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Quantifying task-relevant representational similarity using decision variable correlation. 使用决策变量相关性量化任务相关的表征相似性。
Pub Date : 2026-03-15
Yu Eric Qian, Wilson S Geisler, Xue-Xin Wei

Previous studies have compared neural activities in the visual cortex to representations in deep neural networks trained on image classification. Interestingly, while some suggest that their representations are highly similar, others argued the opposite. Here, we propose a new approach to characterize the similarity of the decision strategies of two observers (models or brains) using decision variable correlation (DVC). DVC quantifies the image-by-image correlation between the decoded decisions based on the internal neural representations in a classification task. Thus, it can capture task-relevant information rather than general representational alignment. We evaluate DVC using monkey V4/IT recordings and network models trained on image classification tasks. We find that model-model similarity is comparable to monkey-monkey similarity, whereas model-monkey similarity is consistently lower. Strikingly, DVC decreases with increasing network performance on ImageNet-1k. Adversarial training does not improve model-monkey similarity in task-relevant dimensions assessed using DVC, although it markedly increases the model-model similarity. Similarly, pre-training on larger datasets does not improve model-monkey similarity. These results suggest a divergence between the task-relevant representations in monkey V4/IT and those learned by models trained on image classification tasks.

先前的研究将视觉皮层的神经活动与经过图像分类训练的深度神经网络的表征进行了比较。有趣的是,虽然一些人认为他们的表现非常相似,但另一些人却持相反的观点。在这里,我们提出了一种新的方法来表征两个观察者(模型或大脑)的决策策略的相似性使用决策变量相关性(DVC)。在分类任务中,DVC基于内部神经表征量化解码决策之间的逐图像相关性。因此,它可以捕获与任务相关的信息,而不是一般的表示对齐。我们使用猴子V4/IT记录和经过图像分类任务训练的网络模型来评估DVC。我们发现模型-模型的相似性与猴子-猴子的相似性相当,而模型-猴子的相似性一直较低。引人注目的是,DVC随着ImageNet-1k网络性能的提高而降低。对抗训练并没有提高使用DVC评估的任务相关维度上模型-猴子的相似性,尽管它显著增加了模型-模型的相似性。同样,在更大的数据集上进行预训练并不能提高模型与猴子的相似性。这些结果表明,猴子V4/IT中与任务相关的表征与通过图像分类任务训练的模型学习到的表征之间存在差异。
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引用次数: 0
Conditionally Site-Independent Neural Evolution of Antibody Sequences. 抗体序列的条件位点非依赖性神经进化。
Pub Date : 2026-03-15
Stephen Zhewen Lu, Aakarsh Vermani, Kohei Sanno, Jiarui Lu, Frederick A Matsen, Milind Jagota, Yun S Song

Common deep learning approaches for antibody engineering focus on modeling the marginal distribution of sequences. By treating sequences as independent samples, however, these methods overlook affinity maturation as a rich and largely untapped source of information about the evolutionary process by which antibodies explore the underlying fitness landscape. In contrast, classical phylogenetic models explicitly represent evolutionary dynamics but lack the expressivity to capture complex epistatic interactions. We bridge this gap with CoSiNE, a continuous-time Markov chain parameterized by a deep neural network. Mathematically, we prove that CoSiNE provides a first-order approximation to the intractable sequential point mutation process, capturing epistatic effects with an error bound that is quadratic in branch length. Empirically, CoSiNE outperforms state-of-the-art language models in zero-shot variant effect prediction by explicitly disentangling selection from context-dependent somatic hypermutation. Finally, we introduce Guided Gillespie, a classifier-guided sampling scheme that steers CoSiNE at inference time, enabling efficient optimization of antibody binding affinity toward specific antigens.

抗体工程中常见的深度学习方法侧重于序列边缘分布的建模。然而,通过将序列作为独立样本处理,这些方法忽略了亲和成熟作为抗体探索潜在适应度景观的进化过程中丰富且尚未开发的信息来源。相比之下,经典的系统发育模型明确地代表了进化动力学,但缺乏表达能力来捕捉复杂的上位相互作用。我们用余弦来弥补这个差距,余弦是一个由深度神经网络参数化的连续时间马尔可夫链。在数学上,我们证明了余弦提供了难以处理的顺序点突变过程的一阶近似,捕获了分支长度为二次的误差界的上位效应。从经验上看,cos通过明确地从上下文相关的体细胞超突变中分离选择,在零射击变异效应预测方面优于最先进的语言模型。最后,我们介绍了Guided Gillespie,这是一种分类器引导的采样方案,可以在推理时引导cos,从而有效地优化抗体对特定抗原的结合亲和力。
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引用次数: 0
Dynamical Mechanisms for Coordinating Long-term Working Memory Based on the Precision of Spike-timing in Cortical Neurons. 基于皮质神经元峰时精度的协调长时工作记忆的动力机制。
Pub Date : 2026-03-14
Terrence J Sejnowski

In the last century, most sensorimotor studies of cortical neurons relied on average firing rates. Rate coding is efficient for fast sensorimotor processing that occurs within a few seconds. Much less is known about the neural mechanisms underlying long-term working memory with a time scale of hours (Ericsson and Kintsch, 1995). Cognitive states may not have sensory or motor correlates. For example, you can sit in a quiet room making plans without moving or sensory processing. You can also make plans while out walking. This suggests that the neural substrate for cognitive states neither depends on nor interferes with ongoing sensorimotor brain activity. In this perspective, I make the case for a possible second tier of neural activity that coexists with the well-established sensorimotor tier, based on coordinated spike-timing activity. The discovery of millisecond-precision spike initiation in cortical neurons was unexpected (Mainen and Sejnowski, 1995). Even more striking was the precision of spiking in vivo, in response to rapidly fluctuating sensory inputs, suggesting that neural circuits could preserve and manipulate sensory information through spike timing. High temporal resolution can also mediate spike-timing-dependent plasticity (STDP) by controlling the relative timing of presynaptic and postsynaptic spikes at the millisecond scale. Cortical traveling waves with high temporal precision are observed across many frequency bands. They can plausibly trigger STDP that lasts for hours in cortical neurons. This temporary cortical network, riding astride the long-term sensorimotor network, could support cognitive processing and long-term working memory.

在上个世纪,大多数皮层神经元的感觉运动研究依赖于平均放电率。速率编码对于发生在几秒钟内的快速感觉运动处理是有效的。对于以小时为时间尺度的长期工作记忆,我们所知甚少(Ericsson and Kintsch, 1995)。皮质神经元中尖峰起始的毫秒精度的发现是出乎意料的(Mainen和Sejnowski, 1995)。更令人惊讶的是,在体内对快速波动的感觉输入做出反应时,脉冲的准确性表明,神经回路原则上可以通过脉冲定时来保存和操纵感觉信息。它可以支持脉冲时间依赖的可塑性(STDP),这是由突触前和突触后神经元之间脉冲的相对时间在毫秒范围内触发的。在体内,什么尖峰定时机制可以调节STDP ?皮层行波已经在许多频带上被观测到,具有很高的时间精度。行波的波前可以将尖峰时序与STDP联系起来。当波前通过皮质柱时,锥体细胞和篮状细胞树突上的兴奋性突触同时受到刺激。抑制性篮细胞在锥体细胞体上形成花萼,抑制性回弹在强瞬态超极化后触发反向传播动作电位,该动作电位在锥体树突的兴奋输入后不久到达。以这种方式激活的STDP可以持续数小时,从而创建第二层网络。这个临时网络可以支持长期工作记忆,这是一个凌驾于长期感觉运动网络之上的认知网络。就其本身而言,行波和STDP尚未对皮层功能产生新的见解。总之,它们可以对我们的思维方式负责(Sejnowski, 2025)。
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引用次数: 0
Quantum Sensing MRI for Noninvasive Detection of Neuronal Electrical Activity in Human Brains. 量子感测MRI无创检测人脑神经元电活动。
Pub Date : 2026-03-13
Yongxian Qian, Ying-Chia Lin, Seyedehsara Hejazi, Kamri Clarke, Kennedy Watson, Xingye Chen, Nahbila-Malikha Kumbella, Justin Quimbo, Abena Dinizulu, Simon Henin, Yulin Ge, Arjun Masurkar, Anli Liu, Yvonne W Lui, Fernando E Boada

Neuronal electrical activity underlies human cognition including perception, attention, memory, language, and decision-making. Yet its direct, noninvasive measurement in the living human brain remains a fundamental challenge. Existing neuroimaging techniques, including electroencephalography (EEG), magnetoencephalography (MEG), and functional magnetic resonance imaging (fMRI), are limited by trade-offs in sensitivity and spatial or temporal resolution. Here we propose quantum sensing MRI (qsMRI), a noninvasive approach that enables direct detection of neuronal firing-induced magnetic fields using a clinical MRI system. qsMRI exploits endogenous proton (1H) nuclear spins in water molecules as intrinsic quantum sensors and decodes time-resolved phase information from the free induction decay signals to infer neuronal magnetic fields. We validate qsMRI through simulations, phantom experiments, and human studies at rest and during motor tasks, and provide open experimental procedures to facilitate independent rigorous validation. We further present a case study demonstrating potential applications to neurological disorders. qsMRI represents, to our knowledge, the first-in-human application of quantum sensing on a clinical MRI platform and may lay the foundation for a non-BOLD functional imaging modality capable of probing neuronal firing dynamics in both cortical and deep brain regions.

神经电活动是人类认知的基础,然而,在活体人脑中直接、无创地测量神经电活动仍然是一个根本性的挑战。现有的神经成像技术,包括脑电图、脑磁图和功能磁共振成像,在灵敏度和空间或时间分辨率方面受到限制。在这里,我们提出量子传感MRI (qsMRI),这是一种非侵入性方法,可以使用临床MRI系统直接检测神经元放电诱导的磁场。qsMRI利用水分子中的内源性质子(1H)核自旋作为本征量子传感器,从自由感应衰变(FID)信号中解码时间分辨相位信息来推断神经元磁场。我们通过模拟、模拟实验和人体研究来验证qsMRI,并提供开放的实验程序以促进独立验证。我们进一步提出了一个案例研究,展示了神经系统疾病的潜在应用。qsMRI代表了量子传感在临床MRI平台上的首次人体应用,建立了非bold功能成像模式,并能够对皮质和脑深部区域的神经元放电动力学进行询问。
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引用次数: 0
A novel Boltzmann equation solver for calculation of dose and fluence spectra distributions for proton beam therapy. 计算质子束治疗剂量和通量谱分布的一种新的玻尔兹曼方程求解器。
Pub Date : 2026-03-11
Oleg N Vassiliev, Radhe Mohan

Background: The claim that Monte Carlo is the most accurate method is a case of misattributed credit. This claim is based on experience with advanced systems MC-NPX, Geant4 and EGS. These systems achieve remarkable performance because they use most accurate physics, not because they use random numbers. The latter simplifies algorithms, but contaminates the solution with random noise. Currently prevalent fast Monte Carlo algorithms retain this worst part while achieving high computing speed at the expense of the best part - accurate physics. We employ an opposite strategy. We develop a Boltzmann solver for protons that retains unchanged the physics of most advanced Monte Carlo systems. We eliminate random noise, because our solution method is deterministic. Our method is also applicable to heavier ions, helium and carbon, for example.

Purpose: To develop a fast and accurate deterministic Boltzmann solver for protons. It calculates dose distributions and fluence spectra. The spectra are needed for biological modelling. The main application is treatment planning of proton beam therapy.

Methods: We solve the Boltzmann transport equation using an iterative procedure. Our algorithm accounts for Coulomb scattering and nuclear reactions. It uses the same physical models, as do the most rigorous Monte Carlo systems. Thereby it achieves the same low level of systematic errors. Our solver does not involve random sampling. The solution is not contaminated by statistical noise. This means that the overall uncertainties of our solver are lower than those realistically achievable with Monte Carlo. Furthermore, our solver is orders of magnitude faster. Its another advantage is that it calculates fluence spectra. They are needed for calculation of relative biological effectiveness, especially when advanced radiobiological models are used that may present a challenge for other algorithms.

Results: We have developed a novel Boltzmann equation solver, have written prototype software, and completed its testing for calculations in water. For 40-220 MeV protons we calculated fluence spectra, depth doses, three-dimensional dose distributions for narrow Gaussian beams. The CPU time was 5-11 ms for depth doses and fluence spectra at multiple depths. Gaussian beam calculations took 31-78 ms. All the calculations were run on a single Intel i7 2.9 GHz CPU. Comparison of our solver with Geant4 showed good agreement for all energies and depths. For the 1%/1 mm γ -test the pass rate was 0.95-0.99. In this test, 1% was the difference between our and Geant4 doses at the same point. The test included low dose regions down to 1% of the maximum dose.

Conclusions: Results of the study provide a foundation for achieving a high computing speed with uncompromised accuracy in proton treatment planning systems.

方法:用迭代法求解玻尔兹曼输运方程。我们的算法考虑了库仑散射和核反应。它使用与最严格的蒙特卡罗系统相同的物理模型。因此,它达到了同样低水平的系统误差。我们的求解器不涉及随机抽样。该解决方案不受统计噪声的污染。这意味着我们的求解器的总体不确定性低于蒙特卡罗实际可实现的不确定性。此外,我们的解算器要快几个数量级。它的另一个优点是可以计算能量谱。它们用于计算相对生物有效性,特别是当使用可能对其他算法构成挑战的先进放射生物学模型时。主要成果:我们开发了一种新的玻尔兹曼方程求解器,编写了原型软件,并完成了在水中计算的测试。对于40-220 MeV质子,我们计算了窄高斯光束的通量谱、深度剂量和三维剂量分布。深度剂量的CPU时间为5 ~ 11 ms。高斯光束计算耗时31-78毫秒。所有的计算都在一个Intel i7 2.9 GHz CPU上运行。与Geant4的比较表明,我们的求解器在所有能量和深度上都有很好的一致性。对于1 %/1 mm γ -测试,通过率为0.95-0.99。在这个测试中,我们和Geant4在同一点的剂量差为1%。试验包括低剂量区域,低至最大剂量的1%。
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引用次数: 0
GOUHFI 2.0: A Next-Generation Toolbox for Brain Segmentation and Cortex Parcellation at Ultra-High Field MRI. GOUHFI 2.0:超高场MRI脑分割和皮层分割的新一代工具箱。
Pub Date : 2026-03-10
Marc-Antoine Fortin, Anne Louise Kristoffersen, Kjersti Eline Stige, Nicolas Kunath, Charalampos Tzoulis, Pål Erik Goa

Despite Ultra-High Field MRI (UHF-MRI) being increasingly used in large-scale neuroimaging studies, automatic segmentation and parcellation remain challenging due to signal inhomogeneities, varying contrast and resolution, and the lack of tools optimized for UHF-MRI. Traditional software packages such as FastSurferVINN or SynthSeg + often yield suboptimal results when applied directly to UHF images, which has limited region-based quantitative analyses. Building upon this need, we propose GOUHFI 2.0, a new implementation of GOUHFI that incorporates greater training data variation and introduces added functionalities, including cortical parcellation and volumetry. GOUHFI 2.0 preserves the contrast- and resolution-agnostic properties of the original toolbox while introducing two independently trained segmentation tasks based on the 3D U-Net architecture. The first network segments brain images of any contrast, resolution or field strength into 35 labels, using the domain randomization approach with a dataset composed of 238 subjects of varied resolutions, field strengths and populations. Using the same training dataset, the second network performs the parcellation of the cortex into 62 labels following the Desikan-Killiany-Tourville (DKT) protocol. When evaluated across multiple datasets, GOUHFI 2.0 demonstrated improved segmentation accuracy relative to the original toolbox, particularly in heterogeneous populations, and its ability to generate reliable cortical parcellations. Additionally, the added integrated volumetry pipeline enabled the derivation of results consistent with those obtained using standard volumetry procedures. In summary, GOUHFI 2.0 offers a comprehensive, contrast- and resolution-agnostic solution for brain segmentation and parcellation across field strengths. This positions GOUHFI 2.0 as a versatile tool for researchers working at UHF-MRI, making it the first Deep Learning (DL) toolbox capable of robust cortical parcellation at UHF-MRI.

超高场磁共振成像(UHF-MRI)越来越多地用于大规模神经成像研究,但由于信号不均匀、对比度和分辨率不均匀,以及针对UHF数据优化的工具的可用性有限,自动脑分割和皮质包裹仍然具有挑战性。FastSurferVINN和SynthSeg+等标准软件包在直接应用于UHF图像时往往产生次优结果,从而限制了基于区域的定量分析。为了满足这一需求,我们引入了GOUHFI 2.0,这是GOUHFI的更新实现,包含了增加的训练数据可变性和额外的功能,包括皮质分割和体积测定。GOUHFI 2.0保留了原始工具箱的对比度和分辨率无关设计,同时引入了两个独立训练的3D U-Net分割任务。第一种方法使用领域随机化策略和238名受试者的训练数据集,对35个标签进行全脑分割,包括对比度、分辨率、场强和人群。使用相同的训练数据,第二个网络按照desikan - killianyi - tourville (DKT)协议将皮层分割成62个标签。在多个数据集上,GOUHFI 2.0相对于原始工具箱显示出更高的分割精度,特别是在异质队列中,并产生了可靠的皮质分割。此外,集成的体积测量管道产生的结果与标准的体积测量工作流程一致。总体而言,GOUHFI 2.0提供了跨场强的大脑分割、分割和体积测量的综合解决方案,并构成了第一个在UHF-MRI上实现稳健皮层分割的深度学习工具箱。
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引用次数: 0
Efficient Vision Mamba for MRI Super-Resolution via Hybrid Selective Scanning. 通过混合选择扫描的MRI超分辨率高效视觉曼巴。
Pub Date : 2026-03-07
Mojtaba Safari, Shansong Wang, Vanessa L Wildman, Mingzhe Hu, Zach Eidex, Chih-Wei Chang, Erik H Middlebrooks, Richard L J Qiu, Pretesh Patel, Ashesh B Jani, Hui Mao, Zhen Tian, Xiaofeng Yang
<p><strong>Background: </strong>High-resolution MRI is essential for accurate diagnosis and treatment planning, but its clinical acquisition is often constrained by long scanning times, which increase patient discomfort and reduce scanner throughput. While super-resolution (SR) techniques offer a post-acquisition solution to enhance resolution, existing deep learning approaches face trade-offs between reconstruction fidelity and computational efficiency, limiting their clinical applicability.</p><p><strong>Purpose: </strong>This study aims to develop an efficient and accurate deep learning framework for MRI super-resolution that preserves fine anatomical detail while maintaining low computational overhead, enabling practical integration into clinical workflows.</p><p><strong>Materials and methods: </strong>We propose a novel SR framework based on multi-head selective state-space models (MHSSM) integrated with a lightweight channel multilayer perceptron (MLP). The model employs 2D patch extraction with hybrid scanning strategies (vertical, horizontal, and diagonal) to capture long-range dependencies while mitigating pixel forgetting. Each MambaFormer block combines MHSSM, depthwise convolutions, and gated channel mixing to balance local and global feature representation. The framework was trained and evaluated on two distinct datasets: 7T brain T1 MP2RAGE maps (142 subjects) and 1.5T prostate T2w MRI (334 subjects). Performance was compared against multiple baselines including Bicubic interpolation, GAN-based (CycleGAN, Pix2pix, SPSR), transformer-based (SwinIR), Mamba-based (MambaIR), and diffusion-based (I<sup>2</sup>SB, Res-SRDiff) methods.</p><p><strong>Results: </strong>The proposed model demonstrated superior performance across all evaluation metrics while maintaining exceptional computational efficiency. On the 7T brain dataset, our method achieved the highest structural similarity (SSIM: 0.951±0.021) and peak signal-to-noise ratio (PSNR: 26.90±1.41 dB), along with the best perceptual quality scores (LPIPS: 0.076±0.022; GMSD: 0.083±0.017). These results represented statistically significant improvements over all baselines (<i>p</i> < 0.001), including a 2.1% SSIM gain over SPSR and a 2.4% PSNR improvement over Res-SRDiff. For the prostate dataset, the model similarly outperformed competing approaches, achieving SSIM of 0.770±0.049, PSNR of 27.15±2.19 dB, LPIPS of 0.190±0.095, and GMSD of 0.087±0.013. Notably, our framework accomplished these results with only 0.9 million parameters and 57 GFLOPs, representing reductions of 99.8% in parameters and 97.5% in computational operations compared to Res-SRDiff, while also substantially outperforming SwinIR and MambaIR in both accuracy and efficiency metrics.</p><p><strong>Conclusion: </strong>The proposed framework provides a computationally efficient yet accurate solution for MRI super-resolution, delivering well-defined anatomical details and improved perceptual fidelity across anatomically disti
背景:高分辨率MRI对诊断至关重要,但采集时间长限制了临床应用。超分辨率(SR)可以提高扫描后的分辨率,但现有的深度学习方法面临保真度和效率的权衡。目的:为MRI SR开发一个计算高效且准确的深度学习框架,该框架保留了临床整合的解剖细节。材料和方法:我们提出了一种结合多头选择状态空间模型(MHSSM)和轻量级通道MLP的新型SR框架。该模型使用二维斑块提取和混合扫描来捕获远程依赖关系。每个MambaFormer块集成了MHSSM,深度卷积和门控通道混合。评估使用7T脑T1 MP2RAGE图(n=142)和1.5T前列腺T2w MRI (n=334)。比较包括双三次插值,gan (CycleGAN, Pix2pix, SPSR),变压器(SwinIR),曼巴(MambaIR)和扩散模型(I2SB, Res-SRDiff)。结果:该模型具有优异的性能和卓越的效率。对于7T脑数据:SSIM=0.951+-0.021, PSNR=26.90+-1.41 dB, LPIPS=0.076+-0.022, GMSD=0.083+-0.017,显著优于所有基线(pp结论:提出的框架提供了一个高效,准确的MRI SR解决方案,在数据集上提供增强的解剖细节。它的低计算需求和最先进的性能显示了临床翻译的强大潜力。
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引用次数: 0
Linear Acceleration Is a Primary Risk Factor for Concussion and a Target for Prevention. 线性加速度是脑震荡的主要危险因素,也是预防的目标。
Pub Date : 2026-03-06
Jessica A Towns, Nicholas J Cecchi, James W Hickey, William T O'Brien, Spencer S H Roberts, N Stewart Pritchard, Jillian E Urban, Joel D Stitzel, Gerald A Grant, Michael M Zeineh, Stuart J McDonald, David B Camarillo

Head impacts can cause concussion, but the precise biomechanical conditions that produce injury remain uncertain. Rotational acceleration has long been posited as the primary cause and has guided concussion prevention strategies. Using instrumented mouthguards to record head kinematics of diagnosed concussions, we directly tested this hypothesis and found that linear acceleration predicted injury with greater precision than rotational acceleration, while rotational velocity provided additional predictive value. Injury risk functions derived from these measurements indicated substantial predicted concussion risk during typical impacts to an American football helmet. Introducing a liquid-filled helmet pad designed to attenuate linear acceleration reduced predicted risk by up to 52%. These results indicate that effective concussion prevention requires targeting linear acceleration.

头部撞击可引起脑震荡,但造成损伤的确切生物力学条件仍不确定。旋转加速度一直被认为是主要原因,并指导了脑震荡的预防策略。使用带器械的护齿器记录诊断为脑震荡的头部运动学,我们直接验证了这一假设,发现线性加速度比旋转加速度更准确地预测损伤,而旋转速度提供了额外的预测价值。从这些测量中得出的损伤风险函数表明,在典型的美式橄榄球头盔撞击过程中,有实质性的预测脑震荡风险。引入一种充液头盔垫,旨在减弱线性加速度,可将预测风险降低52%。这些结果表明,有效的脑震荡预防需要针对线性加速度。
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引用次数: 0
Causal Interpretation of Neural Network Computations with Contribution Decomposition. 基于贡献分解的神经网络计算的因果解释。
Pub Date : 2026-03-06
Joshua Brendan Melander, Zaki Alaoui, Shenghua Liu, Surya Ganguli, Stephen A Baccus

Understanding how neural networks transform inputs into outputs is crucial for interpreting and manipulating their behavior. Most existing approaches analyze internal representations by identifying hidden-layer activation patterns correlated with human-interpretable concepts. Here we take a direct approach to examine how hidden neurons act to drive network outputs. We introduce CODEC (Contribution Decomposition), a method that uses sparse autoencoders to decompose network behavior into sparse motifs of hidden-neuron contributions, revealing causal processes that cannot be determined by analyzing activations alone. Applying CODEC to benchmark image-classification networks, we find that contributions grow in sparsity and dimensionality across layers and, unexpectedly, that they progressively decorrelate positive and negative effects on network outputs. We further show that decomposing contributions into sparse modes enables greater control and interpretation of intermediate layers, supporting both causal manipulations of network output and human-interpretable visualizations of distinct image components that combine to drive that output. Finally, by analyzing state-of-the-art models of neural activity in the vertebrate retina, we demonstrate that CODEC uncovers combinatorial actions of model interneurons and identifies the sources of dynamic receptive fields. Overall, CODEC provides a rich and interpretable framework for understanding how nonlinear computations evolve across hierarchical layers, establishing contribution modes as an informative unit of analysis for mechanistic insights into artificial neural networks.

了解神经网络如何将输入转化为输出对于解释和操纵它们的行为至关重要。大多数现有方法通过识别与人类可解释概念相关的隐藏层激活模式来分析内部表示。在这里,我们采用一种直接的方法来研究隐藏神经元是如何驱动网络输出的。我们引入了CODEC(贡献分解),这是一种使用稀疏自编码器将网络行为分解为隐藏神经元贡献的稀疏基元的方法,揭示了无法通过单独分析激活来确定的因果过程。将CODEC应用于基准图像分类网络,我们发现各层的贡献在稀疏性和维数上都有所增长,并且出乎意料的是,它们对网络输出的积极和消极影响逐渐去相关。我们进一步表明,将贡献分解为稀疏模式可以更好地控制和解释中间层,支持网络输出的因果操作和人类可解释的不同图像组件的可视化,这些组件组合在一起驱动输出。最后,通过分析脊椎动物视网膜中最先进的神经活动模型,我们证明了CODEC揭示了模型中间神经元的组合行为,并识别了动态感受野的来源。总的来说,CODEC提供了一个丰富且可解释的框架,用于理解非线性计算如何跨层次层发展,建立贡献模式作为分析人工神经网络机制的信息单元。
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引用次数: 0
Rotation-invariant graph message passing enables acquisition protocol generalisation in learning-based brain microstructure estimation. 旋转不变图消息传递实现了基于学习的脑微观结构估计的获取协议泛化。
Pub Date : 2026-03-06
Leevi Kerkelä, Hui Zhang

Estimating brain microstructure has important applications in medicine and neuroscience. Diffusion-weighted magnetic resonance imaging enables measuring microstructure in vivo. Conventional biophysical model fitting can be accurate but is slow and impractical for time-critical clinical use, where machine learning can offer a potential route to rapid estimation. We address the problem of microstructure estimation under arbitrary acquisition protocols where most existing learning-based methods fail due to protocol assumptions, requiring retraining when the protocol changes. We present a graph neural network that represents input data as a point cloud in the 3D space where diffusion-weighted measurements are made and performs rotation-invariant message passing with permutation-invariant pooling, producing fixed-size embeddings that encode microstructure. The inductive biases of our relatively small model were guided by the underlying physics and symmetries of the problem rather than by generic model architectures. Trained on randomised simulated data, our model demonstrates domain generalisation, accurately estimating microstructure from data with unseen real-world protocols without retraining. This approach represents a step towards a "train once, deploy anywhere" architecture, bringing rapid learning-based microstructure mapping closer to clinical deployment.

估计大脑的微观结构在医学和神经科学中有着重要的应用。扩散加权磁共振成像能够测量textit{体内}微观结构。传统的生物物理模型拟合可以准确,但对于时间紧迫的临床应用来说,速度缓慢且不切实际,而机器学习可以提供快速估计的潜在途径。我们解决了任意获取协议下的微观结构估计问题,其中大多数现有的基于学习的方法由于协议假设而失败,当协议改变时需要重新训练。我们提出了一个图神经网络,该网络将输入数据表示为3D空间中的点云,在该空间中进行扩散加权测量,并通过排列不变池执行旋转不变消息传递,产生编码微观结构的固定大小嵌入。我们相对较小的模型的归纳偏差是由问题的底层物理和对称性引导的,而不是由一般的模型架构引导的。在随机模拟数据的训练下,我们的模型展示了领域泛化,在没有再训练的情况下,从未见过的真实世界协议的数据中准确估计微观结构。这种方法代表了向“一次训练,随处部署”架构迈出的一步,使基于快速学习的微观结构映射更接近临床部署。
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