task difficulty, and category (b): animal choice. A critical challenge in time-series analysis is to understand how these labels are encoded within the multi-trial observations, and disentangle the distinct effect of each label entry across categories. Here, we present MILCCI, a novel data-driven method that i) identifies the interpretable components underlying the data, ii) captures cross-trial variability, and iii) integrates label information to understand each category's representation within the data. MILCCI extends a sparse per-trial decomposition that leverages label similarities within each category to enable subtle, label-driven cross-trial adjustments in component compositions and to distinguish the contribution of each category. MILCCI also learns each component's corresponding temporal trace, which evolves over time within each trial and varies flexibly across trials. We demonstrate MILCCI's performance through both synthetic and real-world examples, including voting patterns, online page view trends, and neuronal recordings.

许多字段通过重复测量(试验)收集大规模的时间数据,其中每个试验都用一组跨几个类别的元数据变量进行标记。例如,神经科学研究中的一个试验可能与类别(a):任务难度和类别(b):动物选择中的一个值相关联。时间序列分析的一个关键挑战是理解这些标签是如何在多试验观察中编码的,并在不同类别中解开每个标签条目的不同影响。在这里,我们提出了MILCCI,一种新颖的数据驱动方法,它i)识别数据背后的可解释成分,ii)捕获交叉试验变异性,iii)集成标签信息以理解数据中每个类别的表示。MILCCI扩展了稀疏的每次试验分解,利用每个类别内的标签相似性,在组件组成中实现微妙的、标签驱动的交叉试验调整,并区分每个类别的贡献。MILCCI还学习每个成分对应的时间轨迹,在每次试验中随着时间的推移而发展,并在不同的试验中灵活变化。我们通过合成和现实世界的例子来展示MILCCI的性能,包括投票模式、在线页面浏览趋势和神经元记录。
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引用次数: 0
RareCollab -- An Agentic System Diagnosing Mendelian Disorders with Integrated Phenotypic and Molecular Evidence. RareCollab——一个具有综合表型和分子证据的诊断孟德尔疾病的代理系统。
Pub Date : 2026-02-03
Guantong Qi, Jiasheng Wang, Mei Ling Chong, Zahid Shaik, Shenglan Li, Shinya Yamamoto, Undiagnosed Diseases Network, Pengfei Liu, Hu Chen, Zhandong Liu

Millions of children worldwide are affected by severe rare Mendelian disorders, yet exome and genome sequencing still fail to provide a definitive molecular diagnosis for a large fraction of patients, prolonging the diagnostic odyssey. Bridging this gap increasingly requires transitioning from DNA-only interpretation to multi-modal diagnostic reasoning that combines genomic data, transcriptomic sequencing (RNA-seq), and phenotype information; however, computational frameworks that coherently integrate these signals remain limited. Here we present RareCollab, an agentic diagnostic framework that pairs a stable quantitative Diagnostic Engine with Large Language Model (LLM)-based specialist modules that produce high-resolution, interpretable assessments from transcriptomic signals, phenotypes, variant databases, and the literature to prioritize potential diagnostic variants. In a rigorously curated benchmark of Undiagnosed Diseases Network (UDN) patients with paired genomic and transcriptomic data, RareCollab achieved 77% top-5 diagnostic accuracy and improved top-1 to top-5 accuracy by ~20% over widely used variant-prioritization approaches. RareCollab illustrates how modular artificial intelligence (AI) can operationalize multi-modal evidence for accurate, scalable rare disease diagnosis, offering a promising path toward reducing the diagnostic odyssey for affected families.

全世界数以百万计的儿童受到严重罕见的孟德尔疾病的影响,然而外显子组和基因组测序仍然无法为很大一部分患者提供明确的分子诊断,延长了诊断的奥德赛。弥合这一差距越来越需要从单纯的dna解释过渡到结合基因组数据、转录组测序(RNA-seq)和表型信息的多模式诊断推理;然而,相干集成这些信号的计算框架仍然有限。在这里,我们提出了RareCollab,这是一个代理诊断框架,将稳定的定量诊断引擎与基于大型语言模型(LLM)的专业模块配对,这些模块可以从转录组信号、表型、变体数据库和文献中产生高分辨率、可解释的评估,以优先考虑潜在的诊断变体。在具有配对基因组和转录组学数据的未确诊疾病网络(UDN)患者的严格管理基准中,RareCollab达到了77%的前5名诊断准确率,并且比广泛使用的变异优先化方法将前1名到前5名的准确率提高了约20%。RareCollab展示了模块化人工智能(AI)如何利用多模式证据进行准确、可扩展的罕见病诊断,为减少受影响家庭的诊断过程提供了一条有希望的途径。
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引用次数: 0
The Contrast Order: An Order-Based Image Quality Criterion for Nonlinear Beamformers. 对比度阶:非线性波束成像器的一种基于阶的图像质量准则。
Pub Date : 2026-02-02
Dongwoon Hyun

Many modern ultrasound beamformers report improved image quality when evaluated using classical criteria like the contrast ratio and contrast-to-noise ratio, which are based on summary statistics of regions of interest (ROIs). However, nonlinear beamformers and post-processing methods can substantially alter these statistics, raising concerns that the reported improvements may reflect changes in dynamic range or remapping rather than a reflection of true information gain, such as clutter suppression. New criteria like the generalized contrast-to-noise ratio (gCNR) address these concerns, but rely on noisy estimates of the underlying distribution. To address this, we introduce a new image quality criterion, called the contrast order (CO), defined as the expected value of the sign of the difference in brightness between two ROIs. The CO is invariant under all strictly monotonic transformations of the image values, as it depends only on their relative ordering, and is interpretable as the probability that one ROI is brighter than the other minus the probability that it is darker. Unlike the gCNR, the CO has a simple unbiased estimator whose variance decreases with the number of samples in each ROI. We further propose the effective contrast ratio (ECR), which calibrates the contrast order to the familiar contrast ratio such that the two coincide under ideal Rayleigh-speckle statistics. Together, the CO and ECR provide order- and sign-preserving, dynamic-range-invariant criteria for evaluating lesion contrast, offering a principled alternative to classical and newer image quality criteria when assessing modern beamformers.

许多现代超声波束成像仪报告说,当使用对比度和对比度噪声比等经典标准进行评估时,图像质量得到了改善,这些标准是基于感兴趣区域(roi)的汇总统计。然而,非线性波束成像仪和后处理方法可以极大地改变这些统计数据,这引起了人们的关注,即报告的改进可能反映了动态范围或重新映射的变化,而不是反映了真实的信息增益,例如杂波抑制。像广义噪声对比比(gCNR)这样的新标准解决了这些问题,但依赖于对潜在分布的噪声估计。为了解决这个问题,我们引入了一种新的图像质量标准,称为对比度阶(CO),定义为两个roi之间亮度差异符号的期望值。在图像值的所有严格单调变换下,CO是不变的,因为它只取决于它们的相对顺序,并且可以解释为一个ROI比另一个更亮的概率减去它更暗的概率。与gCNR不同,CO有一个简单的无偏估计量,其方差随着每个ROI中的样本数量而减小。我们进一步提出了有效对比度(ECR),它将对比度顺序校准为熟悉的对比度,使两者在理想的瑞利-散斑统计下重合。总的来说,CO和ECR为评估病变对比度提供了保持顺序和符号、动态范围不变的标准,在评估现代波束形成器时,为经典和较新的图像质量标准提供了原则上的替代方案。
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引用次数: 0
A Reproducible Framework for Bias-Resistant Machine Learning on Small-Sample Neuroimaging Data. 基于小样本神经成像数据的抗偏性机器学习的可重复框架。
Pub Date : 2026-02-02
Jagan Mohan Reddy Dwarampudi, Jennifer L Purks, Joshua Wong, Renjie Hu, Tania Banerjee

We introduce a reproducible, bias-resistant machine learning framework that integrates domain-informed feature engineering, nested cross-validation, and calibrated decision-threshold optimization for small-sample neuroimaging data. Conventional cross-validation frameworks that reuse the same folds for both model selection and performance estimation yield optimistically biased results, limiting reproducibility and generalization. Demonstrated on a high-dimensional structural MRI dataset of deep brain stimulation cognitive outcomes, the framework achieved a nested-CV balanced accuracy of 0.660,$pm$,0.068 using a compact, interpretable subset selected via importance-guided ranking. By combining interpretability and unbiased evaluation, this work provides a generalizable computational blueprint for reliable machine learning in data-limited biomedical domains.

我们引入了一个可重复的、抗偏倚的机器学习框架,该框架集成了领域信息特征工程、嵌套交叉验证和针对小样本神经成像数据的校准决策阈值优化。传统的交叉验证框架在模型选择和性能估计中重用相同的折叠,产生乐观的偏倚结果,限制了可重复性和泛化。在深度脑刺激认知结果的高维结构MRI数据集上进行了验证,该框架使用通过重要性引导排序选择的紧凑、可解释的子集,实现了嵌套cv平衡精度为0.660,$pm$,0.068。通过结合可解释性和无偏评估,这项工作为数据有限的生物医学领域的可靠机器学习提供了一个可推广的计算蓝图。
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引用次数: 0
A Spatiotemporal Perspective on Dynamical Computation in Neural Information Processing Systems. 神经信息处理系统动态计算的时空视角。
Pub Date : 2026-02-02
T Anderson Keller, Lyle Muller, Terrence J Sejnowski, Max Welling

Spatiotemporal flows of neural activity, such as traveling waves, have been observed throughout the brain since the earliest recordings; yet there is still little consensus on their functional role. Recent experiments and models have linked traveling waves to visual and physical motion, but these observations have been difficult to reconcile with standard accounts of topographically organized selectivity and feedforward receptive fields. Here, we introduce a theoretical framework that formalizes and generalizes the connection between 'motion' and flowing neural dynamics in the language of equivariant neural network theory. We consider 'motion' not only in physical or visual spaces, but also in more abstract representational spaces, and we argue that recurrent traveling-wave-like dynamics are not just useful but necessary for accurate and stable processing of any signal undergoing such motion. Formally, we show that for any non-trivial recurrent neural network to process a sequence undergoing a flow transformation (such as visual motion) in a structured equivariant manner, its hidden state dynamics must actively realize a homomorphic representation of the same flow through recurrent connectivity. In this ''spatiotemporal perspective on dynamical computation'', traveling waves and related flows are best understood as faithful dynamic representations of stimulus flows; and consequently the natural inclination of biological systems towards such dynamics may be viewed as an innate inductive bias towards efficiency and generalization in the spatiotemporally-structured dynamical world they inhabit.

神经活动的时空流动,如行波,从最早的记录开始就在整个大脑中被观察到;然而,对于它们的功能角色,人们仍鲜有共识。最近的实验和模型将行波与视觉和物理运动联系起来,但这些观察结果很难与地形组织选择性和前馈接受野的标准描述相一致。在这里,我们引入了一个理论框架,以等变神经网络理论的语言形式化和概括了“运动”和流动神经动力学之间的联系。我们不仅在物理或视觉空间中考虑“运动”,而且在更抽象的表征空间中也考虑“运动”,并且我们认为循环的行波类动力学不仅有用,而且对于经历此类运动的任何信号的准确和稳定处理是必要的。形式上,我们表明,对于任何非平凡递归神经网络以结构化等变方式处理经历流变换(如视觉运动)的序列,其隐藏状态动力学必须通过递归连通性主动实现相同流的同态表示。在这个“动态计算的时空视角”中,行波和相关流最好被理解为刺激流的忠实动态表征;因此,生物系统对这种动态的自然倾向可以被视为它们所居住的时空结构动态世界中对效率和泛化的先天归纳偏见。
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引用次数: 0
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